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Scalable Tracking & Querying for Wireless Sensor Networks

This research focuses on developing scalable and fault-tolerant algorithms for tracking and querying in wireless sensor networks, with applications in surveillance, monitoring, and automation.

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Scalable Tracking & Querying for Wireless Sensor Networks

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  1. Scalable Tracking & Querying for Wireless Sensor Networks Murat Demirbas SUNY Buffalo CSE Dept.

  2. Sensor networks A sensor node (mote) • 4Mhz processor, 128K flash memory • magnetism, light, heat, sound, and vibration sensors • wireless communication up to 100m • costs “in bulk” ~$5 (now $80~$150) Applications include • ecology monitoring, precision agriculture, civil engineering • traffic monitoring, industrial automation, military and surveillance In OSU, we developed a surveillance service for DARPA-NEST • classify trespassers as car, soldier, civilian • LiteS: 100 nodes in 2003, ExScal: 1000 nodes in Dec 2004 A. Arora, et al. A Line in the Sand: A Wireless Sensor Network for Target Detection, Classification, and Tracking.Computer Networks (Elsevier), 2004.

  3. Desiderata for sensor networks • Scalability : Large-scale deployment: 10K nodes Communication-efficient (local) distributed programs are needed • Fault-tolerance : Message corruptions, nodes fail in complex ways Self-healing programs are needed

  4. Overview of my research • Distributed & local WSN algorithms • Tracking: local and fault-locally healing • Querying: local and lightweight routing • Spatial clustering, etc. • Reliable communication in WSN • Consensus in WSN: Dependable applications • Reliable broadcast at MAC layer: Solving hidden terminal problem • Reliable transactions for WSN: A programming framework for concurrency-safe real-time control applications • Specification-based design of self-healing • Scalability wrt code size: dependability preserving refinement of code

  5. Tracking in WSN

  6. Tracking problem • Evader strategy is unknown • Pursuer can only talk to nearby sensor nodes, pursuer moves faster than evader • Design a program for sensor nodes to enable the pursuer to catch the evader (despite the occurrence of faults) Applications: battlefield scenarios, border patrol, personnel tracking, routing messages to mobile processes M. Demirbas, A. Arora, and M. Gouda. Pursuer-Evader Tracking in Sensor Networks. Sensor Network Operations, 2005.

  7. Evader-centric program Tracking involves two operations • Move: update the tracking structure after evader relocates • Find: direct pursuer to reach evader using the tracking structure Evader Pursuer

  8. STALK: Scalable tracking • Maintain tracking structure • over fewer number of nodes • with accuracy inversely proportional to the distance from evader • communication cost of msgj,k= distance(j,k), delay= δ*distance(j,k) • nearby nodes (cheap to update) have recent & accurate info • distant nodes (expensive to update) have stale & rough info • Local operations : • Cost of move proportional to the distance the evader moves • Cost of find proportional to the distance from the evader • Cost of healing proportional to the size of the initial perturbation • To this end we employ a hierarchical partitioning of the network M. Demirbas, A. Arora, T. Nolte, and N. Lynch. A Hierarchy-based Fault-local Stabilizing Algorithm for Tracking in Sensor Networks. OPODIS, 2004.

  9. Hierarchical clustering R: dilation factor of clustering to determine size at higher levels Radius at level L is ≈ RL M. Demirbas, A. Arora, V. Mittal, and V. Kulathumani. Design and Analysis of a Fast Local Clustering Service for Wireless Sensor Networks. IEEE Trans. Par.&Dist.Sys. 2006.

  10. Hierarchical tracking path evader evader evader • Grow action for building a tracking path • Shrink action for cleaning unrooted paths

  11. Local find • Searching phase: • A find operation at j queries j’s neighbors & j’s clusterhead at increasingly higher levels to find the tracking path • Tracing phase: • Once path is found, operation follows the path to its root

  12. Examples of find A find for an evader d away incurs O(d) work/time cost • guaranteed to hit the tracking path at level logRd of hierarchy evader find find find

  13. A problem for move evader dithering between cluster boundaries may lead to nonlocal updates evader evader evader

  14. Local move • Laterallinks to avoid nonlocal updates • When evader moves to new location j: • a new path is started from j • the new path checks neighbors at each level to see whether insertion of a lateral link is possible • Restricts lateral links to 1 per level in order not to deteriorate the tracking path • otherwise find would not be local since it could not hit the path at level logRd for an evader d away

  15. Examples of move A move to distance d away incurs O(d*logRd) work/time cost • a level L pointer is updated at every iL-1Ridistance; level L is updated d/iL-1Ritimes • update at L incurs O(RL) cost evader evader evader evader evader evader evader

