城市生活垃圾焚烧过程燃烧线量化数据集的构建

Haitao Guo, Jian Tang, Xia Heng, J. Qiao
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引用次数: 0

摘要

在城市生活垃圾焚烧过程中,燃烧线是表征燃烧稳定性和运行安全性的关键控制变量之一。实现燃烧线的量化,可以代替“人工火灾监控”,通过实时反馈,提高城市生活污染过程的智能化程度。然而,燃烧线的量化需要燃烧火焰图像数据集。目前,还没有包含多个燃烧线位置的标准火焰图像数据集。本文构造了一个包含多个燃烧线位置的火焰图像集。首先,介绍了火焰图像的采集过程。然后,结合炉膛内三维空间的位置信息,划分燃烧线等级。最后,提出了一种面向燃烧线位置的标定算法。因此,构建了燃烧火焰图像数据集,为相关研究人员在今后的研究中利用该数据集提供了参考。
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Construction of Combustion Line Quantification Data Set for Municipal Solid Waste Incineration Process
In municipal solid waste incineration (MSWI) process, combustion line is one of the key controlled variables to characterize the combustion stability and operation safety. Realizing the quantification of combustion line can replace “manual fire monitoring”, which can improve the intelligent degree of MSWI process through real-time feedback. However, the quantification of combustion line needs the combustion flame image data set. Currently, there is no standard flame image data set containing multiple combustion line locations. This paper constructs a flame image set containing multiple combustion line locations. First, the flame image acquisition process is introduced. Then, the combustion line level is divided by combining with the location information of three-dimensional space inside the furnace. Finally, a calibration algorithm facing the position of the combustion line is proposed. Thus, combustion flame image dataset was constructed, which provided a reference for relevant researchers to utilize this dataset in the future study.
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