磨损齿轮和轴承再制造决策中的机器学习

Wayne Tsimba, G. Chirinda, S. Matope
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引用次数: 2

摘要

机械工业在日常操作中使用旋转机械设备。这些设备磨损严重,通常被当作废料丢弃。但是有没有一种方法可以回收这些设备并重新使用呢?本文使用机器学习来捕获和分析轴承和齿轮的磨损损伤,以确定它们是否可以赎回。为了便于图像处理算法中的特征提取,对磨损的正齿轮和抱枕轴承进行了有限元分析。这将实际的齿轮,轴承和密封转换成CAD文件。设计了决策系统,并利用这些CAD文件来确定最佳的制造工艺,以恢复可赎回的部件。利用SOLIDWORKS对系统的机械部件进行了设计。采用MATLAB、Proteus软件和Arduino微控制器进行系统应用程序设计和仿真。对磨损的齿轮和轴承进行的试验结果表明,齿轮有4%不可赎回,而轴承有60.2%不可赎回。系统做出的决定是赎回齿轮并丢弃轴承。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MACHINE LEARNING FOR DECISION-MAKING IN THE REMANUFACTURING OF WORN-OUT GEARS AND BEARINGS
Mechanical industries use rotating mechanical equipment in their day to day operations. The equipment suffers from wear and tear, and is usually discarded as scrap. But is there a way to recover some of this equipment and reuse it? This paper uses machine learning to capture and analyse the wearing damage of bearings and gears to determine whether they can be redeemed. Finite element analysis is conducted on worn-out spur gears and pillow bearings in order to facilitate feature extraction in image processing algorithms. This converts the actual gears, bearings, and seals into CAD files. The decision-making system is designed, and it uses these CAD files to decide on the optimum manufacturing process to restore redeemable components. The mechanical components of the system are designed using SOLIDWORKS. MATLAB, Proteus software, and the Arduino micro-controller are used for the system application design and simulation. The results from tests conducted on a worn-out gear and bearing show that the gear is 4% non-redeemable, while the bearing is 60.2% non-redeemable. The decision taken by the system is to redeem the gear and to discard the bearing.
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