Theoretical and experimental background for artificial neural network modeling of alpha type Stirling engine

A. Chmielewski, J. Możaryn, Maciej Krzeminski
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引用次数: 2

Abstract

This article presents a theoretical background for an artificial neural network (ANN) model of the alpha type Stirling engine where thermodynamic dependencies, connected with equations of motion for the piston-crankshaft system with three degrees of freedom were taken into account. Because of the highly nonlinear description of Stirling engine dynamics, the ANN was employed, that modelled output power of Stirling engine as a function of the input power, molar mass, load current, pressure obtained by gas combustion and working parameters of the engine. The ANN model was tested on experimental data, gathered at the laboratory stand, in different working conditions. The proposed ANN model provides good results for both training and testing data-sets.
α型斯特林发动机人工神经网络建模的理论与实验背景
本文介绍了考虑三自由度活塞-曲轴系统运动方程的热力学依赖关系的α型斯特林发动机人工神经网络模型的理论背景。由于斯特林发动机的动力学描述高度非线性,采用人工神经网络将斯特林发动机的输出功率建模为输入功率、摩尔质量、负载电流、气体燃烧获得的压力和发动机工作参数的函数。对人工神经网络模型在不同工况下采集的实验数据进行了测试。所提出的人工神经网络模型在训练和测试数据集上都有很好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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