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Predictive Performance of Machine Learning Algorithms Trained with Sparse Data

机译:机器学习算法的预测性能,稀疏数据训练

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In the field of prognostic health management of aerospace assets and fleets, accurate prediction of the future state of an asset based on current and historical data has always been a challenge. Several different methods of computing that future state are commonly utilized including physics-based simulation and machine learning algorithms. Physics-based simulations have the advantage of true predictability in that they are able to evolve a model of the system using first principles based on causality and predict future states that have yet to be observed on real assets, however they also have the disadvantage of being difficult, time-consuming, and expensive to construct. Machine learning algorithms are the reverse: simple, fast, and cheap to construct but without true predictability since they can only fit input data to the data sets with which they were trained. For some aerospace fleets with a significant amount of historical degradation and failure data to train a model, machine learning algorithms provide very good predictions, but for other fleets with little historical degradation and failure data, machine learning may not provide good predictions of the future states of the assets. This paper explores the accuracy of the predictions made with machine learning algorithms when they are trained with sparse data with varying quality. An empirical study is performed where machine learning models are trained with data representing various historical data set types that are typically encountered in aerospace health management (e.g. low quality dense data, high quality sparse data, etc.), and the results from running those algorithms are compared with an idealized physics-based model. The predictive performance of the machine learning algorithms are quantified, and suggestions on when it is appropriate to utilize machine learning algorithms in aerospace health management systems are presented.
机译:在航空航天资产和舰队的预后健康管理领域,基于当前和历史数据的资产未来状态的准确预测一直是一项挑战。计算未来状态的几种不同方法通常使用包括基于物理的仿真和机器学习算法。基于物理的模拟具有真正可预测性的优点,因为它们能够使用基于因果关系的第一个原则来演变系统的模型,并预测在实际资产上尚未观察到的未来状态,但它们也具有存在的缺点难以,耗时,昂贵的构造。机器学习算法是反向:简单,快速,廉价构建,但没有真正的可预测性,因为它们只能将输入数据拟合到培训的数据集。对于一些航空航天舰队具有大量历史退化和失败数据来培训模型,机器学习算法提供了非常好的预测,但对于其他历史退化和失败数据的船队,机器学习可能无法提供未来状态的良好预测资产。本文探讨了使用具有不同质量稀疏数据的机器学习算法所做的预测的准确性。执行经验研究,其中机器学习模型培训,这些数据具有代表航空航天健康管理(例如低质量密集数据,高质量稀疏数据等)的各种历史数据集类型,以及运行这些算法的结果与基于理想的物理学模型进行比较。呈现了机器学习算法的预测性能,并提出了对适用于航空航天健康管理系统中的机器学习算法的建议。

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