A Framework to Facilitate Firebrand Characterization

IF 2 Q2 ENGINEERING, MECHANICAL
F. Hedayati, Babak Bahrani, Aixi Zhou, S. Quarles, Daniel J. Gorham
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引用次数: 9

Abstract

Generation of firebrands from various fuels has been well studied in the past decade. Limited details have been released about the methodology for characterizing firebrands such as the proper sample size and the measurement process. This study focuses on (1) finding the minimum required sample size to represents the characteristics of the population, and (2) proposes a framework to facilitate the tedious measurement process. To achieve these goals, several firebrand generation tests were conducted at a boundary layer wind tunnel with realistic gusty wind traces. Firebrands were generated from burning structural fuels and collected in 46 strategically located water pans. The statistical analysis showed that the minimum required sample size based on the chosen statistical parameters (standard deviation, confidence interval, and margin of error) is 1400 for each test. To facilitate characterizing such a large sample of firebrands, an automated image processing algorithm to measure the projected area of the firebrands was developed, which can automatically detect the edges of the background sheet, rotate the photo if its tilted before cropping, detect edges of firebrands, remove erroneous particles (e.g. ash) and finally measures the projected area. To facilitate the weighing process, a Gaussian process regression was performed to predict the mass based on projected area, traveling distance and wind speed. The model can predict the firebrand mass within 5% error compared to the measurement. This framework and model can provide a probabilistic range of firebrand characteristics over the continuous range of the collection region.
促进火种表征的框架
在过去的十年中,人们对各种燃料产生的火焰进行了深入的研究。有限的细节已经发布了表征火焰的方法,如适当的样本量和测量过程。本研究的重点是(1)找到代表总体特征的最小样本量,(2)提出一个框架,以简化繁琐的测量过程。为了实现这一目标,在具有真实阵风痕迹的边界层风洞中进行了多次火种产生试验。燃烧结构性燃料产生火焰,并收集在46个战略位置的水盆中。统计分析表明,基于所选择的统计参数(标准差、置信区间和误差范围),每个测试所需的最小样本量为1400。为了便于对如此大的火种样本进行表征,开发了一种测量火种投影面积的自动图像处理算法,该算法可以自动检测背景片的边缘,在裁剪前对倾斜的照片进行旋转,检测火种边缘,去除错误颗粒(如灰烬),最后测量投影面积。为了便于称重,采用高斯过程回归,根据投影面积、行进距离和风速进行质量预测。该模型预测的火种质量与实测误差在5%以内。该框架和模型可以在收集区域的连续范围内提供火种特征的概率范围。
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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来源期刊
Frontiers in Mechanical Engineering
Frontiers in Mechanical Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
4.40
自引率
0.00%
发文量
115
审稿时长
14 weeks
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