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Improving Energy Use Forecast for Campus Micro-grids Using Indirect Indicators

机译:使用间接指示器改善校园微网格的能源预测

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The rising global demand for energy is best addressed by adopting and promoting sustainable methods of power consumption. We employ an informatics approach towards forecasting the energy consumption patterns in a university campus micro-grid which can be used for energy use planning and conservation. We use novel indirect indicators of energy that are commonly available to train regression tree models that can predict campus and building energy use for coarse (daily) and fine (15-min) time intervals, utilizing 3 years of sensor data collected at 15min intervals from 170 smart power meters. We analyze the impact of individual features used in the models to identify the ones best suited for the application. Our models show a high degree of accuracy with CV-RMSE errors ranging from 7.45% to 19.32%, and a reduction in error from baseline models by up to 53%.
机译:通过采用和促进可持续的电力消耗方法,全球对能源的崛起是最佳的。我们采用了一个信息学方法,以预测大学校园微网中的能源消耗模式,可用于能源使用规划和保护。我们使用新颖的能源指标通常可用于培训可以预测校园和建筑能源使用的粗暴(每日)和精细(15分钟)时间间隔的回归树模型,利用15分钟间隔收集的3年传感器数据170智能电表。我们分析模型中使用的个体功能的影响,以识别最适合应用程序的功能。我们的模型显示出高度精度,CV-RMSE误差从7.45%到19.32%,从基线模型的误差减少高达53%。

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