Energy Use in Residential Buildings: Impact of Building Automation Control Systems on Energy Performance and Flexibility
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Francesco Mancini | Gianluigi Lo Basso | Livio de Santoli | F. Mancini | L. de Santoli | G. Lo Basso
[1] Dirk Saelens,et al. Energy flexible buildings: an evaluation of definitions and quantification methodologies applied to thermal storage , 2018 .
[2] W Wim Zeiler,et al. Occupancy measurement in commercial office buildings for demand-driven control applications : a survey and detection system evaluation , 2015 .
[3] Lamberto Tronchin,et al. Energy analytics for supporting built environment decarbonisation , 2019 .
[4] Isha Sharma,et al. A modeling framework for optimal energy management of a residential building , 2016, Energy and Buildings.
[5] Atila Novoselac,et al. Appliance daily energy use in new residential buildings: Use profiles and variation in time-of-use , 2014 .
[6] Gaetano Zizzo,et al. Impact of building automation control systems and technical building management systems on the energy performance class of residential buildings: An Italian case study , 2014 .
[7] Damien Picard,et al. Impact of the controller model complexity on model predictive control performance for buildings , 2017 .
[8] Francesco Mancini,et al. Energy and environmental retrofitting of the university building of Orthopaedic and Traumatological Clinic within Sapienza Città Universitaria , 2017 .
[9] S. Corgnati,et al. Use of reference buildings to assess the energy saving potentials of the residential building stock: the experience of TABULA Project , 2014 .
[10] David Eyers,et al. Detailed comparison of energy-related time-use diaries and monitored residential electricity demand , 2019, Energy and Buildings.
[11] K. Blok,et al. Response to ‘Burden of proof: A comprehensive review of the feasibility of 100% renewable-electricity systems’ , 2017, Renewable and Sustainable Energy Reviews.
[12] Moncef Krarti,et al. An analysis methodology for large-scale deep energy retrofits of existing building stocks: Case study of the Italian office building , 2018, Sustainable Cities and Society.
[13] M. F. Jentsch,et al. Comparison of prediction models for determining energy demand in the residential sector of a country , 2016 .
[14] Wolfgang Kastner,et al. Building automation systems: Concepts and technology review , 2016, Comput. Stand. Interfaces.
[15] Lachlan L. H. Andrew,et al. Short-term residential load forecasting: Impact of calendar effects and forecast granularity , 2017 .
[16] Mehdi Rahmani-andebili,et al. Scheduling deferrable appliances and energy resources of a smart home applying multi-time scale stochastic model predictive control , 2017 .
[17] Martin Kumar Patel,et al. Applying ex post index decomposition analysis to final energy consumption for evaluating European energy efficiency policies and targets , 2019, Energy Efficiency.
[18] Francesco Mancini,et al. Energy retrofitting of dwellings from the 40’s in Borgata Trullo - Rome , 2017 .
[19] Francesco Mancini,et al. Energy and technological refurbishment of the School of Architecture Valle Giulia, Rome , 2017 .
[20] Pieter Valkering,et al. How do policies help to increase the uptake of carbon reduction measures in the EU residential sector? Evidence from recent studies , 2018, Renewable and Sustainable Energy Reviews.
[21] Rune Hylsberg Jacobsen,et al. Implementation of a building energy management system for residential demand response , 2017, Microprocess. Microsystems.
[22] Laurent Georges,et al. Advanced control of heat pumps for improved flexibility of Net-ZEB towards the grid , 2014 .
[23] Francesco Mancini,et al. Energy Retrofit of a Historic Building Using Simplified Dynamic Energy Modeling , 2016 .
[24] Paris A. Fokaides,et al. Key Performance Indicators (KPIs) approach in buildings renovation for the sustainability of the built environment: A review , 2016 .
[25] Fabrizio Cumo,et al. FEASIBILITY OF MUNICIPAL WASTE REUSE FOR BUILDING ENVELOPES FOR NEAR ZERO-ENERGY BUILDINGS , 2017 .
[26] Liu Yang,et al. Thermal comfort and building energy consumption implications - A review , 2014 .
[27] P. Bertoldi,et al. Energy Conservation Policies in the Light of the Energetics of Evolution , 2017 .
[28] Francesco Mancini,et al. A GIS-based model to assess electric energy consumptions and usable renewable energy potential in Lazio region at municipality scale , 2019, Sustainable Cities and Society.
