Modeling of Artificial Neural Networks for Hydrogen Production via Water Electrolysis

Gulbahar Bilgic, B. Öztürk
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引用次数: 2

Abstract

Artificial neural networks have emerged as a promising tool for estimating hydrogen production process variables for reaction condition optimization. Here we aim to predict complex nonlinear systems that use of artificial neural networks for modeling hydrogen production via water electrolysis and to evaluate the common challenges that arise. To estimate the effect of different electrolyzer systems input parameters such as electrolyte material, electrolyte type, supplied power (voltage and current), temperature, and time on hydrogen production, a predictive model was developed. The percentage contributions of the input parameters to hydrogen production and the best network architecture to minimize computation time and maximize network accuracy were shown. The results show that the hydrogen production parameters from electrolysis and the predicted safety explosive limit are 7% of the average root mean square error. Furthermore, coefficient of determination value was found 0.93. This predicted value is very close to the observed values. The neural network algorithm developed in this study could be used to make critical decisions in the electrolysis process for parameters affecting hydrogen production.
水电解制氢的人工神经网络建模
人工神经网络已经成为一种很有前途的工具,用于估计反应条件优化的制氢过程变量。在这里,我们的目标是预测复杂的非线性系统,该系统使用人工神经网络来模拟通过水电解制氢,并评估出现的共同挑战。为了估计不同电解槽系统输入参数(如电解质材料、电解质类型、供电功率(电压和电流)、温度和时间)对制氢的影响,建立了一个预测模型。给出了输入参数对制氢的贡献百分比,以及最小化计算时间和最大化网络精度的最佳网络结构。结果表明,电解产氢参数和预测的安全爆炸极限为平均均方根误差的7%。进一步,确定值系数为0.93。这个预测值与观测值非常接近。本研究开发的神经网络算法可用于电解过程中影响制氢参数的关键决策。
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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