Network Working Group                                           B. Noble
Request for Comments: 2041                    Carnegie Mellon University
Category: Informational                                        G. Nguyen
                                     University of California, Berkeley
                                                      M. Satyanarayanan
                                             Carnegie Mellon University
                                                                R. Katz
                                     University of California, Berkeley
                                                           October 1996


                        Mobile Network Tracing

Status of this Memo

  This memo provides information for the Internet community.  This memo
  does not specify an Internet standard of any kind.  Distribution of
  this memo is unlimited.

Abstract

  Mobile networks are both poorly understood and difficult to
  experiment with.  This RFC argues that mobile network tracing
  provides both tools to improve our understanding of wireless
  channels, as well as to build realistic, repeatable testbeds for
  mobile software and systems.  The RFC is a status report on our work
  tracing mobile networks.  Our goal is to begin discussion on a
  standard format for mobile network tracing as well as a testbed for
  mobile systems research.  We present our format for collecting mobile
  network traces, and tools to produce from such traces analytical
  models of mobile network behavior.

  We also describe a set of tools to provide network modulation based
  on collected traces.  Modulation allows the emulation of wireless
  channel latency, bandwidth, loss, and error rates on private, wired
  networks.  This allows system designers to test systems in a
  realistic yet repeatable manner.














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RFC 2041                 Mobile Network Tracing             October 1996


1. Introduction

  How does one accurately capture and reproduce the observed behavior
  of a network?  This is an especially challenging problem in mobile
  computing because the network quality experienced by a mobile host
  can vary dramatically over time and space.  Neither long-term average
  measures nor simple analytical models can capture the variations in
  bandwidth, latency, and signal degradation observed by such a host.
  In this RFC, we describe a solution based on network tracing.  Our
  solution consists of two phases:  trace recording and trace
  modulation.

  In the trace recording phase, an experimenter with an instrumented
  mobile host physically traverses a path of interest to him.  During
  the traversal, packets from a known workload are generated from a
  static host.  The mobile host records observations of both packets
  received from the known workload as well as the device
  characteristics during the workload.  At the end of the traversal,
  the list of observations represents an accurate trace of the observed
  network behavior for this traversal.  By performing multiple
  traversals of the same path, and by using different workloads, one
  can obtain a trace family that collectively characterizes network
  quality on that path.

  In the trace modulation phase, mobile system and application software
  is subjected to the network behavior observed in a recorded trace.
  The mobile software is run on a LAN-attached host whose kernel is
  modified to read a file containing the trace (possibly postprocessed
  for efficiency,) and to delay, drop or otherwise degrade packets in
  accordance with the behavior described by the trace.  The mobile
  software thus experiences network quality indistinguishable from that
  recorded in the trace.  It is important to note that trace modulation
  is fully transparent to mobile software --- no source or binary
  changes have to be made.

  Trace-based approaches have proved to be of great value in areas such
  as file system design [2, 10, 11] and computer architecture.  [1, 5,
  13] Similarly, we anticipate that network tracing will prove valuable
  in many aspects of mobile system design and implementation.  For
  example, detailed analyses of traces can provide insights into the
  behavior of mobile networks and validate predictive models.  As
  another example, it can play an important role in stress testing and
  debugging by providing the opportunity to reproduce the network
  conditions under which a bug was originally uncovered.  As a third
  example, it enables a system under development to be subjected to
  network conditions observed in distant real-life environments.  As a
  final example, a set of traces can be used as a benchmark family for
  evaluating and comparing the adaptive capabilities of alternative



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RFC 2041                 Mobile Network Tracing             October 1996


  mobile system designs.

  Our goal in writing this RFC is to encourage the development of a
  widely-accepted standard format for network traces.  Such
  standardization will allow traces to be easily shared.  It will also
  foster the development and widespread use of trace-based benchmarks.
  While wireless mobile networks are the primary motivation for this
  work, we have made every effort to ensure that our work is applicable
  to other types of networks.  For example, the trace format and some
  of the tools may be valuable in analyzing and modeling ATM networks.

  The rest of this RFC is organized as follows.  We begin by examining
  the properties of wireless networks and substantiating the claim that
  it is difficult to model such networks.  Next, in Section 3, we
  describe the factors that should be taken into account in designing a
  trace format.  We present the details of a proposed trace format
  standard in Section 4.  Section 5 presents a set of tools that we
  have built for the collection, analysis and replay of traces.
  Finally, we conclude with a discussion of related and future work.

2. Modeling Wireless Networks

  Wireless channels are particularly complex to model, because of their
  inherent dependence on the physical properties of radio waves (such
  as reflections from "hard" surfaces, diffraction around corners, and
  scattering caused by small objects) and the site specific geometries
  in which the channel is formed.  They are usually modeled as a time-
  and distance-varying signal strength, capturing the statistical
  nature of the interaction among reflected radio waves.  The signal
  strength can vary by several orders of magnitude (+ or - 20-30 dB)
  within a short distance.  While there have been many efforts to
  obtain general models of radio propagation inside buildings and over
  the wide area, these efforts have yielded inherently inaccurate
  models that can vary from actual measurements by an order of
  magnitude or more.

  Signal-to-noise ratio, or SNR, is a measure of the received signal
  quality.  If the SNR is too low, the received signal will not be
  detected at the receiver, yielding bit errors and packet losses.  But
  SNR is not the only effect that can lead to losses.  Another is
  inter-symbol interference caused by delay spread, that is, the
  delayed arrival of an earlier transmitted symbol that took a
  circuitous propagation path to arrive at the receiver, thereby
  (partially) canceling out the current symbol.  Yet another problem is
  doppler shift, which causes frequency shifts in the arrived signal
  due to relative velocities of the transmitter and the receiver,
  thereby complicating the successful reception of the signal.  If
  coherent reception is being used, receiver synchronization can be



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  lost.

