Pneumatic control valve stiction modeling using artificial neural network

Sachin Sharma, Vineet Kumar, K. Rana
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引用次数: 7

Abstract

One of the common and widely appearing problem in the process industry is stiction in pneumatic control valves. It introduces oscillations in control loops which in turn results into variations in product quality, instability in control loops and increases the wear and tear of the control valve. In this paper, a novel way of modeling of pneumatic control valve stiction using feed forward neural network is presented. Efficiency of the developed model was evaluated by comparing it with the real valve data and the data generated by Choudury valve model. The proposed artificial neural network (ANN) based valve modeling technique revealed an accuracy of 99.9% in both the cases. Based on the presented detailed investigations it can be concluded that ANN based modeling of pneumatic control valve is an effective technique.
采用人工神经网络对气动控制阀进行粘滞建模
过程工业中普遍存在的问题之一是气动控制阀的堵塞问题。它在控制回路中引入振荡,进而导致产品质量的变化,控制回路的不稳定,并增加控制阀的磨损。本文提出了一种利用前馈神经网络对气动控制阀伸缩进行建模的新方法。通过与实际阀门数据和Choudury阀门模型生成的数据进行比较,评价了所建模型的有效性。所提出的基于人工神经网络(ANN)的阀门建模技术在这两种情况下的准确率均为99.9%。研究表明,基于神经网络的气动控制阀建模是一种有效的方法。
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