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A multi-period, multi-regional generation expansion planning model incorporating unit commitment constraints

机译:包含单元承诺约束的多周期,多区域发电扩展计划模型

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This work presents a generic mixed integer linear programming (MILP) model that integrates the unit commitment problem (UCP), i.e., daily energy planning with the long-term generation expansion planning (GEP) framework. Typical daily constraints at an hourly level such as start-up and shut-down related decisions (start-up type, minimum up and down time, synchronization, soak and desynchronization time constraints), ramping limits, system reserve requirements are combined with representative yearly constraints such as power capacity additions, power generation bounds of each unit, peak reserve requirements, and energy policy issues (renewables penetration limits, CO2 emissions cap and pricing). For modelling purposes, a representative day (24 h) of each month over a number of years has been employed in order to determine the optimal capacity additions, electricity market clearing prices, and daily operational planning of the studied power system. The model has been tested on an illustrative case study of the Greek power system. Our approach aims to provide useful insight into strategic and challenging decisions to be determined by investors and/or policy makers at a national and/or regional level by providing the optimal energy roadmap under real operating and design constraints. (C) 2015 Elsevier Ltd. All rights reserved.
机译:这项工作提出了一个通用的混合整数线性规划(MILP)模型,该模型集成了单位承诺问题(UCP),即日常能源计划和长期发电扩展计划(GEP)框架。每小时级别的典型日常限制(例如,启动和关闭相关决策(启动类型,最小启动和关闭时间,同步,均热和不同步时间限制),加速限制,系统储备要求)与代表性年度组合约束条件,例如电力容量增加,每个单元的发电界限,峰值储备要求和能源政策问题(可再生能源渗透极限,CO2排放上限和定价)。为了进行建模,已采用了多年中每个月的代表日(24小时),以确定确定的最佳容量,电力市场清算价格以及所研究电力系统的日常运行计划。该模型已在希腊电力系统的示例性案例研究中进行了测试。我们的方法旨在通过提供在实际操作和设计约束下的最佳能源路线图,对国家和/或地区级别的投资者和/或决策者所决定的战略和具有挑战性的决策提供有用的见解。 (C)2015 Elsevier Ltd.保留所有权利。

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