Zone-wide Prediction of Generating Unit-specific Power Outputs for Electricity Grid Congestion Forecasts

IF 0.3 Q4 ECONOMICS Journal of Energy Markets Pub Date : 2020-04-20 DOI:10.21314/JEM.2020.224
David Schönheit, Constantin Dierstein, D. Möst, Lisa Lorenz
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Abstract

The day-ahead trading of electricity necessitates that cross-border capacities limit inter-zonal exchanges. To construct trading domains, two-day-ahead congestion forecasts for the electricity grid are needed. These comprise nodal predictions for load as well as renewable and conventional power generation, from which line flows can be derived. Trading domains limit deviations from the predicted line flows to respect physical grid constraints, requiring an accurate prediction of unit-specific power outputs. This analysis explores various statistical and statistical learning methods, with the goal of adequately predicting the on/off status and power output levels of all power plants within a control zone. The methods are tested for 205 conventional generating units in Germany using forecast values of fundamental variables, namely, load, renewable energy generation and the unavailabilities of power plants. For most units, the extra trees classifier achieves classification accuracy values of over 90% and a second-step extra trees regressor results in average errors of below 10% in relation to the installed capacities. Flexible units, especially hard coal, gas and pumped-storage hydropower plants, exhibit the largest errors. An analysis of errors suggests that load and solar generation are the main drivers of prediction deviations.
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电网拥塞预测中发电机组特定功率输出的区域预测
前一天的电力交易需要跨境容量限制区域间的交换。为了构建交易域,需要对电网进行两天前的拥堵预测。这些包括对负荷的节点预测,以及可再生能源和传统发电,从中可以推导出线路流量。交易域限制了与预测线路流量的偏差,以尊重物理电网约束,要求对单元特定功率输出进行准确预测。本分析探讨了各种统计和统计学习方法,目的是充分预测控制区内所有发电厂的开/关状态和功率输出水平。利用基本变量的预测值,即负荷、可再生能源发电量和发电厂的不可用性,对德国的205台常规发电机组进行了方法测试。对于大多数机组,额外树木分类器的分类精度值超过90%,第二步额外树木回归器的平均误差低于装机容量的10%。灵活的发电机组,尤其是硬煤、天然气和抽水蓄能水电站,误差最大。对误差的分析表明,负荷和太阳能发电是预测偏差的主要驱动因素。
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CiteScore
1.00
自引率
25.00%
发文量
6
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