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A deep Boltzmann machine and multi-grained scanning forest ensemble collaborative method and its application to industrial fault diagnosis

机译:深层玻璃机和多粒扫描林合作协作方法及其在工业故障诊断中的应用

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摘要

The essence of big 'data-based intelligent industrial fault diagnosis lies in the process of machine learning and feature engineering. Deep learning methods can discover the complex relationship between data and potential faults, and outperform the traditional machine learning methods. The gcForest is able to generate a deep forest ensemble, which allows gcForest to do representation learning and fault classification. At each node of the random tree, gcForest selects the one with the best gini value from candidates for splitting. However, most of the data acquired from industrial scene is with continuous and unstructured attributes, accordingly the node-splitting procedure will be generally intractable. We present a novel approach with the combination of deep Boltzmann machine and multi-grained scanning forest ensemble, to effectively deal with industrial fault diagnosis based on big data. At first, we use deep Boltzmann machine to turn all features of data to be processed by forests into binary, and then utilize multi-grained scanning forest ensemble to process them in every layer of deep Boltzmann machine. By means of the collaborative method, we can address the aforementioned issues. The experimental results and analysis on industrial fault diagnosis under different experimental conditions, show that the fault classification accuracy of the proposed approach is competitive to other popular deep learning algorithms, but also takes much less time than gcForest.
机译:大“基于数据的智能工业故障诊断的本质在于机器学习过程和特色工程。深度学习方法可以发现数据和潜在故障之间的复杂关系,并且优于传统的机器学习方法。 GCForest能够生成深林合奏,这允许GCForest做代表学习和故障分类。在随机树的每个节点上,GCForest选择具有来自候选者的最佳GINI值的那个。然而,从工业场景获取的大多数数据都是连续和非结构化的属性,因此节点分割过程通常是棘手的。我们提出了一种新的方法,与深博尔兹曼机和多粒扫描森林集合的结合,有效地应对基于大数据的工业故障诊断。首先,我们使用Deep Boltzmann机器将森林处理的数据的所有功能转化为二进制文件,然后利用多粒扫描森林集合来处理它们的深螺栓机器的每层。通过协作方法,我们可以解决上述问题。不同实验条件下工业故障诊断的实验结果和分析,表明所提出的方法的故障分类准确性对其他流行的深度学习算法具有竞争力,但也需要比GCFlest更少的时间。

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