基于机器学习的涡扇发动机剩余使用寿命预测

Vimala Mathew, Tom Toby, Vikram Singh, B. Rao, M. G. Kumar
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引用次数: 62

摘要

对于任何涉及机器的企业来说,设备维护都是一项至关重要的活动。预测性维护是基于对任何设备的故障时间的预测来安排维护的方法。预测可以通过分析设备的测量数据来完成。机器学习是一种技术,通过对过去输入数据及其输出行为进行训练,可以根据模型预测结果。所开发的模型可用于在机器实际发生故障之前进行预测。有不同的方法可用于开发机器学习模型。本文对现有的涡轮风扇发动机剩余使用寿命预测机器学习算法进行了比较研究。机器学习模型是基于来自美国宇航局预测数据存储库的涡轮风扇发动机数据集构建的。利用训练集构造模型,并用测试数据集进行验证。将所得结果与实际结果进行比较,计算精度,并确定出精度最大的算法。我们选择了10种机器学习算法来比较预测精度。对不同算法进行比较,得到在生命周期数方面对剩余有效生命周期预测最接近的预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Remaining Useful Lifetime (RUL) of turbofan engine using machine learning
Maintenance of equipment is a critical activity for any business involving machines. Predictive maintenance is the method of scheduling maintenance based on the prediction about the failure time of any equipment. The prediction can be done by analyzing the data measurements from the equipment. Machine learning is a technology by which the outcomes can be predicted based on a model prepared by training it on past input data and its output behavior. The model developed can be used to predict machine failure before it actually happens. There are different approaches available for developing a machine learning model. In this paper, a comparative study of existing set of machine learning algorithms to predict the Remaining Useful Lifetime of aircraft's turbo fan engine is done. The machine learning models were constructed based on the datasets from turbo fan engine data from the Prognostics Data Repository of NASA. Using a training set, a model was constructed and was verified with a test data set. The results obtained were compared with the actual results to calculate the accuracy and the algorithm that results in maximum accuracy is identified. We have selected ten machine learning algorithms for comparing the prediction accuracy. The different algorithms were compared to obtain the prediction model having the closest prediction of remaining useful lifecycle in terms of number of life cycles.
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