共享空间的室内空气质量预测-预测模型和适应性设计建议

Q4 Engineering
Spool Pub Date : 2022-05-27 DOI:10.47982/spool.2022.1.05
Hamed S. Alavi, Sailin Zhong, D. Lalanne
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引用次数: 1

摘要

室内环境中高浓度的空气污染物会对健康和福祉、认知能力和生产力产生显著的不利影响。在教室和会议室等自然通风的共享空间,室内空气污染物的问题尤其严重,在这些空间,人为产生的污染物可能会迅速上升。当居民暴露于室内空气污染时,从其后果中恢复需要时间,从长远来看会损害他们的健康。在我们的方法中,我们寻求预测和预防这种危险情况,而不是在它们发生后加以纠正。预测和预防是通过算法完成的,该算法可以从空气污染物的演变和其他变量中学习,以指示是否预测高污染水平。我们提出了两种支持人工智能的方法,其中一种方法提供了未来5分钟和20分钟内二氧化碳浓度水平的预测,准确率分别为86%和92%。第二种算法在即将到来的会议(会议或课程)开始之前提供关于二氧化碳水平如何演变的预测指标。我们将讨论设计含义,并提出设计建议,说明这些方法如何为防止高浓度室内空气污染物的交互解决方案提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Indoor Air Quality Forecast in Shared Spaces– Predictive Models and Adaptive Design Proposals
The high concentration of air pollutants in indoor environments can have a remarkable adverse impact on health and well-being, cognitive performance and productivity. Indoor air pollutants are especially problematic in naturally ventilated shared spaces such as classrooms and meeting rooms, where human-generated pollutants can rise rapidly. When the inhabitants are exposed to indoor air pollution, recovering from its ramifications takes time and harms their well-being in the long run. In our approach, we seek to predict and prevent such hazardous situations instead of rectifying them after they happen. The prediction and prevention are accomplished through algorithms that can learn from the evolution of air pollutants and other variables to indicate whether or not a high level of pollution is forecast. We present two AI-enabled methods, one providing the forecast for the concentration level of carbon dioxide in the next 5 and 20 minutes with 86% and 92% accuracy. The second algorithm provides predictive indicators about how the CO2 level will evolve during the upcoming session (meeting or a course) before the session starts. We will discuss design implications and present design proposals on how these methods can inform interactive solutions for preventing high concentrations of indoor air pollutants.
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来源期刊
Spool
Spool Engineering-Architecture
CiteScore
0.40
自引率
0.00%
发文量
0
审稿时长
21 weeks
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