An Operation Condition-Matched Similarity Method for Remaining Useful Life Estimation with Dynamic Sample Fusion

Yuxuan Yang, Zhanbao Gao, Shu Zhang, Xu Long Li
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Abstract

Remaining useful life (RUL) estimation is a key technology in prognostics and health management (PHM). Considering the problem that operating condition (OC) is easily overlooked and sample fusion is mainly determined by experience, this paper presents an OC-matched similarity method with dynamic sample fusion. The method contains two main stages, including training stage for obtaining the library of OC-based degradation models and the trained parameter for dynamic sample fusion, and testing stage for RUL prediction. In the training stage, we extract the sensor data on account of the linear correlation coefficient and expand the library of degradation models through adding OC information. Then, cross-validation is implemented to train the parameter for dynamic sample fusion and parameter is optimally selected by minimizing the target function. When estimating RUL of test data, OC-matched similarity is measured by calculating the distance between test data and OC-matched model. Eventually, RUL is estimated by the weighted average of each sample based on the similarity measurement. This method is validated by the 2008 PHM Conference Challenge Data, which contains both sensor measurements and operating settings. The results have suggested significant improvement comparing with traditional similarity method.
基于动态样本融合的剩余使用寿命估算操作条件匹配相似性方法
剩余使用寿命(RUL)估计是预后和健康管理(PHM)中的一项关键技术。针对运行工况容易被忽略、样本融合主要由经验决定的问题,提出了一种基于运行工况匹配的动态样本融合相似度方法。该方法包括两个主要阶段,包括获取基于oc的退化模型库和训练参数用于动态样本融合的训练阶段,以及RUL预测的测试阶段。在训练阶段,我们利用线性相关系数提取传感器数据,并通过加入OC信息扩充退化模型库。然后,通过交叉验证训练动态样本融合的参数,并通过最小化目标函数来优选参数。在估计测试数据的RUL时,通过计算测试数据与oc匹配模型之间的距离来度量oc匹配相似度。最后,在相似性度量的基础上,通过对每个样本的加权平均来估计RUL。该方法通过2008年PHM会议挑战数据进行了验证,该数据包含传感器测量和操作设置。结果表明,与传统的相似度方法相比,该方法有明显的改进。
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