住宅负荷分布建模与仿真:数据驱动预测方法

A. Shabani, Darjon Dhamo, D. Panxhi, Orion Zavalani
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摘要

建筑能源消耗的快速增长促使有关各方采取措施提高能源效率。近几十年来发展起来的一种方法是通过能源预测进行能源管理。这些方法涉及机器学习算法,其重点是根据过去观察到的数据预测能源消耗。但也存在这些信息缺失的情况,因此在本文中,我们着重解决测量数据不可用时的问题。首先,我们开发了一个家电模拟器,反映他们的能源消耗和居住者的行为。所考虑的每个设备都使用电路类比进行建模。然后将模拟器的单台电器能耗汇总,生成总功耗数据。将合成的数据输入到人工神经网络算法中,学习能耗模式并预测下一小时的能耗。
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Modelling and Simulation of Residential Load Profiles as an Approach for Data-Driven Prediction
Rapid growth of buildings energy consumption encourages to take measures to improve energy efficiency by actors involved in the field. One of the approaches developed last decades consists in energy management through energy prediction. These approaches engage machine learning algorithms, which focus on predicting energy consumption based on past-observed data. But there are also cases when this information is missing so in this paper, we focus on solving the problem when measured data are not available. Initially, we develop an electrical home appliance simulator, which reflects their energy consumption and occupant behavior. Each of the considered device is modelled using an electrical circuit analogy. Then aggregating single appliance energy consumption from simulator, total power consumption data is generated. Synthetic data are feed to an Artificial Neural Network algorithm to learn consumption pattern and to predict next hour energy consumption.
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