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Design and optimization of Stirling engines using soft computing methods: A review

机译:软计算方法的斯特林发动机设计与优化:综述

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摘要

The need for energy converters with high thermal efficiency is a central issue in the field of renewable energies. So far, different technologies have been introduced for converting renewable energies into mechanical work. Stirling engines with an optimal design can be an appropriate choice for this aim. In this paper, the applications of soft computing methods in optimization and design of the Stirling engines are discussed. Until now, four popular soft computing approaches such as genetic algorithm, particle swarm optimization, fuzzy logic, and artificial neural network have been extensively applied to design and optimize the Stirling engines. Addressing the conducted works in this field, reveals that these soft computing methods can effectively meet the main concerns of the researchers. The performance of the Stirling engines in terms of power and efficiency can be promoted by optimizing their parameters via the soft computing methods. Moreover, the soft computing methods can be further employed to optimize the Stirling engines based on other objectives such as desired operating frequency, desired strokes of power and displacer pistons, and optimal locations of closed-loop poles of the system. On the other hand, combining these soft computing methods results in hybrid intelligent techniques that serves to predict other complex characteristics of these engines including torque, heat transfer, and damping coefficients. The hybrid techniques usually contain the artificial neural networks (or fuzzy logic) incorporating the evolutionary (or swarm intelligence) algorithms for designing, optimizing, and predicting the engine specifications.
机译:具有高热效率的能量转换器的需求是可再生能源领域的核心问题。到目前为止,已经引入了不同的技术将可再生能源转换为机械工作。 Stirling engines with an optimal design can be an appropriate choice for this aim.本文讨论了软计算方法在斯特林发动机优化和设计中的应用。到目前为止,已经广泛地应用了四种流行的软计算方法,如遗传算法,粒子群优化,模糊逻辑和人工神经网络,以设计和优化斯特林发动机。解决该领域的开展工作,揭示了这些软计算方法可以有效地满足研究人员的主要问题。通过通过软计算方法优化其参数,可以通过优化其参数来促进斯特林发动机的性能。此外,可以进一步采用软计算方法以基于其他目的来优化斯特林发动机,例如所需的工作频率,电力和置换器活塞的所需笔划,以及系统的闭环极的最佳位置。另一方面,组合这些软计算方法导致混合智能技术,用于预测这些发动机的其他复杂特性,包括扭矩,传热和阻尼系数。混合技术通常包含包含用于设计,优化和预测发动机规格的进化(或群智能)算法的人工神经网络(或模糊逻辑)。

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