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Sub-seasonal forecasts of demand and wind power and solar power generation for 28 European countries

机译:28个欧洲国家的需求和风力发电和太阳能发电的季节性预测

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Electricity systems are becoming increasingly exposed to weather. The need for high-quality meteorological forecasts for managing risk across all timescales has therefore never been greater. This paper seeks to extend the uptake of meteorological data in the power systems modelling community to include probabilistic meteorological forecasts at sub-seasonal lead times. Such forecasts are growing in skill and are receiving considerable attention in power system risk management and energy trading. Despite this interest, these forecasts are rarely evaluated in power system terms, and technical barriers frequently prohibit use by non-meteorological specialists. This paper therefore presents data produced through a new EU climate services programme Subseasonal-to-seasonal forecasting for Energy (S2S4E). The data correspond to a suite of well-documented, easy-to-use, self-consistent daily and nationally aggregated time series for wind power, solar power and electricity demand across 28 European countries. The data are accessible from https://doi.org/10.17864/1947.275 ( Gonzalez et?al. ,? 2020 ) . The data include a set of daily ensemble reforecasts from two leading forecast systems spanning 20 years (ECMWF, an 11-member ensemble, with twice-weekly starts for 1996–2016, totalling 22?880 forecasts) and 11 years (NCEP, a 12-member lagged-ensemble, constructed to match the start dates from the ECMWF forecast from 1999–2010, totalling 14?976 forecasts). The reforecasts contain multiple plausible realisations of daily weather and power data for up to 6 weeks in the future. To the authors’ knowledge, this is the first time a fully calibrated and post-processed daily power system forecast set has been published, and this is the primary purpose of this paper. A brief review of forecast skill in each of the individual primary power system properties and a composite property is presented, focusing on the winter season. The forecast systems contain additional skill over climatological expectation for weekly-average forecasts at extended lead times, though this skill depends on the nature of the forecast metric considered. This highlights the need for greater collaboration between the energy and meteorological research communities to develop applications, and it is hoped that publishing these data and tools will support this.
机译:电力系统越来越越来越暴露于天气。因此,对所有时间尺度的风险的高质量气象预测的需求从未如此大。本文旨在扩展电力系统建模社区中气象数据的吸收,以包括在季节性交货时间的概率气象预测。此类预测在技能中越来越大,并且在电力系统风险管理和能源交易中受到相当大的关注。尽管这种兴趣,这些预测很少在电力系统术语中进行评估,并且技术障碍频繁禁止非气象专家使用。因此,本文介绍了通过新的欧盟气候服务计划产生的数据,该计划是对能源的暂时性的预测(S2S4E)。这些数据对应于欧洲28个欧洲28个国家的风电,太阳能电力需求良好的,易于使用,自我一致的日常和全国聚集的时间序列。可以从HTTPS://doi.org/10.17864/1947.275访问数据(Gonzalez et?al。,?2020)。这些数据包括来自20年的两个领先的预测系统的一组每日集合重新折叠(ECMWF,11名成员集团,1996 - 2016年的两次开始,总计22?880预测)和11年(NCEP,A 12 -MEMEMEMEMEMEMENT-SENEMBLE,建造在1999 - 2010年的ECMWF预测中的开始日期,共14个预测。 ReforeCast在未来包含多次天气和电力数据的多种合理的实现,最多6周。对于作者的知识,这是第一次出版了完全校准和处理后的日常电力系统预测集,这是本文的主要目的。介绍了对每个初级电力系统性能和复合性质的预测技能的简要审查,重点是冬季。预测系统包含对长期平均预测的额外高潮期望的额外技能,尽管这项技能取决于所考虑的预测度量的性质。这突出了对能量和气象研究社区之间更大合作的需要开发应用程序,并且希望发布这些数据和工具将支持这一点。

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