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Long-term scenario analysis of nuclear energy and variable renewables in Japan's power generation mix considering flexible power resources

机译:考虑灵活电力资源的日本发电组合中核能和可变可再生能源的长期情景分析

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This paper comprehensively analyzes an optimal deployment of variable renewables (VRs) with flexible power resources, such as electricity saving and rechargeable battery, in Japan's long-term power generation mix to 2050 under possible nuclear energy scenarios. The study is performed, employing a dynamic high time-resolution optimal power generation mix model which is formulated as a large-scale linear programming model. Simulation results show that both complete nuclear phase-out and carbon reduction by 80% in 2050 from 2010 encourage VR expansion in the country's power system and cause a quadruple increase of power generation cost at 2050 compared with that under current nuclear capacity and no carbon regulation policy; long-term cost reduction of VR energy system is necessary if VR is positioned as a mainstream for future sustainable power supply. Secondly, higher levels of VR integration decrease the capacity factor of LNG combined cycle (LNGCC), which implies the challenge to assure LNGCC serving as a remunerated ramp generator for VR intermittency. Finally, as an economically optimal solution, electricity saving serves as an important option to integrate massive VR and to treat a seasonal imbalance of its power output in an efficient way. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文综合分析了在可能的核能情景下,到2050年日本的长期发电组合中具有节电和可充电电池等灵活能源的可变可再生能源(VR)的最佳配置。使用动态的高时间分辨率最优发电混合模型进行研究,该模型被制定为大规模线性规划模型。仿真结果表明,与2010年相比,从2010年开始到2050年实现完全核淘汰和碳减排80%都将促进该国电力系统的VR扩张,与目前的核电容量和无碳法规相比,到2050年发电成本将增长四倍。政策;如果将VR定位为未来可持续电源的主流,则需要长期降低VR能源系统的成本。其次,更高级别的VR集成会降低LNG联合循环(LNGCC)的容量因子,这意味着要确保LNGCC充当VR间歇性的有偿斜坡生成器的挑战。最后,作为一种经济上最佳的解决方案,节电是集成大型VR并以有效方式处理其电源输出的季节性不平衡的重要选择。 (C)2015 Elsevier Ltd.保留所有权利。

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