An Improved Similarity-based Prognostics Method for Remaining Useful Life Estimation of Aero-Engine

Han Bingjie, Niu Wei, Wang Jichao
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引用次数: 1

Abstract

Remaining Useful Life (RUL) estimation is the most common task in the research field of prognostics and health management (PHM). Accurate RUL estimation can avoid accidents, maximize equipment utilization, and minimize maintenance costs. RUL estimation based on performance degradation data is a hot spot in current research. The data-driven method can find out the relationship between the sensor data and the system degradation level with run-to-failure data and do not require any domain knowledge. RUL estimation can be carried out even when it is difficult to obtain the mathematical model of system degradation process. Sensors are used to collect data and monitor performance index. The actual system will experience multiple working conditions from the initial state to the performance failure process, and different working conditions have different impact on system degradation. In order to solve the problem that the degradation trend of sensor data is not declining obviously and the prediction of residual life is not accurate, a similar residual remaining useful life prediction method based on operating conditions clustering analysis and information fusion is proposed. Similarity-based methods are suitable for RUL estimation when complex systems cannot use data learning to build a global model. The core idea of RUL estimation based on similarity method is that if the test samples have similar degradation performance as the reference samples, then they may have similar RUL. In this paper, considering the influence of system operating conditions and sensor sensitivity on aero-engine life prediction, a remaining life estimation method based on multi-information fusion residual similarity model is proposed. Firstly, different working conditions were analyzed by clustering, and the data of various sensors were normalized. Then, the data of multiple sensors with different sensitivity were fused into a health index related to system degradation by the information fusion method. The distance between the degradation curve of the test sample and the degradation trajectory of the similar model was taken as the scoring basis, and the closest degradation curves were selected according to the scoring level. Finally, the closest similar degradation curves were selected according to the scores, and the Remaining Useful Life was predicted based on the residual life of these curves. The validity of the proposed method is verified by the failure data test of aero turbofan engine. The experimental results show that the proposed method has high accuracy and versatility when a large number of historical data are available. By comparing the estimated life of different breakpoints, it is found that the Remaining Useful Life estimation becomes more accurate with the increase of the proportion of verified data. Compared with other related methods, this method has achieved better results in predicting accuracy.
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一种改进的基于相似度的航空发动机剩余使用寿命预测方法
剩余使用寿命(RUL)估计是预后与健康管理(PHM)研究领域中最常见的问题。准确的RUL估算可以避免事故发生,最大限度地提高设备利用率,最大限度地降低维护成本。基于性能退化数据的规则规则估计是当前研究的热点。数据驱动方法不需要任何领域知识,可以通过运行失效数据找出传感器数据与系统退化等级之间的关系。即使难以获得系统退化过程的数学模型,也可以进行RUL估计。传感器用于采集数据和监控性能指标。实际系统从初始状态到性能失效过程会经历多种工况,不同工况对系统退化的影响不同。为了解决传感器数据退化趋势下降不明显和剩余寿命预测不准确的问题,提出了一种基于工况聚类分析和信息融合的类似剩余使用寿命预测方法。当复杂系统不能使用数据学习来构建全局模型时,基于相似度的方法适用于RUL估计。基于相似度方法的RUL估计的核心思想是,如果测试样本与参考样本具有相似的退化性能,则它们可能具有相似的RUL。考虑到系统工况和传感器灵敏度对航空发动机寿命预测的影响,提出了一种基于多信息融合残差相似度模型的航空发动机剩余寿命估计方法。首先对不同工况进行聚类分析,对各传感器数据进行归一化处理;然后,采用信息融合方法将多个不同灵敏度传感器的数据融合成一个与系统退化相关的健康指标;以测试样本的退化曲线与相似模型的退化轨迹之间的距离作为评分依据,根据评分水平选取最接近的退化曲线。最后,根据得分选择最接近的相似退化曲线,并根据这些曲线的剩余寿命预测剩余使用寿命。通过航空涡扇发动机的故障数据试验,验证了该方法的有效性。实验结果表明,在具有大量历史数据的情况下,该方法具有较高的准确性和通用性。通过比较不同断点的估计寿命,发现随着验证数据比例的增加,剩余使用寿命的估计更加准确。与其他相关方法相比,该方法在预测精度上取得了较好的效果。
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