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Six sigma robust multi-objective optimization modification of machine-tool settings for hypoid gears by considering both geometric and physical performances

机译:通过考虑几何和物理性能,六种Sigma强大的多目标优化修改斜面齿轮的机床设置

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摘要

With the increasing demands of low noise and high strength from gear transmission system in industry applications, a collaborative optimization considering both geometric and physical performances has been increasingly significant for high-performance complex manufacturing of the hypoid gears. More recently, the machine-tool setting modification has provided an important access to this optimization design. However, its data-driven robustness or reliability is of a great difficulty. To deal with this problem, this paper presents a six sigma (6 sigma) robust multi-objective optimization (MOO) modification of machine-tool settings. Firstly, the 6 sigma robust optimization formulation is applied in the numerical result evaluations. Then, a novel data-driven model for MOO modification of machine-tool settings is established by establishing the functional relationships between the machine-tool settings and the performance evaluations, respectively. They can be integrated into a 6 sigma robust MOO machine-tool setting modification for hypoid gears having higher quality requirements. Finally, with the decision and optimization process, an achievement function approach was applied to solve MOO modification for the Pareto front, and the sensitivity based variability estimation is used to identify the robust solution. The numerical applications are given to verify the proposed methodology. (C) 2018 Elsevier B.V. All rights reserved.
机译:随着在工业应用中的齿轮传输系统的低噪音和高强度的需求不断增加,考虑到几何和物理性能的协作优化对于支撑齿轮的高性能复杂制造越来越重要。最近,机床设置修改提供了对该优化设计的重要访问。然而,其数据驱动的鲁棒性或可靠性具有很大的困难。要处理此问题,本文提出了六西格玛(6秒字节)强大的多目标优化(MOO)修改机器工具设置。首先,在数值效果评估中应用6个Sigma稳健的优化制剂。然后,通过在机床设置和性能评估之间建立功能关系,建立一种用于Moo修改的新型数据驱动模型,分别建立了机床设置和性能评估之间的功能关系。它们可以集成到6秒字节强大的MOO机床设置修改中,用于具有更高质量要求的双阀齿轮。最后,通过决策和优化过程,应用了成就功能方法来解决Pareto前端的Moo修改,基于灵敏度的可变性估计用于识别鲁棒解决方案。给出了数值应用来验证所提出的方法。 (c)2018 Elsevier B.v.保留所有权利。

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