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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >A New Air Pollution Source Identification Method Based on Remotely Sensed Aerosol and Improved Glowworm Swarm Optimization
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A New Air Pollution Source Identification Method Based on Remotely Sensed Aerosol and Improved Glowworm Swarm Optimization

机译:基于遥感气溶胶和改进萤火虫群优化的空气污染源识别新方法

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摘要

Air pollution sources generally cannot be identified as the specific factories but certain industries. Focusing on this issue, a new method, based on an improved glowworm swarm optimization and remotely sensed imagery, was proposed to precisely orientate and quantify air pollution sources in this study. In addition, meteorological data and GIS information were also used to backtrack the pollution source. After that, in order to quantify the pollution of each factory in the study areas, three pollution indices, pollution gross (PG), pollution intensity, and area-normalized pollution (ANP), were proposed. As a result, the polluting contribution of each factory was listed, and the most polluting factories, which were bulletined as the key monitoring factories by the local authority, were accurately extracted. Among the pollution indices, ANP is the most robust, reliable, and recommended. Furthermore, the result also shows factory pollution background information achieved from the historical remote sensing data which can be used to improve the precision of identification. To our knowledge, this study provides the first attempt to address the problem of identifying a pollution source as originating from an individual factory based on remote sensing data. The proposed method provides a useful tool for air quality management, and the result would be meaningful to environmental and economic issue.
机译:通常不能将空气污染源识别为特定工厂,而是某些行业。针对这个问题,在这项研究中,提出了一种基于改进的萤火虫群​​优化和遥感图像的新方法,以精确地定位和量化空气污染源。此外,气象数据和GIS信息也被用于回溯污染源。此后,为了量化研究区域内每个工厂的污染,提出了三个污染指数,即污染总量(PG),污染强度和区域归一化污染(ANP)。结果,列出了每个工厂的污染贡献,并准确地提取了被地方当局公布为重点监测工厂的污染最严重的工厂。在污染指数中,ANP是最可靠,最可靠和推荐的。此外,结果还显示了从历史遥感数据获得的工厂污染背景信息,可用于提高识别的准确性。据我们所知,本研究首次尝试解决基于遥感数据将污染源识别为源自单个工厂的问题。所提出的方法为空气质量管理提供了有用的工具,其结果对环境和经济问题具有重要意义。

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