预计变暖将超过水稻种植的长期耐热限度。
Projected warming will exceed the long-term thermal limits of rice cultivation

原始链接: https://www.nature.com/articles/s43247-025-03108-0

## 气候变化与水稻生产:日益严峻的挑战 研究强调气候变化速度与主要粮食作物(特别是水稻)适应能力之间的严重不匹配。研究表明,气候变化*已经*对全球粮食生产产生影响,水稻产量对高温和低温都表现出敏感性。虽然水稻的驯化和在亚洲的传播是对过去气候变化的响应,但目前的气候变暖趋势已经超过了该物种的自然适应能力。 生态位模型显示,适宜水稻种植的区域可能会发生变化,引发了关于作物迁移的讨论。然而,适应并非必然;水稻的整体适应性较弱。利用具有更大遗传多样性的水稻地方品种(传统品种)、改善灌溉以及开发耐热品种等策略,可以提供潜在的解决方案。 更复杂的是,当前作物模型难以准确预测产量对极端天气的反应。分析历史气候数据以及基因组信息,对于了解水稻的适应潜力并为育种计划提供信息以确保未来的粮食安全至关重要。最终,积极的适应和遗传资源保护对于减轻气候变化对水稻生产的影响至关重要。

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