Comparison of artificial neural networks, fuzzy logic and neuro fuzzy for predicting optimization of building thermal consumption: a survey
暂无分享,去创建一个
[1] Yung-Chung Chang,et al. The Optimization of Chiller Loading by Adaptive Neuro-Fuzzy Inference System and Genetic Algorithms , 2015 .
[2] N. Kumari,et al. Comparison of ANNs, Fuzzy Logic and Neuro- Fuzzy Integrated Approach for Diagnosis of Coronary Heart Disease: A Survey , 2013 .
[3] Rajesh Kumar,et al. Energy analysis of a building using artificial neural network: A review , 2013 .
[4] Carlos Henggeler Antunes,et al. An Evolutionary Algorithm for the Optimization of Residential Energy Resources , 2017 .
[5] Laiq Khan,et al. Performance Analysis of Conjugate Gradient Algorithms Applied to the Neuro-Fuzzy Feedback Linearization-Based Adaptive Control Paradigm for Multiple HVDC Links in AC/DC Power System , 2017 .
[6] Ivan Nunes da Silva,et al. Artificial Neural Network Architectures and Training Processes , 2017 .
[7] John Haymaker,et al. ThermalOpt: A methodology for automated BIM-based multidisciplinary thermal simulation for use in optimization environments , 2011 .
[8] Shahaboddin Shamshirband,et al. Application of adaptive neuro-fuzzy methodology for estimating building energy consumption , 2016 .
[9] Muhd Zaimi Abd Majid,et al. A global review of energy consumption, CO2 emissions and policy in the residential sector (with an overview of the top ten CO2 emitting countries) , 2015 .
[10] Betul Bektas Ekici,et al. Prediction of building energy consumption by using artificial neural networks , 2009, Adv. Eng. Softw..
[11] Maryam Zekri,et al. Review of Medical Image Classification using the Adaptive Neuro-Fuzzy Inference System , 2012, Journal of medical signals and sensors.
[12] Tarik Kousksou,et al. Energy consumption and efficiency in buildings: current status and future trends , 2015 .
[13] Zahra Pezeshki,et al. Applications of BIM: A Brief Review and Future Outline , 2016, Archives of Computational Methods in Engineering.
[14] Benjamin C. M. Fung,et al. Extracting knowledge from building-related data — A data mining framework , 2013, Building Simulation.
[15] Luis Pérez-Lombard,et al. A review on buildings energy consumption information , 2008 .
[16] Doaa M. Atia,et al. Analysis and design of greenhouse temperature control using adaptive neuro-fuzzy inference system , 2017 .
[17] Silvio Simani,et al. Performance Analysis of Data-Driven and Model-Based Control Strategies Applied to a Thermal Unit Model , 2017 .
[18] M. A. Rafe Biswas,et al. Validation of Neural Network Model for Residential Energy Consumption. , 2015 .
[19] L. Chambers. Practical methods of optimization (2nd edn) , by R. Fletcher. Pp. 436. £34.95. 2000. ISBN 0 471 49463 1 (Wiley). , 2001, The Mathematical Gazette.
[20] Abdul Hanan Abdullah,et al. Heat load prediction in district heating systems with adaptive neuro-fuzzy method , 2015 .
[21] M. J. D. Powell,et al. Restart procedures for the conjugate gradient method , 1977, Math. Program..
[22] Thanh Nga Thai. Estimate Thermo-physical Parameters from Characterization of the Building Materials by Using Artificial Intelligence , 2013, 2013 27th International Conference on Advanced Information Networking and Applications Workshops.
[23] Chirag Deb,et al. Forecasting Energy Consumption of Institutional Buildings in Singapore , 2015 .
[24] J. van Hoof. Forty years of Fanger's model of thermal comfort: comfort for all? , 2008, Indoor air.
[25] Jin Woo Moon,et al. Comparative study of artificial intelligence-based building thermal control methods – Application of fuzzy, adaptive neuro-fuzzy inference system, and artificial neural network , 2011 .
[26] Jerry M. Mendel,et al. Back-propagation fuzzy system as nonlinear dynamic system identifiers , 1992, [1992 Proceedings] IEEE International Conference on Fuzzy Systems.
