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Comparison of random forest, artificial neural networks and support vector machine for intelligent diagnosis of rotating machinery

机译:随机林,人工神经网络与支持向量机的旋转机械智能诊断的比较

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摘要

Nowadays, the data-driven diagnosis method, exploiting pattern recognition method to diagnose the fault patterns automatically, achieves much success for rotating machinery. Some popular classification algorithms such as artificial neural networks and support vector machine have been extensively studied and tested with many application cases, while the random forest, one of the present state-of-the-art classifiers based on ensemble learning strategy, is relatively unknown in this field. In this paper, the behavior of random forest for the intelligent diagnosis of rotating machinery is investigated with various features on two datasets. A framework for the comparison of different methods, that is, random forest, extreme learning machine, probabilistic neural network and support vector machine, is presented to find the most efficient one. Random forest has been proven to outperform the comparative classifiers in terms of recognition accuracy, stability and robustness to features, especially with a small training set. Additionally, compared with traditional methods, random forest is not easily influenced by environmental noise. Furthermore, the user-friendly parameters in random forest offer great convenience for practical engineering. These results suggest that random forest is a promising pattern recognition method for the intelligent diagnosis of rotating machinery.
机译:如今,数据驱动诊断方法,利用模式识别方法自动诊断故障模式,实现了旋转机械的大大成功。一些流行的分类算法,如人工神经网络和支持向量机已经广泛研究和测试了许多应用案例,而随机森林,基于集合学习策略的目前最先进的分类器之一,相对未知在这个领域里。在本文中,在两个数据集上调查了随机森林对旋转机械智能诊断的行为。提供了一种比较不同方法的框架,即随机森林,极端学习机,概率神经网络和支持向量机,以找到最有效的方法。已被证明随机森林以识别准确性,稳定性和特征的稳健性,特别是小型训练套装优于比较分类器。此外,与传统方法相比,随机森林不容易受环境噪音的影响。此外,随机林中的用户友好参数为实际工程提供了极大的便利。这些结果表明,随机森林是旋转机械智能诊断的有希望的模式识别方法。

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