[29] Hendrik C. Ferreira,et al. Distributed Demand Side Management with Battery Storage for Smart Home Energy Scheduling , 2017 .
[30] M. Shukuya,et al. Comparison of theoretical and statistical models of air-conditioning-unit usage behaviour in a residential setting under Japanese climatic conditions , 2009 .
[31] Giuseppe Piras,et al. The use of local materials for low-energy service buildings in touristic island: The case study of Favignana island , 2017, 2017 IEEE International Conference on Environment and Electrical Engineering and 2017 IEEE Industrial and Commercial Power Systems Europe (EEEIC / I&CPS Europe).
[32] Peng Xu,et al. Measures to improve energy demand flexibility in buildings for demand response (DR): A review , 2018, Energy and Buildings.
[33] Filipe Joel Soares,et al. Development and Field Demonstration of a Gamified Residential Demand Management Platform Compatible with Smart Meters and Building Automation Systems , 2019, Energies.
[34] Giuliano Dall'O',et al. A methodology for evaluating the potential energy savings of retrofitting residential building stocks , 2012 .
[35] Wolfgang Kastner,et al. A semantic representation of energy-related information in future smart homes , 2012 .
[36] Francesco Mancini,et al. Energy Retrofitting Effects on the Energy Flexibility of Dwellings , 2019, Energies.
[37] Massimiliano Manfren,et al. Building Automation and Control Systems and performance optimization: A framework for analysis , 2017 .
[38] Rita Streblow,et al. CO2 based occupancy detection algorithm: Experimental analysis and validation for office and residential buildings , 2015 .
[39] Ecem Edis,et al. An environmental and economic sustainability assessment method for the retrofitting of residential buildings , 2014 .
[40] Ching Man Chan,et al. Energy conservation through smart homes in a smart city: A lesson for Singapore households , 2017 .
[41] Diana Ürge-Vorsatz,et al. Office building deep energy retrofit: life cycle cost benefit analyses using cash flow analysis and multiple benefits on project level , 2018, Energy Efficiency.
[42] Ali Malkawi,et al. Achieving natural ventilation potential in practice: Control schemes and levels of automation , 2019, Applied Energy.
[43] K. Braimakis,et al. Cost effectiveness assessment and beyond: A study on energy efficiency interventions in Greek residential building stock , 2019, Energy and Buildings.
[44] Ali Malkawi,et al. Investigating natural ventilation potentials across the globe: Regional and climatic variations , 2017 .
[45] Nico Keyaerts,et al. How to Engage Consumers in Demand Response: A Contract Perspective , 2013 .
[46] Severin Beucker,et al. Building Energy Management Systems: Global Potentials and Environmental Implications of Deployment , 2016 .
[47] Michael Baldea,et al. Integrating scheduling and control for economic MPC of buildings with energy storage , 2014 .
[48] Erdal Aydin,et al. The impact of policy on residential energy consumption , 2019, Energy.
[49] Roberto Bruno,et al. Social housing refurbishment in Mediterranean climate: Cost-optimal analysis towards the n-ZEB target , 2018, Energy and Buildings.
[50] Gaetano Zizzo,et al. Building Automation and Control Systems and Electrical Distribution Grids: A Study on the Effects of Loads Control Logics on Power Losses and Peaks , 2018 .
[51] Yonghong Kuang,et al. Smart home energy management systems: Concept, configurations, and scheduling strategies , 2016 .
[52] Chuang Wang,et al. Air-conditioning usage conditional probability model for residential buildings , 2014 .
[53] Jakub Grela,et al. Impact of building automation control systems on energy efficiency — University building case study , 2017, 2017 22nd IEEE International Conference on Emerging Technologies and Factory Automation (ETFA).
[54] Francesco Mancini,et al. Issues of Energy Retrofitting of a Modern Public Housing Estates: The ‘Giorgio Morandi’ Complex at Tor Sapienza, Rome, 1975-1979 , 2016 .
[55] Rory V. Jones,et al. Driving factors for occupant-controlled space heating in residential buildings , 2014 .
[56] Tingting Liu,et al. Cost-benefit analysis for Energy Efficiency Retrofit of existing buildings: A case study in China , 2018 .
[57] Bo Wang,et al. Large-scale building energy efficiency retrofit: Concept, model and control , 2016 .
[58] Francesco Mancini,et al. Energy Use in Residential Buildings: Characterisation for Identifying Flexible Loads by Means of a Questionnaire Survey , 2019, Energies.