Causality-driven Sequence Segmentation for Enhancing Multiphase Industrial Process Data Analysis and Soft Sensing
Yimeng He, Le Yao, Xinmin Zhang, Xiangyin Kong, Zhihuan Song

TL;DR
This paper introduces a causality-driven sequence segmentation model for multiphase industrial data, improving phase detection and soft sensing accuracy by analyzing causal relationships and dynamics.
Contribution
It proposes a novel causality-driven segmentation method and a phase-specific soft sensing model, enhancing analysis of non-stationary multiphase process data.
Findings
High segmentation accuracy on multiphase series
Effective detection of phase transitions and non-stationary segments
Improved predictive accuracy in industrial process monitoring
Abstract
The dynamic characteristics of multiphase industrial processes present significant challenges in the field of industrial big data modeling. Traditional soft sensing models frequently neglect the process dynamics and have difficulty in capturing transient phenomena like phase transitions. To address this issue, this article introduces a causality-driven sequence segmentation (CDSS) model. This model first identifies the local dynamic properties of the causal relationships between variables, which are also referred to as causal mechanisms. It then segments the sequence into different phases based on the sudden shifts in causal mechanisms that occur during phase transitions. Additionally, a novel metric, similarity distance, is designed to evaluate the temporal consistency of causal mechanisms, which includes both causal similarity distance and stable similarity distance. The discovered…
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Taxonomy
TopicsFault Detection and Control Systems
MethodsALIGN
