基于人工神经网络的带式搅拌机蜗杆齿轮箱蜗轮和轴承缺陷分类

R. Barshikar, Harshvardhan P. Ghongade, Anjali Bhadre, Harjitkumar U. Pawar, Harshal S. Rane
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引用次数: 0

摘要

由于蜗轮蜗杆传动箱具有扭矩大、减速快等特点,因此在包括自动扶梯、带式搅拌机、粉碎机、碗磨机等机械在内的多个工业领域都有需求。蜗轮蜗杆减速箱最常见的缺陷是蜗轮蜗杆和轴承出现划痕。需要及早对缺陷进行分类,以防止突然发生故障而降低生产。缺陷有不同的描述方式,其中包括轮齿和轴承内外滚道的缺陷。在另一种情况下,缺陷既包括齿轮也包括轴承。严重程度通过方差网络来确定。在这些条件下,使用良好的蜗轮蜗杆减速机进行实验,以捕捉振动响应特征。将这些值作为 ANN 的输入,对模型进行训练。实验结果表明,振动振幅随着蜗轮蜗杆减速箱故障的发展而增加,经过训练的 ANN 模型能有效地对蜗轮蜗杆减速箱故障进行分类,准确率高达 97.12%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Defect Categorization of Ribbon Blender Worm Gearbox Worm Wheel and Bearing Based on Artificial Neural Network
There is a demand for worm gearboxes in diversified industrial fields that include machinery such as escalators, ribbon blenders, pulverisers, bowl mills, etc. because of their peculiar characteristics like torque and quick retardation. The most commonly occurring defects in a worm gear box are scratches that develop in the worm gear and in bearings. Early defect categorization is required to prevent a sudden breakdown that would decrease production. The defect is depicted in different cases, which include defects in the gear tooth and the outer and inner races of the bearing. In another case, the defect is considered in the gear tooth as well as the bearing. The severity is designated using the ANN. The experiments were performed under these conditions with a good worm gearbox to capture vibration response signatures. Using these values as an input to the ANN, the model is trained. Experimental results show that vibration amplitude increases with fault progression in the worm gearbox, and the trained ANN model effectively categorizes worm gearbox faults with an accuracy of 97.12%.
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