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Implementation of a neural control system based on PI control for a non-linear process

机译:基于PI控制的非线性过程的神经控制系统的实现

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This paper explores the possibility of using a machine learning algorithm such as artificial neural networks to control a non-linear liquid level system. To achieve this objective, PI controllers were designed for two different scenarios: In the first, a single PI controller was used to control the system at one setpoint. In the second, 4 PI controllers were designed in order to cover a wider operating range of the plant. The input and output signals from the PI controllers were used to train a controller based on artificial neural networks. The neural network that presented greater simplicity and lower computational cost was selected. In this case, a neural network with 3 hidden layers and 20 neurons per layer was the one that best recreated the dynamics of the PI controllers. The root-mean-square error (RMSE) was used to validate the results obtained with the PI controllers and with the controller based on neural networks. In both scenarios the variations of the error were smaller when the neuronal controller was used than when the PI controllers were used. The results show that machine learning algorithms such as artificial neural networks can be used effectively to control processes whose dynamics are complex.
机译:本文探讨了使用机器学习算法,例如人工神经网络以控制非线性液位系统。为实现这一目标,PI控制器被设计为两个不同的场景:首先,使用单个PI控制器在一个设定点控制系统。在第二,设计了4个PI控制器,以覆盖植物的更宽的操作范围。来自PI控制器的输入和输出信号用于训练基于人工神经网络的控制器。选择了提高简单性和更低计算成本的神经网络。在这种情况下,具有3个隐藏层和每层20个神经元的神经网络是最能重新重新重新重新重新重新复制PI控制器的动态的神经网络。使用根均方误差(RMSE)来验证使用PI控制器获得的结果,并基于神经网络与控制器。在这两种情况下,当使用了神经元控制器时,误差的变化比使用了PI控制器时的误差。结果表明,诸如人工神经网络的机器学习算法可以有效地用于控制动态复杂的过程。

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