环境空气中尘埃微粒测量和识别的新方法

А.N. Kokoulin, I. May, S. Zagorodnov, А.А. Yuzhakov
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引用次数: 0

摘要

尘埃微粒对健康造成的危害需要自动化和移动设备进行评估。这样的装置应当提供在环境空气污染中操作地和实时地分析固体组分的组分和分散结构的机会。未来,它们将取代耗时的采样和单独鉴定粉尘的组分结构和化学成分。本研究的目的是开发和测试新的系统、程序和仪器方法来监测环境空气中的固体颗粒。我们提出了一种硬件和软件复合体,该复合体实现了一种两阶段方案,用于根据从粗到细的原理识别环境空气中采样的固体颗粒。第一阶段包括通过激光衍射鉴定固体颗粒的总浓度。显微照片是用iMicro Q2微型便携式显微镜拍摄的,放大倍数为x800。显微镜镜头连接到相机,相机连接到nVidia Jetson Nano微型电脑。微型电脑对颗粒进行分类,使用神经网络识别其轮廓,并处理图像分割。第二阶段依赖于使用计算机视觉,这使得自动识别显微镜创建的颗粒图像成为可能,从而计算样本中不同物质的水平。所有数据由第二神经网络分析,该第二神经网根据数学逻辑(模型)执行预设计算。该网络使用一个库进行训练,该库包含具有不同定性和分散结构的灰尘的归属显微照片。该算法经过测试,取得了一些有希望的结果。已确定的粉尘分散结构和化学成分与传统方法和测量方法所确定的非常相似。该方法已被证明为识别灰尘成分和结构、创建灰尘污染剖面以及估计特定来源对整体污染的贡献提供了广泛的机会。研究结果确保了在暴露于环境空气中的灰尘下进行更正确和准确的健康风险评估。
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On new methods for measuring and identifying dust microparticles in ambient air
Established health hazards posed by dust microparticles require automated and mobile devices for their assessment. Such devices should provide an opportunity to analyze component and disperse structures of the solid component in ambient air pollution operatively and in real time. In future, they will replace labor-consuming sampling and separate identification of fraction structure and chemical composition of dusts. The aim of this study was to develop and test new methodical, procedural and instrumental approaches to monitoring of solid particles in ambient air. We suggest a hardware and software complex that implements a two-stage scheme for identifying solid particles sampled in ambient air according to the from-coarse-to-fine principle. The first stage involves identifying the total concentration of solid particles by laser diffraction. Microphotographs are taken with iMicro Q2 mini portable microscope with magnification x800. The microscope lens is connected to a camera, which is linked to nVidia Jetson Nano micro PC. The micro PC classifies particles, identifies their contours by using a neural network and deals with image segmentation. The second stage relies on using computer vision that makes it possible to automate routine recognition of particle images created by the microscope in order to calculate levels of different substances in a sample. All the data are analyzed by the second neural network that performs preset calculations in accordance with mathematical logic (model). The network is trained using a library that contains attributed microphotographs of dusts with different qualitative and disperse structures. The algorithm has been tested with some promising results. Identified disperse structures and chemical composition of dusts turn out to be quite similar to those identified by conventional approaches and measurement methods. The method has been shown to offer wide opportunities to identify dust composition and structure, to create dust pollution profiles, and to estimate a contribution made by a specific source to overall pollution. The study results ensure more correct and precise health risk assessment under exposure to dusts in ambient air.
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来源期刊
Health Risk Analysis
Health Risk Analysis Medicine-Health Policy
CiteScore
1.30
自引率
0.00%
发文量
38
审稿时长
20 weeks
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