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Policy Iteration Approach to the Infinite Horizon Average Optimal Control of Probabilistic Boolean Networks

Yuhu Wu, Yuqian Guo, Mitsuru Toyoda

2020IEEE Transactions on Neural Networks and Learning Systems154 citationsDOIOpen Access PDF

Abstract

This article studies the optimal control of probabilistic Boolean control networks (PBCNs) with the infinite horizon average cost criterion. By resorting to the semitensor product (STP) of matrices, a nested optimality equation for the optimal control problem of PBCNs is proposed. The Laurent series expression technique and the Jordan decomposition method derive a novel policy iteration-type algorithm, where finite iteration steps can provide the optimal state feedback law, which is presented. Finally, the intervention problem of the probabilistic Ara operon in E. coil, as a biological application, is solved to demonstrate the effectiveness and feasibility of the proposed theoretical approach and algorithms.

Topics & Concepts

Probabilistic logicControl (management)MathematicsMathematical optimizationComputer scienceApplied mathematicsMathematical economicsDiscrete mathematicsStatisticsArtificial intelligenceGene Regulatory Network AnalysisFormal Methods in VerificationMolecular Communication and Nanonetworks
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