Skolkovo Institute of Science and Technology, Moscow, Russia.
FRC Biotechnology, Russian Academy of Sciences, Moscow, Russia.
Sci Rep. 2024 Jul 12;14(1):16150. doi: 10.1038/s41598-024-65140-y.
Agriculture, a cornerstone of human civilization, faces rising challenges from climate change, resource limitations, and stagnating yields. Precise crop production forecasts are crucial for shaping trade policies, development strategies, and humanitarian initiatives. This study introduces a comprehensive machine learning framework designed to predict crop production. We leverage CMIP5 climate projections under a moderate carbon emission scenario to evaluate the future suitability of agricultural lands and incorporate climatic data, historical agricultural trends, and fertilizer usage to project yield changes. Our integrated approach forecasts significant regional variations in crop production across Southeast Asia by 2028, identifying potential cropland utilization. Specifically, the cropland area in Indonesia, Malaysia, Philippines, and Viet Nam is projected to decline by more than 10% if no action is taken, and there is potential to mitigate that loss. Moreover, rice production is projected to decline by 19% in Viet Nam and 7% in Thailand, while the Philippines may see a 5% increase compared to 2021 levels. Our findings underscore the critical impacts of climate change and human activities on agricultural productivity, offering essential insights for policy-making and fostering international cooperation.
农业是人类文明的基石,但正面临着气候变化、资源限制和产量停滞等诸多挑战。精准的作物产量预测对于制定贸易政策、发展战略和人道主义倡议至关重要。本研究提出了一个全面的机器学习框架,旨在预测作物产量。我们利用 CMIP5 气候预测数据,在中等碳排放情景下评估未来农业土地的适宜性,并结合气候数据、历史农业趋势和肥料使用情况来预测产量变化。我们的综合方法预测了到 2028 年东南亚地区作物产量的显著区域变化,确定了潜在的耕地利用情况。具体而言,如果不采取行动,印度尼西亚、马来西亚、菲律宾和越南的耕地面积预计将减少 10%以上,而这种损失是可以减轻的。此外,预计越南的水稻产量将下降 19%,泰国将下降 7%,而与 2021 年相比,菲律宾的产量可能会增长 5%。我们的研究结果强调了气候变化和人类活动对农业生产力的重大影响,为政策制定和促进国际合作提供了重要的见解。