工业过程的签名有向图建模及其基于数据的验证方法

F. Yang, L. S. Sirish, D. Xiao
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引用次数: 25

摘要

本文关注过程数据和过程连接信息的融合及其在故障检测、隔离和危害评估中的后续应用。签名有向图(Signed Directed Graph, SDG)作为一种捕获过程拓扑和连通性的图形模型,通过流和信息路径来显示过程变量之间的因果关系,已广泛应用于根本原因分析和危害传播分析。可持续发展目标通常建立在管道和仪表图所描述的过程知识的基础上。这是一项复杂且依赖于经验的任务,因此在用于分析之前,应该通过过程数据验证最终的SDG。本文介绍了两种验证方法。第一种方法是基于假设时间延迟的过程数据的互相关分析。然后,可以通过检查所有变量对在可持续发展目标中的路径,并将符号与因果关系的方向进行比较,来验证所得到的相关系数。第二种方法是基于传递熵,其中可以计算从一个变量到另一个变量的信息传递,以验证可持续发展目标中相应的弧线。最后以一个工业过程为例,说明了所提方法的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Signed Directed Graph modeling of industrial processes and their validation by data-based methods
This paper is concerned with the fusion of information from process data and process connectivity and its subsequent use in fault detection and isolation and hazard assessment. The Signed Directed Graph (SDG), as a graphical model for capturing process topology and connectivity to show the causal relationships between process variables by flow and information paths, has been widely used in root cause and hazard propagation analysis. An SDG is usually built based on process knowledge as described by piping and instrumentation diagrams. This is a complex and experience-dependent task, and therefore the resulting SDG should be validated by process data before being used for analysis. This paper introduces two validation methods. The first method is based on cross-correlation analysis of process data with assumed time delays. The resulting correlation coefficients can then be validated by examining the paths in SDGs of all the variable pairs and also comparing the signs with the directions of causal relations. The second method is based on transfer entropy, where the information transfer from one variable to another can be computed to validate the corresponding arcs in SDGs. A case study of an industrial process is presented to illustrate the application of the proposed methods.
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