A Revision of Empirical Models of Stirling Engine Performance Using Simple Artificial Neural Networks

IF 2.1 Q2 ENGINEERING, MULTIDISCIPLINARY Inventions Pub Date : 2023-07-04 DOI:10.3390/inventions8040088
Enrique González-Plaza, David García, J. Prieto
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Abstract

Stirling engines are currently of interest due to their adaptability to a wide range of energy sources. Since simple tools are needed to guide the sizing of prototypes in preliminary studies, this paper proposes two groups of simple models to estimate the maximum power in Stirling engines with a kinematic drive mechanism. The models are based on regression or ANN techniques, using data from 34 engines over a wide range of operating conditions. To facilitate the generalisation and interpretation of results, all models are expressed by dimensionless variables. The first group models use three input variables and 23 data points for correlation construction or training purposes, while another 66 data points are used for testing. Models in the second group use eight inputs and 18 data points for correlation construction or training, while another 36 data points are used for testing. The three-input models provide estimations of the maximum brake power with an acceptable accuracy for feasibility studies. Using three-input models, the predictions of the maximum indicated power are very accurate, while those of the maximum brake power are less accurate, but acceptable for the preliminary design stage. In general, the best results are achieved with ANN models, although they only employ one hidden layer.
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用简单人工神经网络修正斯特林发动机性能的经验模型
斯特林发动机由于其对各种能源的适应性,目前备受关注。由于在初步研究中需要简单的工具来指导原型的尺寸,本文提出了两组简单的模型来估计带有运动驱动机构的斯特林发动机的最大功率。这些模型基于回归或人工神经网络技术,使用了34台发动机在各种运行条件下的数据。为了便于结果的概括和解释,所有模型都用无量纲变量表示。第一组模型使用三个输入变量和23个数据点进行相关性构建或训练,而另外66个数据点用于测试。第二组中的模型使用8个输入和18个数据点进行相关性构建或训练,而另外36个数据点用于测试。三个输入模型以可接受的精度为可行性研究提供了最大制动功率的估计。使用三个输入模型,最大指示功率的预测非常准确,而最大制动功率的预测不太准确,但在初步设计阶段是可以接受的。通常,使用ANN模型可以获得最佳结果,尽管它们只使用了一个隐藏层。
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来源期刊
Inventions
Inventions Engineering-Engineering (all)
CiteScore
4.80
自引率
11.80%
发文量
91
审稿时长
12 weeks
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