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A spatial-temporal LWPLS for adaptive soft sensor modeling and its application for an industrial hydrocracking process

机译:适应性软传感器建模的空间颞下载量及其在工业加氢裂化过程中的应用

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摘要

Locally weighted partial least squares (LWPLS) is a widely used just-in-time learning (JITL) modeling algorithm for adaptive soft sensor development. In LWPLS, spatial variable distance is used to measure similarity and assign weights for historical samples, which is very effective to handle process time-varying problems of abrupt changes. However, the gradual process changes are not effectively handled in traditional LWPLS. To cope with this problem, a novel similarity is proposed for temporal distance measurement by introducing a temporal variable of sampling instant, in which newest sampled data can get large weights since they represent the more recent process state. Then, both spatial and temporal similarities are considered to construct a spatial-temporal adaptive LWPLS modeling framework in this paper. The effectiveness of the proposed algorithm is validated on an industrial hydrocracking process.
机译:本地加权偏最小二乘(LWPLS)是广泛使用的仅限于适应性软传感器开发的即时学习(JITL)建模算法。 在LWPLS中,空间可变距离用于测量相似性并为历史样本分配权重,这非常有效地处理突然变化的过程时变的问题。 但是,在传统的LWPLS中没有有效处理逐渐处理变化。 为了应对这个问题,提出了一种新的相似性来提出通过引入采样瞬间的时间变量来进行时间距离测量,其中最新的采样数据可以获得大权重,因为它们代表了更新的过程状态。 然后,认为空间和时间相似度被认为是在本文中构建空间 - 时间自适应LWPLS建模框架。 在工业加氢裂化过程中验证了所提出的算法的有效性。

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