In this work the optimal design of sensor networks for chemical plants is addressed using stochastic optimization strategies. The problem consists in selecting the type, number and location of new sensors that provide the required quantity and quality of process information. Ad-hoc strategies based on Tabu Search, Scatter Search and Population Based Incremental Learning Algorithms are proposed. Regarding Tabu Search, the intensification and diversification capabilities of the technique are enhanced using Path Relinking. The strategies are applied for solving minimum cost design problems subject to quality constraints on variable estimates, and their performances are compared. © 2009 by the authors.
CITATION STYLE
Carnero, M., Hernández, J. L., & Sánchez, M. C. (2009). Design of sensor networks for chemical plants based on meta-heuristics. Algorithms, 2(1), 259–281. https://doi.org/10.3390/a2010259
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