Regression kernel for prognostics with support vector machines

Josey Mathew, Ming Luo, C. Pang
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引用次数: 14

Abstract

Estimating the remaining useful life (RUL) of systems and/or equpipments has been an important goal for reliable, safe, and profitable operation of industrial plants. However, traditional mathematical and statistical modeling based approaches are difficult to design and they adapt poorly to the ever changing operating and environmental conditions in real-world industries. With recent developments in computational technologies, data storage, and industrial automation recording and storage of large amounts of historical plant data from embedded sensors and maintenance records have become easy. Availability of large data sets together with advancements in data driven machine learning algorithms has been the key driver for prognostic and diagnostic research in the industry as well as by academia. Nevertheless, developing generalized machine learning algorithms for the prognostic domain has been challenging due to the very nature of the problem. This paper describes some of these challenges and proposes a modified regression kernel that can be used by support vector regression (SVR) for prognostic problems. The method is tested on a simplified simulated time-series data set that is modeled to represent the challenges presented.
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基于支持向量机的预测回归核
评估系统和/或设备的剩余使用寿命(RUL)一直是工业工厂可靠、安全和盈利运行的重要目标。然而,传统的基于数学和统计建模的方法很难设计,并且它们难以适应现实世界中不断变化的操作和环境条件。随着计算技术的最新发展,数据存储和工业自动化记录和存储来自嵌入式传感器和维护记录的大量历史工厂数据变得容易。大数据集的可用性以及数据驱动机器学习算法的进步一直是行业和学术界预测和诊断研究的关键驱动力。然而,由于问题的本质,为预测领域开发广义机器学习算法一直具有挑战性。本文描述了其中的一些挑战,并提出了一个改进的回归核,可用于支持向量回归(SVR)的预测问题。该方法在一个简化的模拟时间序列数据集上进行了测试,该数据集建模以表示所提出的挑战。
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