基于自适应主成分分析和RBF神经网络的在线软传感器设计

K. Salahshoor, Mojtaba Kordestani, M. S. Khoshro
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引用次数: 10

摘要

重要质量变量的准确在线测量是成功监测和控制化工过程的必要条件。然而,由于时间延迟、高成本和可靠性考虑等实际限制,这些变量通常难以在线测量。为了克服这一问题,提出了两种基于自适应主成分分析(PCA)和径向基函数(RBF)人工神经网络的在线软传感器。为此,提出了递归主成分分析和基于滑动窗口的主成分分析,以自适应地提取高维测量数据中的固有特征。然后将提取的低维特征递归地用作RBF神经网络的主要输入。最后在一个高度非线性精馏塔基准问题上对所开发的在线软传感器进行了测试,验证了其有效性能。仿真结果证明了基于递推主成分分析和RBF神经网络相结合的软传感器的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of online soft sensors based on combined adaptive PCA and RBF neural networks
An accurate on-line measurement of important quality variables is essential for successful monitoring and controlling of chemical processes. However, these variables are usually difficult to measure on-line due to the practical limitations such as the time-delay, high cost and reliability considerations. To overcome this problem, two online soft sensors are proposed based upon a combined adaptive principal component analysis (PCA) and a radial basis functions (RBF) artificial neural network. For this purpose, a recursive PCA and a PCA based on a sliding window scheme are presented to adaptively extract the inherent features inside the measurements with high dimensions. The extracted low-dimension features are then used recursively as the main inputs to the RBF neural network. The developed online soft sensors are finally tested on a highly nonlinear distillation column benchmark problem to illustrate their effective performances. The simulation results demonstrate the superiority of the proposed soft sensor based on the combined recursive PCA and the RBF neural network.
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