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New fusion and selection approaches for estimating the remaining useful life using Gaussian process regression and induced ordered weighted averaging operators

机译:使用高斯过程回归估计剩余使用寿命的新融合和选择方法,并诱导有序加权平均运算符

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In this paper, we propose new fusion and selection approaches to accurately predict the remaining useful life. The fusion scheme is built upon the combination of outcomes delivered by an ensemble of Gaussian process regression models. Each regressor is characterized by its own covariance function and initial hyperparameters. In this context, we adopt the induced ordered weighted averaging as a fusion tool to achieve such combination. Two additional fusion techniques based on the simple averaging and the ordered weighted averaging operators besides a selection approach are implemented. The differences between adjacent elements of the raw data are used for training instead of the original values. Experimental results conducted on lithium-ion battery data report a significant improvement in the obtained results. This work may provide some insights regarding the development of efficient intelligent fusion alternatives for further prognostic advances.
机译:在本文中,我们提出了新的融合和选择方法,以准确预测剩余的使用寿命。融合方案建立在高斯过程回归模型的集合交付的结合之上。每个回归主的特征在于其自身的协方差函数和初始超公共表。在这种情况下,我们采用诱导的有序加权平均作为融合工具来实现这种组合。基于简单平均和除了选择方法之外的简单平均和有序加权平均运算符的两种附加融合技术。原始数据的相邻元素之间的差异用于训练而不是原始值。对锂离子电池数据进行的实验结果报告了所得结果的显着改善。这项工作可能对高效智能融合替代方案的发展提供了一些见解,以便进一步预后进步。

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