A Jet Engine Prognostic and Diagnostic System Based on Bayesian Classifier

M. Saeidi, M. Soufian, A. Elkurdi, S. Nefti-Meziani
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引用次数: 2

Abstract

In this work, a predictive maintenance system is discussed as a modern solution for reducing downtimes in complex systems such as airplanes’ jet engines. The developed predictive maintenance system is based on prognostic and predictive algorithms which will be constructed by using machine learning techniques. Bayesian theorem is specially studied and employed for this purpose in this paper. The design and implementation of a Naïve Bayesian classifier will be presented to demonstrate and challenge the practicality of the method. A turbofan jet engine health check system was chosen as a complex and live industrial testbed example. We also demonstrate that the system in question has a high entropy and despite this, the Bayesian approach is sufficient enough to eliminate the critical errors as well as maintain a satisfactory overall accuracy.
基于贝叶斯分类器的喷气发动机预测诊断系统
在这项工作中,预测维修系统作为一个现代解决方案,以减少停机时间的复杂系统,如飞机的喷气发动机进行了讨论。所开发的预测性维护系统是基于使用机器学习技术构建的预测和预测算法。本文专门研究和应用贝叶斯定理。设计和实现Naïve贝叶斯分类器将展示和挑战该方法的实用性。选取涡扇喷气发动机健康检测系统作为一个复杂的工业性试验台实例。我们还证明了所讨论的系统具有高熵,尽管如此,贝叶斯方法足以消除关键误差并保持令人满意的总体精度。
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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