Analysis of the Impact of Residential Property and Equipment on Building Energy Efficiency and Consumption—A Data Mining Approach
暂无分享,去创建一个
Francisco Martínez-Álvarez | Abdorrahman Haeri | Mahsa Nazeriye | F. Martínez-Álvarez | A. Haeri | Mahsa Nazeriye
[1] Mu-Jung Huang,et al. Applying data-mining techniques for discovering association rules , 2020, Soft Comput..
[2] Miao Sun,et al. Data partitioning and association mining for identifying VRF energy consumption patterns under various part loads and refrigerant charge conditions , 2017 .
[3] Fu Xiao,et al. Mining Gradual Patterns in Big Building Operational Data for Building Energy Efficiency Enhancement , 2017 .
[4] Mohamed El Mankibi,et al. Systematic data mining-based framework to discover potential energy waste patterns in residential buildings , 2019, Energy and Buildings.
[5] Jelena Srebric,et al. Cluster analysis of simulated energy use for LEED certified U.S. office buildings , 2014 .
[6] Francisco Martínez-Álvarez,et al. A Survey on Data Mining Techniques Applied to Electricity-Related Time Series Forecasting , 2015 .
[7] Taher Niknam,et al. An efficient hybrid evolutionary optimization algorithm based on PSO and SA for clustering , 2009 .
[8] Sun Yan,et al. Influence of psychological, family and contextual factors on residential energy use behaviour: An empirical study of China , 2011 .
[9] Mikko Kolehmainen,et al. Intelligent analysis of energy consumption in school buildings , 2016 .
[10] Donald W. Bouldin,et al. A Cluster Separation Measure , 1979, IEEE Transactions on Pattern Analysis and Machine Intelligence.
[11] Yi Jiang,et al. The reality and statistical distribution of energy consumption in office buildings in China , 2012 .
[12] Patrick James,et al. Evaluation of domestic Energy Performance Certificates in use , 2011 .
[13] Francisco Martínez-Álvarez,et al. Big Data Analytics for Discovering Electricity Consumption Patterns in Smart Cities , 2018 .
[14] Alfonso Capozzoli,et al. Discovering Knowledge from a Residential Building Stock through Data Mining Analysis for Engineering Sustainability , 2015 .
[15] Abdorrahman Haeri,et al. A novel selective clustering framework for appropriate labeling of the clusters based on K-means algorithm , 2019, Scientia Iranica.
[16] G. Mihalakakou,et al. Using principal component and cluster analysis in the heating evaluation of the school building sector , 2010 .
[18] Rahul Dev Garg,et al. Regional electricity consumption analysis for consumers using data mining techniques and consumer meter reading data , 2016 .
[19] Benjamin C. M. Fung,et al. Advances and challenges in building engineering and data mining applications for energy-efficient communities , 2016 .
[20] Taehoon Hong,et al. Development of a dynamic operational rating system in energy performance certificates for existing buildings: Geostatistical approach and data-mining technique , 2015 .
[21] Jiangyan Liu,et al. Evaluation of the energy performance of variable refrigerant flow systems using dynamic energy benchmarks based on data mining techniques , 2017 .
[22] Fabian Levihn,et al. Energy performance certificates — New opportunities for data-enabled urban energy policy instruments? , 2019, Energy Policy.
[23] Abdorrahman Haeri. Identification and assessment of training needs for employees of wind farms , 2017 .
[24] Mehrdad Jalali Sepehr,et al. A cross-country evaluation of energy efficiency from the sustainable development perspective , 2019, International Journal of Energy Sector Management.
[25] Abdorrahman Haeri,et al. A Genetic Algorithm based framework for mining quantitative association rules without specifying minimum support and minimum confidence , 2019, Scientia Iranica.
[26] Michael J. Laszlo,et al. A genetic algorithm that exchanges neighboring centers for k-means clustering , 2007, Pattern Recognit. Lett..
[27] Shahaboddin Shamshirband,et al. Application of adaptive neuro-fuzzy methodology for estimating building energy consumption , 2016 .
[28] Tomonobu Senjyu,et al. A managed framework for energy-efficient building , 2019, Journal of Building Engineering.
[29] Paul Watson. An introduction to UK Energy Performance Certificates (EPCs) , 2010 .
[30] Benjamin C. M. Fung,et al. A novel methodology for knowledge discovery through mining associations between building operational data , 2012 .
[31] Erwie Zahara,et al. A hybridized approach to data clustering , 2008, Expert Syst. Appl..
[32] Yang Zhao,et al. An improved association rule mining-based method for revealing operational problems of building heating, ventilation and air conditioning (HVAC) systems , 2019, Applied Energy.
[33] M. N. Assimakopoulos,et al. Using intelligent clustering techniques to classify the energy performance of school buildings , 2007 .
[34] David Bienvenido-Huertas,et al. A Comparative Analysis of the International Regulation of Thermal Properties in Building Envelope , 2019, Sustainability.
[35] P. Rousseeuw. Silhouettes: a graphical aid to the interpretation and validation of cluster analysis , 1987 .
[36] M. Jafari,et al. A new approach for performance evaluation of energy-related enterprises , 2018 .
[37] Francisco Martínez-Álvarez,et al. A novel hybrid GA–PSO framework for mining quantitative association rules , 2020, Soft Comput..
[38] H. Fan,et al. Statistical analysis of driving factors of residential energy demand in the greater Sydney region, Australia , 2015 .
[39] Abdorrahman Haeri,et al. An approach to evaluate resource utilization in energy management systems , 2016 .