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Multi-objective optimization of thermo-acoustic devices using teaching-learning-based optimization algorithm

机译:基于教学 - 基于教学的优化算法的热声器件的多目标优化

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摘要

The current article presents three case studies based on a multi-objective optimization approach to optimize the performance of thermo-acoustic devices by obtaining the best possible set of geometrical characteristic parameters. In case study 1, the performance of a thermo-acoustic refrigerator is measured in terms of three objectives namely, acoustic cooling load (phi(C)), coefficient of performance, and acoustic power loss (W-2(0)). Each objective is assigned a weight to facilitate suitable user-defined significance. The case study 2 aims to optimize a thermoacoustic prime-mover. The influence of stack position and its length, resonator length, plate thickness, and plate spacing are considered as design variables. Two objectives namely, pressure amplitude (P) and frequency (f) are considered as objectives for multi-objective optimization of the thermo-acoustic prime-mover. In case study 3, the performance of a thermo-acoustic engine is measured in terms of five objectives namely, work output (W), viscous loss (R-v), conductive heat loss (Q(cond)), convective heat loss (Q(conv)), and radiative heat loss (Q(rad)). Since the multiple objectives are to be optimized simultaneously, each objective is assigned a weight to facilitate suitable user-defined significance. The multi-objective optimization is carried out by the teaching-learning-based optimization algorithm. The results of application of teaching-learning-based optimization algorithm are compared with the results of General Algebraic Modeling System, response surface methodology, and experimental results. The results of the teaching-learning-based optimization algorithm are found better compared to those given by the other approaches.
机译:本文基于多目标优化方法提出了三种案例研究,以通过获得最佳的几何特征参数来优化热声器件的性能。在案例1中,热声冰箱的性能在三个目标方面测量,即声学冷却负载(PHI(C)),性能系数和声功率损耗(W-2(0))。分配每个目标,以促进合适的用户定义的意义。案例研究2旨在优化热声学素级。堆叠位置及其长度,谐振器长度,板厚和板间距的影响被认为是设计变量。两个目标即,压力幅度(P)和频率(F)被认为是热声原动力学的多目标优化的目标。在案例研究3时,热声发动机的性能是以五个目标测量的,即工作输出(W),粘性损耗(RV),导电热损失(Q(COND)),对流热损失(Q( CONV))和辐射热损失(Q(RAD))。由于要同时优化多个目标,因此分配了每个目标,以便于促进适当的用户定义的意义。基于教学的优化算法进行了多目标优化。将基于教学的优化算法应用的结果与一般代数建模系统,响应面方法和实验结果的结果进行了比较。与其他方法给出的那些相比,基于教学的优化算法的结果更好。

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