2022
DOI: 10.3390/rs14041023
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Prediction of Soil Water Content and Electrical Conductivity Using Random Forest Methods with UAV Multispectral and Ground-Coupled Geophysical Data

Abstract: The volumetric water content (VWC) of soil is a critical parameter in agriculture, as VWC strongly influences crop yield, provides nutrients to plants, and maintains the microbes that are needed for the biological health of the soil. Measuring VWC is difficult, as it is spatially and temporally heterogeneous, and most agricultural producers use point measurements that cannot fully capture this parameter. Electrical conductivity (EC) is another soil parameter that is useful in agriculture, since it can be used … Show more

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Cited by 31 publications
(22 citation statements)
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References 75 publications
(128 reference statements)
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“…The use of machine learning algorithms, such as the random forest (RF), support vector machines (SVM), and multiple linear regression, has have been proven to be instrumental in characterizing crop characteristics 33 . RF has proven to be a valuable regression model and is known for its efficiency in handling outliers, its ability to account for non-linear relationships between multiple variables, and its capacity to produce credible results, even with a small dataset, as was the case in this study 34 , 35 . The RF algorithm has high computational efficiency in processing non-parametric and high dimensional data while being sensitive to overfitting 35…”
Section: Introductionmentioning
confidence: 83%
See 1 more Smart Citation
“…The use of machine learning algorithms, such as the random forest (RF), support vector machines (SVM), and multiple linear regression, has have been proven to be instrumental in characterizing crop characteristics 33 . RF has proven to be a valuable regression model and is known for its efficiency in handling outliers, its ability to account for non-linear relationships between multiple variables, and its capacity to produce credible results, even with a small dataset, as was the case in this study 34 , 35 . The RF algorithm has high computational efficiency in processing non-parametric and high dimensional data while being sensitive to overfitting 35…”
Section: Introductionmentioning
confidence: 83%
“…33 RF has proven to be a valuable regression model and is known for its efficiency in handling outliers, its ability to account for non-linear relationships between multiple variables, and its capacity to produce credible results, even with a small dataset, as was the case in this study. 34,35 The RF algorithm has high computational efficiency in processing non-parametric and high dimensional data while being sensitive to overfitting. [35][36][37] The success of the RF regression model has been well-documented in recent literature.…”
Section: Introductionmentioning
confidence: 99%
“…The vegetation index GNDVI is considered as effective in phenotyping soybean plants in various studies [13][14][15][16]. The blue spectral channel (wavelength 475 nm) also plays an important role in agricultural research [17][18][19][20]. The obtained data contribute to the study of latent characteristics of the varieties under consideration and accelerate the process of breeding new soybean varieties.…”
Section: Discussionmentioning
confidence: 99%
“…RF is a bagging improvement that enhances variable selection 44 , Instead of selecting the optimal split among all characteristics at each node, RF randomly picks a subset of features to decide the www.nature.com/scientificreports/ split, this makes RF more resilient to noise and less prone to overfitting. In addition, RF can handle outliers very well 45 . The number of trees and predictor variables that the random forest model allows the decision tree to grow as large as it can without being trimmed is its critical factor.…”
Section: Sample Collection and Surveymentioning
confidence: 99%