Simple neural network (NN) architecture is a reliable tool to transform reactive rule-based systems into predictive systems. Thermal comfort is of utmost importance in office buildings, which need the activation of heating systems at an optimal time. A high-performance NN predictive system requires a large training dataset. This can limit system efficiency due to the lack of enough historical data derived from thermal controllers. To address this issue, we generated, trained and tested a dataset of eight sizes using a calibrated building model. A set of key performance indicators (KPIs) was improved by studying the output performance. The effect of normalization and standardization preprocessing techniques on NN prediction ability was studi...
This study aimed at developing an artificial-neural-network (ANN)-based model that can calculate the...
The importance of predicting building indoor temperature is inevitable to execute an effective energ...
Buildings constitute more than 40% of total primary energy consumption worldwide and are bound to pl...
Starting from an application of a real medium-size university building, the present paper focuses on...
Energy consumed in buildings represents a challenge in the context of reduction of greenhouse gases ...
Most existing commercial building energy management systems (BEMS) are reactive rule-based. This mea...
The aim of a personalized heating system is to provide a desirable microclimate for each individual ...
The paper describes a predictive and adaptive heating controller, using artificial neural networks t...
International audienceThe use of artificial neural networks in the field of building energy manageme...
Prefabricated Movable Buildings (PMBs) are gaining great attention in several applications, such as ...
This study applies a simulation- and optimization-based framework using artificial neural networks f...
Abstract- The use of artificial neural networks in the field of building energy management has led t...
General regression neural networks (GRNNs) were used to optimize air conditioning setback scheduling...
The paper addresses the problem of controlling a Heating Ventilation and Air Conditioning (HVAC) sys...
The aim of this study was to develop an artificial neural network (ANN) prediction model for control...
This study aimed at developing an artificial-neural-network (ANN)-based model that can calculate the...
The importance of predicting building indoor temperature is inevitable to execute an effective energ...
Buildings constitute more than 40% of total primary energy consumption worldwide and are bound to pl...
Starting from an application of a real medium-size university building, the present paper focuses on...
Energy consumed in buildings represents a challenge in the context of reduction of greenhouse gases ...
Most existing commercial building energy management systems (BEMS) are reactive rule-based. This mea...
The aim of a personalized heating system is to provide a desirable microclimate for each individual ...
The paper describes a predictive and adaptive heating controller, using artificial neural networks t...
International audienceThe use of artificial neural networks in the field of building energy manageme...
Prefabricated Movable Buildings (PMBs) are gaining great attention in several applications, such as ...
This study applies a simulation- and optimization-based framework using artificial neural networks f...
Abstract- The use of artificial neural networks in the field of building energy management has led t...
General regression neural networks (GRNNs) were used to optimize air conditioning setback scheduling...
The paper addresses the problem of controlling a Heating Ventilation and Air Conditioning (HVAC) sys...
The aim of this study was to develop an artificial neural network (ANN) prediction model for control...
This study aimed at developing an artificial-neural-network (ANN)-based model that can calculate the...
The importance of predicting building indoor temperature is inevitable to execute an effective energ...
Buildings constitute more than 40% of total primary energy consumption worldwide and are bound to pl...