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首页> 外文期刊>Advances in Engineering Software >Optimal mass minimization design of a two-stage coaxial helical speed reducer with Genetic Algorithms
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Optimal mass minimization design of a two-stage coaxial helical speed reducer with Genetic Algorithms

机译:基于遗传算法的二级同轴螺旋减速器的最小质量优化设计

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摘要

The full description of a two-stage speed reducer generally requires a large number of design variables (typically, well over ten), resulting a very large and heavily constrained design space. This paper presents the specific case of the complete automated optimal design with Genetic Algorithms of a two-stage helical coaxial speed reducer. The objective function (i.e. the mass of the entire speed reducer) was described by a set of 17 mixed design variables (i.e. integer, discrete and real) and also was subjected to 76 highly non-linear constraints. It can be observed that the proposed Genetic Algorithm offers better design solutions as compared with the results obtained by using the traditional design method (i.e. a commonly trial and cut error).
机译:对两级减速器的完整描述通常需要大量的设计变量(通常超过十个),从而导致很大的设计空间并受到严重限制。本文介绍了采用遗传算法的两阶段螺旋同轴减速器的完全自动化最佳设计的特殊情况。目标函数(即整个减速器的质量)由一组17个混合设计变量(即整数,离散量和实数)描述,并且还受到76个高度非线性约束。可以看出,与使用传统设计方法获得的结果(即通常的试切误差)相比,所提出的遗传算法提供了更好的设计解决方案。

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