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Time series forecasting for building energy consumption using weighted Support Vector Regression with differential evolution optimization technique

机译:使用加权支持向量回归和差分进化优化技术的建筑能耗时间序列预测

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Electricity load forecasting is crucial for effective operation and management of buildings. Support Vector Regression (SVR) have been successfully used in solving nonlinear regression and time series problems related to building energy consumption forecasting. As the performance of SVR heavily depends on the selection of its parameters, differential evolution (DE) algorithm is employed in this study to solve this problem. The forecasting model is developed using weighted SVR models with nu-SVR and epsilon-SVR. The DE algorithm is again used to determine the weights corresponding to each model. A case of time series energy consumption data from an institutional building in Singapore is used to elucidate the performance of the proposed model. The proposed model can be used to forecast both, half-hourly and daily electricity consumption time series data for the same building. The results show that for half-hourly data, the model exhibits higher weight for nu-SVR, whereas for daily data, a higher weight for epsilon-SVR is observed. The mean absolute percentage error (MAPE) for daily energy consumption data is 5.843 and that for half-hourly energy consumption is 3.767 respectively. A detailed comparison with other evolutionary algorithms show that the proposed model yields higher accuracy for building energy consumption forecasting. (C) 2016 Elsevier B.V. All rights reserved.
机译:电力负荷预测对于建筑物的有效运行和管理至关重要。支持向量回归(SVR)已成功用于解决与建筑能耗预测有关的非线性回归和时间序列问题。由于SVR的性能在很大程度上取决于其参数的选择,因此本文采用差分进化(DE)算法来解决此问题。预测模型是使用带有nu-SVR和epsilon-SVR的加权SVR模型开发的。再次使用DE算法来确定与每个模型相对应的权重。以新加坡某机构大楼的时间序列能耗数据为例,来说明所提出模型的性能。所提出的模型可用于预测同一建筑物的半小时和每日用电时间序列数据。结果表明,对于半小时数据,该模型对nu-SVR的权重较高,而对于日常数据,对ε-SVR的权重较高。每日能耗数据的平均绝对百分比误差(MAPE)为5.843,半小时能耗的平均绝对百分比误差为3.767。与其他进化算法的详细比较表明,该模型对建筑物能耗预测具有更高的准确性。 (C)2016 Elsevier B.V.保留所有权利。

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