| Literature DB >> 25258742 |
Shanyou Zhu1, Hailong Zhang1, Ronggao Liu2, Yun Cao1, Guixin Zhang1.
Abstract
Sampling designs are commonly used to estimate deforestation over large areas, but comparisons between different sampling strategies are required. Using PRODES deforestation data as a reference, deforestation in the state of Mato Grosso in Brazil from 2005 to 2006 is evaluated using Landsat imagery and a nearly synchronous MODIS dataset. The MODIS-derived deforestation is used to assist in sampling and extrapolation. Three sampling designs are compared according to the estimated deforestation of the entire study area based on simple extrapolation and linear regression models. The results show that stratified sampling for strata construction and sample allocation using the MODIS-derived deforestation hotspots provided more precise estimations than simple random and systematic sampling. Moreover, the relationship between the MODIS-derived and TM-derived deforestation provides a precise estimate of the total deforestation area as well as the distribution of deforestation in each block.Entities:
Mesh:
Year: 2014 PMID: 25258742 PMCID: PMC4165741 DOI: 10.1155/2014/919456
Source DB: PubMed Journal: ScientificWorldJournal ISSN: 1537-744X
Figure 1The study area of Mato Grosso (MT) in Brazil.
Figure 2Research methodology flowchart.
Figure 3A comparison of the deforestation detected from the TM imagery (green areas) and the PRODES deforestation data (red polygons).
Figure 4A comparison of the deforestation detected from the MODIS data (red areas) and the PRODES deforestation data (green polygons).
Figure 5Plot of MODIS-derived versus TM-derived deforestation per sample block.
Figure 6The variation of deforestation estimation error with the number of sample blocks.
Deforestation error ε (%) estimated based on random sampling.
| Sampling blocks | Random sampling region | |||
|---|---|---|---|---|
| Study area | >0.1%∗ | >0.5%∗ | >1%∗ | |
| 100 | 29.43 | 7.28 | 9.35 | 31.17 |
| 350 | 13.52 | 4.76 | 24.12 | 29.33 |
| 500 | 4.40 | 8.13 | 26.84 | 34.10 |
*The proportion means the MODIS-derived deforestation proportion in each block.
Deforestation error ε (%) estimated from two methods of stratified sampling.
| Sampling blocks | Proportional allocation | Neyman optimal allocation |
|---|---|---|
| 100 | 14.30 | 8.34 |
| 350 | 4.14 | 3.74 |
| 500 | 4.04 | 3.62 |
Deforestation error ε (%) estimated from systematic sampling.
| Strata | One degree interval | 0.5 degree interval | 0.42 degree interval | |||
|---|---|---|---|---|---|---|
| Blocks in strata (%)# | Relative error (%) | Blocks in strata (%)# | Relative error (%) | Blocks in strata (%)# | Relative error (%) | |
| 0-1% | 68 (82) | 15.02 | 284 (80) | 5.56 | 405 (80) | 7.21 |
| 1%–5% | 10 (12) | 55 (15.5) | 86 (17) | |||
| 5%–8% | 2 (2.4) | 10 (2.8) | 12 (2.3) | |||
| >8% | 3 (3.6) | 6 (1.7) | 4 (0.7) | |||
| Total |
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#The number in the parentheses is the proportion of the sample blocks in each stratum.
Comparison of the relative error ε (%) extrapolated from two methods.
| Sampling blocks# | Random sampling | Stratified proportional allocation | Stratified Neyman optimal allocation | Systematic sampling | ||||
|---|---|---|---|---|---|---|---|---|
| E1∗ | E2∗ | E1 | E2 | E1 | E2 | E1 | E2 | |
| 100 (83) | 29.43 | 16.51 | 14.30 | 9.32 | 8.34 | 4.15 | 15.02 | 12.14 |
| 350 (355) | 13.52 | 12.72 | 4.14 | 6.12 | 3.74 | 3.36 | 5.56 | 6.06 |
| 500 (507) | 4.40 | 3.63 | 4.04 | 5.16 | 3.62 | 2.82 | 7.21 | 10.12 |
#The number in the parentheses is the number of sampling blocks used for the systematic sampling.
∗E1 means the simple extrapolation from (5), and E2 is the regression extrapolation from (6) based on the relationship between the MODIS-derived and TM-derived deforestation.