Prediction of building electricity usage using Gaussian Process Regression
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Yao Yu | Aaron Zeng | Hodde Ho | Yao Yu | Aaron Zeng | Hodde Ho
[1] Matthias W. Seeger,et al. Gaussian Processes For Machine Learning , 2004, Int. J. Neural Syst..
[2] Tania Cerquitelli,et al. Fault Detection Analysis of Building Energy Consumption Using Data Mining Techniques , 2013 .
[3] Yong Shi,et al. A review of data-driven approaches for prediction and classification of building energy consumption , 2018 .
[4] Hyeun Jun Moon,et al. Energy consumption model with energy use factors of tenants in commercial buildings using Gaussian process regression , 2018, Energy and Buildings.
[5] Jihui Yuan,et al. Predictive artificial neural network models to forecast the seasonal hourly electricity consumption for a University Campus , 2018, Sustainable Cities and Society.
[6] Tanveer Ahmad,et al. Supervised based machine learning models for short, medium and long-term energy prediction in distinct building environment , 2018, Energy.
[7] B. Dong,et al. Applying support vector machines to predict building energy consumption in tropical region , 2005 .
[8] Hoon Heo,et al. Prediction of building energy consumption using an improved real coded genetic algorithm based least squares support vector machine approach , 2015 .
[9] Grace Ding,et al. Developing a Hybrid Model of Prediction and Classification Algorithms for Building Energy Consumption , 2017 .
[10] Yang Zhao,et al. An Improved Cooling Load Prediction Method for Buildings with the Estimation of Prediction Intervals , 2017 .
[11] Fiorella Lauro,et al. Fault detection analysis using data mining techniques for a cluster of smart office buildings , 2015, Expert Syst. Appl..
[12] William A. Gardner,et al. Introduction to random processes with applications to signals and systems: Reviewer: D. W. Clarke Department of Engineering Science, University of Oxford, Parks Road, Oxford OX1 3PK, England , 1988, Autom..
[13] Jui-Sheng Chou,et al. Modeling heating and cooling loads by artificial intelligence for energy-efficient building design , 2014 .
[14] Shanlin Yang,et al. A new electricity price prediction strategy using mutual information-based SVM-RFE classification , 2017 .
[15] Zheng O'Neill,et al. Using change-point and Gaussian process models to create baseline energy models in industrial facilities: A comparison , 2018 .
[16] Nelson Fumo,et al. A review on the basics of building energy estimation , 2014 .
[17] María Dolores Ugarte,et al. Probability and Statistics with R , 2008 .
[18] Drury B. Crawley,et al. EnergyPlus: A New-Generation Building Energy Simulation Program , 1999 .
[19] Abhishek Srivastav,et al. Baseline building energy modeling and localized uncertainty quantification using Gaussian mixture models , 2013 .
[20] Jose I. Bilbao,et al. A review and analysis of regression and machine learning models on commercial building electricity load forecasting , 2017 .
[21] Anna Laura Pisello,et al. Occupant behavior long-term continuous monitoring integrated to prediction models: Impact on office building energy performance , 2019, Energy.
[22] Carl E. Rasmussen,et al. Gaussian processes for machine learning , 2005, Adaptive computation and machine learning.
[23] Jiejin Cai,et al. Applying support vector machine to predict hourly cooling load in the building , 2009 .
[24] Huanxin Chen,et al. Optimization of support vector regression model based on outlier detection methods for predicting electricity consumption of a public building WSHP system , 2017 .
[25] Phuong H. Nguyen,et al. A relevant data selection method for energy consumption prediction of low energy building based on support vector machine , 2017 .
[26] I. Azevedo,et al. Residential electricity consumption in Portugal: Findings from top-down and bottom-up models , 2011 .
[27] Wenjie Gang,et al. Assessment of deep recurrent neural network-based strategies for short-term building energy predictions , 2019, Applied Energy.
[28] Zheng O'Neill,et al. Comparisons of inverse modeling approaches for predicting building energy performance , 2015 .
[29] Jianzhou Wang,et al. Short-term load forecasting using a kernel-based support vector regression combination model , 2014 .