Potential of Using Night-Time Light to Proxy Social Indicators for Sustainable Development
Abstract
:1. Introduction
Satellite/Sensors | Spatial Resolution | Temporal Resolution | Overpass Time | Coverage | Data Availability | Products | Product Source |
---|---|---|---|---|---|---|---|
DMSP/OLS | 1–2.7 km (depending on the product) and 30 arc-seconds | Every 24 h | 20:00–22:00 | 65°S to 75°N | 1992–2013 | Cloud-free coverage; composite of night-time stable light; average visible data | [3] [4] [5] |
VIIRS/DNB | 742 m (one pixel) and 15 arc-seconds | Every 24 h | 01:30 (+/− 1 h depending on the latitude) | 65°S to 75°N | April 2012–present | NTL annual and monthly composites; VIIRS night fire; VIIRS gas flaring; VIIRS boat detection; standard Black Marble. | [3] [4] [5] |
CubeSat (AeroCube-4 and 5) * | 500 m and 124 m | Inconsistent | 12–4 a.m. | Different areas across the planet | 2014 and 2015 (both experimental) | High spatial resolution imagery | [16] |
International Space Station (ISS) | 5–200 m | Occasionally | 11 p.m. | Varies | 2003–present (occasionally) | Photos of Earth during the night | [8] [17] |
LJ1-01 | 130 m | 15 days | 10:30 p.m. | China, Southeast Asia, Europe, South and North America, and eastern Australia. | June 2018–March 2019 | High spatial resolution imagery | [12] |
EROS-B * | 0.7 m | 3 days (30° off-nadir) 6 days (15° off-nadir) | Varies (equatorial crossing time—12:20 a.m.) | Depends on the season and sun’s position | June 2013–present | VHR of night-time imagery with panchromatic band | [18] |
JL1-3B and JL1-07/08 * | <1 m | At least once per day | Around 10 p.m. | Images are acquired on request. | 2018–present 2019–present | VHR of night-time imagery with panchromatic band and improved multispectral (red, green, and blue) bands. | [19] |
2. Materials and Methods
2.1. Literature Acquisition and Evaluation of All NTL Satellites for Social Indicators
2.2. Case Study
2.2.1. Study Area and Data Sources
2.2.2. Data Analysis of VIIRS
2.2.3. Analysis of Variance on the Radiance Data
- SGI: 0 = SGI values less than 0 (i.e., negative values); 1 = SGI values equal to and greater than zero (i.e., positive values) (Table S5)
- Year codes: 0 for the SGI from 2010 (radiance values from 2014) and 1 for SGI from 2020 (radiance values from 2021)
- Location codes: Each of the 24 locations was given a categorical code from 1 to 24.
2.2.4. Analysis of Automatic Road Extraction
3. Results
3.1. Analysis of Published Studies on the Use of NTL Data for Social Indicators
Main Application | Research Themes | Social SDG Indicator | MMS 2.0 Score | Reference Assessed |
---|---|---|---|---|
Human and economic aspects | Poverty evaluation | 1.1.1.; 1.2.1. | 3.33 | [42] |
1.2.2. | 1.66 | [88] | ||
1.3.1. | 1.83 | [204] | ||
Inequality | 10.2.1 | 2 | [90] | |
Education inequality | 4.1.2.; 4.a.1. | 1.66 | [92] | |
4.4.1. | 1.83 | [71] | ||
Energy supply/energy consumption | 7.1.1. | 4.18 | [203] | |
7.3.1. | 1.83 | [203] | ||
Rural electrification cover | 7.1.1. | 4.18 | [95] | |
7.3.1. | 1.83 | [95] | ||
Renewable energy | 12.a.1; 7.b.1. | 2.33 | [97] | |
7.1.2. | 1.66 | [96] | ||
7.2.1. | 2.33 | [96] | ||
Socioeconomic features | Urban economic development (e.g., GDP, income, unemployment rates) | 8.5.2. | 2.33 | [205] |
8.3.1. | 1.83 | [206] | ||
Rural economic development (e.g., GDP, income, unemployment rates) | 8.5.2. | 2.33 | [205] | |
8.3.1. | 1.83 | [206] | ||
Housing vacancy | n/a | |||
“Ghost” cities | n/a | |||
