Statistical Rule Extraction for Gas Turbine Trip Prediction

G. Bechini, E. Losi, L. Manservigi, G. Pagliarini, G. Sciavicco, Eduard Ionel Stan, M. Venturini
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Abstract

Gas turbine trip is an operational event that arises when undesirable operating conditions are approached or exceeded, and predicting its onset is a largely unexplored area. The application of novel artificial intelligence methods to this problem is interesting both from the computer science and the engineering point of view, and the results may be relevant in both the academia and the industry. In this paper we consider data gathered from a fleet of Siemens industrial gas turbines in operation that include several thermodynamic variables observed during a long period of operation. To assess the possibility of predicting trip events, we first apply a new, systematic statistical analysis to identify the most important variables, then we use a novel machine learning technique known as temporal decision tree, which differ from canonical decision tree because it allows a native treatment of the temporal component, and has an elegant logical interpretation that eases the post-hoc validation of the results. Finally, we use the learned models to extract statistical rules. As a result, we are able to select the 5 most informative variables, build a predictive model with an average accuracy of 73%, and extract several rules. To our knowledge, this is the first attempt to use such an approach not only in the gas turbine field, but also in the whole industry domain.
燃气轮机跳闸预测的统计规则提取
燃气轮机脱扣是在接近或超过不期望的运行条件时发生的一种运行事件,其发生的预测在很大程度上是一个未开发的领域。从计算机科学和工程的角度来看,将新的人工智能方法应用于这一问题是有趣的,其结果可能在学术界和工业界都具有相关性。在本文中,我们考虑从运行中的西门子工业燃气轮机车队收集的数据,其中包括在长时间运行期间观察到的几个热力学变量。为了评估预测旅行事件的可能性,我们首先应用了一种新的、系统的统计分析来识别最重要的变量,然后我们使用了一种新的机器学习技术,称为时间决策树,它与规范决策树不同,因为它允许对时间成分进行本地处理,并且具有优雅的逻辑解释,可以简化结果的事后验证。最后,利用学习到的模型提取统计规则。因此,我们能够选择5个信息量最大的变量,建立平均准确率为73%的预测模型,并提取若干规则。据我们所知,这是第一次尝试使用这种方法,不仅在燃气轮机领域,而且在整个行业领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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