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Adaptive learning based data-driven models for predicting hourly building energy use

机译:基于自适应学习的数据驱动模型,用于预测建筑物的小时能耗

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Accurately predicting energy usage in buildings is of great importance in various efforts on improving building energy efficiencies such as fault detection and diagnostics, building-grid interactions, and building commissioning, Data-driven approach and first-principle approach are two commonly used methods in developing models for predicting building energy use. In this paper, several data-driven methods including multiple linear regression, adaptive linear filter algorithms (least mean square (LMS), normalized least mean square (nLMS), and recursive least square (RLS)), and Gaussian mixture model regression (GMMR) are employed to predict hourly energy usages in two buildings. One building is a synthetic large size office building from DOE reference building models. The hourly building energy consumption was predicted using the energy simulation model for one year under Chicago climate. The other building is an existing office building located in Des Moines, Iowa. The actual hourly building energy consumption of the existing building was obtained through building submeters. The accuracies of these data-driven models for predicting energy usages of the two buildings are compared. The GMMR models outperform the adaptive filter methods in this study. Both the GMMR and adaptive filter methods meet the model calibration criteria defined by the ASHRAE Guideline 14. (C) 2017 Elsevier B.V. All rights reserved.
机译:在提高建筑物能源效率的各种努力中,准确地预测建筑物中的能源使用非常重要,例如故障检测和诊断,建筑物与电网之间的相互作用以及建筑物调试,数据驱动方法和第一原理方法是开发中的两种常用方法。预测建筑能耗的模型。在本文中,几种数据驱动的方法包括多重线性回归,自适应线性滤波算法(最小均方(LMS),归一化最小均方(nLMS)和递归最小二乘(RLS))以及高斯混合模型回归(GMMR) )来预测两座建筑物的小时能耗。一栋建筑物是由DOE参考建筑物模型合成的大型办公楼。使用芝加哥气候下一年的能源模拟模型来预测建筑物每小时的能耗。另一栋是位于爱荷华州得梅因市的现有办公楼。现有建筑物的实际每小时建筑物能耗是通过建筑物电表获得的。比较了这些数据驱动模型用于预测两座建筑物的能耗的准确性。在这项研究中,GMMR模型优于自适应滤波器方法。 GMMR和自适应滤波器方法均符合ASHRAE准则14定义的模型校准标准。(C)2017 Elsevier B.V.保留所有权利。

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