机器学习揭示了50年水稻连作中产量可持续性的驱动因素

IF 6.4 1区 农林科学 Q1 AGRONOMY
Tomoaki Yamaguchi , Olivyn Angeles , Toshichika Iizumi , Achim Dobermann , Keisuke Katsura , Kazuki Saito
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引用次数: 0

摘要

气候变化下集约化水稻系统的长期可持续性是全球粮食安全面临的重大挑战。在这里,我们使用机器学习技术在菲律宾国际水稻研究所(IRRI)进行的世界上持续时间最长的连作试验(LTCCE)中评估气候变化、基因型和营养管理对水稻产量的影响。在1968 ~ 2017年的3个年度种植季节(旱季、早湿季和晚湿季)中,采用4种氮肥处理栽培3 ~ 6个水稻基因型。定期改变这些基因型,以利用在特定时间内可用的最佳高产、抗病和抗虫品种。我们的分析表明,氮肥施用、品种更替、太阳辐射和季节温度模式是产量变化的主要决定因素。尽管氮肥和太阳辐射在不同季节均能提高产量,但温度效应具有季节特异性。在旱季,繁殖和成熟阶段的较低温度是有益的。在雨季早期,在较高的植被阶段温度下观察到产量增加。氮矿化的增强和早稻生长的改善可能是促成因素。低辐射、高病压和品种利用时间延长导致氮素响应下降是影响晚湿季的主要因素。这些发现证明了将长期产量数据与天气信息结合起来评估在日益增加的气候和生物压力下集约化水稻系统的可持续性的价值。它们还表明,需要采取季节性的、综合的作物、养分和病虫害管理措施,包括更频繁地更换品种和在不同季节间轮作品种。培育呼吸损失减少的旱季品种和对潮湿、低辐射条件耐受性提高的湿季品种,在提高季节适应性和整体生产力方面发挥着至关重要的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning reveals drivers of yield sustainability in five decades of continuous rice cropping
The long-term sustainability of intensive rice systems under climate change is a critical challenge for global food security. Here, we use machine learning techniques to assess the impact of climate change, genotype, and nutrient management on rice yield in the world's longest-running continuous cropping experiment (LTCCE) at the International Rice Research Institute (IRRI) in the Philippines. In the experiment, three to six rice genotypes were cultivated from 1968 to 2017 in three annual cropping seasons—dry, early wet, and late wet seasons—with four nitrogen (N) fertilizer treatments. These genotypes were changed regularly to utilize the best high-yielding, disease- and insect-resistant varieties available at a given time. Our analysis showed that nitrogen application, varietal replacement, solar radiation, and seasonal temperature patterns were major determinants of yield variation. While nitrogen and solar radiation consistently improved yield irrespective of seasons, temperature effects were season-specific. In the dry season, lower temperatures during reproductive and ripening stages were beneficial. In the early wet season, yield gains were observed under higher vegetative-stage temperatures. Enhanced nitrogen mineralization and improved early rice growth may be contributing factors. The late wet season was constrained by low radiation, high disease pressure, and declining N response with prolonged varietal use. These findings demonstrate the value of combining long-term yield data with weather information to assess sustainability in intensive rice systems under increasing climatic and biotic pressures. They also illustrate the need for seasonally tailored and integrated crop, nutrient, and pest management practices, including more frequent variety replacement and rotating varieties between seasons. Breeding dry season varieties with reduced respiration losses and wet season varieties with improved tolerance to humid, low-radiation conditions can play a crucial role in enhancing seasonal adaptation and overall productivity.
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来源期刊
Field Crops Research
Field Crops Research 农林科学-农艺学
CiteScore
9.60
自引率
12.10%
发文量
307
审稿时长
46 days
期刊介绍: Field Crops Research is an international journal publishing scientific articles on: √ experimental and modelling research at field, farm and landscape levels on temperate and tropical crops and cropping systems, with a focus on crop ecology and physiology, agronomy, and plant genetics and breeding.
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