Makara: A tool for cotton farmers to evaluate risk to income

IF 5.7 Q1 AGRICULTURAL ENGINEERING Smart agricultural technology Pub Date : 2025-03-01 Epub Date: 2024-12-27 DOI:10.1016/j.atech.2024.100759
Mario Alberto Ponce-Pacheco , Soham Adla , Ramesh Guntha , Aiswarya Aravindakshan , Maya Presannakumar , Ashray Tyagi , Anukool Nagi , Prashant Pastore , Saket Pande
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Abstract

Smallholder farmers are critical to global food production and natural resource management. Due to increased competition for water resources and variability in rainfall due to climate change, chronic irrigation water scarcity is rising particularly in drought-prone regions. Improving the awareness of climatic risk to yields and incomes is critical to sustainable agricultural intensification. However, adopting a new technology represents a certain level of risk for the farmers, who invest time and economic resources in changing their practices. We have developed a mobile application, currently for cotton, that would allow farmers to actualize the risk of growing cotton. By implementing a sociohydrological dynamic model with a kernel principal component analysis structural error model, the software provides a risk forecast of the yield and profit the user can expect at the end of the season. The mobile app not only processes social and agricultural information provided by the user but also retrieves and continually updates climate datasets from the web, as well as market prices. The users can request the execution of the sociohydrological model to the servers from their own mobile devices. By following an agile methodology, the mobile app has been tested with ∼100 farmers in order to get feedback from real users; this brought the opportunity to redesign the functionality based on the correct understanding of information and, a fast and clear management of the tool and helping in the adoption of the technology. This was combined with existing knowledge around communicating risk by using multiple modes of communication - text, graphics, sound and video - all of which were implemented to reinforce the knowledge communicated and ensure sufficient redundancy. This turned out to be beneficial for farmers with low prior knowledge and higher acceptability of the mobile app by the users as evidenced through feedback rounds with them. This study exemplifies an approach to address the gap in communicating risks in agriculture using a user-friendly mobile application.
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Makara:棉农评估收入风险的工具
小农对全球粮食生产和自然资源管理至关重要。由于对水资源的竞争加剧以及气候变化造成的降雨变化,长期的灌溉用水短缺正在加剧,特别是在易干旱地区。提高对气候风险对产量和收入的影响的认识对可持续农业集约化至关重要。然而,采用一项新技术对农民来说意味着一定程度的风险,他们需要投入时间和经济资源来改变他们的做法。我们已经开发了一个移动应用程序,目前是针对棉花的,它可以让农民了解种植棉花的风险。通过实现带有核主成分分析结构误差模型的社会水文动态模型,该软件提供了用户在季末可以预期的产量和利润的风险预测。这款移动应用程序不仅可以处理用户提供的社会和农业信息,还可以检索并不断更新网络上的气候数据集以及市场价格。用户可以从自己的移动设备向服务器请求社会水文模型的执行。按照敏捷方法,移动应用程序已经在约100名农民中进行了测试,以获得真实用户的反馈;这为基于对信息的正确理解、对工具的快速、清晰的管理以及对技术采用的帮助,重新设计功能提供了机会。通过使用多种通信模式(文本、图形、声音和视频),与现有的风险沟通知识相结合,所有这些都是为了加强沟通的知识并确保足够的冗余。事实证明,这对那些先验知识较低、用户对手机应用接受度较高的农民是有益的,这一点通过与他们的反馈得到了证明。本研究举例说明了一种使用用户友好的移动应用程序解决农业风险沟通差距的方法。
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