Study on the Potential of New Load-Carrying Capacity Descriptions for the Service Life Calculations of Gears

Machines Pub Date : 2024-05-01 DOI:10.3390/machines12050304
D. Vietze, J. Pellkofer, Karsten Stahl
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Abstract

Calculating the service life of gears under variable loads requires a description of the load-carrying capacity. The current standard for this is the use of the S/N curve. International standards such as ISO 6336 stipulate the use of this approach for the calculation of the service of gears under variable loads. In this paper, five new approaches are developed and evaluated to describe the load-carrying capacity of gears in the load range of finite life. Four methods are based on machine learning, and one uses mathematical regression. To validate the new approaches, the results of an experimental study investigating the service life of gears under variable loads are presented. These results form the basis for the conducted study, which compares the five new methods with the existing approach. The comparison focuses on the ability of the load-carrying capacity descriptions to provide an accurate calculation of the service life and to reduce scattering as much as possible. The results of the study show significant potential for the new methods, especially the one based on a neural network.
齿轮使用寿命计算中新承载能力描述的潜力研究
计算变载荷下齿轮的使用寿命需要对承载能力进行描述。目前的标准是使用 S/N 曲线。ISO 6336 等国际标准规定使用这种方法计算变载荷下齿轮的使用寿命。本文开发并评估了五种新方法,用于描述齿轮在有限寿命载荷范围内的承载能力。其中四种方法基于机器学习,一种使用数学回归。为了验证新方法,本文介绍了一项实验研究的结果,该研究调查了变载荷下齿轮的使用寿命。这些结果构成了本研究的基础,本研究将这五种新方法与现有方法进行了比较。比较的重点是承载能力描述是否能够准确计算使用寿命并尽可能减少散乱。研究结果表明,新方法,尤其是基于神经网络的方法,具有很大的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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