2014
DOI: 10.1016/j.enbuild.2014.04.034
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On-line learning of indoor temperature forecasting models towards energy efficiency

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Cited by 123 publications
(52 citation statements)
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“…Temperature forecasting is a portion of weather forecasting; other portions include the probability of precipitation forecasting, barometric pressure forecasting, wind power forecasting, etc. One point needs to be noted; temperature forecasting models need to be adapted to different applicable environments, for example, some models are used to forecasting indoor temperature [3,4], some models are used for large-scale temperature forecasting [5,6], and some models are used in specific environment [7,8]. With the rapid development of machine learning, more and more machine learning methods have been applied to weather forecasting, such as support vector machine (SVM) [9,10], genetic algorithms [11], and neural networks [12][13][14].…”
Section: Related Workmentioning
confidence: 99%
“…Temperature forecasting is a portion of weather forecasting; other portions include the probability of precipitation forecasting, barometric pressure forecasting, wind power forecasting, etc. One point needs to be noted; temperature forecasting models need to be adapted to different applicable environments, for example, some models are used to forecasting indoor temperature [3,4], some models are used for large-scale temperature forecasting [5,6], and some models are used in specific environment [7,8]. With the rapid development of machine learning, more and more machine learning methods have been applied to weather forecasting, such as support vector machine (SVM) [9,10], genetic algorithms [11], and neural networks [12][13][14].…”
Section: Related Workmentioning
confidence: 99%
“…Evaporative cooling [41] Active thermal storage [42] Heat recovery [37,43,44] Radiative heating/cooling [45] Variable air volume (VAV)/variable coolant volume [46,47] DWH Solar water heating (SWH) -Flat plate collectors -Vacuum tube collectors [9,14,32,35,48] Solar heat pump system [37,49] Combined cooling/heating and power (CCHP) [37,50] LIGHTING Light-emitting diodes (LED) [51] Use of daylight [52] HOUSEHOLD EQUIPMENT Efficient appliances [9,32,53] Domotics/Monitoring/Automation [17,30,54] WATER CYCLE Greywater recycling [11,30] Use of rainwater [11] After analyzing the regulations of the countries being studied (Colombia and Spain), it is clear that the implementation of a certain technology in the architectural process must pass through a legal and regulatory filter. It is for this reason that an updated review of the energy efficiency legislation and renewable energies regulations in both Colombia [55] and Spain [56] was carried out, these countries being the location of SDLAC15 and the field of work of the authors of the article, respectively, which could be assimilated to Latin America vs. Europe.…”
Section: Solar Energymentioning
confidence: 99%
“…Consider a monitoring system in a home which records temperature and relative humidity and sends them over a noisy communication channel to a central hub [36]. The data from the hub is used to control an HVAC system.…”
Section: Correlation Between Random Variablesmentioning
confidence: 99%
“…The Bayesian network for this program is shown in Figure 12. t and h are used in the hub for further computations such as controlling an HVAC system [36]. This adds another node, M to the Bayesian network as shown in Figure 12.…”
Section: Incorrect Inference Call Leading To Loss Of Dependence Informentioning
confidence: 99%