Implementing Cloud Computing for the Digital Mapping of Agricultural Soil Properties from High Resolution UAV Multispectral Imagery

Author:

Pizarro Samuel12ORCID,Pricope Narcisa G.3ORCID,Figueroa Deyanira1ORCID,Carbajal Carlos4,Quispe Miriam5,Vera Jesús5,Alejandro Lidiana5,Achallma Lino5,Gonzalez Izamar5,Salazar Wilian6ORCID,Loayza Hildo78ORCID,Cruz Juancarlos4,Arbizu Carlos I.6ORCID

Affiliation:

1. Dirección de Desarrollo Tecnológico Agrario, Instituto Nacional de Innovación Agraria (INIA), Carretera Saños Grande-Hualahoyo Km 8 Santa Ana, Huancayo, Junin 12002, Peru

2. Facultad de Zootecnia, Andean Ecosystem Research Group, Universidad Nacional del Centro del Perú, Av. Mariscal Castilla 3089, Huancayo, Junin 12002, Peru

3. Department of Earth and Ocean Sciences, University of North Carolina Wilmington, 601 S College Rd., Wilmington, NC 28403, USA

4. Dirección de Supervisión y Monitoreo en las Estaciones Experimentales Agrarias, Instituto Nacional de Innovación Agraria (INIA), Av. La Molina 1981, Lima 15024, Peru

5. Dirección de Supervisión y Monitoreo en las Estaciones Experimentales Agrarias, Instituto Nacional de Innovación Agraria (INIA), Carretera Saños Grande-Hualahoyo Km 8 Santa Ana, Huancayo, Junin 12002, Peru

6. Dirección de Desarrollo Tecnológico Agrario, Instituto Nacional de Innovación Agraria (INIA), Av. La Molina 1981, Lima 15024, Peru

7. International Potato Center (CIP), Headquarters P.O. Box 1558, Lima 15024, Peru

8. Programa Académico de Ingeniería Ambiental, Facultad de Ingeniería, Universidad de Huánuco, Huánuco 10001, Peru

Abstract

The spatial heterogeneity of soil properties has a significant impact on crop growth, making it difficult to adopt site-specific crop management practices. Traditional laboratory-based analyses are costly, and data extrapolation for mapping soil properties using high-resolution imagery becomes a computationally expensive procedure, taking days or weeks to obtain accurate results using a desktop workstation. To overcome these challenges, cloud-based solutions such as Google Earth Engine (GEE) have been used to analyze complex data with machine learning algorithms. In this study, we explored the feasibility of designing and implementing a digital soil mapping approach in the GEE platform using high-resolution reflectance imagery derived from a thermal infrared and multispectral camera Altum (MicaSense, Seattle, WA, USA). We compared a suite of multispectral-derived soil and vegetation indices with in situ measurements of physical-chemical soil properties in agricultural lands in the Peruvian Mantaro Valley. The prediction ability of several machine learning algorithms (CART, XGBoost, and Random Forest) was evaluated using R2, to select the best predicted maps (R2 > 0.80), for ten soil properties, including Lime, Clay, Sand, N, P, K, OM, Al, EC, and pH, using multispectral imagery and derived products such as spectral indices and a digital surface model (DSM). Our results indicate that the predictions based on spectral indices, most notably, SRI, GNDWI, NDWI, and ExG, in combination with CART and RF algorithms are superior to those based on individual spectral bands. Additionally, the DSM improves the model prediction accuracy, especially for K and Al. We demonstrate that high-resolution multispectral imagery processed in the GEE platform has the potential to develop soil properties prediction models essential in establishing adaptive soil monitoring programs for agricultural regions.

Funder

the Ministry of Agrarian Development and Irrigation

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

Reference74 articles.

1. UAV Multispectral Survey to Map Soil and Crop for Precision Farming Applications;Sona;Int. Arch. Photogramm. Remote Sens. Spat. Inf. Sci.-ISPRS Arch.,2016

2. Porta, J., López, M., and Roquero, C. (2003). Edafología Para La Agricultura y El Medio Ambiente, Ediciones Mundi-Prensa.

3. Identifying Soil Properties That Influence Cotton Yield Using Soil Sampling Directed;Corwin;Agron. J.,2003

4. Mapping Plant Functional Types in Northwest Himalayan Foothills of India Using Random Forest Algorithm in Google Earth Engine;Srinet;Int. J. Remote Sens.,2020

5. Hyperspectral Remote Sensing: Opportunities, Status and Challenges for Rapid Soil Assessment in India;Das;Curr. Sci.,2015

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