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Mixed Variable Optimization of a Load-Bearing Thermal Insulation System Using a Filter Pattern Search Algorithm

机译:过滤模式搜索算法的承重保温系统混合变量优化

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This paper describes the optimization of a load-bearing thermal insulation system characterized by hot and cold surfaces with a series of heat intercepts and insulators between them. The optimization problem is represented as a mixed variable programming (MVP) problem with nonlinear constraints, in which the objective is to minimize the power required to maintain the heat intercepts at fixed temperatures so that one surface is kept sufficiently cold. MVP problems are more general than mixed integer nonlinear programming (MINLP) problems in that the discrete variables are categorical; i.e., they must always take on values from a predefined enumerable set or list. Thus, traditional approaches that use branch and bound techniques cannot be applied. In aprevious paper, a linearly constrained version of this problem was solved numerically using the Audet-Dcnnis generalized pattern search (GPS) method for MVP problems. However, this algorithm may not work for problems with general nonlinear constraints. A new algorithm that extends that of Audet and Dennis by incorporating a filter to handle nonlinear constraints makes it possible to solve the more general problem. Additional nonlinear constraints on stress, mass, and thermal contraction are added to that of the previous work in an effort to find a more realistic feasible design. Several computational experiments show a substantial improvement in power required to maintain the system, as compared to the previous literature. The addition of the new constraints leads to a very different design without significantly changing the power required. The results demonstrate that the new algorithm can be applied to a very broad class of optimization problems, for which no previous algorithm with provable convergence results could be applied.
机译:本文介绍了以热表面和冷表面为特征的承重保温系统的优化,在它们之间有一系列的热拦截器和绝缘体。优化问题表示为具有非线性约束的混合变量编程(MVP)问题,其目的是最大程度地降低将吸热器保持在固定温度下所需的功率,以使一个表面保持足够冷。 MVP问题比混合整数非线性规划(MINLP)问题更笼统,因为离散变量是分类变量。也就是说,它们必须始终采用预定义的可枚举集合或列表中的值。因此,使用分支和绑定技术的传统方法无法应用。在先前的论文中,使用Audet-Dcnnis广义模式搜索(GPS)方法对MVP问题进行了数值约束,从而线性求解了该问题。但是,此算法可能不适用于具有一般非线性约束的问题。通过合并处理非线性约束的滤波器来扩展Audet和Dennis算法的新算法可以解决更普遍的问题。应力,质量和热收缩的其他非线性约束被添加到先前的工作中,以寻求更现实可行的设计。与先前的文献相比,一些计算实验表明维护该系统所需的功率有了实质性的提高。新的约束条件的增加导致了非常不同的设计,而没有显着改变所需的功率。结果表明,该新算法可以应用于非常广泛的一类优化问题,而对于以前的具有可证明收敛结果的算法,则无法应用。

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