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Optimization of SOFC stack gas distribution structure based on BP Neural network and CFD

机译:基于BP神经网络和CFD的SOFC堆气体分配结构优化

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The flow field distribution of solid oxide fuel cells significantly affects the performance of the stack. The flow uniformity can be improved and the power generation efficiency can be improved by optimizing the gas distribution structure of the stack. Based on the simplified 6kW stack model, the stack gas distribution structure with two-stage buffer cavity was designed, and the stack model was numerically simulated by ANSYS Fluent software. The BP neural network model, which can predict the uniformity of the outlet of the integrated stack, is established successfully. The parameters of the gas distribution structure are analyzed and optimized by using the orthogonal test and BP neural network. The results show that at the same time considering pile distribution structure under the condition of surface area and uniformity, when the first stage inlet buffer chamber depth is 40 mm, the channel width is 40 mm, the secondary inlet buffer chamber depth is 80 mm, can effectively reduce the electric pile distribution structure, surface area, to reduce heat loss, at the same time guarantee the integrated electric reactor outlet flow uniformity of more than 96%, greatly improves the efficiency of power generation.
机译:固体氧化物燃料电池的流场分布显着影响堆叠的性能。通过优化堆叠的气体分布结构,可以提高流动均匀性并且可以提高发电效率。基于简化的6KW堆栈模型,设计了具有两级缓冲腔的堆栈气体分布结构,堆叠模型由ANSYS流畅的软件进行数值模拟。成功建立了能够预测集成堆栈的出口均匀性的BP神经网络模型。通过使用正交测试和BP神经网络分析和优化气体分配结构的参数。结果表明,同时考虑在表面积的条件下考虑桩分布结构和均匀性,当第一级入口缓冲室深度为40mm时,通道宽度为40mm,次级入口缓冲室深度为80毫米,可以有效地减少电动桩分布结构,表面积,减少热量损失,同时保证集成电反应器出口流量均匀96%,大大提高了发电的效率。

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