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A Comparative Study of State-of-the-Art Machine Learning Algorithms for Predictive Maintenance

机译:用于预测性维护的最新机器学习算法的比较研究

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Predictive maintenance strives to maximize the availability of engineering systems. Over the last decade, machine learning has started to play a pivotal role in the domain to predict failures in machines and thus contribute to predictive maintenance. Ample approaches have been proposed to exploit machine learning based on sensory data obtained from engineering systems. Traditionally, these were based on feature engineering from the data followed by the application of a traditional machine learning algorithm. Recently, also deep learning approaches that are able to extract the features automatically have been utilized (including LSTMs and Convolutional Neural Networks), showing promising results. However, deep learning approaches need a substantial amount of data to be effective. Also, novel developments in deep learning architectures for time series have not been applied to predictive maintenance so far. In this paper, we compare a variety of different traditional machine learning and deep learning approaches to a representative (and modestly sized) predictive maintenance dataset and study their differences. In the deep learning approaches, we include a recently proposed approach that has not been tested for predictive maintenance yet: the temporal convolutional neural network. We compare the approaches over different sizes of the training dataset. The results show that, when the data is scarce, the temporal convolutional network performs better than the common deep learning approaches applied to predictive maintenance. However, it does not beat the more traditional feature engineering based approaches.
机译:预测性维护努力使工程系统的可用性最大化。在过去的十年中,机器学习已开始在预测机器故障的领域中发挥举足轻重的作用,从而有助于预测性维护。已经提出了很多方法来基于从工程系统获得的感官数据来利用机器学习。传统上,这些方法基于数​​据的特征工程,然后应用传统的机器学习算法。最近,还利用了能够自动提取特征的深度学习方法(包括LSTM和卷积神经网络),显示了令人鼓舞的结果。但是,深度学习方法需要大量数据才能有效。同样,到目前为止,深度学习架构中针对时间序列的新开发尚未应用于预测性维护。在本文中,我们将各种不同的传统机器学习和深度学习方法与代表性(适度大小)的预测性维护数据集进行了比较,并研究了它们之间的差异。在深度学习方法中,我们包括一个最近提出的,尚未经过预测性维护测试的方法:时间卷积神经网络。我们将训练数据集的不同大小上的方法进行比较。结果表明,当数据稀缺时,时间卷积网络的性能要优于应用于预测性维护的常见深度学习方法。但是,它没有击败更传统的基于特征工程的方法。

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