Artificial intelligence based detection approach to assist demand-driven heating, ventilation, and air-conditioning (HVAC) systems
编号:436 访问权限:仅限参会人 更新:2022-05-23 11:53:33 浏览:562次 特邀报告

报告开始:2022年05月26日 16:30 (Asia/Shanghai)

报告时间:20min

所在会议:[S11] Green and low-carbon technology for urban and rural construction » [S11-1] Green and low-carbon technology for urban and rural construction-1

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摘要
ABSTRACT: The COVID-19 pandemic has recently brought IAQ upfront and will play a crucial role in minimising the transmission of viruses suggesting to increase the outdoor ventilation however, this could create poor temperature and humidity in some buildings, affecting the comfort and health of occupants. This causes unnecessary energy consumption and wastage and compromises the HVAC efficiency. This is further exacerbated when the ventilation system is operated using fixed or static schedules and when spaces are partially occupied or unoccupied for significant periods, leading to unnecessary over-ventilation and -conditioning of spaces. A potential solution is the use of demand-driven or occupant centric control measures, such as demand-controlled ventilation (DCV) which varies the ventilation of a space according to the pollution level or occupancy. The present study investigated the potential of applying a live occupancy detection approach to assist demand-driven heating, ventilation, and air-conditioning (HVAC) systems to ensure adequate indoor thermal conditions and air quality were achieved while reducing unnecessary building energy loads to improve building energy performance. Faster region-based convolutional neural network (RCNN) models were trained to detect the number of people and occupancy activities respectively and deployed to an AI-powered camera. Experimental tests were carried out within the case study room to assess the performance of this approach. The count-based occupancy deep learning profiles were produced during the detection according to the real-time information about the number of people and their activities. To estimate the effect of this approach on indoor air quality and ventilation energy demand, scenario-based modelling of the case study building under four ventilation strategies was carried out via building energy simulation (BES). Results showed that the proposed approach could provide demand-driven ventilation controls based on dynamic changes of occupancy to improve the indoor air quality (IAQ) and address the problem of under or over-estimation of the ventilation energy consumption when using the static or fixed profiles.
 
关键字
artificial intelligence, buildings, HVAC, modelling, ventilation
报告人
John Calautit
University of Nottingham

Dr Calautit is a Chartered Engineer (CEng) and Member of the Institution of Mechanical Engineers (MIMechE). He received his Mechanical Engineering (Class I) honours degree from Heriot-Watt University in 2010 and his PhD from the University of Leeds in 2013. He has held full time research and academic positions in UK Russell Group institutions namely the University of Nottingham, University of Leeds and the University of Sheffield. During his PhD, He has designed, built and tested innovative passive cooling technologies taking his work from desktop design through laboratory scale testing and on to full-scale installations. He along with his team have recently filed UK patent applications for a zero energy passive cooling device and humidity control system. Dr Calautit has expertise in design and simulation modelling of new and existing buildings both in public and private sector. He has provided design and consultancy for sustainable solutions in buildings in the private and public sector in the UK and Europe. He is actively looking for collaborations in areas related to built environment, sustainable and innovative technologies.

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