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Developing Multiple Diverse Potential Designs for Heat Transfer Utilizing Graph Based Evolutionary Algorithms

机译:利用基于图的进化算法开发传热的多种多样的电势设计

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This paper examines the use of graph based evolutionary algorithms (GBEAs) to find multiple acceptable solutions for heat transfer in engineering systems during the optimization process. GBEAs are a type of evolutionary algorithm (EA) in which a topology, or geography, is imposed on an evolving population of solutions. The rates at which solutions can spread within the population are controlled by the choice of topology. As in nature geography can be used to develop and sustain diversity within the solution population. Altering the choice of graph can create a more or less diverse population of potential solutions. The choice of graph can also affect the convergence rate for the EA and the number of mating events required for convergence. The engineering system examined in this paper is a biomass fueled cookstove used in developing nations for household cooking. In this cookstove wood is combusted in a small combustion chamber and the resulting hot gases are utilized to heat the stove's cooking surface. The spatial temperature profile of the cooking surface is determined by a series of baffles that direct the flow of hot gases. The optimization goal is to find baffle configurations that provide an even temperature distribution on the cooking surface. Often in engineering, the goal of optimization is not to find the single optimum solution but rather to identify a number of good solutions that can be used as a starting point for detailed engineering design. Because of this a key aspect of evolutionary optimization is the diversity of the solutions found. The key conclusion in this paper is that GBEA's can be used to create multiple good solutions needed to support engineering design.
机译:本文研究了基于图的进化算法(GBEA)的使用,以找到在优化过程中工程系统中传热的多种可接受的解决方案。 GBEA是一种进化算法(EA),其中拓扑或地理位置被强加在不断发展的解决方案群体上。解决方案可以在总体中传播的速率由拓扑的选择控制。与自然界一样,地理可用于发展和维持解决方案种群内部的多样性。改变图形的选择可以创建或多或少的潜在解决方案群体。图形的选择也会影响EA的收敛速度和收敛所需的交配事件数。本文研究的工程系统是在发展中国家用于家庭烹饪的以生物质为燃料的炉灶。在这种炉灶中,木材在一个小的燃烧室中燃烧,产生的热气被用来加热炉灶的烹饪表面。烹饪表面的空间温度曲线由一系列导引热气流的挡板确定。优化目标是找到能够在烹饪表面上提供均匀温度分布的挡板配置。通常在工程中,优化的目标不是找到单个最佳解决方案,而是确定许多可以用作详细工程设计起点的良好解决方案。因此,进化优化的一个关键方面是找到的解决方案的多样性。本文的主要结论是,GBEA可以用于创建支持工程设计所需的多个良好解决方案。

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