Crop-livestock integration (CLI) systems combine the growing of crops in rotation or consortium, especially grain crops such as soybeans, corn and sorghum, and forage plants used to feed cattle and pigs, with the raising of livestock, typically beef cattle. The crops provide most of the cash income, while the livestock has food available during the dry season and facilitates seed management. CLI improves soil fertility, raises yields and helps rehabilitate degraded areas while reducing the use of pesticides, mitigating the risk of erosion and the seasonality of production, and lowering operating costs. It makes farming more sustainable: crops benefit livestock and vice-versa; the environmental impact of agricultural activity falls; and the carbon footprint is reduced.
Credit: Inácio Thomaz Bueno
Crop-livestock integration (CLI) systems combine the growing of crops in rotation or consortium, especially grain crops such as soybeans, corn and sorghum, and forage plants used to feed cattle and pigs, with the raising of livestock, typically beef cattle. The crops provide most of the cash income, while the livestock has food available during the dry season and facilitates seed management. CLI improves soil fertility, raises yields and helps rehabilitate degraded areas while reducing the use of pesticides, mitigating the risk of erosion and the seasonality of production, and lowering operating costs. It makes farming more sustainable: crops benefit livestock and vice-versa; the environmental impact of agricultural activity falls; and the carbon footprint is reduced.
In a study reported in the journal Remote Sensing of Environment, researchers affiliated with the Brazilian Agricultural Research Corporation (EMBRAPA) and the State University of Campinas (UNICAMP) developed a method based on artificial intelligence (AI) to identify CLI areas by analyzing satellite imagery. According to the authors of the article, this knowledge can benefit Brazilian agriculture in several ways.
The study was funded by FAPESP via three projects (2021/15001-9, 2018/24985-0 and 2017/50205-9), and by the Netherlands Organization for Scientific Research (NWO).
“The main aim of the project, which was an international collaboration to address issues relating to sustainable agriculture, was to promote the integration of remote sensing data with satellite images using AI, precision agriculture and biogeochemical models to understand and create models of the dynamics of this type of system,” said Inácio Thomaz Bueno, first author of the article. A forest engineer, Bueno conducted postdoctoral research on the monitoring of CLI systems using remote sensing data and satellite imagery with high spatio-temporal resolution.
“We also aimed to increase knowledge of CLI, given the many questions still open and the lack of effective methods for monitoring and development of its potential, as well as the need to identify areas in which it’s being practiced, in line with the UN’s Sustainable Development Goals [SDGs] relating to agriculture, the environment, and economic and social development,” he said.
The team used deep learning techniques to process satellite imagery time series and extract patterns pointing to areas where CLI was being practiced. Deep learning is a type of AI that uses neural networks with multiple layers to model and process complex patterns in data.
The study sites were areas in the states of São Paulo and Mato Grosso. Object-based image analysis was performed at intervals of 10 and 15 days in four steps: CLI data acquisition via Planetscope, a constellation of satellites that capture high-resolution images of Earth’s surface, showing changes in the areas over time; training of algorithms to recognize patterns associated with CLI; mapping of CLI areas; and assessment of the model’s accuracy by comparing automatic results with previous knowledge.
For Bueno, the promising results obtained by this method, which involved monitoring and mapping CLI areas via satellite images and analyzing their dynamics over time, can have various kinds of positive impacts on agriculture. “Precise identification of CLI areas permits more efficient resource management to optimize land allocation and use. In addition, diversification of activities offers farmers an additional source of income,” he said.
The detailed information derived from CLI mapping also provides a sound basis for decision-making by farmers, who can feel confident that their crop-livestock management and investment policies are grounded in science.
Another benefit of the approach is that it encourages sustainable agriculture. Recognition and mapping of CLI areas can support government policies and programs to promote sustainable practices, contributing to regularity of food supply and income via financial incentives and specific lines of credit that support the adoption of integrated systems.
About São Paulo Research Foundation (FAPESP)
The São Paulo Research Foundation (FAPESP) is a public institution with the mission of supporting scientific research in all fields of knowledge by awarding scholarships, fellowships and grants to investigators linked with higher education and research institutions in the State of São Paulo, Brazil. FAPESP is aware that the very best research can only be done by working with the best researchers internationally. Therefore, it has established partnerships with funding agencies, higher education, private companies, and research organizations in other countries known for the quality of their research and has been encouraging scientists funded by its grants to further develop their international collaboration. You can learn more about FAPESP at www.fapesp.br/en and visit FAPESP news agency at www.agencia.fapesp.br/en to keep updated with the latest scientific breakthroughs FAPESP helps achieve through its many programs, awards and research centers. You may also subscribe to FAPESP news agency at http://agencia.fapesp.br/subscribe.
Journal
Remote Sensing of Environment
DOI
10.1016/j.rse.2023.113886
Article Title
Mapping integrated crop-livestock systems in Brazil with planetscope time series and deep learning
Article Publication Date
3-Nov-2023