| Literature DB >> 32403250 |
Bo Sun1, Yang Zhang1, Qiming Zhou1,2, Duo Gao3.
Abstract
Most studies on light pollution are based on light intensity retrieved from nighttime light (NTL) remote sensing with less consideration of the population factors. Furthermore, the coarse spatial resolution of traditional NTL remote sensing data limits the refined applications in current smart city studies. In order to analyze the influence of light pollution on populated areas, this study proposes an index named population exposure to light pollution (PELP) and conducts a street-scale analysis to illustrate spatial variation of PELP among residential areas in cites. By taking Shenzhen city as a case, multi-source data were combined including high resolution NTL remote sensing data from the Luojia 1-01 satellite sensor, high-precision mobile big data for visualizing human activities and population distribution as well as point of interest (POI) data. Results show that the main influenced areas of light pollution are concentrated in the downtown and core areas of newly expanded areas with obvious deviation corrected like traditional serious light polluted regions (e.g., ports). In comparison, commercial-residential mixed areas and village-in-city show a high level of PELP. The proposed method better presents the extent of population exposure to light pollution at a fine-grid scale and the regional difference between different types of residential areas in a city.Entities:
Keywords: Luojia 1-01; NTL remote sensing; light pollution; population exposure to light pollution; residential area
Mesh:
Year: 2020 PMID: 32403250 PMCID: PMC7248970 DOI: 10.3390/s20092728
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1The distribution of active mobile devices during night time in Shenzhen (September, 2018).
Figure 2The distribution of the residential point of interest (POI) data in Shenzhen.
Actual population statistics and the volume of active mobile devices in different districts.
| District * | Actual Population | Number of Mobile Devices |
|---|---|---|
| Bao’an | 3,149,000 | 1,012,949 |
| Dapeng | 146,100 | 29,647 |
| Futian | 1,561,200 | 544,395 |
| Guangming | 596,800 | 185,975 |
| Longgang | 2,278,900 | 955,800 |
| Longhua | 1,603,700 | 621,306 |
| Luohu | 1,027,200 | 370,078 |
| Nanshan | 1,424,600 | 583,802 |
| Pingshan | 428,000 | 66,134 |
| Yantian | 237,200 | 45,472 |
Note: Population statistics is updated to the end of the previous year. * Statistics of Shen-Shan Special Cooperation Zone (enclaves) is not included.
A look-up table for residential types adopted in this study and original type codes in Gaode Map point of interest (POI) data.
| Origin Code in Gaode Map | Type of Residential Areas | Type Code | Sample Size |
|---|---|---|---|
| 120201|120203|120302 | Commercial-residential mixed (C) | 0 | 8 |
| 120203|120300|120301|120302|120303 | High-rise dwelling (H) | 1 | 761 |
| 120300|120301|120302 | Middle and low-rise dwelling (M) | 2 | 33 |
| 120300|120302 | Village-in-city (V) | 3 | 62 |
| 120303 | Dormitory (D) | 4 | 7 |
Figure 3Spatial distribution of population exposure to light pollution (PELP) in Shenzhen. (A) Bao’an District, (B) Nanshan District, (C) Futian District, (D) Luohu District.
Figure 4Regional difference of PELP by district.
Figure 5Difference of PELP by residential type.
Figure 6Comparison between the light pollution parameters based on nighttime light (NTL) radiance (a), and PELP (b), typical regions including (A) Shenzhen International Airport, (B) Dachanwan Port, (C) Shekou Cruise Port, and (D) Yantian Port.