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首页> 外文期刊>IEEE Transactions on Industrial Electronics >Data-Driven Iterative Adaptive Critic Control Toward an Urban Wastewater Treatment Plant
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Data-Driven Iterative Adaptive Critic Control Toward an Urban Wastewater Treatment Plant

机译:数据驱动的迭代自适应评论探测对城市污水处理厂的控制

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摘要

The wastewater treatment is an important avenue of resources cyclic utilization when coping with the modern urban diseases. However, there always exist obvious nonlinearities and uncertainties within wastewater treatment systems, such that it is difficult to accomplish proper optimization objectives toward these complex unknown platforms. In this article, a data-driven iterative adaptive critic (IAC) strategy is developed to address the nonlinear optimal control problem. The iterative algorithm is constructed with a general framework, followed by convergence analysis and neural network implementation. Remarkably, the derived IAC control policy with an additional steady control input is also applied to a typical wastewater treatment plant, rendering that the dissolved oxygen concentration and the nitrate level are maintained at desired setting points. When compared with the incremental proportional-integral-derivative method, it is found that faster response and less oscillation can be obtained during the IAC control process.
机译:废水处理是应对现代城市疾病时的资源循环利用的重要途径。然而,污水处理系统中始终存在明显的非线性和不确定性,使得难以实现这些复杂的未知平台的正确优化目标。在本文中,开发了一种数据驱动的迭代自适应评论评估(IAC)策略以解决非线性最佳控制问题。迭代算法用一般框架构建,其次是收敛分析和神经网络实现。值得注意的是,具有额外稳定控制输入的衍生IAC控制政策也应用于典型的废水处理厂,使得溶解的氧浓度和硝酸盐水平保持在所需的设定点。与增量比例 - 积分 - 衍生物方法相比,发现在IAC对照过程中可以获得更快的响应和较少的振荡。

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