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Fault Detection and Diagnosis for Gas Turbines Based on a Kernelized Information Entropy Model

机译:基于内核信息熵模型的燃气轮机故障检测与诊断

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Gas turbines are considered as one kind of the most important devices in power engineering and have been widely used in power generation, airplanes, and naval ships and also in oil drilling platforms. However, they are monitored without man on duty in the most cases. It is highly desirable to develop techniques and systems to remotely monitor their conditions and analyze their faults. In this work, we introduce a remote system for online condition monitoring and fault diagnosis of gas turbine on offshore oil well drilling platforms based on a kernelized information entropy model. Shannon information entropy is generalized for measuring the uniformity of exhaust temperatures, which reflect the overall states of the gas paths of gas turbine. In addition, we also extend the entropy to compute the information quantity of features in kernel spaces, which help to select the informative features for a certain recognition task. Finally, we introduce the information entropy based decision tree algorithm to extract rules from fault samples. The experiments on some real-world data show the effectiveness of the proposed algorithms.
机译:燃气轮机被认为是电力工程中最重要的设备,并且已广泛用于发电,飞机和海军船舶以及挖油平台。但是,在大多数情况下,他们被监控而没有人行的人。非常希望开发技术和系统以远程监控其条件并分析其故障。在这项工作中,基于内核信息熵模型,我们在海上油井钻井平台上引入了一种在线状态监测和燃气轮机的故障诊断。 Shannon信息熵通常用于测量排气温度的均匀性,反映燃气轮机的气体路径的整体状态。此外,我们还扩展了熵以计算内核空间中的功能的信息量,这有助于为特定识别任务选择信息性功能。最后,我们介绍了基于信息熵的决策树算法,以从故障样本中提取规则。一些真实世界数据的实验表明了所提出的算法的有效性。

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