基于物理信息的深度学习城市建筑热舒适度建模和预测框架,用于识别热脆弱建筑群

IF 3.5 Q3 GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY
Omprakash Ramalingam Rethnam, Albert Thomas
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引用次数: 0

摘要

目的由于极端天气日益频繁,城市景观日益密集,住宅很容易产生与热有关的不适感,尤其是热带气候下自然通风的建筑环境中的住宅。因此,室内热舒适度对于建筑的可持续发展以及改善居住者的健康和福祉至关重要。然而,考虑到城市环境,评估室内热舒适度的传统方法是使用问卷调查和监测装置,这既以个案为中心,又耗费大量时间。本研究提出了一个动态计算热舒适度建模框架,可在城市尺度上确定室内热舒适度,以弥补这一差距。设计/方法/方法该框架通过将城市尺度的环境建模能力与单体建筑动态热模拟相结合,最终开发出一个深度学习模型,用于预测城市建筑群每小时的准确室内温度。研究结果利用该框架,为印度非正式城市定居点达拉维创建并验证了一个代理模型。结果表明,以五种不同的随机城市代表场景为训练集,所开发的代用模型可以在几种复杂的新城市场景中预测建筑物的室内温度,这些场景包括不同的建筑物朝向、布局、建筑物与建筑物之间的距离以及周围建筑物的高度。平均偏差误差(MBE)和均方根误差系数(MSE)介于 0 和 5%之间,证明预测精度是可靠的。研究结果还表明,如果忽略城市环境,对年度不适时数的估计可能会有高达 70% 的误差。社会影响所开发的计算框架可帮助监管机构和政策制定者做出更明智的定量决策,并指导提高低收入住宅和非正规住区热舒适度的工作。与此相反,本研究提出了一种动态计算热舒适度建模框架,在研究住宅建筑群的室内热舒适度时,考虑到了附近的城市环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A physics-informed deep learning-based urban building thermal comfort modeling and prediction framework for identifying thermally vulnerable building stock
PurposeDue to the increasing frequency of extreme weather and densifying urban landscapes, residences are susceptible to heat-related discomfort, especially those in a naturally ventilated built environment in tropical climates. Indoor thermal comfort is thus paramount to building sustainability and improving occupants' health and well-being. However, to assess indoor thermal comfort considering the urban context, it is conventional to use questionnaire surveys and monitoring units, which are both case-centric and time-intensive. This study presents a dynamic computational thermal comfort modeling framework that can determine indoor thermal comfort at an urban scale to bridge this gap.Design/methodology/approachThe framework culminates in developing a deep learning model for predicting the accurate hourly indoor temperature of urban building stock by the coupling urban scale capabilities of environment modeling with single-building dynamic thermal simulations.FindingsUsing the framework, a surrogate model is created and verified for Dharavi, India's informal urban settlement. The results indicated that the developed surrogate model could predict the building's indoor temperature in several complex new urban scenarios with different building orientations, layouts, building-to-building distances and surrounding building heights, using five different random urban representative scenarios as the training set. The prediction accuracy was reliable, as evidenced by the mean bias error (MBE) and coefficient of (CV) root mean squared error (MSE) falling between 0 and 5%. The findings also showed that if the urban context is ignored, estimates of annual discomfort hours may be inaccurate by as much as 70%.Social implicationsThe developed computational framework could help regulators and policymakers engage in more informed and quantitative decision-making and direct efforts to enhance the thermal comfort of low-income dwellings and informal settlements.Originality/valueUp to this point, majority of literature that has been presented has concentrated on building a body of knowledge about urban-based modeling from an energy management standpoint. In contrast, this study suggests a dynamic computational thermal comfort modeling framework that takes into account the urban context of the neighborhood while examining the indoor thermal comfort of the residential building stock.
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来源期刊
Smart and Sustainable Built Environment
Smart and Sustainable Built Environment GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY-
CiteScore
9.20
自引率
8.30%
发文量
53
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