论文标题
基于机器学习的自动热舒适预测:低成本热摄像机的整合以提高精度
Machine Learning-Based Automated Thermal Comfort Prediction: Integration of Low-Cost Thermal and Visual Cameras for Higher Accuracy
论文作者
论文摘要
最近的研究试图利用乘员在建筑物控制循环中的需求来考虑个人的福祉和建筑物的节能。为此,需要实时反馈系统来提供有关居住者舒适条件的数据,该数据可用于控制建筑物的供暖,冷却和空调(HVAC)系统。热成像技术的出现为非接触式数据收集提供了绝佳的机会,而在乘员条件和活动中没有中断。由于它们在阅读人体皮肤温度方面的非侵入性质量,因此人们对红外热摄像机使用的关注越来越多。但是,最先进的方法需要其他修改才能变得更加可靠。为了利用潜力并解决一些现有的局限性,需要新的解决方案,以通过利用机器学习和图像处理的好处来为非侵入热扫描带来更全面的视野。这项研究实现了一种自动方法,以同时收集和注册同时的热和视觉图像,并阅读不同区域的面部温度。本文还提出了另外两项调查。首先,通过在额头区域利用Ibutton可穿戴的热传感器,我们研究了读取皮肤温度的内置热摄像头(Flir Lepton)的可靠性。其次,通过研究热图像的假色版本,我们研究了非标准热图像以预测个性化热舒适的可能性。结果表明,随机森林和K-Nearest邻居预测算法在预测个性化的热舒适性方面的表现强劲。此外,我们发现,当对算法进行大量数据训练时,非射光图像也可以表明热舒适度。
Recent research is trying to leverage occupants' demand in the building's control loop to consider individuals' well-being and the buildings' energy savings. To that end, a real-time feedback system is needed to provide data about occupants' comfort conditions that can be used to control the building's heating, cooling, and air conditioning (HVAC) system. The emergence of thermal imaging techniques provides an excellent opportunity for contactless data gathering with no interruption in occupant conditions and activities. There is increasing attention to infrared thermal camera usage in public buildings because of their non-invasive quality in reading the human skin temperature. However, the state-of-the-art methods need additional modifications to become more reliable. To capitalize potentials and address some existing limitations, new solutions are required to bring a more holistic view toward non-intrusive thermal scanning by leveraging the benefit of machine learning and image processing. This research implements an automated approach to collect and register simultaneous thermal and visual images and read the facial temperature in different regions. This paper also presents two additional investigations. First, through utilizing IButton wearable thermal sensors on the forehead area, we investigate the reliability of an in-expensive thermal camera (FLIR Lepton) in reading the skin temperature. Second, by studying the false-color version of thermal images, we look into the possibility of non-radiometric thermal images for predicting personalized thermal comfort. The results shows the strong performance of Random Forest and K-Nearest Neighbor prediction algorithms in predicting personalized thermal comfort. In addition, we have found that non-radiometric images can also indicate thermal comfort when the algorithm is trained with larger amounts of data.