拉比2019- 2020年环境和田间数据对水稻应力预测模型的改进

Prachin Jain, Swagatam Bose Choudhury, Sanat Sarangi, S. Pappula
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引用次数: 0

摘要

每一种作物都需要最适宜的环境条件才能生长并获得良好的产量。同样,特定作物的病虫害需要有利的环境条件才能开始繁殖,从而干扰产量并增加作物的管理成本。为了使农民及时对作物损害作出反应,准确预测特定地区病虫害胁迫条件的可能性对于及早采取行动至关重要。水稻是印度在哈里夫和拉比季节种植的主要作物。对于安得拉邦的一个关键州以及拉比2019- 2020年的相关主要胁迫条件,我们提出了局部预测模型,该模型使用环境微气候条件和地面报告数据来预测主要病虫害的趋势,如茎螟虫、叶折虫、叶枯病和细菌性疫病。为了实现有效的定位,在进一步处理之前,需要使用基于人工智能的检测模型对现场报告的图像进行验证。这项工作的一个主要贡献是实现了一个综合系统,该系统可以不断适应地面病虫害压力条件,并为农民生态系统提供精确的风险预测咨询,以便进行有效管理。该方法已被证明在季节性农场监测活动中效果良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Stress Prediction Models for Rice with Ambient and Field Data in Rabi 2019-20
Every crop needs optimum environment conditions to grow and provide good yield. Similarly, pests and diseases for a given crop require conducive ambient conditions to start proliferating thereby interfering with the yield and increasing management costs for the crop. For farmers to timely respond to crop damage, precisely predicting the likelihood of pest and disease stress conditions for a given region of interest is paramount to take early action. Rice is major crop in India grown over Kharif and Rabi seasons. For a key state Andhra Pradesh and associated major stress conditions in Rabi 2019-20, we present localised prediction models that use ambient micro-climatic conditions and ground reported data to forecast trends for major pests and diseases such as Stem Borer, Leaf Folder, Leaf Blast, and Bacterial Blight. For effective localisation, images reported from the fields for these conditions are validated with AI based detection models before getting processed further. A major contribution of the work is to realise an integrated system that continuously adapts to pest and disease stress conditions on the ground and offers precise risk prediction advisory to the farmer ecosystem for effective management. The approach has been demonstrated to work well with in-season farm surveillance activities at scale.
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