储能
可再生能源
电网储能
工艺工程
间歇式能源
电气工程
超级电容器
网格
累加器(密码学)
光伏系统
可靠性工程
工程类
计算机科学
分布式发电
功率(物理)
电容
化学
量子力学
物理
数学
物理化学
电极
算法
几何学
作者
Abraham Alem Kebede,Theodoros Kalogiannis,Joeri Van Mierlo,Maitane Berecibar
标识
DOI:10.1016/j.rser.2022.112213
摘要
Currently, the energy grid is changing to fit the increasing energy demands but also to support the rapid penetration of renewable energy sources. As a result, energy storage devices emerge to add buffer capacity and to reinforce residential and commercial usage, as an attempt to improve the overall utilization of the available green energy. Although various research has been conducted in the field including photovoltaic and wind applications, the study on suitability identification of different storage devices for various stationary application types is still the gap observed which needs further study and verification. The review performed fills these gaps by investigating the current status and applicability of energy storage devices, and the most suitable type of storage technologies for grid support applications are identified. Moreover, various technical, economic and environmental impact evaluation criteria's are taken into consideration for the identification of their characteristics and potentials. The comprehensive review shows that, from the electrochemical storage category, the lithium-ion battery fits both low and medium-size applications with high power and energy density requirements. From the electrical storage categories, capacitors, supercapacitors, and superconductive magnetic energy storage devices are identified as appropriate for high power applications. Besides, thermal energy storage is identified as suitable in seasonal and bulk energy application areas. With proper identification of the application's requirement and based on the techno-economic, and environmental impact investigations of energy storage devices, the use of a hybrid solutions with a combination of various storage devices is found to be a viable solution in the sector.
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