  More empirically, it has been observed that wireless channels adhere
  to a two state error model.  In other words, channels are usually
  well behaved but occasionally go into a bad state in which many burst
  errors occur within a small time interval.

  Developers of network protocols and mobility algorithms must
  experiment with realistic channel parameters.  It is highly desirable
  that the wireless network be modeled in a thoroughly reproducible
  fashion.  This would allow an algorithm and its variations to be
  evaluated in a controlled and repeatable way.  Yet the above
  discussion makes it clear that whether analytical models are used or
  even actual experimentation with the network itself, the results will
  be either inaccurate or unlikely to be reproducible.  A trace-based
  approach alleviates these problems.

3. Desirable Trace Format Properties

  In designing our trace format, we have been guided by three
  principles.  First, the format should be extensible.  Second, it
  should be self-describing.  Third, traces should be easy to manage.
  This section describes how each of these principles has affected our
  design.

  Although we have found several interesting uses for network traces,
  it is certain that more will evolve over time.  As the traces are
  used in new ways, it may be necessary to add new data to the trace
  format.  Rather than force the trace format to be redesigned, we have
  structured the format to be extensible.  There is a built-in
  mechanism to add to the kinds of data that can be recorded in network
  traces.

  This extensibility is of little use if the tool set needs to change
  as the trace format is extended.  Recognizing this, we have made the
  format -- particularly the extensible portions -- self-describing.
  Thus, old versions of tools can continue to work with extended
  traces, if perhaps in a less than optimal way.

  In our experience with other tracing systems, management of trace
  files is often difficult at best.  Common problems include the need
  to manage multiple trace files as a unit, not easily being able to
  extract the salient features of large trace files, and having to use
  dedicated trace management tools to perform even the simplest tasks.
  To help cope with file management, we have designed the the traces to
  be split or merged easily.  To reduce dependence on specialized
  tools, we've chosen to store some descriptive information as ASCII
  strings, allowing minimal access to the standard UNIX tool suite.



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4. Trace Format

  This section describes the format for network traces.  We begin by
  presenting the basic abstractions that are key to the trace format:
  the record, and the track, a collection of related records.  We then
  describe the records at the beginning and end of a trace, the header
  and footer.  The bulk of the section describes the three kinds of
  record tracks:  packet, device, and general.  These also make up the
  bulk of the actual trace.  We conclude the section with a discussion
  of two special purpose records:  the annotation and the trace data
  loss records.

4.1. Basic Abstractions

4.1.1. Records

  A record is the smallest unit of trace data.  There are several
  different types of records, each of which is discussed in Sections
  4.2 through 4.7.  All of the records share several features in
  common; these features are described here.

  Records are composed of fields, which are stored in network order.
  Most of the fields in our records are word-sized.  Although this may
  be wasteful in space, we chose to leave room to grow and keep trace
  management simple.

  The first field in each record is a magic word, a random 32 bit
  pattern that both identifies the record's type and lends some
  confidence that the record is well formed.  Many record types have
  both required and optional fields; thus they can be of variable size.
  We place every record's size in its second field.  By comparing the
  size of a record to the known constraints for the record's type, we
  can gain further confidence that a record is well-formed.  This basic
  record structure is illustrated in Figure 1.

  All records also contain a two-word timestamp.  This timestamp can
  take one of two formats:  timeval or timespec.  Only one of the two
  formats is used in any given trace, and the format is specified at
  the start of a trace file.  The first word in either format is the
  number of seconds that have elapsed since midnight, January 1, 1970.
  The second word is the additional fractions of a second.  In the
  timeval format, these fractions are expressed in microseconds, in the
  same way that many current operating systems express time.  In the
  timespec format, these fractions are expressed in nanoseconds, the
  POSIX time standard.  We've chosen these two values since they are
  convenient, cover most current and anticipated systems' notions of
  time, and offer appropriate granularity for measuring network events.




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                         +------------------+
                         | Magic Number     |
                         | Size of Record   |
                         +------------------+
                         | Required Fields  |
                         |       ...        |
                         +------------------+
                         | Optional Fields  |
                         |       ...        |
                         +------------------+

                       Figure 1: Record format

4.1.2. Tracks

  Many of the record types have both fixed, required fields, as well as
  a set of optional fields.  It is these options that provide
  extensibility to our trace format.  However, to provide a self-
  describing trace, we need some compact way of determining which
  optional fields are present in a given record.  To do this, we group
  related sets of packets into tracks.  For example, a set of records
  that captured packet activity for a single protocol between two
  machines might be put together into a track.  A track is a header
  followed by some number of related records; the header completely
  describes the format of the individual records.  Records from
  separate tracks can be interleaved with one another, so long as the
  header for each individual track appears before any of the track's
  records.  Figure 2 shows an example of how records from different
  tracks might be interleaved.

  Track headers describe their records' content through property lists.
  An entry in a property list is a two-element tuple consisting of a
  name and a value.  The name is a word which identifies the property
  defined by this entry.  Some of these properties are measured only
  once for a track, for example, the address of a one-hop router in a
  track recording packets from that router.  Others are measured once
  per record in that track, such as the signal strength of a device
  which changes over time.  The former, which we call header-only
  properties, have their most significant name bit set.  The value
  field of a header-only property holds the measured value of the
  property.  Otherwise, the value field holds the number of words used
  in each of the track's records.









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      +----------++----------++----------++----------++----------+
      | Track #1 || Track #1 || Track #2 || Track #1 || Track #2 |
      | Header   || Entry    || Header   || Entry    || Entry    |
      +----------++----------++----------++----------++----------+

                 Figure 2: Interleaved track records

  Those properties measured in each record in the track are grouped
  together in a value list at the end of each such record.  They appear
  in the same order that was specified in the track header's property
  list so that tools can properly attribute data.  Thus, even if a tool
  doesn't know what property a particular name represents, it can
  identify which parts of a trace record are measuring that property,
  and ignore them.





































