On-line adaptive data-driven fault prognostics of complex systems

Datong Liu, Shaojun Wang, Yu Peng, Xiyuan Peng
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引用次数: 10

Abstract

Data-driven prognostics based on sensor or historical test data have become appropriate prediction means in prognostics and health management (PHM) application. However, most traditional data-driven forecasting methods are off-line which would be seriously limited in many PHM systems that need on-line predicting and real-time processing. Furthermore, even in some on-line prediction methods such as Online SVR, there are conflicts and trade-offs between prognostics efficiency and accuracy. Therefore, in different PHM applications, prognostics algorithms should be on-line, flexible and adaptive to balance the prediction efficiency and accuracy. An on-line adaptive data-driven prognostics strategy is proposed with five different improved on-line prediction algorithms based on Online SVR. These five algorithms are improved with kernel combination and sample reduction to realize higher precision and efficiency. These algorithms can achieve more accurate results by data pre-processing, moreover, faster operation speed and different computational complexity can be achieved by improving training process with on-line data reduction. With these different improved Online SVR approaches, varies of demands with different precision and efficiency could be fulfilled by an adaptive prediction strategy. To evaluate the proposed prognostics strategy, we have executed simulation experiments with Tennessee Eastman (TE) process. In addition, the prediction strategies are also tested and evaluated by traffic mobile communication data from China Mobile Communications Corporation Heilongjiang Co., Ltd. Experiments and test results prove its effectiveness and confirm that the algorithms can be effectively applied to the on-line status prediction with excellent performance in both precision and efficiency.
复杂系统在线自适应数据驱动故障预测
基于传感器或历史测试数据的数据驱动预测已成为预测和健康管理(PHM)应用的合适预测手段。然而,传统的数据驱动预测方法大多是离线的,这严重限制了许多需要在线预测和实时处理的PHM系统。此外,即使在一些在线预测方法中,如在线SVR,也存在预测效率和准确性之间的冲突和权衡。因此,在不同的PHM应用中,预测算法应该是在线的、灵活的和自适应的,以平衡预测效率和准确性。提出了一种基于在线支持向量回归的在线自适应数据驱动预测策略。通过核组合和样本约简对这五种算法进行改进,提高了算法的精度和效率。这些算法通过数据预处理可以获得更准确的结果,并且通过在线数据约简改进训练过程可以获得更快的运算速度和不同的计算复杂度。这些改进的在线支持向量回归方法可以通过自适应预测策略满足不同精度和效率的需求。为了评估所提出的预测策略,我们使用田纳西伊士曼(TE)流程进行了模拟实验。此外,还利用中国移动通信黑龙江有限公司的流量移动通信数据对预测策略进行了验证和评价。实验和测试结果证明了该算法的有效性,并证实该算法可以有效地应用于在线状态预测,具有良好的精度和效率。
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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