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Direct adaptive neural network control for wastewater treatment process

机译:直接自适应神经网络控制废水处理工艺

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In this paper, a direct adaptive neural network control (DANNC) method is developed to deal with the multi-variable (dissolved oxygen concentration and nitrate concentration) tracking control problem in wastewater treatment processes (WWTPs), which avoids the perplex issue of establishing the plant model of WWTP and has the excellent adaptive ability. The DANNC system is composed of neural controller and compensation controller. The neural controller is employed to approximate an ideal control law, and the compensation controller is designed to offset the network approximation error. The controller parameters' adaptive laws are deduced by the Lyapunov theorem. Simulation results, based on the international benchmark simulation model No.1 (BSM1), show that the control accuracy and dynamic performance of the DANNC method are improved nicely.
机译:本文提出了一种直接自适应神经网络控制(DANNC)方法来处理废水处理过程(WWTPs)中的多变量(溶解氧浓度和硝酸盐浓度)跟踪控制问题,从而避免了建立污水处理过程中的困惑。污水处理厂的模型,具有优良的适应能力。 DANNC系统由神经控制器和补偿控制器组成。采用神经控制器来逼近理想控制律,而补偿控制器则被设计来抵消网络逼近误差。控制器参数的自适应定律由李雅普诺夫定理推导。基于国际基准仿真模型No.1(BSM1)的仿真结果表明,DANNC方法的控制精度和动态性能得到了很好的提高。

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