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GAM Modeling on Power Consumption for Campus Buildings

机译:校园建筑功耗的Gam模型

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Precise prediction of power consumption is critical to power generation planning, which is important to overall power demand and supply management Power consumption for university campuses is different from that of general office buildings and shopping malls due to, among other factors, the particular academic calendar that includes summer and winter vacations. GAM (Generalized Additive Model) model [1] is a powerful tool to fit a set of response data to a collection of explanatory variables for its exceptional capability of modeling interacting explanatory variables though nonlinear smooth functions. GAM has been successfully employed in power prediction for modeling targets like research covering office buildings and nation-wide consumption. However, the most difficult problem in applying GAM modeling is how to find the right fitting GAM formula in the first place. In this regard, this paper proposes a general form of GAM demand model based on human daily activity. On top of this general form, we propose an AOO (Adding One by One) algorithm to find a fitting GAM model for a particular target based on historic data collected from that particular target. In particular, in the context of power consumption modeling, we train the general GAM model by a year-long historic power consumption data of year 2014 from a university campus to derive prediction models for both the expected value and its variance. The two resultant fitting GAM formulas thus obtained for both expected value and the associated variance have been applied to predict the power consumption for the following three years of 2015-2017. The prediction results have shown preferable performance, MAPE for expected value and CAE for variance, over that predicted by the GAM models reported in the literature [2].
机译:功耗的精确预测对于发电规划至关重要,这对大学校园的总体电力需求和供应管理功耗是重要的,与其他因素,特定的学术日历以及特定的学术日历,大学校园的供应管理耗电量与一般的办公楼和商场不同包括夏季和冬季假期。 GAM(广义添加剂模型)模型[1]是一种强大的工具,可以将一组响应数据拟合到一个解释性变量的集合,以实现其在非线性平滑函数的相互作用解释性变量的卓越能力。 GAM已成功用于电力预测,用于建模目标,如研究涵盖办公楼和全国范围的消费。但是,应用游戏建模中最困难的问题是如何首先找到正确的拟合游戏配方。在这方面,本文提出了一种基于人类日常活动的GAM需求模型的一般形式。在此常规形式之上,我们提出了一个AOO(一个逐个)算法,以基于从该特定目标收集的历史数据找到特定目标的拟合GAM模型。特别是,在能耗建模的背景下,我们从大学校园的2014年一年的历史性电力消费数据培训一般的Gam模型,以推导出预期值及其方差的预测模型。因此,已经应用了预期值和相关方差的两个所得到的拟合Gam公式,以预测2015-2017的以下三年的功耗。预测结果表明了优选的性能,MAPE用于预期值和CAE的方差,在文献中报告的GAM模型预测到了这一点[2]。

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