基于概率模型的发电过程在线诊断

P. H. Ibarguengoytia, A. Reyes
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引用次数: 3

摘要

诊断已应用于所有人类活动的几种方法中。一般的方法是建立一个模型来预测系统的行为,以便将其与观察到的行为进行比较。有时,在存在某些故障的情况下构建流程的附加模型,目的是识别这些故障。本文介绍了利用以前的工作开发的传感器验证,诊断一个完整的过程,而不仅仅是传感器。此方法的主要优点是在流程正常工作时构建模型。只需要一个模型。这是使用历史数据和贝叶斯网络的机器学习算法完成的。有了正确过程的模型,早期发现正常行为的任何偏差都是可能的。以某电厂蒸汽发生器(锅炉)为例进行了分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On-line diagnosis of a power generation process using probabilistic models
Diagnosis has been applied in several approaches in all human activities. The general approach is the construction of a model that predicts the behavior of the system in order to compare it with the observed behavior. Sometimes, additional models of the process are constructed in the presence of certain failures with the aim of identify these failures. This paper presents the utilization of a previous work developed for sensor validation, to diagnose a complete process and not only the sensors. The main advantage of this approach is the construction of a model when the process is working properly. Only one model is necessary. This is done using historical data and machine learning algorithms for Bayesian networks. Having a model of the correct process, the early detection of any deviation of the normal behavior is possible. A case study of a steam generator (boiler) of a power plant is presented.
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