2021
DOI: 10.1111/ejss.13123
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Spatiotemporal modelling of soil moisture in an Atlantic forest through machine learning algorithms

Abstract: Understanding the spatiotemporal behaviour of soil moisture in tropical forests is fundamental because it mediates processes such as infiltration, groundwater recharge, runoff and evapotranspiration. This study aims to model the spatiotemporal dynamics of soil moisture in an Atlantic forest remnant (AFR) through four machine learning algorithms, as these dynamics represent an important knowledge gap under tropical conditions. Random forest (RF), support vector machine, average neural network and weighted k‐nea… Show more

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Cited by 22 publications
(7 citation statements)
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“…K‐nearest neighbors (KNN) is a non‐parametric method that finds the k number of nearest neighbors from a reference dataset of input attributes (de Oliveira et al., 2021). The reason for selecting KNN is that it has proved easy to implement, is simple, efficient, and can be used for classification and regression problems (Yamaç et al., 2020).…”
Section: Methodsmentioning
confidence: 99%
“…K‐nearest neighbors (KNN) is a non‐parametric method that finds the k number of nearest neighbors from a reference dataset of input attributes (de Oliveira et al., 2021). The reason for selecting KNN is that it has proved easy to implement, is simple, efficient, and can be used for classification and regression problems (Yamaç et al., 2020).…”
Section: Methodsmentioning
confidence: 99%
“…Numerous simple processing units are linked to create a network where the connections are weighted based on a specific architecture. The learning process is performed by adjusting the connection weights regarding the data introduced to the network for training (Bishop, 1995;de Oliveira et al, 2021). The neurons may be connected to each other according to a variety of configurations.…”
Section: Nomentioning
confidence: 99%
“…A number of recently conducted researches using the ANN approach include the calculation of the thermal conductivities of fine‐textured soils, spatiotemporal modelling of soil moisture, predicting the principal strong ground motion parameters and estimating soil organic carbon (de Oliveira et al, 2021; Derakhshani & Foruzan, 2019; Hong et al, 2022; Wen et al, 2020). Mapping soil iron parameters, digital soil mapping, semantic segmentation of soil salinity and soil particle size prediction are a few examples of new studies accomplished via application of the SVM method (Akca & Gungor, 2022; Gozukara et al, 2022;Taghizadeh‐Mehrjardi et al, 2020; Xu et al, 2022).…”
Section: Introductionmentioning
confidence: 99%
“…Consequently, it is important to achieve high-resolution spring SM predictions based on multisource data. Currently, many studies used machine learning and deep learning algorithms to combine multi-source data for downscaling available SM data in order to obtain more refined SM data (Abbaszadeh et al, 2019;de Oliveira et al, 2021;Qu et al, 2019;Xu et al, 2022;Zhu et al, 2021). For example, Park et al (2015) descaled the AMSR2 SM to 1 km using MODIS products, precipitation, and elevation data based on statistical ordinary least squares and RF algorithms.…”
Section: Introductionmentioning
confidence: 99%