基于自适应分割和机器学习的潜在DR容量分析

Wen-jun Tang, Yi-Syuan Wu, Hong-Tzer Yang
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引用次数: 6

摘要

需求响应(DR)计划通过减少电力消耗或准备减少电力消耗来补偿发电不足或充当旋转储备。取决于最终用户如何加入程序。因此,容灾的潜在容量对系统运营商和容灾聚合商来说都是一个关键问题。该方法采用自适应k-means方法对潜在消费者作为dr的候选参与者进行评估,并利用机器学习高斯过程(GPML)构建可控电器的消费预测模型。通过将候选人的数据与预测模型相结合,从而获得潜在容量。案例研究利用台湾低压先进计量基础设施(LVAMI)的实际数据来评估所提出方法的准确性和有效性。结果表明,该方法具有较好的有效性和实用性。
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Adaptive segmentation and machine learning based potential DR capacity analysis
By shedding their electricity consumption or getting ready to be shed, the Demand Response (DR) program compensates the shortage of generation or acts as spinning reserve. Depending on how the end-users join in the program. the potential capacity of DR is, therefore, a key issue no matter to system operator or DR aggregator. The proposed method employs adaptive k-means approach to evaluate the potential consumer as candidate participants of DR. The consumption prediction models of controllable appliances are constructed by Gaussian Processes for Machine Learning (GPML). Through combining the candidates' data and prediction models, the potential capacity is then achieved. Case studies evaluate the accuracy and efficacy of the proposed method with practical low voltage advanced metering infrastructure (LVAMI) data achieved from Taiwan. The results show good efficiency and practicability of the proposed method.
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