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Autoencoder-based nonlinear Bayesian locally weighted regression for soft sensor development

机译:基于AutoEncoder的非线性贝叶斯局部加权回归软传感器开发

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摘要

The framework of locally weighted learning (LWL) has established itself as a popular tool for developing nonlinear soft sensors in process industries. For LWL-based soft sensors, the key factor for achieving high performance is to construct accurate localized models. To this end, in this paper a nonlinear local model training algorithm called nonlinear Bayesian weighted regression (NBWR) is proposed. In the NBWR, the nonlinear features of process data are first extracted by the autoencoder; then, given a query sample a local dataset is selected on the feature space and a fully Bayesian regression model with differentiated sample weights is developed. The benefits of this approach, which include better consistency of correlation, stronger abilities to deal with process nonlinearities and uncertainties, overfitting and numerical issues, lead to superior performance. The NBWR is used for developing a soft sensor under the LWL framework, and a real-world industrial process is used to evaluate the performance of the NBWR-based soft sensor. The experimental results demonstrate that the proposed method outperforms several benchmarking soft sensing approaches. (C) 2020 ISA. Published by Elsevier Ltd. All rights reserved.
机译:本地加权学习(LWL)的框架已成为在工艺行业中开发非线性软传感器的流行工具。对于基于LWL的软传感器,实现高性能的关键因素是构建精确的本地化模型。为此,在本文中,提出了一种名为非线性贝叶斯加权回归(NBWR)的非线性本地模型训练算法。在NBWR中,首先由AutoEncoder提取过程数据的非线性特征;然后,给定查询示例在要素空间上选择本地数据集,并且开发了具有差异化样本权重的完全贝叶斯回归模型。这种方法的好处,包括更好的相关性,更强的能力,处理过程非线性以及不确定性,过度装箱和数值问题,导致卓越的性能。 NBWR用于在LWL框架下开发软传感器,并且使用真实的工业过程来评估基于NBWR的软传感器的性能。实验结果表明,所提出的方法优于几种基准测试软感测方法。 (c)2020 ISA。 elsevier有限公司出版。保留所有权利。

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