DETEKSI CACAT BANTALAN GELINDING BERBASIS ALGORITMA DECISION TREES DAN PARAMETER STATISTIK

B. P. Kamiel, Fauzan Anjarico, Sudarisman Sudarisman
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Abstract

Rolling bearings are a common machine element found in rotary machines. The components in the rolling bearing such as the inner race, outer race, rolling element, and cage are the parts that are often damaged. Traditionally spectrum analysis is used to diagnose bearing defects. However, spectrum analysis is not effectively applied to bearings with early defects because the vibration signal generated is dominated by frequency components from other machine elements, so the frequency of bearing defects cannot be observed. This study proposes an alternative method of detecting bearing defects based on vibration signals using machine learning with a decision tree algorithm. This method is more effective than the spectrum analysis method because machine learning is based on feature extraction and pattern recognition of vibration signal data, therefore, providing classification results directly without further analysis. Vibration signals were recorded using an accelerometer mounted on a bearing housing on a test rig. Nine-time domain statistical parameters and six frequency domain statistical parameters were extracted from the vibration signal and then used as input for decision trees. The results show that the decision trees algorithm gives an accuracy of 94.4% for classifying three rolling bearing conditions using the input of 6 selected frequency domain statistical parameters.
基于决策树算法和参数统计的凝胶凝结检测
滚动轴承是旋转机械中常见的机械元件。滚动轴承中的组件,如内圈、外圈、滚动体和保持架,是经常损坏的部件。传统上,频谱分析用于诊断轴承缺陷。然而,频谱分析并不能有效地应用于存在早期缺陷的轴承,因为产生的振动信号被其他机器元件的频率成分所主导,因此无法观察到轴承缺陷的频率。本研究提出了基于振动信号的另一种检测轴承缺陷的方法,即使用决策树算法进行机器学习。这种方法比频谱分析方法更有效,因为机器学习基于振动信号数据的特征提取和模式识别,因此无需进一步分析即可直接提供分类结果。振动信号是通过安装在测试平台轴承座上的加速度计记录的。从振动信号中提取了九个时域统计参数和六个频域统计参数,然后将其作为决策树的输入。结果表明,决策树算法使用 6 个选定的频域统计参数对三种滚动轴承状况进行分类的准确率为 94.4%。
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