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Under Sampling Adaboosting Shapelet Transformation for Time Series Feature Extraction

机译:采样Adaboosting Shapelet变换的时间序列特征提取

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To predict for machine defects, a classifier is required to classify the time series data collected from the sensors into the fault state and the normal state. In many cases, the data collected by sensors is time series data collected at various frequencies. Excessive computer load is required to handle this as it is. Therefore, there has been a lot of research being done on the process of extracting features that are highly classified from time series data. In particular, data generated at real-world is unbalanced and noisy, requiring time series classifiers to minimize their impact. Shapelet transformation is generally effectively known for classifying time series data. This paper proposes a process of feature extraction that is strong for noise and over-fitting to be applicable in practice. We can extract the feature from the time series data through the proposed algorithm and expect it to be used in various fields such as smart factory.
机译:为了预测机器缺陷,需要使用分类器将从传感器收集的时间序列数据分类为故障状态和正常状态。在许多情况下,传感器收集的数据是在各种频率下收集的时间序列数据。需要过多的计算机负载才能按原样处理。因此,在从时间序列数据中提取高度分类的特征的过程中进行了大量研究。特别是,在现实世界中生成的数据是不平衡且嘈杂的,需要时间序列分类器将其影响最小化。通常有效地知道小波变换以对时间序列数据进行分类。本文提出了一种特征提取的过程,该过程对于噪声和过度拟合具有很强的可应用性。我们可以通过提出的算法从时间序列数据中提取特征,并期望将其用于智能工厂等各个领域。

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