关闭最后一英里的五个教训:如何使气候决策支持具有可操作性

IF 8.2 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES
Earths Future Pub Date : 2025-07-31 DOI:10.1029/2024EF005799
K. Baylis, E. C. Lentz, K. Caylor, M. Gu, C. Gundersen, T. Haigh, M. Hayes, H. Lahr, D. Maxwell, C. Funk
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引用次数: 0

摘要

气候冲击日益加剧,威胁着全球农业生产和粮食安全。但更极端的气候可以改善预测,并提供咨询服务,使农民、牧场主和消费者能够有效地做出反应。迄今为止,人们对预测的接受程度有限。我们如何确保这些预测被农业气候预测的用户所重视并对他们有价值?在过去两年中,我们与粮食系统利益相关者进行了40多次访谈,以确定他们的需求和现有决策支持的不足之处。在这篇评论中,我们将这些发现和新兴的建模工作与现有文献结合起来,描述了五个经验教训,以提高农业食品系统中最后一英里用户对预测工具的吸收和利用。鉴于机器学习预测工作在许多应用程序中的爆炸式增长,我们相信我们的课程广泛适用于用于决策支持的预测模型。仅仅提高准确性并不一定会带来改进的决策支持,以及激励行动所需的信任。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Five Lessons for Closing the Last Mile: How to Make Climate Decision Support Actionable

Five Lessons for Closing the Last Mile: How to Make Climate Decision Support Actionable

Five Lessons for Closing the Last Mile: How to Make Climate Decision Support Actionable

Five Lessons for Closing the Last Mile: How to Make Climate Decision Support Actionable

Climate shocks are increasing, threatening global agricultural production and food security. But a more extreme climate allows for improved predictions and enables advisory services that allow farmers, ranchers and consumers to respond effectively. To date, there is limited uptake of forecasts. How can we make sure these predictions are valued by and valuable for users of agro-climatic forecasts? Over the past two years, we held over 40 interviews with food system stakeholders to identify their needs and shortcomings of existing decision support. In this Commentary, we combine these findings and nascent modeling efforts with existing literature to characterize five lessons for improving the uptake and utilization of predictive tools for last mile users in the agrifood system. Given the explosion of machine learning prediction efforts across many applications, we believe our lessons are broadly applicable to forecasting models intended for decision support. Improved accuracy alone does not necessarily lead to improved decision support, and the trust required to motivate action.

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来源期刊
Earths Future
Earths Future ENVIRONMENTAL SCIENCESGEOSCIENCES, MULTIDI-GEOSCIENCES, MULTIDISCIPLINARY
CiteScore
11.00
自引率
7.30%
发文量
260
审稿时长
16 weeks
期刊介绍: Earth’s Future: A transdisciplinary open access journal, Earth’s Future focuses on the state of the Earth and the prediction of the planet’s future. By publishing peer-reviewed articles as well as editorials, essays, reviews, and commentaries, this journal will be the preeminent scholarly resource on the Anthropocene. It will also help assess the risks and opportunities associated with environmental changes and challenges.
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