基于遥感数据集成的城市水体水环境质量系统分析方法

Pub Date : 2021-01-01 DOI:10.15407/knit2021.05.011
O. Fedorovsky, A. Khyzhniak, O. Tomchenko
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引用次数: 0

摘要

该工作介绍了使用系统分析方法评估城市水生环境状况的综合方法,如基辅的Opechen湖、verne湖和Redkyne湖。该方法包括卫星图像的结构-纹理分析和基于统计准则的方法。利用卫星图像的光谱纹理分析,为水库远程评价提供输入信息,作为指标图像:Sentinel-2计算的归一化差异池塘指数(NDPI)、归一化差异浊度指数(NDTI)和归一化差异藻类指数(NDAI)。地表温度分布由Landsat 8卫星估算。采用基于统计标准的方法,利用获得的索引图像和相应的水质地图表示,对水生环境进行了详细的评估。基于信息特征的测量结果,采用概率和统计方法给出了识别对象类别的统计准则。这些方法用于解决识别和识别统计理论中的优化问题。该方法可以根据2017年水库状态的参考区域绘制水质和水生生态系统变化的地图。
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Assessing aquatic enviromnemt quality of the urban water bodies by system analysis methods based on integrating remote sensing data
The work presents the comprehensive methodology for assessment of the state of the urban aquatic environment such as Lakes Opechen, Verbne, and Redkyne in Kyiv using the methods of system analysis. The methodology includes structural-textural analysis of the satellite images and the method based on statistical criteria. The spectral-texture analysis of the satellite images was used to get input information for remote assessment of reservoirs as index images: Normalized Difference Pond Index (NDPI), Normalized Difference Turbidity Index (NDTI), and Normalized Difference Algae Index (NDAI) computed from the Sentinel-2. The surface temperature distribution was estimated from the Landsat 8. The method based on statistical criteria is used for a detailed assessment of the aquatic environment using the obtained indexed images and the corresponding cartographic representation of the water quality. The probabilistic and statistical approaches were used to present the statistical criterion for recognizing classes of objects based on the results of measuring their informative features. These approaches are used to solve optimization problems in statistical theories of identification and recognition. This method allowed the cartographic representing of the change in the water quality and aquatic ecosystem in accordance with the reference areas of the state of the reservoir in 2017.
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