故障检测与隔离
水准点(测量)
概率逻辑
计算机科学
人工智能
傅里叶变换
过程(计算)
操作员(生物学)
数据挖掘
人工神经网络
转化(遗传学)
断层(地质)
机器学习
多元统计
核(代数)
模式识别(心理学)
数学
数学分析
生物化学
化学
大地测量学
抑制因子
组合数学
地震学
地质学
转录因子
执行机构
基因
地理
操作系统
作者
Jyoti Rani,Tapas Tripura,Umang Goswami,Hariprasad Kodamana,Souvik Chakraborty
出处
期刊:Computer-aided chemical engineering
日期:2023-01-01
卷期号:: 1897-1902
被引量:6
标识
DOI:10.1016/b978-0-443-15274-0.50301-2
摘要
In order to generate higher-quality products and increase process efficiency, there has been a strong push in the processing and manufacturing sectors. This has called for the creation of methods to identify and fix faults to ensure optimal performance. As a result, it is essential to develop monitoring systems that can effectively detect and identify these faults so that operators can quickly resolve them. This article proposes a novel fault detection method that adopts a deep learning approach using a Fourier neural operator (FNO) in a probabilistic way, an operator learning model that aims to learn the distribution of multivariate process data and apply them for fault detection. Herein, the historical data under normal process conditions were first utilized to construct a multivariate statistical model; after that, the model was used to monitor the process and detect faults online. The proposed FNO combines the integral kernel with Fourier transformation in a probabilistic way. As the Fourier transform helps in the time-frequency localization of time series, FNO takes advantage of them to discover the complex time-frequency characteristics underlying multivariate datasets. On the benchmark Tennessee Eastman process (TEP), a real-world chemical manufacturing dataset, the performance of the proposed method was demonstrated and compared to that of the widely used fault detection methods.
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