Mapping Crop Cycles in China Using MODIS-EVI Time Series
Abstract
:1. Introduction
2. Study Area and Materials
2.1. Description of the Study Area
2.2. MODIS Data
3. Methods
3.1. Preprocessing of MODIS Surface Reflectance Data
3.2. Time-Series Smoothing of MODIS EVI Data
3.3. Identifying Phenological Cycles Based on Smoothed MODIS EVI Time Series
3.4. Mapping Agricultural Intensity by Incorporating Ancillary MODIS Data
3.5. Accuracy Assessment
4. Results
5. Discussion
5.1. Factors That Influence the Mapping Accuracy
5.2. Potential Refinements
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Appendix Sample Points for Accuracy Assessment
Province | Arable Land (kha) | Gross Sown Area (kha) | Cropping Indexb (100%) |
---|---|---|---|
Beijing | 343.9 | 318.0 | 92.5% |
Tianjin | 485.6 | 499.4 | 102.8% |
Hebei | 6883.3 | 8785.5 | 127.6% |
Shanxi | 4588.6 | 3795.4 | 82.7% |
Inner Mongolia | 8201.0 | 6215.7 | 75.8% |
Liaoning | 4174.8 | 3796.7 | 90.9% |
Jilin | 5578.4 | 4954.1 | 88.8% |
Heilongjiang | 11,773.0 | 10,083.7 | 85.7% |
Shanghai | 315.1 | 403.6 | 128.1% |
Jiangsu | 5061.7 | 7641.2 | 151.0% |
Zhejiang | 2125.3 | 2837.9 | 133.5% |
Anhui | 5971.7 | 9172.5 | 153.6% |
Fujian | 1434.7 | 2481.3 | 172.9% |
Jiangxi | 2993.4 | 5251.4 | 175.4% |
Shandong | 7689.3 | 10,736.1 | 139.6% |
Henan | 8110.3 | 13,922.7 | 171.7% |
Hubei | 4949.5 | 7279.4 | 147.1% |
Hunan | 3953.0 | 7977.6 | 201.8% |
Guangdong | 3272.2 | 4815.4 | 147.2% |
Guangxi | 4407.9 | 6489.2 | 147.2% |
Hainan | 762.1 | 778.1 | 102.1% |
Chongqing | 2067.6 | 3487.7 | 168.7% |
Sichuan | 9169.1 | 9480.2 | 103.4% |
Guizhou | 4903.5 | 4804.1 | 98.0% |
Yunnan | 6421.6 | 6053.8 | 94.3% |
Tibet | 362.6 | 235.0 | 64.8% |
Shaanxi | 5140.5 | 4201.8 | 81.7% |
Gansu | 5024.7 | 3726.0 | 74.2% |
Qinghai | 688.0 | 476.7 | 69.3% |
Ningxia | 1268.8 | 1099.3 | 86.6% |
Xinjiang | 3985.7 | 3731.2 | 93.6% |
Year | R2 | RMSE (1000 kha) | ME (1000 kha) |
---|---|---|---|
2006 | 0.921 | 1.17 | 0.47 |
2007 | 0.890 | 1.39 | 0.60 |
2008 | 0.899 | 1.38 | 0.59 |
2009 | 0.859 | 1.48 | 0.38 |
2010 | 0.897 | 1.24 | 0.29 |
2011 | 0.886 | 1.31 | 0.31 |
Land Use Classes | Visual Interpretation of MODIS EVI Time Series | User’s Accuracy | |||
---|---|---|---|---|---|
Non-Cropping | Single-Cropping | Double-Cropping | Triple-Cropping | ||
non-cropping | 0 | 0 | 0 | 0 | |
single-cropping | 1 | 1392 | 100 | 7 | 92.8% |
double-cropping | 0 | 101 | 1359 | 40 | 90.6% |
triple-cropping | 0 | 35 | 120 | 1345 | 89.7% |
Producer’s accuracy | 91.1% | 86.1% | 96.6% | ||
overall accuracy = 91.0% |
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Li, L.; Friedl, M.A.; Xin, Q.; Gray, J.; Pan, Y.; Frolking, S. Mapping Crop Cycles in China Using MODIS-EVI Time Series. Remote Sens. 2014, 6, 2473-2493. https://doi.org/10.3390/rs6032473
Li L, Friedl MA, Xin Q, Gray J, Pan Y, Frolking S. Mapping Crop Cycles in China Using MODIS-EVI Time Series. Remote Sensing. 2014; 6(3):2473-2493. https://doi.org/10.3390/rs6032473
Chicago/Turabian StyleLi, Le, Mark A. Friedl, Qinchuan Xin, Josh Gray, Yaozhong Pan, and Steve Frolking. 2014. "Mapping Crop Cycles in China Using MODIS-EVI Time Series" Remote Sensing 6, no. 3: 2473-2493. https://doi.org/10.3390/rs6032473
APA StyleLi, L., Friedl, M. A., Xin, Q., Gray, J., Pan, Y., & Frolking, S. (2014). Mapping Crop Cycles in China Using MODIS-EVI Time Series. Remote Sensing, 6(3), 2473-2493. https://doi.org/10.3390/rs6032473