基于机器健康预测的新颖性检测

Dimitar Filev, F. Tseng
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引用次数: 49

摘要

本文提出了一种新的新颖性检测算法,用于机器健康状况的连续实时监测和潜在故障的预测。系统的核心是一个通用的进化模型,它不依赖于确定特定机器健康状况的特定测量参数。为了预测突然的和逐渐发展的(初期)变化,介绍了两种备选策略。该算法被实现为一个自主的软件代理,不断更新其决策模型,实现无监督递归学习算法。最后讨论了加速测试实验对算法的验证结果
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Novelty Detection Based Machine Health Prognostics
In this paper we present a new novelty detection algorithm for continuous real time monitoring of machine health and prediction of potential machine faults. The kernel of the system is a generic evolving model that is not dependent on the specific measured parameters determining the health of a particular machine. Two alternative strategies are introduced in order to predict abrupt and gradually developing (incipient) changes. This algorithm is realized as an autonomous software agent that continuously updates its decision model implementing an unsupervisory recursive learning algorithm. Results of validation of the proposed algorithm by accelerated testing experiments are also discussed
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