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Adaptive neural network cascade control system with entropy-based design

机译:基于熵的自适应神经网络级联控制系统

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摘要

A neural network (NN)-based cascade control system is developed, in which the primary proportional–integral–derivative (PID) controller is constructed by NN. A new entropy-based measure, named the centred error entropy (CEE) index, which is a weighted combination of the error cross-correntropy (ECC) criterion and the error entropy criterion (EEC), is proposed to tune the NN-PID controller. The purpose of introducing CEE in controller design is to ensure that the uncertainty in the tracking error is minimised and also the peak value of the error probability density function being controlled toward zero. The NN-controller design based on this new performance function is developed and the convergent conditions are investigated using a linearisation technique. During the control process, the CEE index is estimated by a Gaussian kernel function. Adaptive rules are developed to update the kernel size in order to achieve more accurate estimation of the CEE index. This NN cascade control approach is applied to superheated steam temperature control of a simulated power plant system, from which the effectiveness and strength of the proposed strategy are discussed by comparison with NN-PID controllers tuned with EEC and ECC criterions.
机译:开发了基于神经网络的级联控制系统,其中神经网络构造了主要的比例积分微分(PID)控制器。提出了一种新的基于熵的测度,称为中心误差熵(CEE)指数,它是误差互相关性(ECC)准则和误差熵准则(EEC)的加权组合,用于调整NN-PID控制器。在控制器设计中引入CEE的目的是确保将跟踪误差的不确定性最小化,并且将误差概率密度函数的峰值控制为零。开发了基于该新性能函数的NN控制器设计,并使用线性化技术研究了收敛条件。在控制过程中,CEE指数由高斯核函数估算。开发了自适应规则以更新内核大小,以实现对CEE指数的更准确估计。将该神经网络级联控制方法应用于模拟电厂系统的过热蒸汽温度控制,通过与通过EEC和ECC准则调整的NN-PID控制器进行比较,从中讨论了所提出策略的有效性和强度。

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