Data-Driven Virtual Replication of Thermostatically Controlled Domestic Heating Systems

被引:3
|
作者
Mor, Gerard [1 ]
Cipriano, Jordi [1 ,2 ]
Gabaldon, Eloi [1 ]
Grillone, Benedetto [3 ]
Tur, Mariano [4 ]
Chemisana, Daniel [2 ]
机构
[1] CIMNE Lleida, Bldg Energy & Environm Grp, Ctr Int Metodes Numer Engn, Pere de Cabrera 16,Off 2G, Lleida 25001, Spain
[2] Univ Lleida, Appl Phys Sect, Environm Sci Dept, Jaume II 69, Lleida 25001, Spain
[3] Ctr Int Metodes Numer Engn, Bldg Energy & Environm Grp, GAIA Bldg TR14,Rambla St Nebridi 22, Terrassa 08222, Spain
[4] BAXI BDR Thermea, Salvador Espriu 9, Lhospitalet De Llobregat 08908, Spain
关键词
connected thermostats; forecasting; energy conservation; machine learning; residential buildings; NATURAL-GAS CONSUMPTION; ENERGY; MODEL; BUILDINGS; PACKAGE; LOAD;
D O I
10.3390/en14175430
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Thermostatic load control systems are widespread in many countries. Since they provide heat for domestic hot water and space heating on a massive scale in the residential sector, the assessment of their energy performance and the effect of different control strategies requires simplified modeling techniques demanding a small number of inputs and low computational resources. Data-driven techniques are envisaged as one of the best options to meet these constraints. This paper presents a novel methodology consisting of the combination of an optimization algorithm, two auto-regressive models and a control loop algorithm able to virtually replicate the control of thermostatically driven systems. This combined strategy includes all the thermostatically controlled modes governed by the set point temperature and enables automatic assessment of the energy consumption impact of multiple scenarios. The required inputs are limited to available historical readings from smart thermostats and external climate data sources. The methodology has been trained and validated with data sets coming from a selection of 11 smart thermostats, connected to gas boilers, placed in several households located in north-eastern Spain. Important conclusions of the research are that these techniques can estimate the temperature decay of households when the space heating is off as well as the energy consumption needed to reach the comfort conditions. The results of the research also show that estimated median energy savings of 18.1% and 36.5% can be achieved if the usual set point temperature schedule is lowered by 1 degrees C and 2 degrees C, respectively.
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页数:25
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