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A Spatio-Temporal Customer Baseline Load Estimation Approach Based on LAD-LASSO Regression

机译:基于Lad-Lasso回归的时空客户基线负载估计方法

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Customer baseline load (CBL) estimation plays a crucial role for customer compensation calculation in demand response (DR) process. Most current customer baseline load estimation methods only consider one of the spatial information in DR event day and the temporal information of DR participants. CBL estimation methods based on spatial information shows instability when load patterns between DR participants and CONTROL group customers are not similar. And CBL estimation methods based on temporal information show poor accuracy when customers’ load pattern changes in DR event day. In order to improve the accuracy of CBL estimation in complex scenes, a spatio-temporal approach for CBL estimation is proposed in this paper. First, all customers are clustered by K-means algorithm, the non-DR customers in the same cluster is regarded as similar customers. Second, the spatio-temporal feature vectors are extracted from history load data of DR participants and similar customers’ load data in DR event day. Third, for each DR customer, a linear function between feature vector and CBL is fitted by LAD-LASSO regression model, by which the CBL is estimated. A comparison with six well-known CBL estimation methods using a dataset of 450 residential customers indicates that the proposed approach has the best accuracy and robustness performance than other current CBL estimation methods.
机译:客户基线负载(CBL)估计对需求响应(DR)过程中的客户补偿计算起着至关重要的作用。大多数当前客户基线负载估计方法仅考虑DR事件日中的空间信息之一和DR参与者的时间信息。基于空间信息的CBL估计方法显示了当DR参与者和控制组客户之间的负载模式不相似时不稳定。基于时间信息的CBL估计方法显示了当客户的负载日常生活中的负载模式变化时的准确性差。为了提高复杂场景中CBL估计的准确性,本文提出了一种用于CBL估计的时空方法。首先,所有客户都被K-Means算法集群,同一群集中的非博士客户被视为类似客户。其次,从博士参与者的历史加载数据和类似客户的负载数据中提取时空特征向量在DR事件日内提取。第三,对于每个DR客户,特征向量和CBL之间的线性函数由LASSO回归模型装配,通过该模型估计CBL。使用450个住宅客户的数据集的六种众所周知的CBL估计方法的比较表明所提出的方法具有比其他当前CBL估计方法的最佳精度和鲁棒性能。

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