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RFC 2041                 Mobile Network Tracing             October 1996


4.2. Trace Headers and Footers

  Trace files begin with a trace header, and end with a trace footer.
  The formats of these appear in Figure 3.  The header specifies
  whether this trace was collected on a single machine, or was merged
  from several other traces.  In the former case, the IP address and
  host name of the machine are recorded.  In the latter, the IP address
  is taken from the family of Class E address, which are invalid.  We
  use a family of invalid addresses so that even if we cannot identify
  a number of hosts participating in the trace we can still distinguish
  records from distinct hosts.

     #define TR_DATESZ   32
     #define TR_NAMESZ   64

     struct tr_header_t {
         u_int32_t        h_magic;
         u_int32_t        h_size;
         u_int32_t        h_time_fmt;         /* usec or nsec */
         struct tr_time_t h_ts;               /* starting time */
         char             h_date[TR_DATESZ];  /* Date collected */
         char             h_agent[TR_NAMESZ]; /* DNS name */
         u_int32_t        h_agent_ip;
         char             h_desc[0];          /* variable size */
     };

     struct tr_end_t {
         u_int32_t         e_magic;
         u_int32_t         e_size;
         struct tr_time_t  e_ts;        /* end time */
         char              e_date[32];  /* Date end written */
     };


              Figure 3: Trace header and footer records

  The trace header also specifies which time stamp format is used in
  the trace, and the time at which the trace begins.  There is a
  variable-length description that is a string meant to provide details
  of how the trace was collected.  The trace footer contains only the
  time at which the trace ended; it serves primarily as a marker to
  show the trace is complete.

  Unlike other kinds of records in the trace format, the header and
  footer records have several ASCII fields.  This is to allow standard
  utilities some access to the contents of the trace, without resorting
  to specialized tools.




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RFC 2041                 Mobile Network Tracing             October 1996


4.3. Packet Tracks

  Measuring packet activity is the main focus of the network tracing
  project.  Packet activity is recorded in tracks, with a packet header
  and a set of packet entries.  A single track is meant to capture the
  activity of a single protocol, traffic from a single router, or some
  other subset of the total traffic seen by a machine.  The required
  portions of packet headers and entries are presented in Figure 4.

  Packet track headers identify which host generated the trace records
  for that track, as well as the time at which the track began.  It
  records the device on which these packets are received or sent, and
  the protocol used to ship the packet; these allow interpretation of
  device-specific or protocol-specific options.  The header concludes
  with the property list for the track.

     struct tr_pkt_hdr_t {
         u_int32_t            ph_magic;
         u_int32_t            ph_size;
         u_int32_t            ph_defines;  /* magic number defined */
         struct tr_time_t     ph_ts;
         u_int32_t            ph_ip;       /* host generating stream */
         u_int32_t            ph_dev_type; /* device collected from */
         u_int32_t            ph_protocol; /* protocol */
         struct tr_prop_lst_t ph_plist[0]; /* variable size */
     };

     struct tr_pkt_ent_t {
         u_int32_t        pe_magic;
         u_int32_t        pe_size;
         struct tr_time_t pe_ts;
         u_int32_t        pe_psize;    /* packet size */
         u_int32_t        pe_vlist[0]; /* variable size */
     };


              Figure 4: Packet header and entry records

  A packet entry is generated for every traced packet.  It contains the
  size of the traced packet, the time at which the packet was sent or
  received, and the list of property measurements as specified in the
  track header.

  The options we have defined to date are in Table 1.  Several of these
  have played an important role in our early experiments.  ADDR_PEER
  identifies the senders of traffic during the experiment.  We can
  determine network performance using either PKT_SENTTIME for one-way
  traffic between two hosts with closely synchronized clocks, or round



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  trip ICMP ECHO traffic and the ICMP_PINGTIME option.  Tracking
  PKT_SEQUENCE numbers sheds light on both loss rates and patterns.
  Section 5 discusses how these measurements are used.

4.4. Device Tracks

  Our trace format records details of the devices which carry network
  traffic.  To date, we've found this most useful for correlating lost
  packets with various signal parameters provided by wireless devices.
  The required portions of device header and entry records appear in
  Figure 5, and are quite simple.  Device track headers identify the
  host generating the track's records, the time at which the
  observation starts, and the type of device that is being traced.
  Each entry contains the time of the observation, and the list of
  optional characteristics.

  +---------------+-----------------------------------------------+
  | ADDR_PEER     | Address of peer host                          |
  | ADDR_LINK     | Address of one-hop router                     |
  | BS_LOC_X      | One-hop router's X coordinate (header only)   |
  | BS_LOC_Y      | One-hop router's Y coordinate (header only)   |
  | PKT_SEQUENCE  | Sequence number of packet                     |
  | PKT_SENTTIME  | Time packet was sent                          |
  | PKT_HOPS      | Number of hops packet took                    |
  | SOCK_PORTS    | Sending and receiving ports                   |
  | IP_PROTO      | Protocol number of an IP packet               |
  | ICMP_PINGTIME | Roundtrip time of an ICMP ECHO/REPLY pair     |
  | ICMP_KIND     | Type and code of an ICMP packet               |
  | ICMP_ID       | The id field of an ICMP packet                |
  | PROTO_FLAGS   | Protocol-specific flags                       |
  | PROTO_ERRLIST | Protocol-specific status/error words          |
  +---------------+-----------------------------------------------+
         Table 1: Current optional fields for packet entries


















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RFC 2041                 Mobile Network Tracing             October 1996


     struct tr_dev_hdr_t {
         u_int32_t            dh_magic;
         u_int32_t            dh_size;
         u_int32_t            dh_defines;  /* Magic number defined */
         struct tr_time_t     dh_ts;
         u_int32_t            dh_ip;       /* host generating stream */
         u_int32_t            dh_dev_type; /* device described */
         struct tr_prop_lst_t dh_plist[0]; /* Variable size */
     };

     struct tr_dev_ent_t {
         u_int32_t        de_magic;
         u_int32_t        de_size;
         struct tr_time_t de_ts;
         u_int32_t        de_vlist[0]; /* Variable size */
     };


              Figure 5: Device header and entry records

  These optional characteristics, listed in Table 2, are mostly
  concerned with the signal parameters of the wireless interfaces we
  have available.  Interpreting these parameters is heavily device-
  dependent.  We give examples of how we've used device observations in
  Section 5.

