Towards Predictive Modeling of Sorghum Biomass Yields Using Fraction of Absorbed Photosynthetically Active Radiation Derived from Sentinel-2 Satellite Imagery and Supervised Machine Learning Techniques
Abstract
:1. Introduction
2. Materials and Methods
2.1. Trial Set-Up
2.2. Biomass Data Collection
2.3. Satellite Data Acquisition
2.4. Modeling Total Aboveground Biomass Yields
3. Results
3.1. fAPAR Index Pattern Across Sorghum Types
3.2. Assessment and Validation of the Predictive Models, and Importance of Regressors in Total Biomass Prediction
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Acknowledgments
Conflicts of Interest
References
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Serial Number | Field/Pilot Name | Variety Name | Variety Type | Area (ha) | Dry Biomass Yield (t ha−1) | Cropping Season | Location Name |
---|---|---|---|---|---|---|---|
1 | Botte 1 | Harmattan | Dual purpose | 9.00 | 14.13 | 2018 | Conselice |
2 | Saracca 5 | Harmattan | Dual purpose | 6.50 | 10.52 | 2018 | Conselice |
3 | V. serrata | Harmattan | Dual purpose | 44.87 | 9.69 | 2018 | Conselice |
4 | Magnana | P845F | Forage | 32.05 | 11.43 | 2018 | Conselice |
5 | Cà bianca | P845F | Forage | 3.72 | 11.11 | 2018 | Conselice |
6 | Gamberina 3 | Aralba | Dual purpose | 7.86 | 9.67 | 2018 | Conselice |
7 | Sagrate | Harmattan | Dual purpose | 50.00 | 8.90 | 2017 | Conselice |
8 | Prato_Mensa | Harmattan | Dual purpose | 3.29 | 19.10 | 2017 | Conselice |
9 | Comuna | P845F | Forage | 27.86 | 24.50 | 2017 | Conselice |
10 | Gamberina_1 | Aralba | Dual purpose | 7.60 | 12.80 | 2017 | Conselice |
11 | Botte | Harmattan | Dual purpose | 5.33 | 23.50 | 2017 | Conselice |
12 | Carafolo_G | Bulldozer | Biomass | 2.00 | 17.10 | 2017 | Nonantola |
13 | Cavriani_S | Merlin | Biomass | 2.00 | 19.50 | 2017 | Nonantola |
14 | Ferrari_R | Bulldozer | Biomass | 1.00 | 3.40 | 2017 | Nonantola |
15 | Mattioli_R | Bulldozer | Biomass | 1.00 | 4.90 | 2017 | Nonantola |
16 | Serafini_G | Bulldozer | Biomass | 2.00 | 15.30 | 2017 | Nonantola |
17 | Zavatti_E | Bulldozer | Biomass | 0.89 | 7.60 | 2017 | Mirandola |
18 | Grandi_Magonza | Bulldozer | Biomass | 0.80 | 12.80 | 2017 | Mirandola |
19 | Grandi_Ponte | Bulldozer | Biomass | 1.20 | 9.50 | 2017 | Mirandola |
20 | Zini_L | Palo Alto | Biomass | 2.50 | 8.00 | 2017 | Mirandola |
21 | Villa_verdetta | Bulldozer | Biomass | 1.00 | 6.25 | 2018 | Mirandola |
22 | Cama_grande | Bulldozer | Biomass | 4.40 | 14.94 | 2018 | Mirandola |
23 | Cama_piccolo | Bulldozer | Biomass | 4.00 | 15.35 | 2018 | Mirandola |
24 | Golinelli_Raimondo | Bulldozer | Biomass | 2.02 | 10.48 | 2018 | Mirandola |
25 | Barozzi_Lidia | Bulldozer | Biomass | 3.00 | 7.19 | 2018 | Mirandola |
26 | Molon_A | Palo Alto | Biomass | 5.00 | 8.30 | 2017 | Mirandola |
27 | T1_Anzola | Sole | Biomass | 0.74 | 13.00 | 2017 | Anzola |
28 | T2_Anzola | Trudan | Forage | 0.71 | 19.00 | 2017 | Anzola |
29 | T3_Anzola | Hannibal | Sweet | 0.71 | 17.00 | 2017 | Anzola |
30 | T4_Anzola | Harmattan | Dual purpose | 0.70 | 14.00 | 2017 | Anzola |
31 | T1_Anzola | Bulldozer | Biomass | 0.74 | 17.00 | 2018 | Anzola |
32 | T2_Anzola | Hannibal | Sweet | 0.71 | 19.00 | 2018 | Anzola |
