| Literature DB >> 31929670 |
Kyle Onda1, Parmanand Sinha2, Andrea E Gaughan2, Forrest R Stevens2, Nikhil Kaza1.
Abstract
The measurement and characterization of urbanization crucially depends upon defining what counts as urban. The government of India estimates that only 31% of the population is urban. We show that this is an artifact of the definition of urbanity and an underestimate of the level of urbanization in India. We use a random forest-based model to create a high-resolution (~ 100 m) population grid from district-level data available from the Indian Census for 2001 and 2011, a novel application of such methods to create temporally consistent population grids. We then apply a community-detection clustering algorithm to construct urban agglomerations for the entire country. Compared with the 2011 official statistics, we estimate 12% more of urban population, but find fewer mid-size cities. We also identify urban agglomerations that span jurisdictional boundaries across large portions of Kerala and the Gangetic Plain.Keywords: Gridded population data; India; Urban agglomerations; Urban-rural delineation; Urbanization
Year: 2019 PMID: 31929670 PMCID: PMC6934249 DOI: 10.1007/s11111-019-00329-2
Source DB: PubMed Journal: Popul Environ ISSN: 0199-0039
Covariates used in gridded population modeling process
| Variable name(s) | Source and nominal resolution |
|---|---|
| District Census Population, 2001, 2011 | Open Government Data (OGD) Platform India, district level |
| Temporally explicit covariates | |
| Land Cover, 2000, 2010 | GlobCover, 300 m |
| Global Human Settlement Layer, 2000, 2012 | ECJRC, 38 m (Pesaresi et al., |
| Lights at night, 2001, 2011 | DMSP-OLS-derived (National Oceanic and Atmospheric Administration, |
| Common covariates | |
| Mean temperature, 1950–2000 | WorldClim/BioClim (BIO1) (Hijmans et al., |
| Mean precipitation, 1950–2000 | WorldClim/BioClim (BIO12) (Hijmans et al., |
| Sanctuaries, National parks, Game Reserves, World Heritage Sites | World Database on Protected Areas September, 2012, UNEP (IUCN, UNEP-WCMC, |
| Elevation | USGS HydroSHEDS (Lehner et al., |
| Derived Slope | USGS HydroSHEDS (Lehner et al., |
| Distance to infrastructures | Open Street Map, 2017–05 |
| Distance to places | Open Street Map, 2017–05 |
| Distance to road networks | Open Street Map, 2017–05 |
| Distance to waterbodies | Open Street Map, 2017–05 |
Fig. 1Schematic representation of the dasymetric gridded population modeling process
Fig. 2Various stages of defining the urban area boundary in MAGPIE. a Input population intensity estimates. b Urban areas based on density threshold. c Removal of holes and polygonization based on contiguity constraint. d Construction of graph based on distance threshold to account for non-contiguous polygons. e Construction of clusters based on eigenvector community-detection technique
Fig. 3Gridded Population Intensity Estimates for India (2011). Maximum value is restricted to 25 for visualization purposes
Fig. 4Spatial extent of urbanization according to MAGPIE. Top row for the entire map of India, bottom row inset for the detail of smaller areas. Estimated with a minimum density threshold of (a) 5 person/ha., (b) 7.5 person/ha. (c), and 10 person/ha
Fig. 5Relationships among MAGPIE estimates of population and population density in India in 2011 (7.5 pp./ha threshold). Vertical lines represent individual urban agglomerations, positioned on the x-axis according to population density (population per hectare) and on the y-axis according to population size category. Red diamonds represent particularly high- or low-density urban agglomerations of interest
Fig. 6Characterizing the type of urbanization in 2011 by State and Union Territory according to MAGPIE. Bottom right corner indicates that regions that are highly urbanized and the density thresholds matter little for urban population counts. Top left corner are regions where density thresholds matter greatly for the counts
Comparison of counts of urban agglomerations and population estimates in 2011 (2015 for GHSL) for different size categories by the Census of India, Indiapolis, GHS-SMOD, and MAGPIE at 10 pp/ha, 7.5 pp/ha and 5 pp/ha population density thresholds
| Census | Indiapolis | GHS-POP and SMOD | MAGPIE | |||
|---|---|---|---|---|---|---|
| Counts | 10 pp./ ha | 7.5 pp./ ha | 5 pp./ha | |||
