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A neural network controller for systems with unmodeled dynamics with applications to wastewater treatment

机译:用于动力学建模的系统的神经网络控制器及其在废水处理中的应用

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This paper considers the use of neural networks (NNs) in controlling a nonlinear, stochastic system with unknown process equations. The approach here is based on using the output error of the system to train the NN controller without the need to assume or construct a separate model (NN or other type) for the unknown process dynamics. To implement such a direct adaptive control approach, it is required that connection weights in the NN be estimated while the system is being controlled. As a result of the feedback of the unknown process dynamics, however, it is not possible to determine the gradient of the loss function for use in standard (backpropagation-type) weight estimation algorithms. Therefore, this paper consider's the use of a new stochastic approximation algorithm for this weight estimation, which is based on a "simultaneous perturbation" gradient approximation that only requires the system output error. It is shown that this algorithm can greatly enhance the efficiency over more standard stochastic approximation algorithms based on finite-difference gradient approximations. The approach is illustrated on a simulated wastewater treatment system with stochastic effects and nonstationary dynamics.
机译:本文考虑了使用神经网络(NNs)控制未知过程方程的非线性随机系统。这里的方法基于使用系统的输出误差来训练NN控制器,而无需为未知的过程动力学假设或构造单独的模型(NN或其他类型)。为了实现这样的直接自适应控制方法,需要在控制系统的同时估计NN中的连接权重。然而,由于未知过程动力学的反馈,不可能确定用于标准(反向传播类型)权重估计算法的损失函数的梯度。因此,本文考虑将新的随机近似算法用于此权重估计,该算法基于仅要求系统输出误差的“同时扰动”梯度近似。结果表明,与基于有限差分梯度近似的标准随机近似算法相比,该算法可以大大提高效率。该方法在具有随机效应和非平稳动态的模拟废水处理系统上进行了说明。

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