Importance subsampling for power system planning under multi-year demand and weather uncertainty

A. Hilbers, D. Brayshaw, A. Gandy
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引用次数: 6

Abstract

This paper introduces a generalised version of importance subsampling for time series reduction/aggregation in optimisation-based power system planning models. Recent studies indicate that reliably determining optimal electricity (investment) strategy under climate variability requires the consideration of multiple years of demand and weather data. However, solving planning models over long simulation lengths is typically computationally unfeasible, and established time series reduction approaches induce significant errors. The importance subsampling method reliably estimates long-term planning model outputs at greatly reduced computational cost, allowing the consideration of multi-decadal samples. The key innovation is a systematic identification and preservation of relevant extreme events in modeling subsamples. Simulation studies on generation and transmission expansion planning models illustrate the method’s enhanced performance over established "representative days" clustering approaches. The models, data and sample code are made available as open-source software.
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在多年需求和天气不确定的情况下,子抽样对电力系统规划的重要性
针对基于优化的电力系统规划模型中的时间序列约简/聚合问题,提出了一种广义的重要性子抽样方法。最近的研究表明,在气候变化的情况下,可靠地确定最佳电力(投资)策略需要考虑多年的需求和天气数据。然而,在较长的模拟长度上求解规划模型通常在计算上是不可行的,并且已建立的时间序列约简方法会产生显着的误差。重要性子抽样方法可靠地估计了长期规划模型的输出,大大减少了计算成本,允许考虑多年代际样本。关键的创新是在建模子样本中系统地识别和保存相关的极端事件。对发电和输电扩展规划模型的仿真研究表明,该方法比现有的“代表日”聚类方法性能有所提高。模型、数据和示例代码作为开源软件提供。
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