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Time series analytics using sliding window metaheuristic optimization-based machine learning system for identifying building energy consumption patterns

机译:使用基于滑动窗口元启发式优化的机器学习系统进行时间序列分析,以识别建筑能耗模式

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Smart grids are a promising solution to the rapidly growing power demand because they can considerably increase building energy efficiency. This study developed a novel time-series sliding window metaheuristic optimization-based machine learning system for predicting real-time building energy consumption data collected by a smart grid. The proposed system integrates a seasonal autoregressive integrated moving average (SARIMA) model and metaheuristic firefly algorithm-based least squares support vector regression (MetaFA-LSSVR) model. Specifically, the proposed system fits the SARIMA model to linear data components in the first stage, and the MetaFA-LSSVR model captures nonlinear data components in the second stage. Real-time data retrieved from an experimental smart grid installed in a building were used to evaluate the efficacy and effectiveness of the proposed system. A kappa-week sliding window approach is proposed for employing historical data as input for the novel time-series forecasting system. The prediction system yielded high and reliable accuracy rates in 1-day-ahead predictions of building energy consumption, with a total error rate of 1.181% and mean absolute error of 0.026 kW h. Notably, the system demonstrates an improved accuracy rate in the range of 36.8-113.2% relative to those of the linear forecasting model (i.e., SARIMA) and nonlinear forecasting models (i.e., LSSVR and MetaFA-LSSVR). Therefore, end users can further apply the forecasted information to enhance efficiency of energy usage in their buildings, especially during peak times. In particular, the system can potentially be scaled up for using big data framework to predict building energy consumption. (C) 2016 Elsevier Ltd. All rights reserved.
机译:智能电网是快速增长的电力需求的有前途的解决方案,因为它们可以大大提高建筑的能效。这项研究开发了一种新颖的基于时序滑动窗口元启发式优化的机器学习系统,用于预测智能电网收集的实时建筑能耗数据。拟议的系统集成了季节自回归综合移动平均(SARIMA)模型和基于元启发式萤火虫算法的最小二乘支持向量回归(MetaFA-LSSVR)模型。具体来说,所提出的系统在第一阶段将SARIMA模型拟合到线性数据分量,而在第二阶段,MetaFA-LSSVR模型捕获非线性数据分量。从安装在建筑物中的实验智能电网中获取的实时数据用于评估所提出系统的功效。提出了一种卡帕周滑动窗口方法,该方法将历史数据用作新型时间序列预测系统的输入。该预测系统在未来1天的建筑能耗预测中产生了高而可靠的准确率,总误差率为1.181%,平均绝对误差为0.026 kW h。值得注意的是,相对于线性预测模型(即SARIMA)和非线性预测模型(即LSSVR和MetaFA-LSSVR),该系统的准确率提高了36.8-113.2%。因此,最终用户可以进一步应用预测的信息来增强建筑物中的能源使用效率,尤其是在高峰时段。特别是,该系统可以潜在地扩大规模,以使用大数据框架来预测建筑能耗。 (C)2016 Elsevier Ltd.保留所有权利。

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