[27] Daniel Graupe,et al. Principles of Artificial Neural Networks , 2018, Advanced Series in Circuits and Systems.
[28] Steven W. Su,et al. Robust fault tolerant application for HVAC system based on combination of online SVM and ANN black box model , 2013, 2013 European Control Conference (ECC).
[29] Zulkifilie Ibrahim,et al. Modeling and Analysis of Double Stator Slotted Rotor Permanent Magnet Generator , 2017 .
[30] B. Yegnanarayana,et al. Artificial Neural Networks , 2004 .
[31] Mohammad Yusri Hassan,et al. A review on applications of ANN and SVM for building electrical energy consumption forecasting , 2014 .
[32] Carlos F. Pfeiffer,et al. Control of temperature and energy consumption in buildings - a review. , 2014 .
[33] Ken Parsons,et al. Human Thermal Environments , 1993 .
[34] Servet Soyguder,et al. An expert system for the humidity and temperature control in HVAC systems using ANFIS and optimization with Fuzzy Modeling Approach , 2009 .
[35] Weiwei Liu,et al. An innovative air-conditioning load forecasting model based on RBF neural network and combined residual error correction , 2006 .
[36] Federico Casalegno,et al. Personalizing Thermal Comfort in a Prototype Indoor Space , 2013 .
[37] Hossein Afshari,et al. Field tests of an adaptive, model-predictive heating controller for residential buildings , 2015 .
[38] Dhrumil Shah,et al. Temperature Control using Fuzzy Logic , 2014, ArXiv.
[39] Behdad Moghtaderi,et al. A neuro–fuzzy model for prediction of the indoor temperature in typical Australian residential buildings , 2009 .
[40] Syed Khasim,et al. Heat Ventilation & Air- Conditioning System with Self-Tuning Fuzzy PI Controller , 2014 .
[41] van J Joost Hoof,et al. Forty years of Fanger’s model of thermal comfort: comfort for all? , 2008 .
[42] J. Shewchuk. An Introduction to the Conjugate Gradient Method Without the Agonizing Pain , 1994 .
[43] Li Shi,et al. Research on Diagnosing Coronary Heart Disease using Fuzzy Adaptive Resonance Theory Mapping Neural Networks , 2007, 2007 IEEE International Conference on Control and Automation.
[44] Detlef Nauck,et al. Neuro-fuzzy Systems: A Short Historical Review , 2013 .
[45] Padhraic Smyth,et al. From Data Mining to Knowledge Discovery in Databases , 1996, AI Mag..
[46] António E. Ruano,et al. Neural networks based predictive control for thermal comfort and energy savings in public buildings , 2012 .
[47] R. Fletcher. Practical Methods of Optimization , 1988 .
[48] Jean-Luc Bodnar,et al. Artificial intelligence tools and inverse methods for estimating the thermal diffusivity of building , 2011 .
[49] Bandar Seri Iskandar,et al. Building Energy Management through a Distributed Fuzzy Inference System , 2013 .
[50] Christophe Nicolle,et al. A Thermal Simulation Tool for Building and Its Interoperability through the Building Information Modeling (BIM) Platform , 2013 .
[51] A. Elkamel,et al. Electricity demand estimation using an adaptive neuro-fuzzy network: A case study from the Ontario province – Canada , 2013 .
[52] A. Nurnberger. A hierarchical recurrent neuro-fuzzy system , 2001, Proceedings Joint 9th IFSA World Congress and 20th NAFIPS International Conference (Cat. No. 01TH8569).
[53] Srete Nikolovski,et al. Standalone Application Using JAVA and ANFIS for Predicting Electric Energy Consumption Based on Forecasted Temperature , 2016 .
[54] Ji-Hyun Lee,et al. Determining optimum control of double skin envelope for indoor thermal environment based on artificial neural network , 2014 .
[55] Jiin-Po Yeh,et al. Application of the Adaptive Neuro-Fuzzy Inference System for Optimal Design of Reinforced Concrete Beams , 2014 .
[56] Mohammad. Rasul,et al. Recent Developments of Advanced Fuzzy Logic Controllers Used in Smart Buildings in Subtropical Climate , 2014 .
[57] Shady Attia. Building Performance Simulation Tools:Selection Criteria and User Survey , 2010 .