  16. Local healing means work/time for recovery proportional to perturbation size & not the network size In the presence of faults a grow can be mistakenly initiated; shrink should contain grow a shrink can be mistakenly initiated; grow should contain shrink Local healing

  17. Fault-containment • Give more priority to the action that has more recent info regarding the validity of the path • A shrink or grow action is delayed for longer periods as the level of the node executing the action gets higher • j.grow-timer = g * R lvl(j) • j.shrink-timer = s * R lvl(j) • Catching occurs within a constant number of levels • For g=5δ, s=11δ, b=11δR • grow catches shrink in 2 levels: logR ((bR–b+sR2–gR-δR)/(sR-gR-3δ)) • shrink catches grow in 4 levels: logR ((bR–b+sR+gR-2s+3δR)/(gR-s-δ))

  18. Seamless tracking • Fault-containment does not affect responsiveness • Total delaying up to l is a constant factor of communication delay up to l, δR l • Concurrent move operations • move occurs before tracking path is updated • a complete path is no longer possible; discontinuity in the path • give a bound on evader speed to maintain a reachable path • Concurrent find operations • when find reaches a dead-end, search phase is re-executed • reachability condition guarantees that new path is nearby • Cost of find & move unaffected find

  19. Querying in WSN

  20. Querying • A.k.a “information brokerage”, or “data-centric routing” • Static event (rather than dynamic event in tracking) • Two operations: • Publish: invoked by the nodes that detect an event • Aims to inform any potential nodes interested in the event • Query: invoked by any node in the network • aims to inform the querying node about a matching event and construct a path from the querying node to the event • Centralized solutions are not acceptable due to high communication cost • Locality (distance-sensitivity) should be maintained

  21. Glance • Distance-sensitive (local) and tunable • ensures that a query operation invoked within d hops of an event intercepts the event’s publish information within d*s hops • s is a “stretch-factor” tunable by the user • Easily implemented without localization or hier.-clustering • Lightweight, applicable to a wider range of WSN • Unifies both modes of operation in WSN monitoring app. • Centralized logging & monitoring • In-network querying (location-dependent querying) M. Demirbas, A. Arora, and V. Kulathumani. Glance: A Lightweight Querying Service for Wireless Sensor Networks. In submis. 2006.

  22. Model • Multihop dense WSN • Cost of communication over d hops is O(d) • Geometric network • triangle inequality is satisfied • Distinguished basestation C • de : dist(e,C), e denotes an event • dq : dist(q,C), q denotes a querying node • d : dist(e,q) • z : angle eCq

  23. Case1: z’> threshold angle dq’ is relatively small compared to d’ dq’ < d’*s OK for q’ to learn about e from C Case2: z’’< threshold angle dq’’ is relatively large compared to d’’ dq’’ > d’’*s NOT-OK for q’’ to learn about e from C Two cases q’ dq’ C z’ d’ z’’ de dq’’ e d’’ q’’

  24. The publish operation advertises the event on a cone boundary for some distance. Then goes straight to C. The query operation goes straight to C. q’ C z’ z’’ e q’’ Outline of the solution

  25. For s=1, take successively larger circles centered at e and C and intersect them. A2 is the region where stretch-factor is readily satisfied. For a querying node in A1 stretch-factor may be violated, publish should do local advertisement to ensure stretch-factor. A1 A2 e C Areas where s is satisfied

  26. For s=2, similarly, we let a circle with radius r centered at e intersect with a circle with radius s*r centered at C Stretch-factor is readily satisfied for A2, A3, and A4. For A1, s may be violated. A1 is a bounded area, since all the circles centered at e are subsumed by circles with radius 2*r centered at C, for r>de From HCe right-triangle, z is calculated as arcsin(1/s)=arcsin(0.5)=30 A3 H A4 2d A1 d A2 30 C e Areas where s is satisfied

  27. The angle for the cone is taken as z. The event is advertised on the cone boundary for some distance. These account for any querying node in A1. The lateral advertisements inside the cone are to account for the querying nodes in area A1 that also fall within the cone boundaries. Local advertisement A3 H A4 2d A1 d d d A2 30 C e

  28. |QK| < s|QE| |QL|+|LE|cot(x+x’)<s|QE| |QE|cos(w)+|QE|sin(w)cot(x+x’)<s|QE| sin(x)cos(w)+sin(x)sin(w)cot(x+x’)<1 sin(x+w+x’)<sin(x+x’)/sin(x) True (for x+x’<90 and x+x’<180) Q w L K x+x’ x C x x’ E Proof x=arcsin(1/s) sin(x)=1/s

  29. Avoiding the need for localization • Glance requires only an approximation for the direction to C • After deployment, C starts a one-time flood that annotates each node with its hopcount from C and creates a spanning tree rooted at C • To send the query or publish as a straight line, nodes route the message to the parent node along a branch in this tree. • Cone boundary is approximated by occasional lateral advertisement

