United Nations Environment Programme (UNEP). 2020 Global status report for buildings and construction: towards a zero-emission, efficient and resilient buildings and construction sector. Nairobi: UNEP, https://wedocs.unep.org/20.500.11822/34572 (2020, accessed 12 April 2021).
8.
LiXYuCWF.China’s building energy efficiency targets: challenges or opportunities? IndoorBuilt Environ2012; 21: 609–613.
9.
KimJTYuCWF.Sustainable development and requirements for energy efficiency in buildings – the Korean perspectives. Indoor Built Environ2018; 27: 734–751.
LuoXYuCWZhouDGuZ.Challenges and adaptation to urban climate change in China: a viewpoint of urban climate and urban planning. Indoor Built Environ2019; 28: 1157–1161.
12.
ZhangSLiZNingXLiL.Gauging the impacts of urbanization on CO2 emissions from the construction industry: evidence from China. J Environ Manage2021; 288: 112440.
13.
National Development and Reform Commission of China. On the issuance of “Green and Efficient Refrigeration Action Program” (In Chinese), www.gov.cn/xinwen/2019-06/15/content_5400474.htm (accessed 11 April 2021).
14.
LiXShenCYuCWF.Building energy efficiency: passive technology or active technology? IndoorBuilt Environ2017; 26: 729–732.
15.
ChaudhuriTSohYCLiHXieL.A feedforward neural network based indoor-climate control framework for thermal comfort and energy saving in buildings. Appl Energy2019; 248: 44–53.
16.
International Energy Agency (IEA). The future of cooling: opportunities for energy efficient air conditioning. Paris: IEA, www.iea.org/reports/the-future-of-cooling (2018, accessed 11 April 2021).
SantamourisM.Recent progress on urban overheating and heat island research. Integrated assessment of the energy, environmental, vulnerability and health impact. Synergies with the global climate change. Energy Build. 2020; 207: 109482.
19.
Building Energy Efficiency Research Centre of Tsinghua University. 2018 Annual report on China building energy efficiency. Beijing: China Building Industry Press, 2018.
20.
HuangPHuangGWangY.HVAC system design under peak load prediction uncertainty using multiple-criterion decision making technique. Energy Build2015; 91: 26–36.
21.
ChenYYangCPanXYanD.Design and operation optimization of multi-chiller plants based on energy performance simulation. Energy Build2020; 222: 110100.
22.
ZhuangCWangS.Uncertainty-based robust optimal design of cleanroom air-conditioning systems considering life-cycle performance. Indoor Built Environ2020; 29: 1214–1226.
23.
WangJCaoS-JYuCW.Development trend and challenges of sustainable urban design in the digital age. Indoor Built Environ2021; 30: 3–6.
24.
RohaniMFanMYuC.Advanced visual techniques for modern construction management. Indoor Built Environ2014; 23: 665–674.
25.
CaoS-JYuCWLuoX.New and emerging building ventilation technologies. Indoor Built Environ2020; 29: 483–484.
26.
ZhuHCYuCWCaoS-J.Ventilation online monitoring and control system from the perspectives of technology application. Indoor Built Environ2020; 29: 587–602.
27.
WangJJiaQSHuangGSunY.Event-driven optimal control of central air-conditioning systems: event-space establishment. Sci Technol Built Environ2018; 24: 839–849.
28.
KillianMKozekM.Ten questions concerning model predictive control for energy efficient buildings. Build Environ2016; 105: 403–412.
29.
CaoS-J.Challenges of using CFD simulation for the design and online control of ventilation systems. Indoor Built Environ2019; 28: 3–6.
30.
FengZYuCWCaoS-J.Fast prediction for indoor environment: models assessment. Indoor Built Environ2019; 28: 727–730.
31.
WangJLiuRZhangLAsadHSMengE.Triggering optimal control of air conditioning systems by event-driven mechanism: comparing direct and indirect approaches. Energies2019; 12: 3863.
32.
QiuSLiZLiZLiJLongSLiX.Model-free control method based on reinforcement learning for building cooling water systems: validation by measured data-based simulation. Energy Build2020; 218: 110055.
33.
WangJHouJChenJFuQHuangG.Data mining approach for improving the optimal control of HVAC systems: an event-driven strategy. J Build Eng2021; 39: 102246.
34.
ChenHFengZCaoS-J.Quantitative investigations on setting parameters of air conditioning (air-supply speed and temperature) in ventilated cooling rooms. Indoor Built Environ2021; 30: 99–113.
35.
AnandPCheongDSekharC.Computation of zone-level ventilation requirement based on actual occupancy, plug and lighting load information. Indoor Built Environ2020; 29: 558–574.
36.
WangJTseNCFChanJYC.Wi-Fi based occupancy detextion in a complex indoor space under discontinuous wireless communication: a robust filtering based on event-triggered updating. Build Environ2019; 151: 228–239.
37.
WangJHuangJFengZCaoS-JHaghighatF.Occupant-density-detextion based energy efficient ventilation system: prevention of infection transmission. Energy Build2021; 240: 110883.
38.
TrivediDBadarlaV.Occupancy detextion systems for indoor environments: a survey of approaches and methods. Indoor Built Environ2020; 29: 1053–1069.
39.
JinCBaiX.The study of servers’ arrangement and air distribution strategy under partial load in data centers. Sustainable Cities Soc2019; 49: 101617.