 +-----------------+--------------------------------------------------+
 | DEV_ID          | Major and minor number of device (header only)   |
 | DEV_STATUS      | Device specific status registers                 |
 | WVLN_SIGTONOISE | Signal to noise ratio reported by WaveLAN        |
 | WVLN_SIGQUALITY | Signal quality reported by WaveLAN               |
 | WVLN_SILENCELVL | WaveLAN silence level                            |
 +-----------------+--------------------------------------------------+
         Table 2: Current optional fields for packet entries

4.5. Miscellaneous Tracks

  We use miscellaneous, or general, tracks to record things that don't
  fit clearly in either the packet or device model.  At the moment,
  physical location of a mobile host is the only attribute tracked in
  general trace records.  The required portion of the general header
  and entry records is shown in Figure 6, the two optional properties
  are in Table 3.  In addition to the property list, general headers
  have only the IP address of the host generating the record and the
  time at which observations began.  General entries have only a
  timestamp, and the optional fields.





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4.6. Annotations

  An experimenter may occasionally want to embed arbitrary descriptive
  text into a trace.  We include annotation records to provide for
  this.  Such records are not part of a track; they stand alone.  The
  structure of an annotation record is shown in Figure 7.  Annotations
  include the time at which the annotation was inserted in the trace,
  the host which inserted the annotation, and the variable-sized text
  of the annotation itself.

     struct tr_gen_hdr_t {
         u_int32_t            gh_magic;
         u_int32_t            gh_size;
         u_int32_t            gh_defines;
         struct tr_time_t     gh_ts;
         u_int32_t            gh_ip;
         struct tr_prop_lst_t gh_plist[0]; /* Variable size */
     };

     struct tr_gen_ent_t {
         u_int32_t        ge_magic;
         u_int32_t        ge_size;
         struct tr_time_t ge_ts;
         u_int32_t        ge_vlist[0]; /* Variable size */
     };

              Figure 6: General header and entry records


     +------------+--------------------------------------------+
     | MH_LOC_X   | Mobile host's X coordinate (map-relative)  |
     | MH_LOC_Y   | Mobile host's Y coordinate (map-relative)  |
     | MH_LOC_LAT | Mobile host's GPS latitude                 |
     | MH_LOC_LON | Mobile host's GPS longitude                |
     +------------+--------------------------------------------+
         Table 3: Current optional fields for general entries


     struct tr_annote_t {
         u_int32_t        a_magic;
         u_int32_t        a_size;
         struct tr_time_t a_ts;
         u_int32_t        a_ip;
         char             a_text[0]; /* variable size */
     };


                     Figure 7: Annotation records



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RFC 2041                 Mobile Network Tracing             October 1996


4.7. Lost Trace Data

  It is possible that, during collection, some trace records may be
  lost due to trace buffer overflow or other reasons.  Rather than
  throw such traces away, or worse, ignoring the lost data, we've
  included a loss record to count the types of other records which are
  lost in the course of trace collection.  Loss records are shown in
  Figure 8.

     struct tr_loss_t {
         u_int32_t        l_magic;
         u_int32_t        l_size;
         struct tr_time_t l_ts;
         u_int32_t        l_ip;
         u_int32_t        l_pkthdr;
         u_int32_t        l_pktent;
         u_int32_t        l_devhdr;
         u_int32_t        l_devent;
         u_int32_t        l_annote;
     };

                        Figure 8: Loss records

5. Software Components

  In this section, we describe the set of tools that have been built to
  date for mobile network tracing.  We believe many of these tools are
  widely applicable to network tracing tasks, but some have particular
  application to mobile network tracing.  We begin with an overview of
  the tools, their applicability, and the platforms on which they are
  currently supported, as well as those they are being ported to.  This
  information is summarized in Table 4.

  We have made every effort to minimize dependencies of our software on
  anything other than protocol and device specifications.  As a result,
  we expect ports to other BSD-derived systems to be straightforward;
  ports to other UNIX systems may be more complicated, but feasible.

  There are three categories into which our tracing tools can be
  placed:  trace collection, trace modulation, and trace analysis.
  Trace collection tools are used for generating new traces.  They
  record information about the general networking facilities, as well
  as data specific to mobile situations:  mobile host location, base
  station location, and wireless device characteristics.  These tools
  are currently supported on BSDI, and are being ported to NetBSD. We
  describe these tools in Section 5.1.





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RFC 2041                 Mobile Network Tracing             October 1996


  Trace modulation tools emulate the performance of a traced wireless
  network on a private wired network.  The trace modulation tools,
  discussed in Section 5.2, are currently supported on NetBSD
  platforms.  They are geared toward replaying low speed/quality
  networks on faster and more reliable ones, and are thus most
  applicable to reproducing mobile environments.

  In Section 5.3, we conclude with a set of trace processing and
  analysis tools, which are currently supported on both NetBSD and BSDI
  platforms.  Our analyses to date have focused on properties of
  wireless networks, and are most directly applicable to mobile traces.
  The processing tools, however, are of general utility.

                 +--------------+--------------+--------------+
                 | Collection   | Modulation   | Analysis     |
     +-----------+--------------+--------------+--------------+
     | NetBSD    | In Progress  | Supported    | Supported    |
     | BSDI      | Supported    | Planned      | Supported    |
     +-----------+--------------+--------------+--------------+
This table summarizes the currently supported platforms for the tracing
tool suites, and the platforms to which ports are underway.