Freight traffic and road density | 9.1.2. | 2.33 | [101] | |
Road lighting | 16.1.4. | 2.33 | [207] | |
Copper/steel stock | n/a | n/a | ||
Urbanisation | Long-term urbanisation | 11.3.1. | 2.33 | [208] |
Urban functional zone | 11.1.1. | 2.33 | [209] | |
Scaling city expansion | n/a | |||
Impervious surface area detection/distribution | 11.7.1. | 2.33 | [201] | |
Urban settlement | 11.3.1. | 2.33 | [208] | |
Rural settlement | 11.3.1. | 2.33 | [208] | |
9.1.1. | 3 | [124] | ||
Urban surface temperature | n/a | n/a | ||
Urban impacts on habitat/soil | n/a | n/a | ||
Dynamics of urban agglomeration | n/a | n/a | ||
Conflicts and disasters | War/political tensions | 16.1.1.; 16.1.2. | 1.83 | [133] |
Governmental favouritism | 16.5.1.;16.5.2 | 1.83 | [134] | |
People’s displacement due to disasters/wars (refugees) | 10.7.4. | 2.33 | [137] | |
Demographic and socioeconomic information | Population distribution | n/a | n/a | |
Population migration | n/a | n/a | ||
Population density | n/a | n/a | ||
“Ambient population” | n/a | n/a | ||
Environmental | Gas flares and biomass burning | n/a | n/a | |
Land use types | n/a | n/a | ||
Net primary productivity | n/a | n/a | ||
Water footprint | n/a | n/a | ||
Aerosol properties | n/a | n/a | ||
Virtual water | n/a | n/a | ||
Ecosystem services | n/a | n/a | ||
Bioluminescence in the sea | n/a | n/a | ||
Air quality | 11.6.2 | 2.88 | [159] | |
3.9.1. | 1.66 | [159] | ||
Light pollution and its effect on biodiversity and conservation | n/a | n/a | ||
Lightning flashes | n/a | n/a | ||
Marine activities | Nocturnal fishing vessel detection | 14.6.1. | 3 | [76] |
14.7.1. | 1.83 | [76] | ||
Disaster and natural hazards | Earthquake destruction | 1.5.1.; 11.5.1;13.1.1. | 2.88 | [170] |
1.5.2.; 11.5.2. | 3.66 | [170] | ||
Natural disasters | 1.5.1.; 11.5.1;13.1.1. 1.5.2.; 11.5.2. | 2.33 | [169] | |
Flood risk | 1.5.1.; 11.5.1;13.1.1. | 2.88 | [77] | |
1.5.2.; 11.5.2. | 3.66 | [77] | ||
Wildfire | 1.5.1.; 11.5.1;13.1.1. | 1.66 | [176] | |
1.5.2.; 11.5.2. | 3.66 | [176] | ||
Human health | Birth mortality | 3.1.1.; 3.2.1; 3.2.2. | 3.18 | [183] |
Prostate cancer | n/a | n/a | ||
COVID-19 outbreak | n/a | n/a | ||
Circadian rhythms, sleep disruptions | n/a | n/a | ||
Breast cancer | n/a | n/a | ||
Obesity/body mass | 3.4.1. | 1.83 | [180] | |
Other applications with social nuances | Religious/cultural festivals | n/a | n/a | |
Human lifestyle during COVID-19 lockdown | n/a | n/a | ||
Tourism/recreational opportunities | 8.9.1.; 11.4.1 | 1.88 | [188] | |
Public space lighting preferences | n/a | n/a | ||
Forced labour | 2.3.1; 8.7.1.; 8.8.2.; 10.4.1. | 1.66 | [190] | |
Voting rights | 10.6.1.; 16.8.1. | 2.66 | [191] | |
Human trafficking | 16.2.2. | 2 | [192] | |
Total | Number of indicators 49 indicators out of 192 | 1, 27, 21, 143 |
3.2. Case study: Durango, Mexico
Road Quality and Night-Time Satellite Radiance
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Data | Data Acquisition | Data Product | Resolution | Source |
---|---|---|---|---|
Night-time satellite imagery | 2014 and 2021 VIIRS | Average of radiance | ~750 m | [3,4,5] |
Very high resolution (VHR) satellite data from Google Earth Pro | 2012 Maxar Technologies (e.g., WorldView, GeoEye) | Road extraction via object-based classification | Vary (0.35 m and 1 m) | [58] |
Google Street View (GSV) | N/A | Streets view and 360° loops for validating the road type | N/A | [58] |
