The optimal energy management of multiple chiller systems calls for the construction of mathematical models of chiller energy efficiency. The existing grey- or black-box models include parameters that have to be estimated from experimental data. So far, the predictive capabilities of alternative models have been assessed and compared on data sets created by laboratory tests or provided by chiller manufacturers. In an Industry 4.0 context, the continuous monitoring and collection of field data discloses new opportunities but raises also robustness issues that are herein addressed. Herein, exploiting an extensive experimental dataset collected over a six-month period, four literature models and a new machine learning approach are compared. Th...
This paper presents two case studies in which thermodynamic modeling was used to predict improved ch...
With the proliferation of variable energy sources, flexible energy loads will become more and more im...
Selecting the model is an important and essential step in model based fault detection and diagnosis ...
The optimal energy management of multiple chiller systems calls for the construction of mathematical...
This paper presents an evaluation of six empirically-based models for predicting water chiller energ...
Chiller systems take up the major proportion of electricity used in commercial buildings. Their ener...
The large datasets resulting from operating HVAC&R systems are currently scrutinized to find ways to...
To implement the condenser water set point optimization, one can employ a regression model. However,...
This study demonstrates how to compare the energy performance of an existing air-cooled chiller with...
Predicting cooling load is essential for many applications such as diagnosing the health of existing...
This paper presents an analysis conducted upon the sensor data gathered from the distribution contro...
The operation of chiller systems accounts for the major proportion of electricity consumption in com...
In this paper, the calibration of the parameters of the Gordon-Ng Universal (GNU) chiller model is i...
Air-conditioning is vital for Industrial, Manufacturing, and Commercial applications. Chillers are ...
Cooling accounts for 12-38% of total energy consumption in schools in the US, depending on the regio...
This paper presents two case studies in which thermodynamic modeling was used to predict improved ch...
With the proliferation of variable energy sources, flexible energy loads will become more and more im...
Selecting the model is an important and essential step in model based fault detection and diagnosis ...
The optimal energy management of multiple chiller systems calls for the construction of mathematical...
This paper presents an evaluation of six empirically-based models for predicting water chiller energ...
Chiller systems take up the major proportion of electricity used in commercial buildings. Their ener...
The large datasets resulting from operating HVAC&R systems are currently scrutinized to find ways to...
To implement the condenser water set point optimization, one can employ a regression model. However,...
This study demonstrates how to compare the energy performance of an existing air-cooled chiller with...
Predicting cooling load is essential for many applications such as diagnosing the health of existing...
This paper presents an analysis conducted upon the sensor data gathered from the distribution contro...
The operation of chiller systems accounts for the major proportion of electricity consumption in com...
In this paper, the calibration of the parameters of the Gordon-Ng Universal (GNU) chiller model is i...
Air-conditioning is vital for Industrial, Manufacturing, and Commercial applications. Chillers are ...
Cooling accounts for 12-38% of total energy consumption in schools in the US, depending on the regio...
This paper presents two case studies in which thermodynamic modeling was used to predict improved ch...
With the proliferation of variable energy sources, flexible energy loads will become more and more im...
Selecting the model is an important and essential step in model based fault detection and diagnosis ...