1. Adams, B. M., L. E. Bauman, W. J. Bohnhoff, K. R. Dalbey, M. S. Ebeida, J. P. Eddy, M. S. Eldred, et al. 2009. DAKOTA, A Multilevel Parallel Object-Oriented Framework for Design Optimization, Parameter Estimation, Uncertainty Quantification, and Sensitivity Analysis: Version 5.4 User's Manual. Technical Report. Sandia National Laboratories: Albuquerque, NM. SAND2010-2183.
2. Andersson, C., J. Åkesson, and C. Führer. 2016. PyFMI: A Python Package for Simulation of Coupled Dynamic Models with the Functional Mock-up Interface. Technical Report, Centre for Mathematical Sciences, Lund University, Lund, Sweden, Volume 2016, No. 2.
3. Assessing gaps and needs for integrating building performance optimization tools in net zero energy buildings design
4. Balbach, C., and G. Thomas. 2019. “Data Standards, Energy Efficiency and the Digital Data Economy.” Building Performance Association. Accessed February 16, 2020. https://www.hpxmlonline.com/2019/03/12/data-standards-energy-efficiency-and-the-digital-data-economy/.
5. A model-based decision support tool for building portfolios under uncertainty