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Identification and predictive control of spray tower system using artificial neural network and differential evolution algorithm

机译:基于人工神经网络和差分进化算法的喷淋塔系统辨识与预测控制。

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Increasing demands for high precision environmental protection measures regarding particulate matter (PM) emission from industrial productions and non-linear characteristics of spray tower system lead to the application of an intelligent control technique to adequately deal with these complexities. This includes the use of an artificial neural network (ANN) based predictive control strategy and differential evolution (DE) optimization algorithm to determines the optimal control signal, uk (liquid droplet size, d) by minimizing the cost function such that the output is set below the allowable PM concentration. A recurrent neural network (RNN) based on non-linear autoregressive with exogenous inputs (NARX) model has been used to develop the dynamic model of the system. The data for the training was obtained from empirical model of a spray tower system which involved 500 data sets representing the process input and the output PM concentration. The control process was implemented using MATLAB code by considering two DE optimization strategies; DE/best/1/bin and DE/rand/1/bin. The effectiveness of the controllers was demonstrated for different iterations by tuning the control parameters such as the prediction horizon, weight factor and control horizon. From the control response, it can be seen that the controller for the DE/rand/1/bin does a very good job of controlling the PM below the WHO allowable emission rate of 20g/μm.
机译:关于工业产品中颗粒物(PM)排放和喷雾塔系统的非线性特性的高精度环保措施的需求不断增长,导致了智能控制技术的应用,以充分应对这些复杂性。这包括使用基于人工神经网络(ANN)的预测控制策略和差分进化(DE)优化算法,以通过最小化成本函数来确定最佳控制信号uk(液滴大小d),从而设置输出低于允许的PM浓度。已经使用基于带有外源输入的非线性自回归模型(NARX)的递归神经网络(RNN)来开发系统的动态模型。培训的数据是从喷雾塔系统的经验模型中获得的,该模型涉及500个代表过程输入和输出PM浓度的数据集。通过考虑两种DE优化策略,使用MATLAB代码实现了控制过程。 DE / best / 1 / bin和DE / rand / 1 / bin。通过调整控制参数(例如预测范围,权重因子和控制范围),证明了控制器在不同迭代中的有效性。从控制响应中可以看出,DE / rand / 1 / bin的控制器在将PM控制在WHO允许的20g /μm允许排放率以下方面做得非常好。

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