OCSYSYMar 7, 2019

Algorithms for Joint Sensor and Control Nodes Selection in Dynamic Networks

arXiv:1811.1179215 citationsh-index: 30
AI Analysis

For control engineers designing networked systems, this work provides methods to minimize sensor/actuator count for stabilization, though the problem is nonconvex and solutions are benchmarked on small networks.

The paper addresses the joint selection of sensors and actuators to stabilize linear dynamic networks. It proposes optimal and heuristic algorithms, demonstrating trade-offs between optimality and computational time on numerical tests.

The problem of placing or selecting sensors and control nodes plays a pivotal role in the operation of dynamic networks. This paper proposes optimal algorithms and heuristics to solve the simultaneous sensor and actuator selection problem in linear dynamic networks. In particular, a sufficiency condition of static output feedback stabilizability is used to obtain the minimal set of sensors and control nodes needed to stabilize an unstable network. We show the joint sensor/actuator selection and output feedback control can be written as a mixed-integer nonconvex problem. To solve this nonconvex combinatorial problem, three methods based on (1) mixed-integer nonlinear programming, (2) binary search algorithms, and (3) simple heuristics are proposed. The first method yields optimal solutions to the selection problem---given that some constants are appropriately selected. The second method requires a database of binary sensor/actuator combinations, returns optimal solutions, and necessitates no tuning parameters. The third approach is a heuristic that yields suboptimal solutions but is computationally attractive. The theoretical properties of these methods are discussed and numerical tests on dynamic networks showcase the trade-off between optimality and computational time.

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