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首页> 外文期刊>Quality Control, Transactions >Incorporating Load Fluctuation in Feature Importance Profile Clustering for Day-Ahead Aggregated Residential Load Forecasting
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Incorporating Load Fluctuation in Feature Importance Profile Clustering for Day-Ahead Aggregated Residential Load Forecasting

机译:将负载波动合并在特征重要性概况集群中,用于一天的汇总住宅负载预测

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摘要

Residents clustering in different periods of load fluctuation and aggregated forecasting can increase the load prediction accuracy. But the strength of load fluctuation reflects the difference in the electricity consumption behavior of residents and affects the cluster results of residents. This paper presents a new day-ahead aggregated load-forecasting method for distribution networks based on the load fluctuation and feature importance (FI) profile clustering of residents. First, the input features are determined, the FI profile of residents is determined, and residents are clustered according to the FI profile. Then, the crow search algorithm is used to optimize the initial cluster centers for preventing the clustering results from falling into a local optimum. And the cluster verification index S_Dbw, the sum of the average scattering for the clusters and the inter-cluster density, is used to evaluate the cluster quality. The optimal clustering results of the aggregated load for different fluctuation periods are determined via statistical experiments. Finally, a random forest predictor based on ensemble learning is selected. According to the optimal clustering results in different fluctuation periods, a rolling forecasting model is constructed to realize day-ahead aggregated load forecasting in a residential distribution network.
机译:居民在不同载荷波动时期聚类和聚合预测可以增加负载预测精度。但负荷波动的强度反映了居民的电力消耗行为的差异,并影响居民的集群成果。本文基于居民的负载波动和特征重要性(FI)配置文件集群,提供了一种新的一天前方聚合负载预测方法,用于分发网络的分配网络。首先,确定输入特征,确定居民的固定轮廓,并且根据FI配置文件群集居民。然后,乌鸦搜索算法用于优化初始集群中心,以防止聚类导致落入本地最佳最优。并且群集验证索引S_DBW,用于群集的平均散射和群集密度的总和,用于评估群集质量。通过统计实验确定不同波动时段的聚集负荷的最佳聚类结果。最后,选择了基于集合学习的随机森林预测指标。根据最佳聚类导致不同波动时段,构造滚动预测模型以实现住宅分配网络中的前方聚合负荷预测。

著录项

  • 来源
    《Quality Control, Transactions》 |2020年第2020期|25198-25209|共12页
  • 作者单位

    Northeast Elect Power Univ Minist Educ Key Lab Modern Power Syst Simulat & Control & Re Jilin 132012 Jilin Peoples R China;

    Northeast Elect Power Univ Minist Educ Key Lab Modern Power Syst Simulat & Control & Re Jilin 132012 Jilin Peoples R China;

    Beijing Zhongdian Puhua Informat Technol Co Ltd Beijing 100192 Peoples R China;

    Beijing Zhongdian Puhua Informat Technol Co Ltd Beijing 100192 Peoples R China;

    Northeast Elect Power Univ Minist Educ Key Lab Modern Power Syst Simulat & Control & Re Jilin 132012 Jilin Peoples R China;

    Northeast Elect Power Univ Minist Educ Key Lab Modern Power Syst Simulat & Control & Re Jilin 132012 Jilin Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Aggregated load forecasting; feature importance; load fluctuation; crow search algorithm; S-Dbw; random forest;

    机译:聚合负荷预测;特征重要性;负荷波动;乌鸦搜索算法;S-DBW;随机森林;

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