Regional Sustainability ›› 2022, Vol. 3 ›› Issue (3): 254-268.doi: 10.1016/j.regsus.2022.10.004
• Full Length Article • Previous Articles Next Articles
Firoz AHMADa,b,*(), Nazimur Rahman TALUKDARc,d,*(
), Laxmi GOPARAJUa, Chandrashekhar BIRADARb, Shiv Kumar DHYANIb, Javed RIZVIb
Received:
2022-03-25
Revised:
2022-08-31
Accepted:
2022-10-09
Online:
2022-09-30
Published:
2022-11-29
Contact:
Firoz AHMAD,Nazimur Rahman TALUKDAR
E-mail:F.Ahmad@cgiar.org;talukdar.nr89@gmail.com
Firoz AHMAD, Nazimur Rahman TALUKDAR, Laxmi GOPARAJU, Chandrashekhar BIRADAR, Shiv Kumar DHYANI, Javed RIZVI. GIS-based assessment of land-agroforestry potentiality of Jharkhand State, India[J]. Regional Sustainability, 2022, 3(3): 254-268.
Table 1
Data sources of this study."
Factor | Indicator | Data source | Year | Reference |
---|---|---|---|---|
Climatic factor | Precipitation | 1970-2000 | Fick and Hijmans ( | |
Temperature | 1970-2000 | Fick and Hijmans ( | ||
Topographical factor | Slope | ASTER DEM: | 2000 | |
Elevation | ASTER DEM: | 2000 | ||
Ecological factor | NDVI | Terra vegetation indices monthly 2021 MODIS: | 2003-2021 | Didan ( |
Percent tree cover | 2000 | Hansen et al. ( | ||
Socio-economic factor | Poverty rate | 2001 | Ahmad et al. ( | |
Tribal dominance | 2001 | Ahmad et al. ( |
Table S1
District-wise climatic suitability of land for agroforestry in Jharkhand State."
District | Climatic suitability of land for agroforestry (%) | |||
---|---|---|---|---|
Minimum | Maximum | Mean | Standard deviation | |
Simdega | 63.99 | 100.00 | 82.32 | 9.13 |
Pakur | 66.21 | 89.82 | 80.31 | 5.44 |
East Singhbhum | 69.08 | 97.47 | 79.97 | 5.02 |
Dumka | 53.87 | 89.70 | 73.05 | 7.92 |
Saraikela-Kharsawan | 52.05 | 76.01 | 71.37 | 4.84 |
Jamtara | 58.23 | 80.38 | 70.36 | 5.44 |
West Singhbhum | 48.10 | 86.51 | 68.41 | 6.69 |
Sahibganj | 46.63 | 76.61 | 61.65 | 6.33 |
Godda | 48.79 | 72.63 | 59.78 | 5.22 |
Deoghar | 49.59 | 70.72 | 59.49 | 4.90 |
Dhanbad | 45.77 | 67.45 | 59.18 | 3.82 |
Khunti | 48.97 | 72.95 | 57.46 | 5.10 |
Bokaro | 37.13 | 72.31 | 57.19 | 6.40 |
Ramgarh | 44.23 | 63.87 | 53.47 | 4.75 |
Ranchi | 36.04 | 69.46 | 53.05 | 6.92 |
Gumla | 4.94 | 81.23 | 51.75 | 15.97 |
Giridih | 23.91 | 61.24 | 43.85 | 8.71 |
Palamu | 30.22 | 47.56 | 39.04 | 3.60 |
Latehar | 1.50 | 50.96 | 37.57 | 9.70 |
Chatra | 21.04 | 46.67 | 37.23 | 5.95 |
Lohardaga | 16.09 | 48.57 | 35.32 | 8.29 |
Garhwa | 0.00 | 42.30 | 34.94 | 4.17 |
Hazaribagh | 16.19 | 51.11 | 33.17 | 8.27 |
Koderma | 17.39 | 34.69 | 24.80 | 4.08 |
Table S2
District-wise topographical suitability of land for agroforestry in Jharkhand State."
