{\rtf1\ansi\deff0\deftab360

{\fonttbl
{\f0\fswiss\fcharset0 Arial}
{\f1\froman\fcharset0 Times New Roman}
{\f2\fswiss\fcharset0 Verdana}
{\f3\froman\fcharset2 Symbol}
}

{\colortbl;
\red0\green0\blue0;
}

{\info
{\author Biblio 7.x}{\operator }{\title Biblio RTF Export}}

\f1\fs24
\paperw11907\paperh16839
\pgncont\pgndec\pgnstarts1\pgnrestart
Wang, Zhe, Tianzhen  Hong, and Mary Ann Piette. "Data fusion in predicting internal heat gains for office buildings through a deep learning approach." Applied Energy 240 (2019) 386 - 398.\par \par Lee, Sang Hoon, Tianzhen  Hong, Geof  Sawaya, Yixing  Chen, and Mary Ann Piette. "DEEP: A Database of Energy Efficiency Performance to Accelerate Energy Retrofitting of Commercial Buildings." (2015). LBNL-180309.\par \par Kiliccote, Sila, Mary Ann Piette, David S Watson, and Glenn D Hughes. "Dynamic Controls for Energy Efficiency and Demand Response: Framework Concepts and a New Construction Case Study in New York." 2006 ACEEE Summer Study on Energy Efficiency in Buildings 2006.\par \par Kinney, Satkartar, Mary Ann Piette, Lixing  Gu, and Philip  Haves. "Demand Relief and Weather Sensitivity in Large California Commercial Buildings." International Conference for Enhancing Building Operations 2001.\par \par }