基于实时学习的数据驱动方法在连续搅拌罐式加热器中的应用

J. Zheng, Hongfang Wang, Hongpeng Zhou, Tianyi Gao
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引用次数: 1

摘要

在基于模型的方法难以解决越来越复杂的过程故障检测问题的今天,基于数据驱动的技术由于其处理未知物理模型的能力而在工业系统监测中得到了广泛应用。然而,传统的静态数据驱动故障检测方法在处理非线性系统中具有确定性扰动的故障检测时存在问题。为了解决这个问题,发明了一种称为基于数据驱动的实时学习(jit - dd)的方法。在该方法中,使用JITL学习非线性模型和干扰来预测输出。通过静态数据驱动的方法对预测值和真实值的残差进行处理,判断是否存在故障。本文将用一个数值例子来验证该算法,并以CSTH为例来说明JITL-DD方法的性能。作为对比,我们也采用了JITL-PCA方法来解决同样的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A using of just-in-time learning based data driven method in continuous stirred tank heater
As model-based methods have difficulty to solve more and more complex processes fault detection problems today, data-driven based techniques have been wildly used in industrial systems monitoring because of its ability to process unknown physical model. However, conventional static data-driven fault detection method have problems in processing nonlinear systems fault detection with deterministic disturbances in nonlinear system. In order to deal with this, a method called just-in-time learning based data-driven (JITL-DD) was invented. In this method, JITL is used for learning the nonlinear model and the disturbances to predict the output. The residuals of the predict and real one will be processed by static data-driven method to decide wether it has fault. In this article, A numerical example will be used to test the algorithm and a case study of CSTH are proposed to show the performance of JITL-DD method. As comparisons, JITL-PCA method is also employed to solve the same problem.
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