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Optimization of standing-wave thermoacoustic refrigerator stack using genetic algorithm

机译:遗传算法常设波热声冰箱堆栈的优化

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摘要

The main focus of this work is the optimization of a thermoacoustic plate stack in a standing-wave thermoacoustic refrigerator using genetic algorithm. A numerical model of the thermoacoustic stack and its iterative solving process are firstly presented. A comparison to DeltaEC modelling shows that the presented method is effective in predicting the acoustic field and the energy flow. Based on the numerical model, the stack is optimized in terms of four and five variables for both single objective and multiple objectives. In the four-variable models, the length and position of the stack, the plate spacing and the stack porosity are investigated. In the five-variable model, the acoustic frequency is considered additionally. In the single-objective optimization, the objective function is either the cooling power or the coefficient of performance of the stack, and the multi-objective model has two objective functions, namely, the coefficient of performance of the stack and the cooling power. For the optimization, genetic algorithm hybridized by pattern search and implemented in Matlab is adopted. The optimal values of the stack length and the stack position, obtained from the single-objective optimization, agree with those in the published work. The extended multi-objective models present the Pareto optimal, which provides more design choices depending on the preference.
机译:这项工作的主要重点是使用遗传算法优化驻波热声冰箱中的热声板叠层。首先介绍了热声叠层的数值模型及其迭代求解过程。与Deltaec建模的比较表明,所提出的方法在预测声场和能量流方面是有效的。基于数值模型,堆栈以四个和五个变量优化,用于单个目标和多个目标。在四变量模型中,研究了堆叠的长度和位置,板间距和堆叠孔隙率。在五变模型中,声频另外考虑。在单目标优化中,目标函数是堆叠的冷却功率或性能系数,并且多目标模型具有两个目标功能,即堆叠的性能系数和冷却功率。为了优化,采用由模式搜索和在MATLAB中杂交和在MATLAB中实现的遗传算法。从单目标优化获得的堆叠长度和堆叠位置的最佳值与已发布的工作中的堆栈位置同意。扩展的多目标型号呈现Pareto最佳,这提供了更多的设计选择,具体取决于偏好。

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