The main objective of Prognostics and Health Management is to estimate the Remaining Useful Lifetime (RUL), namely, the time that a system or a piece of equipment is still in working order before starting to function incorrectly. In recent years, numerous machine learning algorithms have been proposed for RUL estimation, mainly focusing on providing more accurate RUL predictions. However, there are many sources of uncertainty in the problem, such as inherent randomness of systems failure, lack of knowledge regarding their future states, and inaccuracy of the underlying predictive models, making it infeasible to predict the RULs precisely. Hence, it is of utmost importance to quantify the uncertainty alongside the RUL predictions. In this work, we investigate the conformal prediction (CP) framework that represents uncertainty by predicting sets of possible values for the target variable (intervals in the case of RUL) instead of making point predictions. Under very mild technical assumptions, CP formally guarantees that the actual value (true RUL) is covered by the predicted set with a degree of certainty that can be prespecified. We study three CP algorithms to conformalize any single-point RUL predictor and turn it into a valid interval predictor. Finally, we conformalize two single-point RUL predictors, deep convolutional neural networks and gradient boosting, and illustrate their performance on the Commercial Modular Aero-Propulsion System Simulation (C-MAPSS) data sets.
翻译:预测和健康管理的主要目标是估计剩余使用寿命(RUL),即一个系统或设备在开始错误运行之前仍然处于正常运行状态的时间,直到开始错误运行。近年来,为RUL估算提出了许多机器学习算法,主要侧重于提供更准确的RUL预测。然而,问题中有许多不确定性来源,例如系统故障固有的随机性、对其未来状态缺乏了解以及基本预测模型的不准确性,使得无法准确预测RULs。因此,最重要的是在RUL预测的同时量化不确定性。在这项工作中,我们通过预测目标变量的可能值(RUL的中间值)而不是点预测,来调查反映不确定性的符合预测(CP)框架。在非常温和的技术假设下,CP正式保证实际价值(对RUL的准确性)由预估的准确度来覆盖。我们研究的是,Prop-RU-RUS-RUR系统,最后是两次预测,最后是一次预测。我们研究一次预测,将一次预测结果(RURU-RU-ral-RU-ral-ral-ral-ral)。