首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part B. Journal of engineering manufacture >Comparative study of genetic algorithm and simulated annealing for optimal tolerance design formulated with discrete and continuous variables
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Comparative study of genetic algorithm and simulated annealing for optimal tolerance design formulated with discrete and continuous variables

机译:遗传算法与模拟退火算法相结合的离散变量和连续变量最优公差设计研究

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摘要

Optimal tolerance design has been the focus of extensive research for a few decades. This has resulted in several formulations and solution algorithms for systematic tolerance design considering various aspects. Availability of different alternative manufacturing processes or machines for realization of a dimension is frequently encountered. In such cases optimal tolerance design must also consider optimal selection of a set of manufacturing processes or machines as appropriate. Such a non-linear multivariate optimal tolerance design problem results in a combinatorial and multi-modal solution space. Optimal solution of this advanced tolerance design problem is difficult using traditional optimization techniques. The problem formulation becomes more complex with simultaneous selection of design and manufacturing tolerances. The focus of the current research is on the optimal solution of this advanced and complex tolerance design problem. Genetic algorithm and simulated annealing as non-traditional global optimization techniques have been used to obtain the solution. Application of the solution techniques has been demonstrated with the help of appropriate examples. Comparison of the results establishes that the genetic algorithm is the superior of the two approaches.
机译:几十年来,最佳公差设计一直是广泛研究的重点。考虑到各个方面,这产生了用于系统公差设计的几种公式和解决方案算法。经常遇到用于实现尺寸的不同替代制造过程或机器的可用性。在这种情况下,最佳公差设计还必须考虑适当选择一组制造过程或机器的最佳选择。这样的非线性多元最优公差设计问题导致组合和多峰解空间。使用传统的优化技术很难解决这个高级公差设计问题。同时选择设计公差和制造公差将使问题的制定变得更加复杂。当前研究的重点是该高级和复杂公差设计问题的最佳解决方案。遗传算法和模拟退火作为非传统的全局优化技术已用于获得解决方案。解决方案技术的应用已通过适当的示例进行了演示。结果比较表明,遗传算法是两种方法中的优势。

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