Litcius/Paper detail

Cooperative Fuzzy-Neural Control for Wastewater Treatment Process

Honggui Han, Hongxu Liu, Jiaming Li, Junfei Qiao

2020IEEE Transactions on Industrial Informatics84 citationsDOI

Abstract

Wastewater treatment process, including multiple biochemical reactions, is a complex industrial process with strong nonlinearity and time-varying dynamics. It is a challenge to design an effective controller for this kind of process. To solve this problem, a cooperative fuzzy-neural controller is proposed to improve the operation performance of wastewater treatment process in this article. The main advantages of cooperative fuzzy-neural controller contain the following three parts: first, a structure cooperative strategy is developed to adjust the number of fuzzy rules in the controller by coordinating the indexes of similarity and independent contributions. Then, the structure of cooperative fuzzy-neural controller with the balanced redundant degree and efficiency can be adapted to satisfy the different operation conditions of wastewater treatment process. Second, a parameter cooperative strategy is proposed to coordinate the global and local parameters of controller. Then, the parameters can be optimized together to meet the control requirements. Third, the stability of control strategy is given in details. Then, the corresponding stability conditions are shown to guide its application. Finally, the control performance is confirmed on the benchmark simulation model and real wastewater treatment process. The results demonstrate that the proposed cooperative fuzzy-neural controller can achieve superior control precision and low computational burden.

Topics & Concepts

Controller (irrigation)Fuzzy logicControl theory (sociology)Benchmark (surveying)Fuzzy control systemComputer scienceControl engineeringProcess (computing)Process controlArtificial neural networkEngineeringControl (management)Artificial intelligenceAgronomyBiologyOperating systemGeographyGeodesyWastewater Treatment and Nitrogen RemovalWater Quality Monitoring TechnologiesAdvanced Control Systems Optimization