Dynamic Model For Solar Hydrogen Via Alkaline Water Electrolyzer: A Real-Time Techno-economic Perspective With And Without Energy Storage System

Haider Niaz, Jay J. Liu
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引用次数: 3

Abstract

At current fossil fuels consumption rate, enormous challenges are associated, including global warming, environmental pollution, climate change, and, more importantly, scarcity of these resources shortly. To combat these challenges, renewable energy-based hydrogen production processes can provide substantial support in minimizing the ever-increasing global warming threat. Therefore, the implementation of renewable energy-based processes will significantly help mitigate CO2 emissions. Among various production pathways, alkaline water electrolysis stands out due to its proven commercial importance. In this study, integrated design for 4.5 MW alkaline water electrolyzer (AWE) and battery energy storage system (BESS) is presented to overcome the dynamic and fluctuating nature of renewable energy and thus provide a continuous green hydrogen production system. Furthermore, a cost analysis is performed for systems with and without BESS to explore the real economic potential of the proposed models. Minimum hydrogen selling price (MHSP) for AWE with BESS presents the lowest selling price of 3.97$/kg, whereas the system without BESS reports MHSP as 4.96 $//kg.
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碱性水电解槽太阳能制氢的动态模型:有无储能系统的实时技术经济展望
以目前的化石燃料消耗速度,随之而来的是巨大的挑战,包括全球变暖、环境污染、气候变化,更重要的是,这些资源的短期稀缺。为了应对这些挑战,基于可再生能源的制氢工艺可以为最大限度地减少日益严重的全球变暖威胁提供实质性支持。因此,实施基于可再生能源的工艺将大大有助于减少二氧化碳排放。在各种生产途径中,碱水电解因其已被证明的商业重要性而脱颖而出。本研究提出了4.5 MW碱性水电解槽(AWE)和电池储能系统(BESS)的集成设计,以克服可再生能源的动态性和波动性,从而提供一个连续的绿色制氢系统。此外,对有和没有BESS的系统进行了成本分析,以探索所提出模型的实际经济潜力。有BESS的AWE系统的最低氢销售价格(MHSP)为3.97美元/公斤,而没有BESS的系统的MHSP为4.96美元/公斤。
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