Indoor climate control is responsible for a substantial amount of the world's total energy expenditure. In a time of climate crisis where a reduction of energy consumption is crucial to avoid climate disaster, indoor climate control is a ripe target for eliminating energy waste. The conventional method of adjusting the indoor climate with the use of setpoint curves, based solely on outdoor temperature, may lead to notable inefficiencies. This project evaluates the possibility to replace this method of regulation with a system based on model predictive control (MPC) in one of Uppsala University Hospitals office buildings. A prototype of an MPC controller using Artificial Neural Networks (ANN) as its system model was developed. The system tak...
The rapid growth in energy usage and CO2 emissions has become a critical issue for the whole world. ...
År 2012 gick ca 30 % av den totala energianvändningen till uppvärmning av bostäder och lokaler. Av d...
Future building energy management systems will have to be capable of adapting to variation in the ra...
Indoor climate control is responsible for a substantial amount of the world's total energy expenditu...
The main purpose of the work presented in this thesis is to examine the possibilities of different c...
This thesis focuses on the development of model predictive control (MPC) strategies for reducing ene...
The building sector globally accounts for more than one third of the nal energy consumption. In indu...
This research aimed to develop an Artificial Neural Network (ANN)-based advanced thermal control met...
Conventional building automation and control (BAC) systems employ reactive feedback control, such as...
The smart building concept aims to use smart technology to reduce energy consumption, as well as to ...
In the last few years, the reduction of energy consumption and pollution became mandatory. It became...
The main objective in this thesis is to explore if a model predictive control scheme can increase th...
The small medium large system (SMLsystem) is a house built at the Universidad CEU Cardenal Herrera (...
This paper presents an investigation of how Model Predictive Control (MPC) and weather predictions c...
Machine-learning (ML) –based building models have been gaining popularity in constructing model pred...
The rapid growth in energy usage and CO2 emissions has become a critical issue for the whole world. ...
År 2012 gick ca 30 % av den totala energianvändningen till uppvärmning av bostäder och lokaler. Av d...
Future building energy management systems will have to be capable of adapting to variation in the ra...
Indoor climate control is responsible for a substantial amount of the world's total energy expenditu...
The main purpose of the work presented in this thesis is to examine the possibilities of different c...
This thesis focuses on the development of model predictive control (MPC) strategies for reducing ene...
The building sector globally accounts for more than one third of the nal energy consumption. In indu...
This research aimed to develop an Artificial Neural Network (ANN)-based advanced thermal control met...
Conventional building automation and control (BAC) systems employ reactive feedback control, such as...
The smart building concept aims to use smart technology to reduce energy consumption, as well as to ...
In the last few years, the reduction of energy consumption and pollution became mandatory. It became...
The main objective in this thesis is to explore if a model predictive control scheme can increase th...
The small medium large system (SMLsystem) is a house built at the Universidad CEU Cardenal Herrera (...
This paper presents an investigation of how Model Predictive Control (MPC) and weather predictions c...
Machine-learning (ML) –based building models have been gaining popularity in constructing model pred...
The rapid growth in energy usage and CO2 emissions has become a critical issue for the whole world. ...
År 2012 gick ca 30 % av den totala energianvändningen till uppvärmning av bostäder och lokaler. Av d...
Future building energy management systems will have to be capable of adapting to variation in the ra...