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Self Optimization in Wireless Sensor Networks

Self Optimization in Wireless Sensor Networks. Bhaskar Krishnamachari Autonomous Networks Research Group Department of Electrical Engineering-Systems USC Viterbi School of Engineering http://ceng.usc.edu/~anrg.

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Self Optimization in Wireless Sensor Networks

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  1. Self Optimization in Wireless Sensor Networks Bhaskar Krishnamachari Autonomous Networks Research Group Department of Electrical Engineering-Systems USC Viterbi School of Engineering http://ceng.usc.edu/~anrg NSF-RPI Workshop on Pervasive Computing and Networking, April 29-30, 2004

  2. Sensor networks represent a fundamental paradigm shift from Interpersonal Communication to Communication with the Environment This must change the way we analyze and design these systems.

  3. Analysis and Design of Wireless Sensor Networks • Mathematical Models and Performance Analysis • Self-optimization • Protocol • algorithm choice • parameters • Environment • channel condition • spatial correlation • data dynamics • Application • traffic • placement • topology

  4. Analysis and Design of Wireless Sensor Networks • Mathematical Models and Performance Analysis • Self-optimization • Protocol • protocol selection • parameter selection • Environment • channel condition • spatial correlation • data dynamics • Application • traffic • placement • topology

  5. Analysis of Directed Diffusion • Expressions for overhead of push versus pull diffusion to determine application conditions where each is suitable Krishnamachari, Heidemann, “Application-Specific Modeling of Information Routing in Wireless Sensor Networks,” IEEE IPCCC-MWN ‘04.

  6. Analysis of ACQUIRE • Analysis of an active query forwarding mechanism providing a lookahead parameter to tune between flood-based and trajectory-based querying flood trajectory Sadagopan, Krishnamachari, Helmy, “Active Query Forwarding in sensor networks,” Ad Hoc Networks, 2004 (to appear).

  7. Analysis of Routing with Compression • There exists a static clustering technique that provides near optimal routing with compression across a wide range of spatial correlation levels Pattem, Krishnamachari, Govindan, “Impact of Spatial Correlation on Routing with Compression in Wireless Sensor Networks,” ACM/IEEE IPSN, 2004 [best paper award].

  8. Analysis and Design of Wireless Sensor Networks • Mathematical Models and Performance Analysis • Self-optimization • Protocol • protocol selection • parameter selection • Environment • channel condition • spatial correlation • data dynamics • Application • traffic • placement • topology

  9. Self-Optimization* • The traditional approach is to take into account application requirements prior to operation and pre-configure/pre-optimize the protocol parameters. • This is simply insufficient in sensor networks, where the characteristics of the environment, which can be inherently unpredictable, play a key role. • A powerful design principle we must embrace is the use of autonomous learning through sensor observations during operation, so that network protocols can optimize their own performance over time. • These protocols must be distributed and localized for scalability and efficiency. * Ongoing collaboration with Marc Pearlman, Kraken Inc.

  10. Simultaneous Localization and Tracking • Current techniques attempt to localize nodes prior to operation based on communication constraints or ranging estimates • In a target tracking application, sensor observations of the moving target introduce additional constraints that can be used to further reduce the localization error over time Aram Galstyan, Bhaskar Krishnamachari, Kristina Lerman, and Sundeep Pattem, "Distributed Online Localization in Sensor Networks Using a Moving Target," ACM/IEEE IPSN, 2004.

  11. Model-based Compression • In some cases, the underlying physics of the phenomena can provide a spatio-temporal model (e.g. PDE models for heat or chemical diffusion). • Then instead of sending raw data, it suffices to send the model parameters, which can be learned through observations over time Lorenzo Rossi, Bhaskar Krishnamachari, C.-C. Jay Kuo, "Modeling of Diffusion Processes with PDE Models in Wireless Sensor Networks," SPIE Defense & Security Symposium, 2004.

  12. Reinforced Querying and Routing • Technique suitable for querying about targets or pushing data to sinks that have a underlying (unknown) probabilistic location pattern • The basic idea is to start with a random walk, and change forwarding weights based on reinforcements Krishnamachari, Zhou, Shademan, “LEQS: Learning-based Efficient Querying for Sensor Networks”, USC CS Technical Report, 03-795, 2003.

  13. Reinforced Querying and Routing • Converges over a period of time to an efficient trajectory Krishnamachari, Zhou, Shademan, “LEQS: Learning-based Efficient Querying for Sensor Networks”, USC CS Technical Report, 03-795, 2003.

  14. Summary and Conclusions • Sensor Networks represent a fundamental paradigm shift from inter-personal communication to communication with the environment. This has significant implications for both analysis and design: • Analysis: Protocol performance must be analyzed with respect to a combination of environmental effects, application specifications and protocol parameters. • Design: Protocols must be designed to be self-optimizing, improving autonomously over time by incorporating sensor observations.

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