Litcius/Paper detail

Wireless Sensor Network-Based Distributed Approach to Identify Spatio-Temporal Volterra Model for Industrial Distributed Parameter Systems

Saurav Gupta, Ajit Kumar Sahoo, Upendra Kumar Sahoo

2020IEEE Transactions on Industrial Informatics27 citationsDOI

Abstract

The prodigious amount of data movement among sources, data centers, or processing elements precludes the utilization of least-squares (LS) and fusion-center (FC)-based modeling and control. The LS methods are offline in nature, hence may face difficulty in real-time implementation. FC-based methods that are nonrobust due to single point failure, require large communication bandwidth and computationally fast processing unit. To curb these limitations, this article identifies distributed parameter systems by estimating the parameters of spatio-temporal Volterra model using in-network data processing. It can handle the immense volume of data by distributing the processing tasks of FC among the wireless sensor network nodes. To facilitate distributed optimization, the global objective function is reformulated as a multiple constrained separable problem which is then decomposed into augmented Lagrangian form. Then, alternating direction method of multipliers along with coordinate descent method is employed to obtain the global optimal solution collaboratively. Further, a communication-efficient algorithm is designed for the proposed approach to deploy in an ad-hoc network. Simulations are carried out on two industrial distributed parameter systems (catalytic rod and tubular reactor) to illustrate the practicality of the proposed algorithm.

Topics & Concepts

Computer scienceCoordinate descentFusion centerWireless sensor networkDistributed computingSensor fusionWirelessWireless networkDistributed algorithmBandwidth (computing)Mathematical optimizationReal-time computingAlgorithmComputer networkArtificial intelligenceCognitive radioTelecommunicationsMathematicsControl Systems and IdentificationAdvanced Adaptive Filtering TechniquesAdvanced Control Systems Optimization