  30. Spanning tree construction • Flooding protocols result in a large number of anomalous situations • Stragglers • Backward links • Highly clustered nodes • These are due to collisions, nondeterministic non-isotropic nature of radio broadcasts, and earliest-first parent selection in the tree

  31. Optimized spanning tree • Snooping to deal with stragglers/backward links • Reactive repairing • When a node with hopcount x hears a message with hopcount x+2, it detects a straggler, to correct it decides randomly to rebroadcast • Randomized adoption to deal with highly-clustered nodes • A node with hopcount x may randomly select a node with hopcount x-1 as new parent

  32. Query costs • Scalability of average # of hops for query operation is very good for Glance • ideally query hops depends only on the distance between query and events • however, since event and query locations are selected uniformly, for larger network the average distance between the two increases • Glance does not involve any lateral advertisement but it performs very well!

  33. Publish costs • The publish hops for Glance is equal to de, the cost of going to C, and is proportional to the depth of the MST constructed by C. • the depth of MST scales nicely wrt the network size.

  34. Stretch-factors • Stretch-factors are independent of the network size • Both Glance and GlanceP satisfy very low stretch-factors (less than 1.2) • The reason Glance performs well is that MST performs significant aggregation • Using MST, the information from two points e, q close to each other are bound to intermingle • The probability that ancestors of e and q are always >1-hop away rapidly drops to zero due to aggregation in MST

  35. Stretch-factors • Stretch-factor wrt increasing distance for 30x30 network • For “300 > eCq > 60” dq is always less than d and stretch-factor is less than or equal to 1 • For small distances between e and q, aggregation in MST ensures that query-hops remain low

  36. Open research directions in WSN • Distributed data structures for nearest-neighbor queries, range queries, especially for geometric networks • Mobile WSN • MAC layer issues • Adaptive networking algorithms (geometric networks) • WSN-Internet integration • Genie project from NSF • Programming frameworks for WSN

  37. Questions ? • Distributed & local WSN algorithms • Tracking: local and fault-locally healing • Querying: local and lightweight routing • Spatial clustering, etc. • Reliable communication in WSN • Consensus in WSN: Dependable applications • Reliable broadcast at MAC layer: Solving hidden terminal problem • Reliable transactions for mobile WSN: A programming framework for concurrency-safe real-time control applications • Specification-based design of self-healing • Scalability wrt code size: dependability preserving refinement of code

  38. iComp www.cse.buffalo.edu/~demirbas

  39. Overview of my research • Distributed & local WSN algorithms • Tracking: local and fault-locally healing • Querying: local and lightweight routing • Spatial clustering, etc. • Reliable communication in WSN • Consensus in WSN: Dependable applications • Reliable broadcast at MAC layer: Solving hidden terminal problem • Reliable transactions for mobile WSN: A programming framework for concurrency-safe real-time control applications • Specification-based design of self-healing • Scalability wrt code size: dependability preserving refinement of code

  40. Coordinated attack problem • Two armies waiting to attack the city; they need to attack together to win • Each army coordinates with a messenger • Messenger may be captured by the city • Can generals reach agreement? • Agreement is impossible in the presence of unreliable channel • Wireless communication is unreliable due to collisions !

  41. Collision awareness Necessary for coping with undetectable message loss • Receiver side monitoring and notification of collisions • No info wrt # of lost messages or identities of senders • Completeness: Ability to detect collisions • Majority-complete: a collision is detected if a majority of messages in a round is lost • 0-complete: collision is detected if all messages in a round is lost • Accuracy: No false positives • Always and eventually accurate CD • Receiver side collision detection is easily implementable in mote and 802.11 platforms

  42. Vote-Veto algorithm • Two phases: vote and veto • The algorithm is adaptive, employs active-passive service • Vote phase: • Every active node sends out its vote • If a node hears no collision, the node updates its vote to min of received votes • If a node hears collision or different votes, it decides to veto • Veto phase: • If no veto messages are received or collisions detected, then a node can decide, else nodes continue to next round • Intuition: By having a dedicated veto phase, effects of collision is detectable Chockler, Demirbas, Gilbert, Newport PODC 2005

  43. Proof (for majority-complete CD) Let r be the first round any node decides Since no node vetoed in r, every node heard only a single vote and no collision during vote phase in r Since maj-◊AC detects when ≥ half the messages are lost, each node received a majority of messages broadcasted in vote phase in r Since every majority set intersects, every node received the same unique vote

  44. Rumor routing • Deliver packets to events • query/configure/command • No global coordinate system • Algorithm: • Event sends out agents which leave trails for routing info • Agents do random walk • If an agent crosses a path to another event, a path is established • Agent also optimizes paths if they find shorter ones Braginsky, Estrin WSNA 2002

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