E-Agriculture Planning Tool for Supporting Smallholder Cocoa Intensification Using Remotely Sensed Data

Author:

Singh Kanika1,Fuentes Ignacio2ORCID,Al-Shammari Dhahi1,Fidelis Chris3,Butubu James3,Yinil David3,Sharififar Amin4ORCID,Minasny Budiman1ORCID,Guest David I1ORCID,Field Damien J1ORCID

Affiliation:

1. Sydney Institute of Agriculture, School of Life and Environmental Sciences, The University of Sydney, Sydney, NSW 2015, Australia

2. Facultad de Ciencias Físicas y Matemáticas, Universidad de Chile, Santiago 8330111, Chile

3. Cocoa Board of Papua New Guinea, Head Office, Kokopo P.O. Box 532, Papua New Guinea

4. The James Hutton Institute, Craigiebuckler, Aberdeen AB15 8QH, UK

Abstract

Remote sensing approaches are often used to monitor land cover change. However, the small physical size (about 1–2 hectare area) of smallholder orchards and the cultivation of cocoa (Theobroma cocoa L.) under shade trees make the use of many popular satellite sensors inefficient to distinguish cocoa orchards from forest areas. Nevertheless, high-resolution satellite imagery combined with novel signal extraction methods facilitates the differentiation of coconut palms (Cocos nucifera L.) from forests. Cocoa grows well under established coconut shade, and underplanting provides a viable opportunity to intensify production and meet demand and government targets. In this study, we combined grey-level co-occurrence matrix (GLCM) textural features and vegetation indices from Sentinel datasets to evaluate the sustainability of cocoa expansion given land suitability for agriculture and soil capability classes. Additionally, it sheds light on underexploited areas with agricultural potential. The mapping of areas where cocoa smallholder orchards already exist or can be grown involved three main components. Firstly, the use of the fine-resolution C-band synthetic aperture radar and multispectral instruments from Sentinel-1 and Sentinel-2 satellites, respectively. Secondly, the processing of imagery (Sentinel-1 and Sentinel-2) for feature extraction using 22 variables. Lastly, fitting a random forest (RF) model to detect and distinguish potential cocoa orchards from non-cocoa areas. The RF classification scheme differentiated cocoa (for consistency, the coconut–cocoa areas in this manuscript will be referred to as cocoa regions or orchards) and non-cocoa regions with 97 percent overall accuracy and over 90 percent producer’s and user’s accuracies for the cocoa regions when trained on a combination of spectral indices and GLCM textural feature sets. The top five variables that contributed the most to the model were the red band (B4), red edge curve index (RECI), blue band (B2), near-infrared (NIR) entropy, and enhanced vegetation index (EVI), indicating the importance of vegetation indices and entropy values. By comparing the classified map created in this study with the soil and land capability legacy information of Bougainville, we observed that potential cocoa regions are already rated as highly suitable. This implies that cocoa expansion has reached one of many intersecting limits, including land suitability, political, social, economic, educational, health, labour, and infrastructure. Understanding how these interactions limit cocoa productivity at present will inform further sustainable growth. The tool provides inexpensive and rapid monitoring of land use, suitable for a sustainable planning framework that supports responsible agricultural land use management. The study developed a heuristic tool for monitoring land cover changes for cocoa production, informing sustainable development that balances the needs and aspirations of the government and farming communities with the protection of the environment.

Funder

Australian Centre for International Agricultural Research

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

Reference78 articles.

1. (2021, October 19). Department of Agriculture and Livestock Papua New Guinea (DAL), Available online: https://www.agriculture.gov.pg/cocoa/.

2. Guest, D.I., Butubu, J., van Ogtrop, F., Hall, J., Vinning, G., and Walton, M. (2023). Poverty, education and family health limit disease management and yields on smallholder cocoa farms in Bougainville. CABI One Health.

3. Does intensification slow crop land expansion or encourage deforestation?;Byerlee;Glob. Food Secur.,2014

4. Vermote, E.F., Skakun, S., Becker-Reshef, I., and Saito, K. (2020). Remote sensing of coconut trees in tonga using very high spatial resolution worldview-3 data. Remote Sens., 12.

5. Asubonteng, K.O. (2007). Identification of Land Use-Cover Transfer Hotspots in Ejisu-Juabeng District, Ghana. [Master’s Thesis, Kwame Nkrumah University of Science and Technology].

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