Social deprivation gap index | 2010 CONEVAL | 5 levels (very low, low, medium, high, very high) | N/A | [56] |
Main Application | Research Themes | Spatial Resolution | ||||||
---|---|---|---|---|---|---|---|---|
DMSP | VIIRS | CubeSat | ISS | LJ1-01 | EROS-B | JL1-3B & JL1-07/08 | ||
Human and economic aspects | Poverty evaluation | [88] (R) | [69] (CT) | — | [70] (C) | [89] (L) | — | [87] (L) |
Inequality | [90] (G) | [91] (CT) | — | — | — | — | — | |
Education inequality | [92] (CT) | — | — | — | — | — | — | |
Energy supply/energy consumption | [93] (R) | [71] (CT) | — | — | [72] (R) | — | [94] (L) | |
Rural electrification coverage | [95] (L) | [71] (CT) | — | — | — | — | — | |
Renewable energy | [96] (G) | [97] (L) | — | — | — | — | — | |
Socioeconomic features | Urban economic development (e.g., GDP, income, unemployment rates) | [36] (CT) | [38] (L) | — | — | [14] (C) | — | — |
Rural economic development (e.g., GDP, income, unemployment rates) | [37] (L) | [98] (L) | — | — | [14] (C) | — | — | |
Housing vacancy | — | — | — | — | [80] (C) | — | [99] (L) | |
“Ghost” cities | [100] (C) | — | — | — | [81] (L) | — | — | |
Freight traffic and road density | [101] (CT) | [102] (CT) | — | [103] (C) | [82] (C) | [20] (L) | [86] (C) | |
Road lighting | [104] (L) | [105] (C) | — | [106] (C) | — | [86] (C) | [87] (L) | |
Copper/steel stock | [107] (G) | [108] (G) | — | — | — | — | — | |
Urbanisation | Long-term urbanisation | [109] (CT) | — | — | — | [14] (C) | — | — |
Urban functional zones | [110] (C) | [111] (C) | — | [112] (L) | [113] (L) | — | [84] (L) | |
Scaling city expansion | [114] (C) | [115] (R) | — | [116] (C) | [15] (C) | — | — | |
Impervious surface area detection/distribution | [117] (R) | [118] (R) | — | [119] (C) | [13] (C) | — | [120] (C) | |
Urban settlement | [121] (R) | [122] (R) | — | [70] (C) | [72] (R) | [85] (L) | [123] (L) | |
Rural settlement | [35] (L) | [124] (R) | — | — | [68] (R) | — | — | |
Urban surface temperature | [125] (C) | [126] (R) | — | [127] (C) | [128] (C) | — | — | |
Urban impacts on habitat/soil | [129] (CT) | [130] (R) | — | — | — | — | — | |
Dynamics of urban agglomeration | [131] (C) | [73] (R) | — | — | [74] (R) | — | — | |
Conflicts and disasters | War/political tensions | [132] (C) | [133] (C) | — | — | — | — | — |
Governmental favouritism | [134] (G) | [135] (G) | — | — | — | — | — | |
People’s displacement due to disasters/wars (refugees) | [136] (CT) | [137] (CT) | — | — | — | — | — | |
Demographic and socioeconomic information | Population distribution | [138] (C) | [139] (R) | — | [112] (L) | [140] (C) | — | — |
Population migration | [141] (R) | [142] (L) | — | — | — | — | — | |
Population density | [31] (CT) | [32] (C) | — | [33] (C) | [14] (C) | — | — | |
“Ambient population” | [143] (C) | [144] (C) | — | — | — | — | — | |
Environmental | Gas flares and biomass burning | [145] (G) | [146] (G) | [147] (C) | — | — | — | — |
Land use types | — | — | — | — | [87] (L) | — | [148] (L) | |
Net primary productivity | [149] (C) | — | — | — | — | — | — | |
Water footprint | [150] (G) | — | — | — | — | — | — | |
Aerosol properties | [151] (R) | [152] (G) | — | — | — | — | — | |
Virtual water | [153] (R) | — | — | — | — | — | — | |
Ecosystem services | [154] (R) | [155] (R) | — | — | — | — | — | |
Bioluminescence in the sea | [156] (R) | [157] (R) | — | — | — | — | — | |
Air quality | [158] (G) | [159] (C) | — | — | [160] (R) | — | — | |
Light pollution and its effect on biodiversity and conservation | [161] (G) | [162] (G) | — | [163] (L) | — | [83] (C) | [164] (C) | |
