Statistical descriptor of normality based on Hotelling's T/sup 2/ statistic and mixture of Gaussians

A. Dolia
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引用次数: 1

Abstract

Novelty detection is an issue of primary importance as it can help to provide an improvement in the reliability of machine health monitoring. Novelty detection estimates the model of the normal operating regime or state and verifies whether new data is deviating from its normal operating regime. Feature extraction techniques using vibration data and novelty detection methods based on mixture of Gaussians (MoG), Chebyshev bound, Hotelling's statistic, and support vector machine (SVM) are discussed. A statistical descriptor of normality based on Hotelling's statistic and mixture of Gaussians is proposed. The performance of novelty detection algorithms based on the aforementioned techniques are analyzed for both real-life and artificial (real data with simulated load regime) vibration datasets. The proposed method demonstrates encouraging performance on real datasets with simulated load regime.
基于Hotelling的T/sup 2/统计量和混合高斯量的正态性统计描述符
新颖性检测是一个至关重要的问题,因为它可以帮助提高机器健康监测的可靠性。新颖性检测是对模型的正常运行状态或状态进行估计,并验证新数据是否偏离其正常运行状态。讨论了基于振动数据的特征提取技术和基于混合高斯(MoG)、切比雪夫界、霍特林统计量和支持向量机(SVM)的新颖性检测方法。提出了一种基于霍特林统计量和混合高斯量的正态性统计描述符。分析了基于上述技术的新颖性检测算法在真实和人工(具有模拟载荷状态的真实数据)振动数据集上的性能。该方法在模拟负载情况下的真实数据集上表现出令人鼓舞的性能。
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