基于Elman递归网络的涡扇发动机健康时序分类

N. M. Nascimento, G. Barreto, C. N. Júnior, Pedro Rebouças Filho
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引用次数: 1

摘要

预后和健康管理(PHM)在基于状态的维护程序中起着至关重要的作用。为此,学术界和工业界都投入了大量的精力来提供高效、安全、可靠的解决方案。在这方面,我们的目标是通过提出一个基于Elman递归神经网络的发动机健康状态识别的时间分类器来贡献这一领域。对所提出方法的评估涉及来自C-MAPSS的基准数据集,C-MAPSS是NASA的一个灵活的涡扇发动机模拟。然后与最先进的方法进行全面的性能比较。该系统能够提前125步识别发动机的总退化,置信度为86.21%,假阴性率低,即发动机故障状态被识别为正常状态的比例低于2%。采用基于时间的分类方法,对涡扇发动机的诊断准确率达到95%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal Classification of Turbofan Engine Health using Elman Recurrent Network
Prognosis and health management (PHM) plays an essential role in condition-based maintenance routines. For such purposes, academy and industry have devoted considerable efforts into providing efficient, safe and reliable solutions. In this regard, we aim at contributing to this field by proposing a temporal classifier for engine’s health state identification based on the Elman recurrent neural network. The evaluation of the proposed approach involves a benchmarking data set originated from the C-MAPSS, a flexible turbofan engine simulation by NASA. A comprehensive performance comparison with state of the art approaches is then carried out. The proposed system is able to identify engine’s total degradation 125 steps in advance, with 86.21% of confidence and low false negative rate, i.e. less than 2% of engines faulty conditions are identified as normal. With a temporal-based classification, the proposed approach reaches over 95% of accuracy on turbofan diagnosis.
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