Grey-box and ANN-based building models for multistep-ahead prediction of indoor temperature to implement model predictive control

被引:19
作者
Talib, Abu [1 ]
Park, Semi [1 ]
Im, Piljae [2 ]
Joe, Jaewan [1 ]
机构
[1] INHA Univ, Dept Architectural Engn, Inha Ro 100, Incheon 22212, South Korea
[2] Oak Ridge Natl Lab, One Bethel Valley Rd, Oak Ridge, TN 37831 USA
基金
新加坡国家研究基金会;
关键词
Grey-box model; Artificial neural network; Model-based predictive control; Multi-step ahead prediction; ARTIFICIAL NEURAL-NETWORK; CONTROL STRATEGY; DEMAND RESPONSE; RANDOM FOREST; COOLING LOAD; ENERGY; OPTIMIZATION; SYSTEMS; PERFORMANCE;
D O I
10.1016/j.engappai.2023.107115
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Model-based predictive control (MPC) strategies for heating, ventilation, and air-conditioning (HVAC) systems present an opportunity to lower building energy consumption and operational costs. Such approaches rely on the development of a model to precisely forecast building thermal dynamics, such as room air temperature or heating/cooling rate, and make control-related decisions. The control-oriented modeling of building energy systems should be accurate in predicting indoor conditions and present low computational complexity. These features are the key challenge of implementing advanced control methods such as MPC. Extant studies on building modeling for MPC have focused on step-ahead forecasting techniques to forecast building thermal dynamics, while multistep-ahead forecasting is essential. Moreover, machine learning model suitable in case of the domain-based engineering expertise are also not available. To this aim, we perform a comparative analysis of the grey-box model based on a resistance-capacitance (RC) thermal network and a machine learning model composed of an artificial neural network (ANN) for multistep-ahead prediction of building thermal dynamics using current and historical data. Actual experimental data obtained from the Flexible Research Platform (FRP) in Oak Ridge National Laboratory (US) are used for estimation and validation purposes. The average root mean squared error (RMSE) of the grey-box and ANN models are 0.89 degrees C and 1.02 degrees C, respectively. The results indicate that the grey-box model outperforms the ANN model in the considered validation periods in terms of accuracy and prediction stability.
引用
收藏
页数:16
相关论文
共 74 条
[21]   Practical implementation and evaluation of model predictive control for an office building in Brussels [J].
De Coninck, Roel ;
Helsen, Lieve .
ENERGY AND BUILDINGS, 2016, 111 :290-298
[22]   Applying support vector machines to predict building energy consumption in tropical region [J].
Dong, B ;
Cao, C ;
Lee, SE .
ENERGY AND BUILDINGS, 2005, 37 (05) :545-553
[23]   Neural network-based model predictive control system for optimizing building automation and management systems of sports facilities [J].
Elnour, Mariam ;
Himeur, Yassine ;
Fadli, Fodil ;
Mohammedsherif, Hamdi ;
Meskin, Nader ;
Ahmad, Ahmad M. ;
Petri, Ioan ;
Rezgui, Yacine ;
Hodorog, Andrei .
APPLIED ENERGY, 2022, 318
[24]   Assessment of deep recurrent neural network-based strategies for short-term building energy predictions [J].
Fan, Cheng ;
Wang, Jiayuan ;
Gang, Wenjie ;
Li, Shenghan .
APPLIED ENERGY, 2019, 236 :700-710
[25]   A short-term building cooling load prediction method using deep learning algorithms [J].
Fan, Cheng ;
Xiao, Fu ;
Zhao, Yang .
APPLIED ENERGY, 2017, 195 :222-233
[26]   Development of prediction models for next-day building energy consumption and peak power demand using data Mining techniques [J].
Fan, Cheng ;
Xiao, Fu ;
Wang, Shengwei .
APPLIED ENERGY, 2014, 127 :1-10
[27]  
Feng F., 2020, ASHRAE ANN VIRT C
[28]   Ceiling radiant cooling: Comparison of ARMAX and subspace identification modelling methods [J].
Ferkl, Lukas ;
Siroky, Jan .
BUILDING AND ENVIRONMENT, 2010, 45 (01) :205-212
[29]   Data-driven models for short-term thermal behaviour prediction in real buildings [J].
Ferracuti, Francesco ;
Fonti, Alessandro ;
Ciabattoni, Lucio ;
Pizzuti, Stefano ;
Arteconi, Alessia ;
Helsen, Lieve ;
Comodi, Gabriele .
APPLIED ENERGY, 2017, 204 :1375-1387
[30]   Economic model predictive control for demand flexibility of a residential building [J].
Finck, Christian ;
Li, Rongling ;
Zeiler, Wim .
ENERGY, 2019, 176 :365-379