A controllable sensor management algorithm capable of learning

Sensor management technology progress is challenged by the geographic space it spans, the heterogeneity of the sensors, and the real-time timeframes within which plans controlling the assets are executed. This paper presents a new sensor management paradigm and demonstrates its application in a sensor management algorithm designed for a biometric access control system. This approach consists of an artificial intelligence (AI) algorithm focused on uncertainty measures, which makes the high level decisions to reduce uncertainties and interfaces with the user, integrated cohesively with a bottom up evolutionary algorithm, which optimizes the sensor network’s operation as determined by the AI algorithm. The sensor management algorithm presented is composed of a Bayesian network, the AI algorithm component, and a swarm optimization algorithm, the evolutionary algorithm. Thus, the algorithm can change its own performance goals in real-time and will modify its own decisions based on observed measures within the sensor network. The definition of the measures as well as the Bayesian network determine the robustness of the algorithm and its utility in reacting dynamically to changes in the global system.

[1]  Mani B. Srivastava,et al.  Optimizing Sensor Networks in the Energy-Latency-Density Design Space , 2002, IEEE Trans. Mob. Comput..

[2]  Wendi B. Heinzelman,et al.  Optimal sensor management under energy and reliability constraints , 2003, 2003 IEEE Wireless Communications and Networking, 2003. WCNC 2003..