District | Topographical suitability of land for agroforestry (%) | |||
---|---|---|---|---|
Minimum | Maximum | Mean | Standard deviation | |
Pakur | 60.68 | 96.93 | 89.39 | 7.38 |
Sahibganj | 56.71 | 100.00 | 87.85 | 8.64 |
Jamtara | 78.11 | 94.01 | 87.27 | 2.09 |
Godda | 59.67 | 95.34 | 86.92 | 7.10 |
Dumka | 60.86 | 95.44 | 85.34 | 5.03 |
Dhanbad | 39.11 | 94.73 | 84.51 | 6.31 |
Deoghar | 48.47 | 88.60 | 84.19 | 3.76 |
East Singhbhum | 42.09 | 94.50 | 83.19 | 10.46 |
Palamu | 48.48 | 91.46 | 82.43 | 5.38 |
Saraikela-Kharsawan | 34.44 | 92.38 | 80.75 | 11.94 |
Bokaro | 27.36 | 89.68 | 80.26 | 8.97 |
Giridih | 0.00 | 89.52 | 79.99 | 5.66 |
Garhwa | 26.08 | 91.34 | 78.29 | 8.95 |
Koderma | 39.02 | 92.21 | 77.87 | 6.00 |
Chatra | 51.84 | 90.89 | 75.40 | 6.75 |
Ramgarh | 32.54 | 84.81 | 74.67 | 7.77 |
Simdega | 49.56 | 85.76 | 72.34 | 6.32 |
Hazaribagh | 47.68 | 87.56 | 72.00 | 6.18 |
West Singhbhum | 34.99 | 88.62 | 70.67 | 10.62 |
Ranchi | 32.57 | 87.49 | 68.01 | 8.21 |
Latehar | 22.42 | 84.69 | 67.47 | 12.82 |
Khunti | 51.71 | 80.26 | 66.43 | 4.29 |
Gumla | 28.37 | 73.38 | 59.84 | 10.01 |
Lohardaga | 28.98 | 76.74 | 57.90 | 11.32 |
Table S3
District-wise ecological suitability of land for agroforestry in Jharkhand State."
District | Ecological suitability of land for agroforestry (%) | |||
---|---|---|---|---|
Minimum | Maximum | Mean | Standard deviation | |
Latehar | 22.26 | 95.42 | 46.37 | 18.14 |
West Singhbhum | 22.51 | 94.33 | 44.25 | 18.10 |
Koderma | 22.22 | 76.17 | 39.90 | 16.28 |
Lohardaga | 19.20 | 89.75 | 39.10 | 19.22 |
Chatra | 23.03 | 84.41 | 38.12 | 12.24 |
Hazaribagh | 0.00 | 84.76 | 36.24 | 13.55 |
Garhwa | 10.51 | 80.22 | 35.92 | 12.72 |
Khunti | 24.03 | 61.31 | 35.74 | 9.78 |
Gumla | 21.66 | 89.75 | 35.18 | 14.45 |
Simdega | 22.49 | 59.09 | 34.02 | 7.64 |
Sahibganj | 1.97 | 63.47 | 33.91 | 8.21 |
Palamu | 7.10 | 80.64 | 33.34 | 10.07 |
Godda | 24.23 | 66.74 | 32.19 | 7.45 |
East Singhbhum | 18.04 | 88.24 | 31.57 | 9.47 |
Pakur | 16.97 | 55.23 | 30.93 | 5.95 |
Ranchi | 6.34 | 75.30 | 30.58 | 8.64 |
Saraikela-Kharsawan | 5.94 | 78.26 | 30.41 | 10.46 |
Bokaro | 1.19 | 85.67 | 29.90 | 10.77 |
Ramgarh | 19.11 | 71.26 | 29.04 | 7.23 |
Dumka | 0.17 | 58.66 | 28.53 | 6.43 |
Giridih | 21.03 | 100.00 | 27.90 | 8.42 |
Dhanbad | 1.33 | 61.87 | 27.63 | 5.29 |
Jamtara | 0.29 | 33.72 | 25.41 | 2.71 |
Deoghar | 20.75 | 44.66 | 24.91 | 1.92 |
Table S4
District-wise socio-economic suitability of land for agroforestry in Jharkhand State."
