Building thermal load prediction through shallow machine learning and deep learning
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Mary Ann Piette | Tianzhen Hong | Zhe Wang | M. Piette | T. Hong | Zhe Wang
[1] James E. Braun,et al. An Inverse Gray-Box Model for Transient Building Load Prediction , 2002 .
[2] Mary Ann Piette,et al. Predicting plug loads with occupant count data through a deep learning approach , 2019, Energy.
[3] Jin Wen,et al. Review of building energy modeling for control and operation , 2014 .
[4] Gaël Varoquaux,et al. Scikit-learn: Machine Learning in Python , 2011, J. Mach. Learn. Res..
[5] Mary Ann Piette,et al. Data fusion in predicting internal heat gains for office buildings through a deep learning approach , 2019, Applied Energy.
[6] Shengwei Wang,et al. Simplified building model for transient thermal performance estimation using GA-based parameter identification , 2006 .
[7] Frédéric Magoulès,et al. A review on the prediction of building energy consumption , 2012 .
[8] Jiejin Cai,et al. Applying support vector machine to predict hourly cooling load in the building , 2009 .
[9] Joaquim Melendez,et al. Short-term load forecasting in a non-residential building contrasting models and attributes , 2015 .
[10] Lynne E. Parker,et al. Energy and Buildings , 2012 .
[11] D. H. Spethmann. Optimal control for cool storage , 1989 .
[12] Na Luo,et al. Data analytics and optimization of an ice-based energy storage system for commercial buildings , 2017 .
[13] Nora El-Gohary,et al. A review of data-driven building energy consumption prediction studies , 2018 .
[14] Lino Guzzella,et al. EKF based self-adaptive thermal model for a passive house , 2014 .
[15] Jürgen Schmidhuber,et al. Long Short-Term Memory , 1997, Neural Computation.
[16] Yixuan Wei,et al. Prediction of occupancy level and energy consumption in office building using blind system identification and neural networks , 2019, Applied Energy.
[17] Ning Xu,et al. Forecasting district-scale energy dynamics through integrating building network and long short-term memory learning algorithm , 2019, Applied Energy.
[18] Yingxin Zhu,et al. Modeling and measurement study on an intermittent heating system of a residence in Cambridgeshire , 2015 .
[19] Huanxin Chen,et al. Machine learning-based thermal response time ahead energy demand prediction for building heating systems , 2018, Applied Energy.
[20] Zhiwei Lian,et al. Cooling-load prediction by the combination of rough set theory and an artificial neural-network based on data-fusion technique , 2006 .
[21] Zhongbing Liu,et al. Review of energy conservation technologies for fresh air supply in zero energy buildings , 2019, Applied Thermal Engineering.
[22] Fu Xiao,et al. An interactive building power demand management strategy for facilitating smart grid optimization , 2014 .
[23] Luisa F. Cabeza,et al. Heating and cooling energy trends and drivers in buildings , 2015 .
[24] Andrew Kusiak,et al. Cooling output optimization of an air handling unit , 2010 .
[25] Michael Wetter,et al. Practical factors of envelope model setup and their effects on the performance of model predictive control for building heating, ventilating, and air conditioning systems , 2019, Applied Energy.
[26] Shengwei Wang,et al. Development of prediction models for next-day building energy consumption and peak power demand using data mining techniques , 2014 .
[27] Jui-Sheng Chou,et al. Modeling heating and cooling loads by artificial intelligence for energy-efficient building design , 2014 .
[28] Frédéric Magoulès,et al. Parallel Support Vector Machines Applied to the Prediction of Multiple Buildings Energy Consumption , 2010 .
[29] R. D'Agostino. Transformation to normality of the null distribution of g1 , 1970 .
[30] Nikhil Ketkar,et al. Deep Learning with Python , 2017 .
[31] S. Shapiro,et al. An Analysis of Variance Test for Normality (Complete Samples) , 1965 .
[32] Tianqi Chen,et al. XGBoost: A Scalable Tree Boosting System , 2016, KDD.
[33] Ian Walker,et al. The building performance gap: Are modellers literate? , 2017 .
[34] W. J. Wepfer,et al. Formulation of a load prediction algorithm for a large commercial building , 1984 .
[35] Rita Streblow,et al. Development and validation of grey-box models for forecasting the thermal response of occupied buildings , 2016 .
[36] Jacob H. Stang,et al. Load prediction method for heat and electricity demand in buildings for the purpose of planning for mixed energy distribution systems , 2008 .
[37] T. W. Anderson,et al. Asymptotic Theory of Certain "Goodness of Fit" Criteria Based on Stochastic Processes , 1952 .
[38] Fu Xiao,et al. A short-term building cooling load prediction method using deep learning algorithms , 2017 .