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Comparison of support vector regression and random forest algorithms for estimating the SOFC output voltage by considering hydrogen flow rates

机译:通过考虑氢气流速来估计SOFC输出电压的支持向量回归和随机林算法的比较

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Solid Oxide Fuel Cell (SOFC) are complex systems in which gas-phase mass transport, heat transfer, ionic conduction, chemical reactions and electrical conduction take place simultaneously. Therefore, reliable simulation tools are needed to control and optimize their operation. Machine Learning (ML) can quickly estimate and generalize the relationship between the input values and the output values in a process. ML algorithms are used in various applications such as modelling, simulation, optimization, control, signal processing, pattern recognition, up to systems like power, production and renewable energy systems. Many methods help the successful design of algorithms for SOFC systems. However, a few researchers have studied and compared regression algorithms. This paper includes an in-depth study to compare the two efficient ML algorithms namely Random Forest (RF) and Support Vector Regression (SVR). These algorithms are used to predict the performance of a SOFC cell.The algorithms were generated by the experimental data which are measured by using the different temperatures and hydrogen flow rates. Additionally, the effect of the amount of pure hydrogen and the total amount of hydrogen in the content of the fuel mixtures, which fed to the anode side of the SOFC, on the experimental voltage were compared. The experimental data set used for developing the model consists of 1272 records regarding the SOFC operated under different operating conditions. 1122 records of the experimental data set are used for training the regression algorithms mentioned above. Accordingly, the algorithms are tested and then, the experimental data are compared to the results generated by the algorithms to validate prediction performances. The model predicts the cell performance (output voltage) in approximately 0.52 s with the mean absolute percentage errors 1.97% for the RF algorithm and as low as 0.92% for the SVR algorithm. In this article, the SVR algorithm is identified as the most promising model. The process parameters effects on the variation of the output voltage of the SOFC can be examined when the developed models are proven reliability and precision after test with unknown data. (c) 2020 Hydrogen Energy Publications LLC. Published by Elsevier Ltd. All rights reserved.
机译:固体氧化物燃料电池(SOFC)是复合体系,其中气相传质,传热,离子传导,化学反应和电导同时进行。因此,需要可靠的仿真工具来控制和优化其操作。机器学习(ML)可以快速估计和概括进程中输入值与输出值之间的关系。 ML算法用于各种应用,如建模,仿真,优化,控制,信号处理,模式识别,高达电源,生产和可再生能源系统等系统。许多方法有助于成功设计SOFC系统的算法。然而,一些研究人员已经研究过并比较了回归算法。本文包括深入研究,可以比较两个有效的ML算法即随机森林(RF)并支持向量回归(SVR)。这些算法用于预测SOFC细胞的性能。通过使用不同温度和氢气流速测量的实验数据产生算法。另外,比较了在实验电压上的燃料混合物的含量含量的纯氢气量和氢气总量的效果。用于开发模型的实验数据集包括1272个关于在不同操作条件下操作的SOFC的记录。 1122实验数据集的记录用于训练上述回归算法。因此,测试算法,然后,将实验数据与算法产生的结果进行比较,以验证预测性能。该模型预测大约0.52秒的单元性能(输出电压),其平均绝对百分比误差为RF算法1.97%,对于SVR算法,低至0.92%。在本文中,SVR算法被识别为最有前途的模型。当经过未知数据测试后开发的型号被证明可靠性和精度,可以检查对SOFC的输出电压变化的过程参数效果。 (c)2020氢能源出版物LLC。 elsevier有限公司出版。保留所有权利。

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