通过神经网络预测质子交换膜水电解过程中的制氢量

Q1 Chemical Engineering International Journal of Thermofluids Pub Date : 2024-09-06 DOI:10.1016/j.ijft.2024.100849
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引用次数: 0

摘要

水电解技术的进步对于绿色制氢至关重要。质子交换膜水电解(PEMWE)具有高效和环保的特点。由于系统和运行参数的复杂性,预测和优化 PEMWE 系统的制氢率(HPRs)非常困难,而且仍具有挑战性。人工智能(AI)和机器学习(ML)的结合似乎在能源领域的优化中非常有效。因此,这项工作采用了人工神经网络(ANN)来开发一个模型,以准确预测 PEMWE 设置中的 HPR。通过采用 Levenberg-Marquardt 反向传播 (LMBP) 算法训练人工神经网络,引入了一种新方法。该模型旨在根据关键运行参数预测 HPR,这些参数包括阳极和阴极面积(mm2)、电池电压(V)和电流(A)、水流量(mL/min)、功率(W)和温度(K)。优化的 ANN 配置具有 7 个输入节点、两个各有 64 个神经元的隐藏层和一个输出节点的结构。使用关键指标:均方误差 (MSE)、判定系数 (R2) 和平均绝对误差 (MAE),对照传统回归模型评估了 ANN 模型的性能。研究结果表明,所开发的 ANN 模型明显优于传统模型,其 R2 值为 0.9989,MAE 为 0.012。相比之下,随机森林(R2 = 0.9795)、线性回归(R2 = 0.9697)和支持向量机(R2 = - 0.4812)的预测准确率较低,这凸显了 ANN 模型的卓越性能。这项工作证明了 LMBP 在提高氢气产量预测方面的效率,并为未来提高 PEMWE 效率奠定了基础。通过对运行参数进行精确控制和优化,这项研究有助于实现更广泛的目标,即推动绿色氢气生产,使其成为化石燃料的一种可行且可扩展的替代品,为可持续能源计划带来直接和长期的益处。
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Prediction of hydrogen production in proton exchange membrane water electrolysis via neural networks

Advancements in water electrolysis technologies are crucial for green hydrogen production. Proton exchange membrane water electrolysis (PEMWE) is characterized by its efficiency and environmental benefits. The prediction and optimization of hydrogen production rates (HPRs) in PEMWE systems is difficult and still challenging because of the complexity of the system as well as the operational parameters. The integration of artificial intelligence (AI) and machine learning (ML) appears to be effective in optimization within the energy sector. Hence, this work employs the artificial neural network (ANN) to develop a model that accurately predicts HPR in PEMWE setups. A novel approach is introduced by employing the Levenberg–Marquardt backpropagation (LMBP) algorithm for training the ANN. This model is designed to predict HPR based on critical operational parameters, including anode and cathode areas (mm2), cell voltage (V) and current (A), water flow rate (mL/min), power (W), and temperature (K). The optimized ANN configuration features an architecture with 7 input nodes, two hidden layers of 64 neurons each, and a single output node. The performance of the ANN model was evaluated against conventional regression models using key metrics: mean squared error (MSE), coefficient of determination (R2), and mean absolute error (MAE). The findings of this study reveal that the developed ANN model significantly outperforms traditional models, achieving an R2 value of 0.9989 and an MAE of 0.012. In comparison, random forest (R2 = 0.9795), linear regression (R2 = 0.9697), and support vector machines (R2 = − 0.4812) show lower predictive accuracy, underscoring the ANN model's superior performance. This work demonstrates the efficiency of the LMBP in enhancing hydrogen production forecasts and sets a foundation for future improvements in PEMWE efficiency. By enabling precise control and optimization of operational parameters, this study contributes to the broader goal of advancing green hydrogen production as a viable and scalable alternative to fossil fuels, offering both immediate and long-term benefits to sustainable energy initiatives.

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来源期刊
International Journal of Thermofluids
International Journal of Thermofluids Engineering-Mechanical Engineering
CiteScore
10.10
自引率
0.00%
发文量
111
审稿时长
66 days
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