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An efficient hybrid approach of improved adaptive neural fuzzy inference system and teaching learning-based optimization for design optimization of a jet pump-based thermoacoustic-Stirling heat engine

机译:一种改进自适应神经模糊推理系统的高效混合方法和基于教学的基于射流热声斯特林热风发动机设计优化的教学优化

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摘要

The acoustic streaming is a key drawback and eliminates the performance of a jet pump-based thermoacoustic-Stirling heat engine. The present study deals with a new hybrid optimization approach to reduce the acoustic streaming energy. The proposed work is an integration of Taguchi method (TM), adaptive neural fuzzy inference system (ANFIS), and teaching-learning-based optimization (TLBO). The Taguchi method plays three important roles. The first role is to layout the number of experiments. The second role is to identify the most appropriate parameters for ANFIS structure regarding the number of input membership functions (MFs), types of input MFs, optimal learning method, and types of output MFs. In order to determine the optimum parameters for the ANFIS structure, the root-mean-squared error, a performance criterion, is minimized by using the TM. The final role of TM is to optimize the controllable parameters of the TLBO. Subsequently, modeling between geometric parameters and acoustic streaming is established by the built ANFIS structure. Finally, the TLBO is adopted by optimizing the design parameters. The outcomes of study revealed that the acoustic streaming is relatively reduced. Based on Wilcoxon signed-rank test and Friedman test, it proves that the effectiveness of the proposed hybrid approach is better to other evolutionary algorithms. The current approach is an efficient optimizer for complex optimization problems.
机译:声流是一个关键缺点,消除了基于喷射泵的热声斯特林热发动机的性能。本研究涉及一种新的混合优化方法来减少声学流能量。所提出的工作是Taguchi方法(TM),自适应神经模糊推理系统(ANFIS)和基于教学的优化(TLBO)的集成。 TAGUCHI方法扮演三个重要角色。第一个角色是布局实验的数量。第二个作用是识别关于输入隶属函数(MFS)数量的ANFIS结构的最合适的参数,输入MF的类型,最佳学习方法和输出MF的类型。为了确定ANFIS结构的最佳参数,通过使用TM最小化根均平方误差,性能标准。 TM的最终作用是优化TLBO的可控参数。随后,由内置的ANFIS结构建立几何参数和声学流之间的建模。最后,通过优化设计参数来采用TLBO。研究结果表明声流相对减少。基于Wilcoxon签名级别测试和弗里德曼测试,证明了拟议的混合方法的有效性更好,对其他进化算法更好。目前的方法是一个有效的优化器,用于复杂优化问题。

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