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Self‐Organising Sensors for Wide Area Surveillance using the Max‐Sum Algorithm Alex Rogers and Nick Jennings School of Electronics and Computer Science University of Southampton acr@ecs.soton.ac.uk Alessandro Farinelli Department of Computer Science University of Verona Verona, Italy alessandro.farinelli@univr.it
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Overview Self-Organisation –Landscape of Decentralised Coordination Algorithms Local Message Passing Algorithms –Max-sum algorithm –Graph Colouring Wide Area Surveillance Scenario Future Work
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Self-Organisation Sensors
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Self-Organisation Agents Multiple conflicting goals and objectives Discrete set of possible actions
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Self-Organisation Agents Multiple conflicting goals and objectives Discrete set of possible actions Some locality of interaction
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Self-Organisation Agents Maximise Social Welfare: Multiple conflicting goals and objectives Discrete set of possible actions Some locality of interaction
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Self-Organisation Agents Central point of control Decentralised self-organisation through local computation and message passing. Speed of convergence, guarantees of optimality, communication overhead, computability No direct communication Solution scales poorly Central point of failure Who is the centre?
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Landscape of Algorithms Complete Algorithms DPOP OptAPO ADOPT Communication Cost Optimality Iterative Algorithms Best Response (BR) Distributed Stochastic Algorithm (DSA) Fictitious Play (FP) Message Passing Algorithms Sum-Product Algorithm
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Max-Sum Algorithm Variable nodes Function nodes Factor Graph A simple transformation: allows us to use the same algorithms to maximise social welfare: Find approximate solutions to global optimisation through local computation and message passing:
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Graph Colouring Agent function / utility variable / state Graph Colouring ProblemEquivalent Factor Graph
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Graph Colouring Equivalent Factor Graph Utility Function
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Graph Colouring
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Optimality
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Communication Cost
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Robustness to Message Loss
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Wide Area Surveillance Scenario Dense deployment of sensors to detect pedestrian and vehicle activity within an urban environment. Unattended Ground Sensor
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Energy Constrained Sensors Maximise event detection whilst using energy constrained sensors: –Use sense/sleep duty cycles to maximise network lifetime of maintain energy neutral operation. –Coordinate sensors with overlapping sensing fields. time duty cycle t ime duty cycle
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Self-Organising Sensor Network
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Energy-Aware Sensor Networks
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Future Work Continuous action spaces –Max-sum calculations are not limited to discrete action space –Can we perform the standard max-sum operators on continuous functions in a computationally efficient manner? Bounded Solutions –Max-sum is optimal on tree and limited proofs of convergence exist for cyclic graphs –Can we construct a tree from the original cyclic graph and calculate an lower bound on the solution quality?
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