                      Table 4: Tool Availability

5.1. Trace Collection Tools

  The network trace collection facility comprises two key components:
  the trace agent and the trace collector.  They are shown in Figure 9.

  The trace agent resides in the kernel where it can obtain data that
  is either expensive to obtain or inaccessible from the user level.
  The agent collects and buffers data in kernel memory; the user-level
  trace collector periodically extracts data from this kernel buffer
  and writes it to disk.  The buffer amortizes the fixed costs of data
  transfer across a large number of records, minimizing the impact of
  data transfer on system performance.  The trace collector retrieves
  data through a pseudo-device, ensuring that only a single -- and
  therefore complete -- trace file is being generated from a single
  experiment.  To provide simplicity and efficiency, the collector does
  not interpret extracted data; it is instead processed off-line by the
  post-processing and analysis tools described in Sections 5.2 and 5.3.

  There are three sorts of data collected by the tracing tools: network
  traffic, network device characteristics, and mobile host location.
  The first two are collected in much the same way; we describe the
  methodology in Section 5.1.1.  The last is collected in two novel
  ways.  These collection methods are addressed in Section 5.1.2.




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RFC 2041                 Mobile Network Tracing             October 1996


                                    +-----------+  write to disk
                                    | Trace     | ==============>
                                    | Collector |
                                    +-----------+
                                            A
    ========================================|===== kernel boundary
    +-----------------+                     |
    | Transport Layer |                     |
    |-----------------|             +------------------+
    |  Network Layer  |------------>| Trace   +------+ |
    |-----------------|             | Agent   |buffer| |
    |  NI |  NI |  NI |------------>|         +------+ |
    +-----------------+             +------------------+
This figure illustrates the components of trace collection.  The NI's
                       are network interfaces.

               Figure 9: Components of trace collection

5.1.1. Traffic and Device Collection

  The trace agent exports a set of function calls for traffic and
  device data collection.  Traffic data is collected on a per-packet
  basis.  This is done via a function called from device drivers with
  the packet and a device identifier as arguments.  For each packet,
  the trace record contains the source and destination address options.
  Since our trace format assembles related packets into tracks, common
  information, such as the destination address, is recorded in the
  track header to reduce the record size for each packet entry.  We
  also record the size of each packet.

  Information beyond packet size and address information is typically
  protocol-dependent.  For transport protocols such as UDP and TCP, for
  example, we record the source and destination port numbers; TCP
  packet records also contain the sequence number.  For ICMP packets,
  we record their type, code and additional type-dependent data.  As
  explained in Section 5.2.3, we record the identifier, sequence number
  and time stamp for ICMP ECHOREPLY packets.

  Before appending the record to the trace buffer, we check to see if
  it is the first record in a track.  If so, we create a new packet
  track header, and write it to the buffer prior the packet entry.

  Our trace collection facility provides similar mechanisms to record
  device-specific data such as signal quality, signal level, and noise
  level.  Hooks to these facilities can be easily added to the device
  drivers to invoke these tracing mechanisms.  The extensible and
  self-describing features of our trace format allow us to capture a
  wide variety of data specific to particular network interfaces.



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RFC 2041                 Mobile Network Tracing             October 1996


  For wireless network devices, we record several signal quality
  measurements that the interfaces provide.  Although some interfaces,
  such as NCR's WaveLAN, can supply this of information for every
  packet received, most devices average their measurements over a
  longer period of time.  As a result, we only trace these measurements
  periodically.  It is up to the device drivers to determine the
  frequency at which data is reported to the trace agent.

  When devices support it, we also trace status and error events.  The
  types of errors, such as CRC or buffer overflow, allow us to
  determine causes for some observed packet losses.  For example, we
  can attribute loss to either the wireless channel or the network
  interface.

5.1.2. Location Tracing

  At first thought, recording the position of a mobile host seems
  straightforward.  It can be approximated by recording the base
  station (BS) with which the mobile host is communicating.  However,
  due to the large coverage area provided by most radio interfaces,
  this information provides a loose approximation at best.  In
  commercial deployments, we may not be able to reliably record the
  base station with which a mobile host communicates.  This section
  outlines our collection strategy for location information in both
  outdoor and indoor environments.

  The solution that we have considered for wide-area, outdoor
  environments makes use of the Global Positioning System (GPS). The
  longitude and latitude information provided by the GPS device is
  recorded in a general track.

  Indoor environments require a different approach because the
  satellite signals cannot reach a GPS device inside a building.  We
  considered deploying an infrared network similar to the Active Badge
  [14] or the ParcTab [12]; however, this significant addition to the
  wireless infrastructure is not an option for most research groups.

  As an alternative, we have developed a graphical tool that displays
  the image of a building map and expects the user to "click" their
  location as they move; the coordinates on the map are recorded in one
  or more general tracks.  The header of such tracks can also record
  the coordinates of the base stations if they are known.

  An extension can be easily added to this tool to permit multiple
  maps.  As the user requests that a new map be loaded into the
  graphical tracing tool, a new location track is created along with an
  annotation record that captures the file name of that image.
  Locations of new base stations can be recorded in this new track



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RFC 2041                 Mobile Network Tracing             October 1996


  header.  Each location track should represent a different physical
  and wireless environment.

5.2. Trace Modulation Tools

  A key tool we have built around our trace format is PaM, the Packet
  Modulator.  The idea behind PaM is to take traces that were collected
  by a mobile host and distill them into modulation traces.  These
  modulation traces capture the networking environment seen by the
  traced host, and are used by a PaM kernel to delay, drop, or corrupt
  incoming and outgoing packets.  With PaM, we've built a testbed that
  can repeatably, reliably mimic live systems under certain mobile
  scenarios.