District | Socio-economic suitability of land for agroforestry (%) | |||
---|---|---|---|---|
Minimum | Maximum | Mean | Standard deviation | |
Simdega | 29.98 | 97.46 | 91.77 | 7.03 |
Gumla | 37.38 | 96.07 | 86.83 | 4.28 |
West Singhbhum | 22.48 | 100.00 | 85.52 | 10.39 |
Lohardaga | 68.40 | 92.11 | 81.04 | 4.45 |
Khunti | 64.73 | 92.49 | 79.18 | 5.88 |
Latehar | 45.57 | 92.80 | 76.49 | 9.10 |
Pakur | 31.79 | 82.30 | 76.39 | 4.71 |
Dumka | 34.65 | 85.81 | 73.88 | 8.41 |
Garhwa | 49.45 | 81.30 | 73.78 | 4.82 |
Godda | 51.95 | 77.49 | 70.41 | 4.38 |
Sahibganj | 38.16 | 74.72 | 68.34 | 4.05 |
Palamu | 49.74 | 77.59 | 64.46 | 5.47 |
Jamtara | 24.49 | 71.66 | 54.35 | 11.86 |
Ranchi | 11.01 | 86.14 | 54.15 | 13.07 |
Saraikela-Kharsawan | 23.47 | 73.46 | 53.97 | 7.64 |
Chatra | 24.69 | 64.61 | 46.55 | 8.18 |
Deoghar | 30.85 | 68.79 | 43.45 | 7.93 |
East Singhbhum | 0.01 | 58.19 | 39.39 | 7.02 |
Giridih | 19.24 | 41.47 | 29.97 | 5.03 |
Ramgarh | 20.77 | 45.10 | 28.54 | 5.67 |
Hazaribagh | 19.20 | 53.69 | 28.31 | 7.53 |
Dhanbad | 10.95 | 47.50 | 23.56 | 8.76 |
Bokaro | 10.39 | 29.64 | 23.19 | 2.53 |
Koderma | 16.37 | 27.32 | 19.55 | 1.97 |
Table 2
District-wise statistics of land potentiality for agroforestry in Jharkhand State."
District | Poverty rate (%) | Area (km2) | Land potentiality for agroforestry (%) | |||
---|---|---|---|---|---|---|
Minimum | Maximum | Mean | Standard deviation | |||
Godda | 48.56 | 2232.38 | 46.53 | 79.55 | 63.43 | 4.16 |
Gumla | 36.41 | 5220.18 | 8.48 | 81.06 | 55.88 | 9.31 |
Hazaribagh | 32.65 | 4783.22 | 12.93 | 51.38 | 25.52 | 7.60 |
Dumka | 46.52 | 3754.17 | 40.06 | 84.62 | 68.84 | 8.35 |
Koderma | 32.91 | 1314.38 | 12.02 | 37.99 | 22.10 | 5.84 |
Latehar | 47.99 | 4358.95 | 2.83 | 78.59 | 53.12 | 10.15 |
Lohardaga | 39.00 | 1491.91 | 26.93 | 66.43 | 46.35 | 5.80 |
Pakur | 44.01 | 1805.13 | 55.11 | 81.76 | 76.52 | 4.07 |
East Singhbhum | 26.60 | 3560.22 | 32.47 | 68.67 | 56.18 | 3.53 |
Ranchi | 27.62 | 6551.50 | 24.74 | 64.37 | 42.70 | 7.73 |
Sahibganj | 42.69 | 2190.06 | 41.07 | 76.42 | 64.63 | 5.02 |
West Singhbhum | 43.63 | 7263.84 | 42.57 | 100.00 | 72.70 | 8.34 |
Bokaro | 29.47 | 2852.60 | 19.05 | 45.95 | 35.48 | 3.99 |
Chatra | 46.20 | 3742.72 | 16.28 | 62.82 | 38.76 | 9.05 |
Deoghar | 36.78 | 2427.34 | 32.68 | 65.51 | 45.69 | 6.17 |
Dhanbad | 26.76 | 2074.03 | 28.06 | 55.29 | 37.50 | 6.06 |
Garhwa | 53.93 | 4070.38 | 16.73 | 69.52 | 50.83 | 4.70 |
Giridih | 39.96 | 4976.93 | 19.31 | 46.99 | 31.25 | 4.81 |
Palamu | 49.24 | 4337.29 | 37.20 | 68.69 | 49.05 | 4.31 |
Ramgarh | 25.33 | 1352.23 | 24.33 | 45.11 | 33.14 | 3.59 |
Jamtara | 41.26 | 1797.41 | 36.35 | 72.26 | 57.70 | 9.13 |
Saraikela-Kharsawan | 33.60 | 2579.22 | 38.84 | 66.98 | 57.28 | 4.44 |
Khunti | 35.75 | 1071.87 | 47.73 | 77.74 | 58.40 | 6.38 |
Simdega | 38.26 | 3908.04 | 48.55 | 94.21 | 78.20 | 5.73 |
Fig. 13.
Proportion of wasteland to total land of each district in Jharkhand State. Note that the proportion values of wasteland of the newly created Ramgarh and Kunti districts were merged into the Hazaribagh and Ranchi districts, respectively, as these two new districts were parts of Hazaribagh and Ranchi districts before 2008."
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