智能家居传感器在预测家庭用电需求方面的潜力

H. Ziekow, C. Goebel, Jens Strüker, H. Jacobsen
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引用次数: 47

摘要

本文的目的是量化分类电力测量对家庭需求预测准确性的影响。家庭层面的需求预测被认为是智能电网中分布式发电与需求匹配的重要机制。我们使用最先进的预测工具,特别是支持向量机和神经网络,来评估分解智能家居传感器数据在家庭需求预测中的使用情况。我们的调查利用了30天内从3个私人家庭收集的高分辨率数据。我们的主要结果如下:首先,通过比较基于机器学习的预测与持久性预测的准确性,我们发现先进的预测方法已经产生了更好的预测,即使是在可以从智能电表获得的汇总家庭消费数据(1-7%)上进行的预测。其次,我们将基于智能家居传感器分类数据的预测与持久性和智能电表基准的预测进行了比较,揭示了进一步的预测改进(4-33%)。第三,我们对数据时间分辨率的敏感性分析表明,更多的数据只能在一定程度上提高预测精度。因此,拥有更多的传感器似乎比增加测量的时间分辨率更有价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The potential of smart home sensors in forecasting household electricity demand
The aim of this paper is to quantify the impact of disaggregated electric power measurements on the accuracy of household demand forecasts. Demand forecasting on the household level is regarded as an essential mechanism for matching distributed power generation and demand in smart power grids. We use state-of-the-art forecasting tools, in particular support vector machines and neural networks, to evaluate the use of disaggregated smart home sensor data for household-level demand forecasting. Our investigation leverages high resolution data from 3 private households collected over 30 days. Our key results are as follows: First, by comparing the accuracy of the machine learning based forecasts with a persistence forecast we show that advanced forecasting methods already yield better forecasts, even when carried out on aggregated household consumption data that could be obtained from smart meters (1-7%). Second, our comparison of forecasts based on disaggregated data from smart home sensors with the persistence and smart meter benchmarks reveals further forecast improvements (4-33%). Third, our sensitivity analysis with respect to the time resolution of data shows that more data only improves forecasting accuracy up to a certain point. Thus, having more sensors appears to be more valuable than increasing the time resolution of measurements.
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