一种带宽有限的住宅负荷预测自适应通信方案

Guangrui Xie, Xi Chen, Yang Weng
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引用次数: 0

摘要

在增加新能力的同时,分布式能源的扩散也引起了人们对电压动态波动等挑战的极大关注。例如,在具有高度不确定性的可再生能源发电和客户消费的不稳定环境中,为运营规划目的提供可靠的功率和电压预测以降低风险(例如过电压)是具有挑战性的。在本文中,我们提出了一种基于集成高斯过程的电力负荷(消耗减去发电量)预测方法(IGP)。为了提高预测的准确性,我们不仅使用目标客户产生的数据流,还使用馈线系统中相关客户产生的数据流。针对某些馈线受带宽限制约束的情况,进一步提出了一种自适应数据通信速率控制方案,用于流数据降维。目标是使IGP具有相同的预测精度,但流数据量要少得多。在标准的IEEE 8总线和123总线分布测试用例上测试和验证了IGP及其增强变体的优越功效和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An adaptive communication scheme for bandwidth limited residential load forecasting
While adding new capabilities, the distributed energy resource proliferation raises great concern about challenges such as dynamic fluctuations of voltages. For example, in a volatile setting with highly uncertain renewable generation and customer consumption, it is challenging to provide reliable power and voltage prediction for operational planning purposes to mitigate risks, e.g., over-voltages. In this paper, we propose an integrated Gaussian Process-based method (IGP) for electric load (consumption minus generation) prediction. For improving the forecasting accuracy, we use not only the data streams generated by the target customer but also those of relevant customers in the feeder system. An adaptive data communication rate controlling scheme is further proposed for dimension reduction of streaming data to address the situation when bandwidth limit enforces a constraint in some feeders. The goal is to make IGP with the same prediction precision but significantly less streaming data amount. The superior efficacy and efficiency of IGP and its enhanced variants are tested and verified on the standard IEEE 8-bus and 123-bus distribution test cases.
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