Lightning flashes | [165] (G) | [166] (G) | [147] (C) | [167] (G) | — | — | — | |
Marine activities | Nocturnal fishing vessel detection | [168] (G) | [75] (R) | [147] (C) | — | [76] (R) | — | — |
Disaster and natural hazards | Earthquake destruction | [169] (CT) | [170] (CT) | — | — | — | — | — |
Natural disasters | [171] (R) | [172] (C) | — | — | — | — | — | |
Flood risk | [173] (CT) | [77] (C) | — | — | [78] (C) | — | — | |
Wildfire | [174] (R) | [175] (R) | — | — | [176] (R) | — | — | |
Human health | Breast cancer | [177] (CT) | [48] (C) | — | [47] (C) | — | — | — |
Prostate cancer | [178] (G) | — | — | [47] (C) | — | — | — | |
COVID-19 outbreak | [179] (R) | — | — | — | — | — | — | |
Circadian rhythms, sleep disruptions | [180] (CT) | [181] (CT) | — | — | — | — | — | |
Obesity/body mass | [180] (CT) | — | — | [182] (C) | — | — | — | |
Birth mortality | [183] (L) | [183] (L) | — | — | — | — | — | |
Other applications with social nuances | Religious/cultural festivals | [184] (CT) | [185] (CT) | — | — | [79] (C) | — | [123] (L) |
Human lifestyle during COVID-19 lockdown | — | [186] (CT) | — | — | — | — | — | |
Tourism/recreational opportunities | [187] (C) | [188] (C) | — | — | — | — | — | |
Public space lighting preferences | — | — | — | — | — | — | [189] (L) | |
Forced labour | — | [190] (R) | — | — | — | — | — | |
Voting rights | [191] (G) | — | — | — | — | — | — | |
Human trafficking | [192] (CT) | — | — | — | — | — | — | |
Total articles reviewed | G = 12 R = 12 CT = 14 C = 10 L = 5 Total = 53 | G = 7 R = 12 CT = 10 C = 20 L = 5 Total = 54 | G = 0 R = 0 CT = 0 C = 3 L = 0 Total = 3 | G = 1 R = 0 CT = 0 C = 11 L = 3 Total = 15 | G = 0 R = 8 CT = 0 C = 12 L = 3 Total = 23 | G = 0 R = 0 CT = 0 C = 2 L = 2 Total = 4 | G = 0 R = 0 CT = 0 C = 3 L = 9 Total = 12 |
Categories (a) Social Gap Index | Count | Mean Radiance | Median Radiance | Standard Error of Radiance |
---|---|---|---|---|
0 (Low SGI) | 32 | 0.998 | 0.131 | 0.560 |
1 (High SGI) | 16 | 0.046 | 0 | 0.029 |
(b) Year | ||||
0 (SGI year 2010; radiance year 2014) | 24 | 0.677 | 0.030 | 0.539 |
1 (SGI year 2020; radiance year 2021) | 24 | 0.685 | 0.104 | 0.539 |
Source | DF | Seq SS | Adjusted SS | Adjusted MS | F |
---|---|---|---|---|---|
Location (24 codes) | 23 | 13.39846 | 12.60764 | 0.54816 | 178.91 *** |
Year (2 year codes) | 1 | 0.00067 | 0.00032 | 0.00032 | 0.1 ns |
Social Gap Index (2 SDGI codes) | 1 | 0.02169 | 0.02169 | 0.02169 | 7.08 * |
Error | 22 | 0.06741 | 0.06741 | 0.00306 | |
Total | 47 | 13.48823 |
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Andries, A.; Morse, S.; Murphy, R.J.; Sadhukhan, J.; Martinez-Hernandez, E.; Amezcua-Allieri, M.A.; Aburto, J. Potential of Using Night-Time Light to Proxy Social Indicators for Sustainable Development. Remote Sens. 2023, 15, 1209. https://doi.org/10.3390/rs15051209
Andries A, Morse S, Murphy RJ, Sadhukhan J, Martinez-Hernandez E, Amezcua-Allieri MA, Aburto J. Potential of Using Night-Time Light to Proxy Social Indicators for Sustainable Development. Remote Sensing. 2023; 15(5):1209. https://doi.org/10.3390/rs15051209
Chicago/Turabian StyleAndries, Ana, Stephen Morse, Richard J. Murphy, Jhuma Sadhukhan, Elias Martinez-Hernandez, Myriam A. Amezcua-Allieri, and Jorge Aburto. 2023. "Potential of Using Night-Time Light to Proxy Social Indicators for Sustainable Development" Remote Sensing 15, no. 5: 1209. https://doi.org/10.3390/rs15051209