An Improved Identification Code for City Components Based on Discrete Global Grid System
Abstract
:1. Introduction
2. Method
2.1. GeoSOT Grid Code
2.2. Identification Code of the City Component
- (1)
- The optimum grid level. The grid size at the level is and this is calculated by Equation (1).
- (2)
- : let be the point closest to the Origin (0°, 0°) among the apexes of the component’s MBR, then the grid code of at the optimum grid level is . Specifically, the meridional code can be converted with longitude value by Equation (2), and the zonal code can be converted with latitude value through similar equations. Then, the meridional code and the zonal code are cross-integrated consecutively to form :
- (3)
- : for the two points closest to and farthest from the Origin (0°, 0°) among the apexes of the component’s MBR, whose grids at the optimum grid level are encoded with tag ends of and (). The meridional span code is calculated by Equation (3), and the zonal span code can be calculated by similar equations. For the identification code of point objects, may be omitted; for the identification code of polyline object and polygon object, is required.
3. Results and Discussion
3.1. Results of Encoding
3.2. Analysis of the Code
- (1)
- Universal utility across systems: Sequential code in the traditional method is a series of computer characters without any attributes of the component itself. As different users may specify different sequential codes for the same component, it is not conducive for accurate identification. In contrast, the grid code comes from the location information of the component, so different users may obtain the same identification code for the same city component. It is of universal utility across all of the systems and can facilitate operations between different departments in the unified management of multi-source city components.
- (2)
- Explicit expression of accurate location: The administrative division code in the traditional code usually represents a region with a large area and irregular shape. However, the discrete global grids of the same level share the same shape and size, which is consistent. Furthermore, the grid code can express more accurate spatial location information than the administrative division code. This helps in identifying city components effectively by their grid codes as required, and thereby might contribute to an improvement in the efficiency of a digital city management system.
- (3)
- Implicit expression of spatial relationships: Traditional codes offer hardly any useful information about spatial relationships. However, the discrete global grid system uses a unified subdivision and coding framework, so the grid code can indicate a simple spatial relationship between components [35]. Using Microsoft China (Point A in Figure 3) and the Daimler Tower (Point B in Figure 3), as examples, it can be seen that the codes of these two buildings were B9A33FDE7B and B9A33FDE4A, respectively. They were of the same length, but end with 7B and 4A, respectively. We made a simple inference of the spatial relationship between them according to their codes. For the spatial direction relationship, it was found that Microsoft China is located on the north-east side of the Daimler Tower, since 7 is greater than 4, and B is greater than A. For spatial distance relationship, since the code length was 10 characters, the grid size of this level was inferred to be approximately 48 m × 64 m. Their zonal distance is about three grids (144 m), and their meridional distance about one grid (64 m), which is broadly consistent with the actual distances (125 m and 49 m).
3.3. Comparison in Data Query
3.4. Performance in Geospatial Computation
3.5. Limitations and Prospects
4. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Level | Scale | Level | Scale | Level | Scale | Level | Scale |
---|---|---|---|---|---|---|---|
1 | 256° | 9 | 1° | 17 | 16″ | 25 | 1/16″ |
2 | 128° | 10 | 32′ | 18 | 8″ | 26 | 1/32″ |
3 | 64° | 11 | 16′ | 19 | 4″ | 27 | 1/64″ |
4 | 32° | 12 | 8′ | 20 | 2″ | 28 | 1/128″ |
5 | 16° | 13 | 4′ | 21 | 1″ | 29 | 1/256″ |
6 | 8° | 14 | 2′ | 22 | 1/2″ | 30 | 1/512″ |
7 | 4° | 15 | 1′ | 23 | 1/4″ | 31 | 1/1024″ |
8 | 2° | 16 | 32″ | 24 | 1/8″ | 32 | 1/2048″ |
Point | Name | Grid Code | Longitude | Latitude | Address |
---|---|---|---|---|---|
A | Microsoft China | B9A33FDE7B | 116.48299 | 39.99451 | No. 8 Wangjing Road |
B | Daimler Tower | B9A33FDE4A | 116.48153 | 39.99407 | No. 8 Wangjing Road |
C | Caterpillar Tower | B9A33FDE69 | 116.48251 | 39.99354 | No. 8 Wangjing Road |
D | North Gate of Lei Shing Hong Plaza | B9A33FDE7C | 116.48288 | 39.99504 | No. 8 Wangjing Road |
E | South Gate of Lei Shing Hong Plaza | B9A33FDE49 | 116.48166 | 39.99344 | No. 8 Wangjing Road |
F | Lei Shing Hong Plaza A | B9A33FDE5A | 116.48180 | 39.99408 | No. 8 Wangjing Road |
G | West Gate of Lei Shing Hong Plaza | B9A33FDE4B | 116.48150 | 39.99474 | No. 8 Wangjing Road |
H | Lei Shing Hong Plaza C | B9A33FDEA5 | 116.48340 | 39.99392 | No. 8 Wangjing Road |
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Qi, K.; Cheng, C.; Hu, Y.; Fang, H.; Ji, Y.; Chen, B. An Improved Identification Code for City Components Based on Discrete Global Grid System. ISPRS Int. J. Geo-Inf. 2017, 6, 381. https://doi.org/10.3390/ijgi6120381
Qi K, Cheng C, Hu Y, Fang H, Ji Y, Chen B. An Improved Identification Code for City Components Based on Discrete Global Grid System. ISPRS International Journal of Geo-Information. 2017; 6(12):381. https://doi.org/10.3390/ijgi6120381
Chicago/Turabian StyleQi, Kun, Chengqi Cheng, Yi’na Hu, Huaqiang Fang, Yan Ji, and Bo Chen. 2017. "An Improved Identification Code for City Components Based on Discrete Global Grid System" ISPRS International Journal of Geo-Information 6, no. 12: 381. https://doi.org/10.3390/ijgi6120381
APA StyleQi, K., Cheng, C., Hu, Y., Fang, H., Ji, Y., & Chen, B. (2017). An Improved Identification Code for City Components Based on Discrete Global Grid System. ISPRS International Journal of Geo-Information, 6(12), 381. https://doi.org/10.3390/ijgi6120381