AbstractThis study reports the development of a Gaussian Process (GP) model based on BEMS data. The GP model is a data driven model and requires a few dominant inputs. It provides a quick prediction with a far less computation than the whole building simulation tools (e.g. EnergyPlus). The GP model developed in this study is capable of predicting the behavior of a building system (fan energy consumption). This paper reports how the authors developed the GP model. In particular, this paper addresses how to deal with outliers existing in BEMS data set. In this study, RANdom Sample Consensus (RANSAC) was selected for detecting the outliers from the data set. The RANSAC method can be beneficially applied to improve the accuracy of the GP model
Building physics-based models of complex physical systems like buildings and chemical plants is extr...
The wind is a random variable difficult to master, for this, we developed a mathematical and statist...
This paper aims to demonstrate an empirical approach to building energy modelling (BEM). The study p...
AbstractThis study reports the development of a Gaussian Process (GP) model based on BEMS data. The ...
We present a Gaussian process (GP) modeling framework to determine energy savings and uncertainty le...
Making a prediction typically involves dealing with uncertainties. The application of uncertainty an...
Making a prediction typically involves dealing with uncertainties. The application of uncertainty an...
Making a prediction typically involves dealing with uncertainties. The application of uncertainty an...
Occupant behavior has a large impact on residentialbuilding energy use; nevertheless, behavior model...
For the last few decades, thermal comfort has been considered an aspect of sustainable building eval...
The current Building Energy Performance Simulation (BEPS) tools are based on first principles. For t...
The main purpose of this research is to include uncertainty that lies in modeling process and that a...
In this paper we present a novel emulator of a building simulator for the simulation-assisted design...
Due to the steady increase in energy consumption to provide thermal comfort in buildings, the role o...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
Building physics-based models of complex physical systems like buildings and chemical plants is extr...
The wind is a random variable difficult to master, for this, we developed a mathematical and statist...
This paper aims to demonstrate an empirical approach to building energy modelling (BEM). The study p...
AbstractThis study reports the development of a Gaussian Process (GP) model based on BEMS data. The ...
We present a Gaussian process (GP) modeling framework to determine energy savings and uncertainty le...
Making a prediction typically involves dealing with uncertainties. The application of uncertainty an...
Making a prediction typically involves dealing with uncertainties. The application of uncertainty an...
Making a prediction typically involves dealing with uncertainties. The application of uncertainty an...
Occupant behavior has a large impact on residentialbuilding energy use; nevertheless, behavior model...
For the last few decades, thermal comfort has been considered an aspect of sustainable building eval...
The current Building Energy Performance Simulation (BEPS) tools are based on first principles. For t...
The main purpose of this research is to include uncertainty that lies in modeling process and that a...
In this paper we present a novel emulator of a building simulator for the simulation-assisted design...
Due to the steady increase in energy consumption to provide thermal comfort in buildings, the role o...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
Building physics-based models of complex physical systems like buildings and chemical plants is extr...
The wind is a random variable difficult to master, for this, we developed a mathematical and statist...
This paper aims to demonstrate an empirical approach to building energy modelling (BEM). The study p...