Computational Intelligence Research Group, Institute of Computer Science, University of Wroclaw, 50-383 Wroclaw, Poland.
Faculty of Mining and Geoengineering, AGH University of Science and Technology, 30-059 Cracow, Poland.
Sensors (Basel). 2020 Oct 22;20(21):5979. doi: 10.3390/s20215979.
Monitoring the condition of rotating machinery, especially planetary gearboxes, is a challenging problem. In most of the available approaches, diagnostic procedures are related to advanced signal pre-processing/feature extraction methods or advanced data (features) analysis by using artificial intelligence. In this paper, the second approach is explored, so an application of decision trees for the classification of spectral-based 15D vectors of diagnostic data is proposed. The novelty of this paper is that by a combination of spectral analysis and the application of decision trees to a set of spectral features, we are able to take advantage of the multidimensionality of diagnostic data and classify/recognize the gearbox condition almost faultlessly even in non-stationary operating conditions. The diagnostics of time-varying systems are a complicated issue due to time-varying probability densities estimated for features. Using multidimensional data instead of an aggregated 1D feature, it is possible to improve the efficiency of diagnostics. It can be underlined that in comparison to previous work related to the same data, where the aggregated 1D variable was used, the efficiency of the proposed approach is around 99% (ca. 19% better). We tested several algorithms: classification and regression trees with the Gini index and entropy, as well as the random tree. We compare the obtained results with the K-nearest neighbors classification algorithm and meta-classifiers, namely: random forest and AdaBoost. As a result, we created the decision tree model with 99.74% classification accuracy on the test dataset.
监测旋转机械的状态,特别是行星齿轮箱的状态,是一个具有挑战性的问题。在大多数现有方法中,诊断程序与先进的信号预处理/特征提取方法或使用人工智能的先进数据(特征)分析相关。在本文中,探讨了第二种方法,因此提出了一种基于决策树的用于分类基于光谱的 15D 诊断数据向量的应用。本文的新颖之处在于,通过结合光谱分析和决策树在一组光谱特征上的应用,我们能够利用诊断数据的多维性,并在非平稳工作条件下几乎无误地对齿轮箱状态进行分类/识别。由于特征的时变概率密度估计,时变系统的诊断是一个复杂的问题。使用多维数据而不是聚合的 1D 特征,可以提高诊断效率。可以强调的是,与使用聚合的 1D 变量的同一数据相关的先前工作相比,所提出方法的效率约为 99%(约提高 19%)。我们测试了几种算法:使用基尼指数和熵的分类和回归树,以及随机树。我们将获得的结果与 K-最近邻分类算法和元分类器(即随机森林和 AdaBoost)进行了比较。结果,我们在测试数据集上创建了具有 99.74%分类准确性的决策树模型。