| 1. Megalopolis (> 40 million) | 1 | 2 | 2 | |||
| 2. Megacity (10–40 million) | 3 | 4 | 5 | 5 | 6 | 6 |
| 3. Million+ urban area (1–10 million) | 50 | 47 | 72 | 47 | 46 | 30 |
| 4. Class 1 urban area (100k–1 million) | 415 | 495 | 1556 | 330 | 329 | 275 |
| 5. 20–100k town | 1846 | 2866 | 5275 | 782 | 769 | 739 |
| 6. 5–20k town | NA | 4272 | 15,182 | 1000 | 1018 | 983 |
| 7. < 5k town | NA | Not considered urban | 194 | 10,269 | 20,804 | 32,693 |
| Population | ||||||
| 1. Megalopolis (> 40 million) | 40,251,032 | 116,483,274 | 364,555,198 | |||
| 2. Megacity (10–40 million) | 48,802,734 | 73,894,637 | 104,736,702 | 105,197,661 | 122,513,999 | 113,912,852 |
| 3. Million+ urban area (1–10 million) | 111,813,450 | 116,694,703 | 179,271,190 | 127,104,331 | 136,097,571 | 95,663,062 |
| 4. Class 1 urban area (100k–1 million) | 104,293,727 | 117,489,953 | 358,730,669 | 87,419,632 | 91,539,353 | 70,548,571 |
| 5. 20–100k town | 74,112,244 | 110,112,901 | 226,556,092 | 35,992,827 | 34,445,915 | 32,843,228 |
| 6. 5–20k town | 38,098,826 | 58,464,875 | 141,688,151 | 10,634,852 | 10,799,146 | 10,115,771 |
| 7. < 5k town | 462,143 | 4,919,263 | 6,886,963 | 7,548,863 | ||
| Total | 377,120,981 | 476,657,069 | 1,011,444,947 | 411,519,597 | 518,766,222 | 695,187,545 |
| % Urban | 31% | 39% | 77% | 34% | 43% | 57% |
Fig. 7Comparison of the 2011 urbanization level by state. a Census of India. b Indiapolis. c MAGPIE (7.5 persons/ha)
Comparison of estimates of change in urbanization between 2001 and 2011 at the state level, as estimated by the Census of India, Indiapolis, and MAGPIE
| Census | Indiapolis | MAGPIE (7.5 persons/ha) | |||||||
|---|---|---|---|---|---|---|---|---|---|
| State | 2001 | 2011 | % point difference (%) | 2001 | 2011 | % -point difference (%) | 2001 | 2011 | % -point difference (%) |
| Andaman & Nicobar Islands | 33% | 38% | 5% | 30% | 33% | 3% | 15% | 16% | 1% |
| Andhra Pradesh | 24% | 30% | 5% | 36% | 41% | 5% | 23% | 26% | 3% |
| Arunachal Pradesh | 21% | 23% | 2% | 16% | 16% | 0% | 0% | 0% | 0% |
| Assam | 13% | 14% | 1% | 21% | 22% | 0% | 16% | 24% | 8% |
| Bihar | 10% | 11% | 1% | 31% | 36% | 5% | 63% | 74% | 11% |
| Chandigarh | 90% | 97% | 7% | 99% | 99% | − 1% | 100% | 100% | 0% |
| Chhattisgarh | 20% | 23% | 3% | 21% | 21% | − -1% | 18% | 20% | 2% |
| Dadra and Nagar Haveli | 23% | 47% | 24% | 44% | 53% | 9% | 12% | 26% | 14% |
| Daman and Diu | 36% | 75% | 39% | 87% | 95% | 8% | 121% | 115% | − -6% |
| Delhi | 93% | 98% | 4% | 97% | 97% | 1% | 100% | 100% | 0% |
| Goa | 50% | 62% | 12% | 57% | 57% | 1% | 40% | 45% | 6% |
| Gujarat | 37% | 43% | 5% | 43% | 53% | 10% | 30% | 33% | 3% |
| Haryana | 29% | 35% | 6% | 38% | 43% | 5% | 37% | 39% | 2% |
| Himachal Pradesh | 10% | 10% | 0% | 8% | 9% | 0% | 8% | 7% | −1 |
| Jammu and Kashmir | 25% | 27% | 3% | 31% | 31% | − 1% | 23% | 31% | 7% |
| Jharkhand | 22% | 24% | 2% | 25% | 25% | 0% | 28% | 34% | 5% |
| Karnataka | 34% | 39% | 5% | 38% | 43% | 4% | 26% | 31% | 4% |
| Kerala | 26%r | 48% | 22% | 97% | 96% | − 1% | 77% | 78% | 1% |
| Lakshadweep | 44% | 78% | 34% | 34% | 51% | 17% | 84% | 93% | 9% |
| Madhya Pradesh | 26% | 28% | 1% | 26% | 27% | 1% | 17% | 18% | 1% |
| Maharashtra | 42% | 45% | 3% | 48% | 51% | 3% | 35% | 36% | 1% |
| Manipur | 25% | 29% | 4% | 47% | 52% | 5% | 24% | 27% | 3% |
| Meghalaya | 20% | 20% | 0% | 13% | 5% | − 9% | 11% | 12% | 0% |
| Mizoram | 50% | 52% | 2% | 45% | 47% | 2% | 7% | 6% | − 2% |
| Nagaland | 17% | 29% | 12% | 25% | 29% | 5% | 10% | 11% | 1% |
| Orissa | 15% | 17% | 2% | 16% | 17% | 1% | 20% | 23% | 4% |
| Puducherry | 67% | 68% | 2% | 74% | 74% | 0% | 90% | 93% | 2% |
| Punjab | 34% | 37% | 4% | 37% | 40% | 2% | 34% | 32% | − -1% |
| Rajasthan | 23% | 25% | 1% | 26% | 29% | 3% | 17% | 18% | 0% |
| Sikkim | 11% | 25% | 14% | 13% | 18% | 5% | 3% | 3% | 0% |
| Tamil Nadu | 44% | 48% | 4% | 50% | 53% | 3% | 40% | 44% | 4% |
| Telangana | 32% | 39% | 7% | 45% | 52% | 7% | 30% | 31% | 1% |
| Tripura | 17% | 26% | 9% | 64% | 63% | − 1% | 21% | 22% | 1% |
| Uttar Pradesh | 21% | 22% | 1% | 25% | 25% | 1% | 45% | 55% | 10% |
| Uttarakhand | 26% | 30% | 5% | 31% | 35% | 4% | 23% | 28% | 5% |
| West Bengal | 28% | 32% | 4% | 47% | 48% | 1% | 62% | 69% | 7% |
| India | 28% | 31% | 3% | 37% | 39% | 2% | 38% | 43% | 5% |
Fig. 8Change in urbanization by state, 2001–2011. a Indian Census. b Indiapolis. c MAGPIE estimates