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Data-Driven Robust Adaptive Control With Deep Learning for Wastewater Treatment Process

Gongming Wang, Yidi Zhao, Caixia Liu, Junfei Qiao

2023IEEE Transactions on Industrial Informatics42 citationsDOI

Abstract

Owing to high complexity and time-variant operation, as well as increasingly requirements for water quality, stability, and reliability, the wastewater treatment process (WWTP) is regarded as an adaptive control problem. In this study, a data-driven adaptive control with deep learning (DRAC-DL) is developed to improve the operational performance of the WWTP. First, a feedback controller is designed to construct the closed-loop control scheme. Second, an adaptive deep belief network (ADBN), based on the data-driven self-incremental learning strategy, is proposed to approximate the ideal control law. Third, the stability of the DRAC-DL scheme is analyzed in detail. The main advantage of DRAC-DL lies in its improved robustness and efficiency, which benefit from the Lyapunov-based closed-loop strategy and the efficient ADBN controller. Finally, the feasibility and applicability of DRAC-DL are verified by two parts: 1) simulation on the nonlinear system and 2) application to the WWTP on the benchmark simulation model No.1. The experimental results show the applicability and effectiveness, among which DRAC-DL reduces the output fluctuation (variance) by no less than 82% and realizes the better stability and robustness.

Topics & Concepts

Computer scienceProcess controlProcess (computing)Adaptive controlArtificial intelligenceRobustness (evolution)Control engineeringControl (management)EngineeringGeneOperating systemChemistryBiochemistryAdvanced Control Systems OptimizationNeural Networks and ApplicationsControl Systems and Identification
Data-Driven Robust Adaptive Control With Deep Learning for Wastewater Treatment Process | Litcius