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Vibration Region Analysis for Condition Monitoring of Gearboxes Using Image Processing and Neural Networks

机译:使用图像处理和神经网络齿轮箱状况监测的振动区域分析

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摘要

This paper focuses on extracting vibration region of gearboxes, monitoring parameters of the condition and detecting faults. When the gear contact surface tension exceeds the fatigue limit of the gear material because of excessive loading, inadequate lubrication, oil contamination and so on, tooth surface failures such as pitting, wear, tooth breakage, etc. occur. These types of defects in gear systems cause deterioration in the performance of gears, and thus significant operational problems may occur in the industry. In addition to existing studies related to fault detection, this study proposes extracting of vibration region to map the accelerations of the gearboxes. The proposed method consists of the following steps: the two-dimensional vibration region of the gearbox is created by using instantaneous accelerations taken from gearboxes in horizontal and vertical directions. Features of vibration region give valuable detail about the condition of gearboxes. Therefore, it is transformed into a binary image, and the features are extracted by using image processing algorithms. Finally, these features are used as inputs to the artificial neural network for classification of fault severity. To validate the proposed method, a two-stage helical gearbox and a worm gearbox are utilized as an experimental setup. As a result of the experiments carried out, it has been seen that the proposed method can accurately monitor the condition of the gearboxes and classify the severity of faults.
机译:本文侧重于提取齿轮箱的振动区域,监测条件的参数和检测故障。当齿轮接触表面张力超过齿轮材料的疲劳极限由于过量负载,润滑,油污等不足时,发生齿面故障,如点蚀,磨损,齿断裂等。齿轮系统中的这些类型的缺陷导致齿轮的性能劣化,因此在工业中可能发生重大的操作问题。除了与故障检测相关的现有研究外,该研究提出了振动区域的提取以映射齿轮箱的加速度。所提出的方法包括以下步骤:通过使用水平和垂直方向上的齿轮箱中取出的瞬时加速来产生齿轮箱的二维振动区域。振动区域的特点是关于齿轮箱状况的宝贵细节。因此,将其转换为二进制图像,并且通过使用图像处理算法提取特征。最后,这些特征用作人工神经网络的输入,用于对故障严重性进行分类。为了验证所提出的方法,两级螺旋齿轮箱和蜗轮齿轮用作实验设置。由于进行了实验,已经看到所提出的方法可以准确地监测齿轮箱的状况并分类故障的严重程度。

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