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Ensembles of multiple models for soil moisture retrieval from remote sensing data over agricultural areas: A deep learning-based framework

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Ensembles of multiple models for soil moisture retrieval from remote sensing data over agricultural areas: A deep learning-based framework. / Sedighi, A.; Hamzeh, S.; Alavipanah, S.K. et al.
In: Remote Sensing Applications: Society and Environment, Vol. 35, 101243, 31.08.2024.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Sedighi, A, Hamzeh, S, Alavipanah, SK, Naseri, AA & Atkinson, PM 2024, 'Ensembles of multiple models for soil moisture retrieval from remote sensing data over agricultural areas: A deep learning-based framework', Remote Sensing Applications: Society and Environment, vol. 35, 101243. https://doi.org/10.1016/j.rsase.2024.101243

APA

Sedighi, A., Hamzeh, S., Alavipanah, S. K., Naseri, A. A., & Atkinson, P. M. (2024). Ensembles of multiple models for soil moisture retrieval from remote sensing data over agricultural areas: A deep learning-based framework. Remote Sensing Applications: Society and Environment, 35, Article 101243. https://doi.org/10.1016/j.rsase.2024.101243

Vancouver

Sedighi A, Hamzeh S, Alavipanah SK, Naseri AA, Atkinson PM. Ensembles of multiple models for soil moisture retrieval from remote sensing data over agricultural areas: A deep learning-based framework. Remote Sensing Applications: Society and Environment. 2024 Aug 31;35:101243. Epub 2024 May 20. doi: 10.1016/j.rsase.2024.101243

Author

Sedighi, A. ; Hamzeh, S. ; Alavipanah, S.K. et al. / Ensembles of multiple models for soil moisture retrieval from remote sensing data over agricultural areas : A deep learning-based framework. In: Remote Sensing Applications: Society and Environment. 2024 ; Vol. 35.

Bibtex

@article{a267060bba9e4e71973dffea25b79558,
title = "Ensembles of multiple models for soil moisture retrieval from remote sensing data over agricultural areas: A deep learning-based framework",
abstract = "In agricultural areas, most surface soil moisture (SM) retrieval models are unstable in terms of their accuracy and performance during crop growth. As a result, there is no consensus on which model performs optimally during the agricultural season. This is because of the uncertainties associated with model physics, initial conditions, model inversion processes, input data, vegetation attenuation and soil characteristics. To better deal with these practical concerns, we propose a simple, but robust SM retrieval method of using combination of multiple models based on deep learning and multi-model ensemble approach, called the DL-MME method, which makes use of the {\textquoteleft}collective intelligence{\textquoteright} and {\textquoteleft}wisdom of crowds{\textquoteright} concepts. The advantages of this method are: (1) robustness to model selection, and (2) robustness to model calibration during the growing season. In addition, this method is less dependent on one type of data across various agricultural areas compared to the single model approach. Firstly, the coupled water cloud model (WCM) and soil backscattering models (Oh model or advanced integral equation model (AIEM)) with different vegetation descriptors were calibrated and validated during the growing season in sugarcane and winter wheat fields for Sentinel-1 backscattering coefficients (VV and VH). SM was also retrieved by employing the trapezoid model (OPTRAM) with different parameters from Sentinel-2 images. To optimize SM retrieval computations, we used the outputs from optical and SAR models, auxiliary features, and reliable in situ SM measurements as inputs to a deep learning convolutional neural network (DL-CNN). For sugarcane and wheat fields in the early stages of crop growth, WCM models retrieved more accurate time-series SM than optical models. OPTRAM soil moisture retrievals showed greater accuracy in the late crop growing season. Time-series SM retrieval accuracy using DL-MME was higher than for the optical and semi-empirical SAR models. According to the results of the in situ validation for wheat (sugarcane) fields, the minimum MAE by an optimal combination of models was around 0.01 (0.02) m3m−3 (RMSE = 0.036 (0.074) m3m−3; R = 0.87 (0.71)). The findings demonstrate that our method is reliable and feasible for SM retrieval. Additionally, our method provides a way to select an optimal model for retrieving time-series SM during the crop growing season.",
author = "A. Sedighi and S. Hamzeh and S.K. Alavipanah and A.A. Naseri and P.M. Atkinson",
year = "2024",
month = aug,
day = "31",
doi = "10.1016/j.rsase.2024.101243",
language = "English",
volume = "35",
journal = "Remote Sensing Applications: Society and Environment",

}

RIS

TY - JOUR

T1 - Ensembles of multiple models for soil moisture retrieval from remote sensing data over agricultural areas

T2 - A deep learning-based framework

AU - Sedighi, A.