33 | T3_Anzola | Tarzan | Biomass | 0.71 | 21.00 | 2018 | Anzola |
34 | T4_Anzola | Trudan | Forage | 0.70 | 13.00 | 2018 | Anzola |
35 | T5_Anzola | Harmattan | Dual purpose | 0.70 | 15.00 | 2018 | Anzola |
36 | 15R17 | Perennial | Biomass | 0.06 | 2.39 | 2017 | Anzola |
37 | 16R17 | Perennial | Biomass | 0.15 | 8.27 | 2017 | Anzola |
38 | 17IT_mat | Bicolor | Biomass | 0.17 | 18.30 | 2017 | Anzola |
39 | 17US_mat | Bicolor | Biomass | 0.15 | 21.00 | 2017 | Anzola |
40 | 16R18 | Perennial | Biomass | 0.15 | 14.35 | 2018 | Anzola |
41 | 15R18 | Perennial | Biomass | 0.06 | 10.73 | 2018 | Anzola |
42 | 17R18 | Perennial | Biomass | 0.15 | 17.47 | 2018 | Anzola |
(1) Model | (2) Accuracy | (3) May_MAE.T t ha−1 | May_MAE.V | |||||||
---|---|---|---|---|---|---|---|---|---|---|
May | June | July | May–June | June–July | May–July | Mean | t ha−1 | % | ||
PLS-DA | 0.77 | 0.49 | −0.02 | 0.69 | 0.32 | 0.56 | 0.47 ab | 5.01 bcd | 3.62 | 26.81 |
PCA-DA | 0.76 | 0.49 | −0.13 | 0.67 | 0.29 | 0.52 | 0.43 ab | 5.00 bcd | 2.91 | 21.56 |
RF | 0.82 | 0.39 | 0.64 | 0.68 | 0.53 | 0.74 | 0.63 a | 5.05 bcd | 2.27 | 16.81 |
SVML | 0.80 | 0.49 | 0.58 | 0.67 | 0.59 | 0.70 | 0.64 a | 4.82 cd | 3.74 | 27.70 |
SVML-G | 0.80 | 0.49 | 0.58 | 0.66 | 0.61 | 0.72 | 0.64 a | 4.84 cd | 3.74 | 27.70 |
SVM-R | 0.88 | −0.36 | 0.51 | 0.02 | −0.15 | 0.08 | 0.16 b | 4.95 bcd | 1.87 | 13.85 |
SVM-P | 0.81 | 0.49 | 0.09 | 0.63 | 0.42 | 0.53 | 0.50 a | 4.64 d | 6.22 | 46.07 |
NNET | 0.78 | 0.56 | 0.16 | 0.75 | 0.38 | 0.70 | 0.56 a | 11.99 a | 12.50 | 92.59 |
GBT | 0.78 | 0.56 | 0.69 | 0.58 | 0.81 | 0.57 | 0.66 a | 5.29 bc | 2.68 | 19.85 |
GBD | 0.84 | 0.37 | −0.01 | 0.76 | 0.48 | 0.51 | 0.49 a | 4.80 d | 2.18 | 16.15 |
GBL | 0.45 | 0.11 | 0.89 | 0.93 | 0.03 | 0.43 | 0.47 ab | 5.43 b | 3.40 | 25.19 |
LM | 0.78 | 0.50 | 0.56 | 0.73 | 0.46 | 0.65 | 0.61 ab | 4.88 cd | 4.53 | 33.56 |
NLNET | 0.79 | 0.09 | 0.33 | 0.79 | 0.01 | 0.79 | 0.47 ab | 5.36 b | 2.34 | 17.33 |
MEAN | 0.77a | 0.36b | 0.37b | 0.66a | 0.37b | 0.58ab | 0.52 | 5.54 | 4.00 | 29.63 |
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Habyarimana, E.; Piccard, I.; Catellani, M.; De Franceschi, P.; Dall’Agata, M. Towards Predictive Modeling of Sorghum Biomass Yields Using Fraction of Absorbed Photosynthetically Active Radiation Derived from Sentinel-2 Satellite Imagery and Supervised Machine Learning Techniques. Agronomy 2019, 9, 203. https://doi.org/10.3390/agronomy9040203
Habyarimana E, Piccard I, Catellani M, De Franceschi P, Dall’Agata M. Towards Predictive Modeling of Sorghum Biomass Yields Using Fraction of Absorbed Photosynthetically Active Radiation Derived from Sentinel-2 Satellite Imagery and Supervised Machine Learning Techniques. Agronomy. 2019; 9(4):203. https://doi.org/10.3390/agronomy9040203
Chicago/Turabian StyleHabyarimana, Ephrem, Isabelle Piccard, Marcello Catellani, Paolo De Franceschi, and Michela Dall’Agata. 2019. "Towards Predictive Modeling of Sorghum Biomass Yields Using Fraction of Absorbed Photosynthetically Active Radiation Derived from Sentinel-2 Satellite Imagery and Supervised Machine Learning Techniques" Agronomy 9, no. 4: 203. https://doi.org/10.3390/agronomy9040203