  There are three main components to PaM. First, we've built a kernel
  capable of delaying, dropping, and corrupting packets to match the
  characteristics of some observed network.  Second, we've defined a
  modulation trace format to describe how such a kernel should modulate
  packets.  Third, we've built a tool to generate modulation traces
  from certain classes of raw traces collected by mobile hosts.

5.2.1. Packet Modulation

  The PaM modulation tool has been placed in the kernel between the IP
  layer and the underlying interfaces.  The tool intercepts incoming
  and outgoing packets, and may choose to drop it, corrupt it, or delay
  it.  Dropping an incoming or outgoing packet is easy, simply don't
  forward it along.  Similarly, we can corrupt a packet by flipping
  some bits in the packet before forwarding it.

  Correctly delaying a packet is slightly more complicated.  We model
  the delay a packet experiences as the time it takes the sender to put
  the packet onto the network interface plus the time it takes for the
  last byte to propagate to the receiver.  The former, the transmission
  time, is the size of the packet divided by the available bandwidth;
  the latter is latency.

  Our approach at delay modulation is simple -- we assume that the
  actual network over which packets travel is much faster and of better
  quality than the one we are trying to emulate, and can thus ignore
  it.  We delay the packet according to our latency and bandwidth
  targets, and then decide whether to drop or corrupt it.  We take care
  to ensure that packet modulation does not unduly penalize other
  system activity, using the internal system clock to schedule packets.
  Since this clock is at a large granularity compared to delay
  resolution, we try to keep the average error in scheduling to a
  minimum, rather than scheduling each packet at exactly the right
  time.



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5.2.2. Modulation Traces

  To tell the PaM kernel how the modulation parameters change over
  time, we provide it with a series of modulation-trace entries.  Each
  of these entries sets loss and corruption percentages, as well as
  network latency and inter-byte time, which is 1/bandwidth.  These
  entries are stored in a trace file, the format of which is much
  simpler than record-format traces, and is designed for efficiency in
  playback.  The format of modulation traces is shown in Figure 10.

     struct tr_rep_hdr_t {
         u_int32_t        rh_magic;
         u_int32_t        rh_size;
         u_int32_t        rh_time_fmt;         /* nsec or used */
         struct tr_time_t rh_ts;
         char             rh_date[TR_DATESZ];
         char             rh_agent[TR_NAMESZ];
         u_int32_t        rh_ip;
         u_int32_t        rh_ibt_ticks;        /* units/sec, ibt */
         u_int32_t        rh_lat_ticks;        /* units/sec, lat */
         u_int32_t        rh_loss_max;         /* max loss rate */
         u_int32_t        rh_crpt_max;         /* max corrupt rate */
         char             rh_desc[0];          /* variable size */
     };

     struct tr_rep_ent_t {
         u_int32_t         re_magic;
         struct tr_time_t  re_dur;          /* duration of entry */
         u_int32_t         re_lat;          /* latency */
         u_int32_t         re_ibt;          /* inter-byte time */
         u_int32_t         re_loss;         /* loss rate */
         u_int32_t         re_crpt;         /* corrupt rate */
     };


                  Figure 10: Modulation trace format

  Modulation traces begin with a header that is much like that found in
  record-format trace headers.  Modulation headers additionally carry
  the units in which latency and inter-byte time are expressed, and the
  maximum values for loss and corruption rates.  Individual entries
  contain the length of time for which the entry applies as well as the
  latency, inter-byte time, loss rate, and corruption rate.








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RFC 2041                 Mobile Network Tracing             October 1996


5.2.3. Trace Transformation

  How can we generate these descriptive modulation traces from the
  recorded observational traces described in Section 4?  To ensure a
  high-quality modulation trace, we limit ourselves to a very narrow
  set of source traces.  As our experience with modulation traces is
  limited, we use a simple but tunable algorithm to generate them.

  Our basic strategy for determining latency and bandwidth is tied
  closely to our model of packet delays:  delay is equal to
  transmission time plus latency.  We further assume that packets which
  traversed the network near one another in time experienced the same
  latency and bandwidth during transit.  Given this, we look for two
  packets of different size that were sent close to one another along
  the same path; from the transit times and sizes of these packets, we
  can determine the near-instantaneous bandwidth and latency of the
  end-to-end path covered by those packets.  If traced packet traffic
  contains sequence numbers, loss rates are fairly easy to calculate.
  Likewise, if the protocol is capable of marking corrupt packets,
  corruption information can be stored and then extracted from recorded
  traces.

  Using timestamped packet observations to derive network latency and
  bandwidth requires very accurate timing.  Unfortunately, the laptops
  we have on hand have clocks that drift non-negligibly.  We have
  chosen not to use protocols such as NTP [9] for two reasons.  First,
  they produce network traffic above and beyond that in the known
  traced workload.  Second, and perhaps more importantly, they can
  cause the clock to speed up or slow down during adjustment.  Such
  clock movements can play havoc with careful measurement.

  As a result, we can only depend on the timestamps of a single machine
  to determine packet transit times.  So, we use the ICMP ECHO service
  to provide workloads on traced machines; the ECHO request is
  timestamped on it's way out, and the corresponding ECHOREPLY is
  traced.  We have modified the ping program to alternate between small
  and large packets.  Traces that capture such altered ping traffic can
  then be subject to our transformation tool.

  The tool itself uses a simple sliding window scheme to generate
  modulation entries.  For each window position in the recorded trace,
  we determine the loss rate, and the average latency and bandwidth
  experienced by pairs of ICMP ECHO packets.  The size and granularity
  of the sliding window are parameters of the transformation; as we
  gain experience both in analysis and modulation of wireless traces,
  we expect to be able to recommend good window sizes.





