Data-driven neuro-optimal tracking control of ozone generation process based on adaptive dynamic programming

Zhe Dong, Wenjuan Liu, Yueheng Li, Jie Han, Mengjiao Chen
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Abstract

Ozone is considered as one of the strongest oxidizing agent, yet it leaves no residues that are harmful to global environment. In this paper, the close loop control of ozone generator has been studied. The main concern of this issue is to achieve desired ozone concentration. Due to the ozone generation process is a complex nonlinear multivariable system, which is difficult to model and regulate, thus a date-driven neuro-control method is adopted to construct the dynamics of the system, and the adaptive dynamic programming algorithm(ADP) is used for controller design and optimization. According to the hardware-in-loop simulation, the ozone generation process can be effectively approximated by the neuro-network model, and the concentration and flow rate of ozone can be tracked by the ADP controller.
基于自适应动态规划的臭氧生成过程数据驱动神经最优跟踪控制
臭氧被认为是最强的氧化剂之一,但它不会留下对全球环境有害的残留物。本文对臭氧发生器的闭环控制进行了研究。这个问题主要关注的是达到理想的臭氧浓度。由于臭氧生成过程是一个复杂的非线性多变量系统,难以建模和调节,因此采用数据驱动神经控制方法构建系统的动力学,并采用自适应动态规划算法(ADP)进行控制器设计和优化。硬件在环仿真结果表明,神经网络模型可以有效地逼近臭氧生成过程,ADP控制器可以跟踪臭氧的浓度和流量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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