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Hydrogen-based self-sustaining integrated renewable electricity network (HySIREN) using a supply-demand forecasting model and deep-learning algorithms

机译:基于供需预测模型和深度学习算法的基于氢的自持式可再生综合电网(HySIREN)

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Electricity generation from renewable resources such as wind and solar energy inevitably involve intermittency due to the variable nature of wind speed and solar radiation. In this study, a mathematical model of a hydrogen-based self-sustaining integrated renewable electricity network (HySIREN) employing a supply-demand forecasting model and deep-learning (DL) algorithms is developed. The proposed model is implemented as follows: an empirical model decomposition is applied to decompose historical renewable electricity supply-demand data into a number of sub-layers; DL models are utilized to predict renewable electricity supply-demand patterns using the disclosed sub-layers; the predicted surplus renewable electricity and the predicted renewable electricity shortage are explicitly divided through a comparison of forecasting renewable electricity supply-demand data; and according to the results from forecasting models, a smart hydrogen balance is designed by an integrated hydrogen production process encompassing the steam methane reforming process and electrolyzers. Finally, a self-sustaining energy system is constructed and the system flexibility is enhanced, where the predicted surplus renewable electricity is used to convert produced and stored hydrogen into electricity to satisfy predicted renewable electricity shortages. The suggested model was validated by a case study of Jeju Island in the Republic of Korea and the feasibility of the HySIREN model was evaluated. Approximately 64.5% of the total environmental costs were eliminated. The results of this study suggest it would be beneficial to construct environmentally benign strategies for self-sustaining energy systems based on renewable resources.
机译:由于风速和太阳辐射的可变性,利用可再生资源(例如风能和太阳能)发电不可避免地涉及间歇性。在这项研究中,基于供需预测模型和深度学习(DL)算法,开发了基于氢的自我维持型集成可再生电力网络(HySIREN)的数学模型。该模型的实现如下:经验模型分解将历史可再生电力供需数据分解为多个子层。 DL模型用于利用所公开的子层预测可再生电力的供需模式。通过比较预测的可再生电力供需数据,明确地划分了预测的可再生电力剩余量和预测的可再生电力短缺量。并且根据预测模型的结果,通过包括蒸汽甲烷重整过程和电解槽在内的集成氢气生产过程设计了智能氢气平衡。最后,构建了一个自我维持的能源系统,并增强了系统的灵活性,其中使用了预测的剩余可再生电力将产生和存储的氢转化为电能,以满足预测的可再生电力短缺。通过大韩民国济州岛的案例研究验证了建议的模型,并评估了HySIREN模型的可行性。消除了约64.5%的环境总成本。这项研究的结果表明,构建基于可再生资源的环境友好型自我维持能源系统的策略将是有益的。

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