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Soft computing analysis of a compressed air energy storage and SOFC system via different artificial neural network architecture and tri- objective grey wolf optimization

机译:不同人工神经网络架构和三目标灰狼优化的压缩空气储能和SOFC系统软计算分析

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摘要

In the present study, a novel combined system consisting of solid oxide fuel cell (SOFC), organic Rankine cycle (ORC), and compressed air energy storage (CAES) is proposed, investigated, and optimized. The SOFC and CAES models are validated individually to ensure the accuracy of the results. Here, the grey wolf multi-objective optimization (MOGWO) approach is applied to find the optimal system design and performance. For this, a trained neural network is provided to the MOGWO algorithm as a fitted function, and multi-objective optimization is carried out on it. The most significant benefit of the suggested method is time-saving. The proposed system's thermodynamic performance is investigated from the energy, exergy, economic, and environmental (4E) points of view at three periods, including full-time, charging, and discharging periods. The results indicate that the Levenberg-Marquardt training algorithm has the best performance among all of the algorithms. The value of exergetic round trip efficiency (ERTE), total cost rate, and CO2 emission at the best optimum point are obtained as 45.7%, 34.2 $/h, and 0.22 kg/kWh, respectively. (C) 2021 Elsevier Ltd. All rights reserved.
机译:在本研究中,提出了一种由固体氧化物燃料电池(SOFC),有机朗肯循环(ORC)组成的新型组合系统,以及压缩空气能量存储(CAES)。 SOFC和CAES模型可单独验证,以确保结果的准确性。这里,灰狼多目标优化(MOGWO)方法适用于找到最佳系统设计和性能。为此,将培训的神经网络提供给Mogwo算法作为拟合功能,并且对其进行多目标优化。建议方法最显着的好处是节省时间。拟议的系统的热力学性能是在三个时期的能量,出境,经济和环境(4E)的观点中调查,包括全职,充电和卸货。结果表明,Levenberg-Marquardt训练算法在所有算法中具有最佳性能。在最佳最佳点处的exerget往返效率(ERTE),总成本率和CO2发射的值分别获得45.7%,34.2美元/ h和0.22kg / kWh。 (c)2021 elestvier有限公司保留所有权利。

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