Influential factors for accurate load prediction in a Demand Response context

Morten Gill Wollsen, M. Kjærgaard, B. Jørgensen
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引用次数: 7

Abstract

Accurate prediction of a buildings electricity load is crucial to respond to Demand Response events with an assessable load change. However, previous work on load prediction lacks to consider a wider set of possible data sources. In this paper we study different data scenarios to map the influence of the different data parameters. We also look at the temporal aspect of predicting by looking at the predicted seasons. By predicting with a MultiLayer Perceptron, which is a universal approximator, it is possible to focus solely on the influence of the parameters instead of the prediction algorithm itself. Finally, multiple prediction algorithms are compared. The influential factor analysis is based on data from an entire year from a office building in Denmark. The results show that weather data is the most crucial data parameter. A slight improvement from load data was however seen using only occupancy data. Next, the time of day that is being predicted greatly influence the prediction which is related to the weather pattern. By presenting these results we hope to improve the modeling of building loads and algorithms for Demand Response planning.
需求响应环境下准确负荷预测的影响因素
准确预测建筑物的电力负荷对于响应具有可评估负荷变化的需求响应事件至关重要。然而,以前的负荷预测工作缺乏考虑更广泛的可能数据源集。在本文中,我们研究了不同的数据场景,以映射不同的数据参数的影响。我们还通过预测季节来研究预测的时间方面。通过使用多层感知器(一种通用逼近器)进行预测,可以只关注参数的影响,而不是预测算法本身。最后,对多种预测算法进行了比较。影响因素分析是基于丹麦一栋办公楼一整年的数据。结果表明,天气数据是最关键的数据参数。然而,仅使用占用数据可以看到负载数据略有改善。其次,预测的时间对预测的影响很大,这与天气模式有关。通过展示这些结果,我们希望改进建筑负荷的建模和需求响应规划的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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