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RFC 2041                 Mobile Network Tracing             October 1996


  Unfortunately, our wireless devices do not report corrupt packets;
  they are dropped by the hardware without operating system
  notification.  However, our modulation system will also coerce any
  such corruptions to an increased loss rate, duplicating the behavior
  in the original network.

5.3. Trace Analysis Tools

  A trace is only as useful as its processing tools.  The requirements
  for such tools tools include robustness, flexibility, and
  portability.  Having an extensible trace format places additional
  emphasis on the ability to work with future versions.  To this end,
  we provide a general processing library as a framework for users to
  easily develop customized processing tools; this library is designed
  to provide both high portability and good performance.

  In this section, we first present the trace library.  We then
  describe a set of tools for simple post-processing and preparing the
  trace for further analyses.  We conclude with a brief description of
  our analysis tools that are applied to this minimally processed data.

5.3.1. Trace Library

  The trace library provides an interface that applications can use to
  simplify interaction with network traces, including functions to
  read, write, and print trace records.  The trace reading and writing
  functions manage byte swapping as well as optional integrity checking
  of the trace as it is read or written.  The library employs a
  buffering strategy that is optimized to trace I/O. Trace printing
  facilities are provided for both debugging and parsing purposes.

5.3.2. Processing Tools

  The processing tools are generally the simplest set of tools we have
  built around the trace format.  By far the most complicated one is
  the modulation-trace transformation tool described in Section 5.2.3;
  the remainder are quite simple in comparison.  The first such tool is
  a parser that prints the content of an entire trace.  With the trace
  library, it is less than a single page of C code.  For each record,
  it prints the known data fields along with their textual names,
  followed by all the optional properties and values.

  Since many analysis tasks tend to work with records of the same type,
  an enhanced version of the parser can split the trace data by tracks
  into many files, one per track.  Each line of the output text files
  contains a time stamp followed by the integer values of all the
  optional data in a track entry; in this form traces are amenable to
  further analysis be scripts written in an interpreted language such



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RFC 2041                 Mobile Network Tracing             October 1996


  as perl.

  We have developed a small suite of tools providing simple functions
  such as listing all the track headers and changing the trace
  description as they have been needed.  With the trace library, each
  such tool is trivial to construct.

5.3.3. Analysis Tools

  Analysis tools depend greatly on the kind of information an
  experimenter wants to extract from the trace; our tools show our own
  biases in experimentation.  Most analyses derive common statistical
  descriptions of traces, or establish some correlation between the
  trace data sets.

  As early users of the trace format and collection tools, we have
  developed a few analysis tools to study the behavior of the wireless
  networks at our disposal.  We have been particularly interested in
  loss characteristics of wireless channels and their relation to
  signal quality and the position of the mobile host.  In this section,
  we briefly present some of these tools to hint at the kind of
  experimentation possible with our trace format.

  Loss characteristics are among the most interesting aspects of
  wireless networks, and certainly among the least well understood.  To
  shed light on this area, we have created tools to extract the loss
  information from collected traces; in addition to calculating the
  standard parameters such as the packet loss rate, the tool also
  derives transitional probabilities for a two-state error model.

  This has proven to be a simple yet powerful model for capturing the
  burstiness observed in wireless loss rates due to fading signals.  To
  help visualize the channel behavior in the presence of mobility, our
  tool can replay the movement of the mobile host while plotting the
  loss rate as it changes with time.  It also allows us to zoom in the
  locations along the path and obtain detailed statistics over
  arbitrary time intervals.

  Our traces can be further analyzed to understand the relationship
  between channel behavior and the signal quality.  For wireless
  devices like the NCR WaveLAN, we can easily obtain measurements of
  signal quality, signal strength, and noise level.  We have developed
  a simple statistical tool to test the correlation between measured
  signal and the loss characteristics.  Variations of this test are
  also possible using different combinations of the three signal
  measurements and the movement of the host.





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RFC 2041                 Mobile Network Tracing             October 1996


  The question of just how mobile such mobile hosts are can also be
  investigated through our traces.  Position data are provided by
  traces that either involved GPS or user-supplied positions with our
  trace collection tools.  This data is valuable for comparing and
  validating various mobility prediction algorithms.  Given adequate
  network infrastructure and good signal measurements, we can determine
  the mobile location within a region that is significantly smaller
  than the cell size.  We are developing a tool to combine position
  information and signal measurement from many traces to identify the
  "signal quality" signature for different regions inside a building.
  Once this signature database is completed and validated, it can be
  used to generate position information for other traces that contain
  only the signal quality information.

6. Related Work

  The previous work most relevant to mobile network tracing falls into
  two camps.  The first, chiefly exemplified by tcpdump [7] and the BSD
  Packet Filter, or BPF [8], collect network traffic data.  The second,
  notably Delayline [6], and the later Probe/Fault Injection Tool [4],
  and the University of Lancaster's netowrk emulator [3], provide
  network modulation similar to PaM.

  There are many systems that record network packet traffic; the de
  facto standard is tcpdump, which works in concert with a packet
  filter such as BPF. The packet filter is given a small piece of code
  that describes packets of interest, and the first several bytes of
  each packet found to be interesting is copied to a buffer for tcpdump
  to consume.  This architecture is efficient, flexible, and has
  rightly found great favor with the networking community.

  However, tcpdump cpatures only traffic data.  It records neither
  information concerning mobile networking devices nor mobile host
  location.  Rather than adding seperate software components to a host
  running tcpdump to capture this additional data, we have chosen to
  follow an integrative approach to ease trace file administration.  We
  have kept the lessons of tcpdump and BPF to heart; namely copying
  only the information necessary, and transferring data up to user
  level in batches.  It may well pay to investigate either
  incorporating device and location information directly into BPF, or
  taking the flexible filtering mechanism of BPF and including it in
  our trace collection software.  For the moment, we do not know
  exactly what data we will need to explore the properties of mobile
  networks, and therefore do not exclude any data.