AU - Hamzeh, S.

AU - Alavipanah, S.K.

AU - Naseri, A.A.

AU - Atkinson, P.M.

PY - 2024/8/31

Y1 - 2024/8/31

N2 - In agricultural areas, most surface soil moisture (SM) retrieval models are unstable in terms of their accuracy and performance during crop growth. As a result, there is no consensus on which model performs optimally during the agricultural season. This is because of the uncertainties associated with model physics, initial conditions, model inversion processes, input data, vegetation attenuation and soil characteristics. To better deal with these practical concerns, we propose a simple, but robust SM retrieval method of using combination of multiple models based on deep learning and multi-model ensemble approach, called the DL-MME method, which makes use of the ‘collective intelligence’ and ‘wisdom of crowds’ concepts. The advantages of this method are: (1) robustness to model selection, and (2) robustness to model calibration during the growing season. In addition, this method is less dependent on one type of data across various agricultural areas compared to the single model approach. Firstly, the coupled water cloud model (WCM) and soil backscattering models (Oh model or advanced integral equation model (AIEM)) with different vegetation descriptors were calibrated and validated during the growing season in sugarcane and winter wheat fields for Sentinel-1 backscattering coefficients (VV and VH). SM was also retrieved by employing the trapezoid model (OPTRAM) with different parameters from Sentinel-2 images. To optimize SM retrieval computations, we used the outputs from optical and SAR models, auxiliary features, and reliable in situ SM measurements as inputs to a deep learning convolutional neural network (DL-CNN). For sugarcane and wheat fields in the early stages of crop growth, WCM models retrieved more accurate time-series SM than optical models. OPTRAM soil moisture retrievals showed greater accuracy in the late crop growing season. Time-series SM retrieval accuracy using DL-MME was higher than for the optical and semi-empirical SAR models. According to the results of the in situ validation for wheat (sugarcane) fields, the minimum MAE by an optimal combination of models was around 0.01 (0.02) m3m−3 (RMSE = 0.036 (0.074) m3m−3; R = 0.87 (0.71)). The findings demonstrate that our method is reliable and feasible for SM retrieval. Additionally, our method provides a way to select an optimal model for retrieving time-series SM during the crop growing season.

AB - In agricultural areas, most surface soil moisture (SM) retrieval models are unstable in terms of their accuracy and performance during crop growth. As a result, there is no consensus on which model performs optimally during the agricultural season. This is because of the uncertainties associated with model physics, initial conditions, model inversion processes, input data, vegetation attenuation and soil characteristics. To better deal with these practical concerns, we propose a simple, but robust SM retrieval method of using combination of multiple models based on deep learning and multi-model ensemble approach, called the DL-MME method, which makes use of the ‘collective intelligence’ and ‘wisdom of crowds’ concepts. The advantages of this method are: (1) robustness to model selection, and (2) robustness to model calibration during the growing season. In addition, this method is less dependent on one type of data across various agricultural areas compared to the single model approach. Firstly, the coupled water cloud model (WCM) and soil backscattering models (Oh model or advanced integral equation model (AIEM)) with different vegetation descriptors were calibrated and validated during the growing season in sugarcane and winter wheat fields for Sentinel-1 backscattering coefficients (VV and VH). SM was also retrieved by employing the trapezoid model (OPTRAM) with different parameters from Sentinel-2 images. To optimize SM retrieval computations, we used the outputs from optical and SAR models, auxiliary features, and reliable in situ SM measurements as inputs to a deep learning convolutional neural network (DL-CNN). For sugarcane and wheat fields in the early stages of crop growth, WCM models retrieved more accurate time-series SM than optical models. OPTRAM soil moisture retrievals showed greater accuracy in the late crop growing season. Time-series SM retrieval accuracy using DL-MME was higher than for the optical and semi-empirical SAR models. According to the results of the in situ validation for wheat (sugarcane) fields, the minimum MAE by an optimal combination of models was around 0.01 (0.02) m3m−3 (RMSE = 0.036 (0.074) m3m−3; R = 0.87 (0.71)). The findings demonstrate that our method is reliable and feasible for SM retrieval. Additionally, our method provides a way to select an optimal model for retrieving time-series SM during the crop growing season.

U2 - 10.1016/j.rsase.2024.101243

DO - 10.1016/j.rsase.2024.101243

M3 - Journal article

VL - 35

JO - Remote Sensing Applications: Society and Environment

JF - Remote Sensing Applications: Society and Environment

M1 - 101243

ER -