Detecting Common Insulation Problems in Built Environments using Thermal Images

Naima Khan, Nilavra Pathak, Nirmalya Roy
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引用次数: 6

Abstract

Proper thermal insulation yields optimum energy expenses in buildings by maintaining necessary heat gain or loss through the built envelope. However, improper thermal insulation causes significant energy wastage along with infusing various damages on indoor and outdoor walls of the buildings, for example, damp areas, black stains, cracks, paint bubbles etc. Therefore, it is important to inspect the temperature variations in different areas of the built environments in regular basis. We propose a method for identifying temperature variance in building thermal images based on Symbolic Aggregated Approximation (SAX). Our process helps detect the temperature variation over different image segments and infers the fault prone segments of leakages. We have collected about 50 thermal images associated with different types of wall specific insulation problems in indoor built environment and were able to identify the affected area with approximately 75% accuracy using our proposed method based on temperature variation detection approach.
利用热图像检测建筑环境中常见的绝缘问题
适当的隔热通过建筑围护结构保持必要的热量增益或损失,从而在建筑物中产生最佳的能源消耗。然而,不适当的保温会造成严重的能源浪费,并对建筑物的室内外墙壁造成各种损害,例如受潮区,黑斑,裂缝,油漆气泡等。因此,定期检查建筑环境不同区域的温度变化是很重要的。提出了一种基于符号聚合近似(SAX)的建筑热图像温度方差识别方法。我们的方法有助于检测不同图像段上的温度变化,并推断出泄漏的易故障段。我们收集了大约50张与室内建筑环境中不同类型的墙壁特定隔热问题相关的热图像,并且能够使用我们基于温度变化检测方法提出的方法以大约75%的准确率识别受影响的区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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