Advanced energy algorithms running at big-data scale will be necessary to identify, realize, and verify energy savings to meet government and utility goals of building energy efficiency. Any algorithm must be well characterized and validated before it is trusted to run at these scales. Smart meter data from real buildings will ultimately be required for the development, testing, and validation of these energy algorithms and processes. However, for initial development and testing, smart meter data are difficult to work with due to privacy restrictions, noise from unknown sources, data accessibility, and other concerns which can complicate algorithm development and validation. This study describes a new methodology to generate synthetic smart...
Sustainability and reducing energy consumption are targets for building operations. The installation...
Building energy simulation models have been used to assist the design and/or optimization of buildin...
The present paper aims at determining the most influential features to be extracted from smart meter...
ABSTRACT: Existing electricity smart meter data sets lack sufficient details on building parameters ...
As of 2015, there are over 60 million smart meters installed in the United States; these meters are ...
In European households, 79% of the energy is consumed for space heating and cooling. The remote dete...
ABSTRACT: The objective of this study is to apply machine learning classification to predict buildin...
Abstract—Smart meter deployments are spurring renewed interest in analysis techniques for electricit...
This paper presents a synthetic building operation dataset which includes HVAC, lighting, miscellane...
Improving the reliability of energy simulation outputs is becoming a pressing task to reduce the per...
This paper discusses the creation of targeting and segmentation information about non-residential bu...
Abstract—Smart meter deployments are spurring renewed interest in analysis techniques for electricit...
Energy performance tracking is becoming increasingly significant in the building industry as a means...
The ground truth data used in this paper are obtained from three different areas to verify the effec...
In recent years, the global trend for digitalisation has also reached buildings and facility managem...
Sustainability and reducing energy consumption are targets for building operations. The installation...
Building energy simulation models have been used to assist the design and/or optimization of buildin...
The present paper aims at determining the most influential features to be extracted from smart meter...
ABSTRACT: Existing electricity smart meter data sets lack sufficient details on building parameters ...
As of 2015, there are over 60 million smart meters installed in the United States; these meters are ...
In European households, 79% of the energy is consumed for space heating and cooling. The remote dete...
ABSTRACT: The objective of this study is to apply machine learning classification to predict buildin...
Abstract—Smart meter deployments are spurring renewed interest in analysis techniques for electricit...
This paper presents a synthetic building operation dataset which includes HVAC, lighting, miscellane...
Improving the reliability of energy simulation outputs is becoming a pressing task to reduce the per...
This paper discusses the creation of targeting and segmentation information about non-residential bu...
Abstract—Smart meter deployments are spurring renewed interest in analysis techniques for electricit...
Energy performance tracking is becoming increasingly significant in the building industry as a means...
The ground truth data used in this paper are obtained from three different areas to verify the effec...
In recent years, the global trend for digitalisation has also reached buildings and facility managem...
Sustainability and reducing energy consumption are targets for building operations. The installation...
Building energy simulation models have been used to assist the design and/or optimization of buildin...
The present paper aims at determining the most influential features to be extracted from smart meter...