  There are three notable systems that provide packet modulation
  similar to PaM. The earliest such work is Delayline, a system
  designed to emulate wide-area networks atop local-area ones; a goal



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RFC 2041                 Mobile Network Tracing             October 1996


  similar to PaM's.  The most striking difference between Delayline and
  PaM is that Delayline's emulation takes place entirely at the user-
  level, and requires applications to be recompiled against a library
  emulating the BSD socket system and library calls.  While this is a
  portable approach that works well in the absence of kernel-level
  source access, it has the disadvantage that not all network traffic
  passes through the emulation layer; such traffic may have a profound
  impact on the performance of the final system.  Delayline also
  differs from PaM in that the emulated network uses a single set of
  parameters for each emulated connection; performance remains fairly
  constant, and cannot change much over time.

  The Lancaster network emulator was designed explicitly to model
  mobile networks.  Rather than providing per-host modulation, it uses
  a single, central server through which all network traffic from
  instrumented applications passes.  While this system also does not
  capture all traffic into and out of a particular host, it does allow
  modulation based on multiple hosts sharing a single emulated medium.
  There is a mechanism to change the parameters of emulation between
  hosts, though it is fairly cumbersome.  The system uses a
  configuration file that can be changed and re-read while the system
  is running.

  The system closest in spirit to PaM is the Probe/Fault Injection
  Tool.  This system's design philosophy allows an arbitrary protocol
  layer -- including device drivers -- to be encapsulated by a layer
  below to modulate existing traffic, and a layer above to generate
  test traffic.  The parameters of modulation are provided by a script
  in an interpreted language, presently Tcl, providing considerable
  flexibility.  However, there is no mechanism to synthesize such
  scripts -- they must be explicitly designed.  Furthermore, the use of
  an interpreted language such as Tcl limits the use of PFI to user-
  level implementations of network drivers, and may have performance
  implications.

7. Future Work

  This work is very much in its infancy; we have only begun to explore
  the possible uses for mobile network traces.  We have uncovered
  several areas of further work.

  The trace format as it stands is very IP-centric.  While one could
  imagine using unknown IP addresses for non-IP hosts, while using
  header-only properties to encode other addressing schemes, this is
  cumbersome at best.  We are looking into ways to more conveniently
  encode other addressing schemes, but are content to focus on IP
  networks for the moment.




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RFC 2041                 Mobile Network Tracing             October 1996


  Two obvious questions concerning wireless media are the following.
  How does a group of machines perform when sharing the same bandwidth?
  How asymmetric is the performance of real-world wireless channels?
  While we do have tools for merging traces taken from multiple hosts
  into a single trace file, we've not yet begun to examine such
  multiple-host scenarios in depth.  We are also looking into
  instrumenting wireless base stations as well as end-point hosts.

  Much of our planned work involves the PaM testbed.  First and
  foremost, many wireless channels are known to be asymmetric;
  splitting the replay trace into incoming and outgoing modulation
  entries is of paramount importance.  We would like to extend PaM to
  handle multiple emulated interfaces as well as applying different
  modulation parameters to packets from or to different destinations.
  One could also imagine tracing performance from several different
  networking environments, and switching between such environments
  under application control.  For example, consider a set of traces
  showing radio performance at various altitudes; an airplane simulator
  in a dive would switch from high-altitude modulation traces to low-
  altitude ones.

  Finally, we are anxious to begin exploring the properties of real-
  world mobile networks, and subjecting our own mobile system designs
  to PaM to see how they perform.  We hope others can make use of our
  tools to do the same.

Acknowledgements

  The authors wish to thank Dave Johnson, who provided early pointers
  to related work and helped us immeasurably in RFC formatting.  We
  also wish to thank those who offered comments on early drafts of the
  document:  Mike Davis, Barbara Denny, Mark Lewis, and Hui Zhang.
  Finally, we would like to thank Bruce Maggs and Chris Hobbs, our
  first customers!

  This research was supported by the Air Force Materiel Command (AFMC)
  and ARPA under contract numbers F196828-93-C-0193 and DAAB07-95-C-
  D154, and the State of California MICRO Program.  Additional support
  was provided by AT&T, Hughes Aircraft, IBM Corp., Intel Corp., and
  Metricom.  The views and conclusions contained here are those of the
  authors and should not be interpreted as necessarily representing the
  official policies or endorsements, either express or implied, of
  AFMC, ARPA, AT&T, Hughes, IBM, Intel, Metricom, Carnegie Mellon
  University, the University of California, the State of California, or
  the U.S. Government.






Noble, et. al.               Informational                     [Page 24]

RFC 2041                 Mobile Network Tracing             October 1996


Security Considerations

  This RFC raises no security considerations.

Authors' Addresses

  Questions about this document can be directed to the authors:

  Brian D. Noble
  Computer Science Department
  Carnegie Mellon University
  5000 Forbes Avenue
  Pittsburgh, PA  15213-3891

  Phone:  +1-412-268-7399
  Fax:    +1-412-268-5576
  EMail: [email protected]


  Giao T. Nguyen
  Room 473 Soda Hall #1776 (Research Office)
  University of California, Berkeley
  Berkeley, CA  94720-1776

  Phone:  +1-510-642-8919
  Fax:    +1-510-642-5775
  EMail: [email protected]


  Mahadev Satyanarayanan
  Computer Science Department
  Carnegie Mellon University
  5000 Forbes Avenue
  Pittsburgh, PA  15213-3891

  Phone:  +1-412-268-3743
  Fax:    +1-412-268-5576
  EMail: [email protected]


  Randy H. Katz
  Room 231 Soda Hall #1770 (Administrative Office)
  University of California, Berkeley
  Berkeley, CA  94720-1770

  Phone:  +1-510-642-0253
  Fax:    +1-510-642-2845
  EMail: [email protected]



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RFC 2041                 Mobile Network Tracing             October 1996


References

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