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Autonomous behavior modeling approach for diverse anomaly detection application

机译:自主行为建模方法在多种异常检测中的应用

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For absolute process safety in diverse machine applications, timely and reliable anomalous behavior detection is very crucial. Different machine applications have different normal behavior patterns and safety standards thus require adjustable and adaptive anomaly detection techniques. In this paper an autonomous behavior modeling approach for anomaly detection has been presented. In this approach time segmented vibration signals from the machines are transformed into spectral contents. After normalization, these frequency domain contents are divided into weighted frequency bins and then Gaussian models are achieved for these frequency bins over the entire training set. Using summation rule on the outputs of Gaussian models a single indicative measure of the machine health: normality score is obtained. The sensitivity of the normality score and anomaly detector towards potential anomalous signals can be controlled by using different number of bins and weights. Suitable parameters values, number of bins and weights profile, for anomaly detector model are selected autonomously using minimum value of the cost function. The increase of normality score of this model above a certain threshold is considered an alarm indicating anomalous behavior. Thus the proposed method enables us to achieve autonomously a suitable anomaly detection model with suitable parameters with controlled sensitivity during the test phase.
机译:为了在各种机器应用中实现绝对的过程安全,及时可靠的异常行为检测至关重要。不同的机器应用程序具有不同的正常行为模式和安全标准,因此需要可调和自适应的异常检测技术。在本文中,提出了一种用于异常检测的自主行为建模方法。在这种方法中,来自机器的时间分段振动信号被转换为频谱内容。归一化后,将这些频域内容划分为加权频点,然后在整个训练集上针对这些频点获得高斯模型。在高斯模型的输出上使用求和规则,可以得出机器健康状况的单个指示性度量:正常性得分。正常分数和异常检测器对潜在异常信号的敏感性可以通过使用不同数量的箱和权重来控制。使用成本函数的最小值自动选择适用于异常检测器模型的合适参数值,仓数和权重分布图。该模型的正常性得分的增加超过某个阈值被认为是指示异常行为的警报。因此,所提出的方法使我们能够在测试阶段自主地获得具有合适参数且灵敏度可控的合适异常检测模型。

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