A GKPCA-NHSMM based methodology for accurate RUL prognostics of nonlinear mechanical system with multistate deterioration

Gaige Chen, Jinglong Chen, Y. Zi
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引用次数: 3

Abstract

Remaining useful life (RUL) prognostics is a core problem in prognostics and health management (PHM). Accurate RUL prediction is crucial not only to the verification of mission goals but also to failure prevention and maintenance decision in a more effective and efficient manner. However, the substantial nonlinearity is one of most important challenges in deterioration modeling and RUL estimation of nonlinear mechanical system. An interesting contribution is the improvement of RUL prediction accuracy by the use of both greedy kernel principal components analysis (GKPCA) for dimensional reduction to extract feature from multi dimension data set of monitored nonlinear mechanical system and nonhomogeneous hidden semi-Markov model (NHSMM) to model the multistate deterioration process. A case study with the data set from turbofan engines is analyzed using the methodology, and by comparing the prediction accuracy with the previously linear PCA-NHSMM's, the result verifies the effectiveness (closer to actual RUL, earlier tracked health state, smaller boundary width) and efficiency(higher prognostics robustness) of the methodology.
基于GKPCA-NHSMM的多状态退化非线性机械系统RUL准确预测方法
剩余使用寿命(RUL)预测是预后与健康管理(PHM)中的核心问题。准确的RUL预测不仅对任务目标的验证至关重要,而且对以更有效和高效的方式预防故障和维护决策至关重要。然而,在非线性机械系统的退化建模和RUL估计中,大量的非线性是最重要的挑战之一。一个有趣的贡献是利用贪婪核主成分分析(GKPCA)降维提取被监测非线性机械系统的多维数据集特征和非均匀隐半马尔可夫模型(NHSMM)建模多状态劣化过程来提高RUL预测精度。利用该方法对涡扇发动机数据集进行了分析,并将预测精度与先前的线性PCA-NHSMM的预测精度进行了比较,结果验证了该方法的有效性(更接近实际RUL,更早跟踪健康状态,边界宽度更小)和效率(更高的预测鲁棒性)。
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