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Main Authors: Xu, Nan, Stevenson, Mark, Nice, Kerry A., Seneviratne, Sachith
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.10599
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author Xu, Nan
Stevenson, Mark
Nice, Kerry A.
Seneviratne, Sachith
author_facet Xu, Nan
Stevenson, Mark
Nice, Kerry A.
Seneviratne, Sachith
contents The fusion of multi-source data is essential for a comprehensive analysis of geographic applications. Due to distinct data structures, the fusion process tends to encounter technical difficulties in terms of preservation of the intactness of each source data. Furthermore, a lack of generalized methods is a problem when the method is expected to be applicable in multiple resolutions, sizes, or scales of raster and vector data, to what is being processed. In this study, we propose a general algorithm of assigning features from raster data (concentrations of air pollutants) to vector components (roads represented by edges) in city maps through the iterative construction of virtual layers to expand geolocation from a city centre to boundaries in a 2D projected map. The construction follows the rule of perfect squares with a slight difference depending on the oddness or evenness of the ratio of city size to raster resolution. We demonstrate the algorithm by applying it to assign accurate PM$_{2.5}$ and NO$_{2}$ concentrations to roads in 1692 cities globally for a potential graph-based pollution analysis. This method could pave the way for agile studies on urgent climate issues by providing a generic and efficient method to accurately fuse multiple datasets of varying scales and compositions.
format Preprint
id arxiv_https___arxiv_org_abs_2407_10599
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle General algorithm of assigning raster features to vector maps at any resolution or scale
Xu, Nan
Stevenson, Mark
Nice, Kerry A.
Seneviratne, Sachith
Information Retrieval
Databases
The fusion of multi-source data is essential for a comprehensive analysis of geographic applications. Due to distinct data structures, the fusion process tends to encounter technical difficulties in terms of preservation of the intactness of each source data. Furthermore, a lack of generalized methods is a problem when the method is expected to be applicable in multiple resolutions, sizes, or scales of raster and vector data, to what is being processed. In this study, we propose a general algorithm of assigning features from raster data (concentrations of air pollutants) to vector components (roads represented by edges) in city maps through the iterative construction of virtual layers to expand geolocation from a city centre to boundaries in a 2D projected map. The construction follows the rule of perfect squares with a slight difference depending on the oddness or evenness of the ratio of city size to raster resolution. We demonstrate the algorithm by applying it to assign accurate PM$_{2.5}$ and NO$_{2}$ concentrations to roads in 1692 cities globally for a potential graph-based pollution analysis. This method could pave the way for agile studies on urgent climate issues by providing a generic and efficient method to accurately fuse multiple datasets of varying scales and compositions.
title General algorithm of assigning raster features to vector maps at any resolution or scale
topic Information Retrieval
Databases
url https://arxiv.org/abs/2407.10599