Health Indicator Forecasting for Improving Remaining Useful Life Estimation

Qiyao Wang, Ahmed K. Farahat, Chetan Gupta, Haiyan Wang
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引用次数: 2

Abstract

Prognostics is concerned with predicting the future health of the equipment and any potential failures. With the advances in the Internet of Things (IoT), data-driven approaches for prognostics that leverage the power of machine learning models are gaining popularity. One of the most important categories of data-driven approaches relies on a predefined or learned health indicator to characterize the equipment condition up to the present time and make inference on how it is likely to evolve in the future. In these approaches, health indicator forecasting that constructs the health indicator curve over the lifespan using partially observed measurements (i.e., health indicator values within an initial period) plays a key role. Existing health indicator forecasting algorithms, such as the functional Empirical Bayesian approach, the regression-based formulation, a naive scenario matching based on the nearest neighbor, have certain limitations. In this paper, we propose a new ‘generative + scenario matching' algorithm for health indicator forecasting. The key idea behind the proposed approach is to first non-parametrically fit the underlying health indicator curve with a continuous Gaussian Process using a sample of run-to-failure health indicator curves. The proposed approach then generates a rich set of random curves from the learned distribution, attempting to obtain all possible variations of the target health condition evolution process over the system's lifespan. The health indicator extrapolation for a piece of functioning equipment is inferred as the generated curve that has the highest matching level within the observed period. Our experimental results show the superiority of our algorithm over the other state-of-the-art methods.
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用于改进剩余使用寿命估计的运行状况指标预测
预测是关于预测设备未来的健康状况和任何潜在的故障。随着物联网(IoT)的发展,利用机器学习模型的力量进行预测的数据驱动方法越来越受欢迎。数据驱动的方法中最重要的一类依赖于预定义的或学习的健康指标来表征设备到目前为止的状况,并推断其未来可能如何演变。在这些方法中,使用部分观察到的测量(即初始时期的健康指标值)构建整个生命周期的健康指标曲线的健康指标预测起着关键作用。现有的健康指标预测算法,如功能经验贝叶斯方法、基于回归的公式、基于最近邻的朴素场景匹配等,都存在一定的局限性。本文提出了一种新的健康指标预测“生成+场景匹配”算法。提出的方法背后的关键思想是,首先使用运行到故障的健康指标曲线样本,用连续高斯过程非参数拟合潜在的健康指标曲线。然后,该方法从学习分布中生成一组丰富的随机曲线,试图获得目标健康状况在系统生命周期内进化过程的所有可能变化。运行设备的健康指标外推是根据所生成的曲线推断的,该曲线在观察期间内具有最高的匹配水平。我们的实验结果表明,我们的算法优于其他最先进的方法。
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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