Potato Yield Prediction Using Machine Learning Techniques and Sentinel 2 Data
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Materials
2.3. Methods
2.3.1. Data Preparation
2.3.2. Model Building
2.3.3. Crop Yield Prediction One Month Prior to Harvest
3. Results
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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No | Model | RMSE | R2 | MAE | Best Tuning Par. |
---|---|---|---|---|---|
1 | rqlasso_2 | 7.374 | 0.84 | 6.562 | lambda = 0.0001 |
2 | LeapBack_3 | 8.239 | 0.89 | 6.489 | nvmax = 2 |
3 | LeapBack_2 | 8.278 | 0.84 | 6.617 | nvmax = 2 |
4 | svmRadial_3 | 8.949 | 0.85 | 7.263 | Sigma = 0.0574157 and C = 1 |
5 | rqlasso_1 | 9.019 | 0.78 | 7.740 | lambda = 0.1 |
6 | rqlasso_4 | 9.046 | 0.85 | 7.409 | lambda = 0.1 |
7 | LeapBack_4 | 9.050 | 0.85 | 7.402 | nvmax = 2 |
8 | rqlasso_3 | 9.086 | 0.81 | 7.416 | lambda = 0.1 |
9 | cubist_Ensemble | 9.168 | 0.38 | 6.550 | - |
10 | glm_1 | 9.228 | 0.77 | 7.786 | - |
11 | rf_3 | 9.234 | 0.84 | 7.386 | Mtry = 6 |
12 | svmLinear_4 | 9.577 | 0.76 | 7.967 | C = 1 |
13 | svmLinear_2 | 9.618 | 0.73 | 7.539 | C = 1 |
14 | rf_2 | 9.643 | 0.80 | 7.366 | Mtry = 6 |
15 | glm_3 | 9.753 | 0.82 | 7.922 | - |
16 | svmLinear_3 | 9.761 | 0.87 | 7.423 | C = 1 |
17 | rf_1 | 9.787 | 0.80 | 8.201 | Mtry = 6 |
18 | mars_1 | 9.813 | 0.77 | 7.824 | nprune = 2 and degree = 1 |
19 | kknn_4 | 9.933 | 0.75 | 8.658 | kmax = 9, distance = 2 and kernel = optimal |
20 | svmRadial_2 | 9.937 | 0.71 | 7.605 | Sigma = 0.0873 and C = 1 |
Feature Selection | Corr. < 0.5 | Corr. < 0.75 | Corr. < 0.90 | No Feature Selection | ||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Scenario | A | B | C | D | ||||||||
RMSE | R2 | MAE | RMSE | R2 | MAE | RMSE | R2 | MAE | RMSE | R2 | MAE | |
rqlasso_2 | 6.768 | 0.88 | 5.320 | 7.093 | 0.90 | 5.653 | 8.456 | 0.89 | 6.326 | 7.844 | 0.86 | 5.730 |
svmRadial_3 | 9.125 | 0.72 | 6.804 | 7.710 | 0.83 | 5.769 | 7.370 | 0.89 | 5.242 | 6.781 | 0.93 | 5.015 |
LeapBack_2 | 6.341 | 0.89 | 5.192 | 6.866 | 0.89 | 5.512 | 10.455 | 0.75 | 8.502 | 8.319 | 0.81 | 6.981 |
LeapBack_3 | 6.341 | 0.89 | 5.192 | 6.866 | 0.89 | 5.512 | 10.455 | 0.75 | 8.502 | 8.319 | 0.81 | 6.981 |
Average * | 7.411 | 0.83 | 5.772 | 7.223 | 0.87 | 5.645 | 8.760 | 0.84 | 6.690 | 7.648 | 0.87 | 5.909 |
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Gómez, D.; Salvador, P.; Sanz, J.; Casanova, J.L. Potato Yield Prediction Using Machine Learning Techniques and Sentinel 2 Data. Remote Sens. 2019, 11, 1745. https://doi.org/10.3390/rs11151745
Gómez D, Salvador P, Sanz J, Casanova JL. Potato Yield Prediction Using Machine Learning Techniques and Sentinel 2 Data. Remote Sensing. 2019; 11(15):1745. https://doi.org/10.3390/rs11151745
Chicago/Turabian StyleGómez, Diego, Pablo Salvador, Julia Sanz, and Jose Luis Casanova. 2019. "Potato Yield Prediction Using Machine Learning Techniques and Sentinel 2 Data" Remote Sensing 11, no. 15: 1745. https://doi.org/10.3390/rs11151745