基于统计-物理耦合框架的农业模型预测不确定性表征

J. Chrispell, E. Jenkins, K. R. Kavanagh, M. Parno
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摘要

多种因素,其中许多是环境因素,共同影响着农业决策。农场规划通常提前几个月完成。这些决定必须根据当时可用的信息做出,包括当前趋势、历史数据或对未来天气模式的预测。这项工作所描述的努力是为了建立一个灵活的数学和软件框架,用于模拟气象变化对未来作物产量的影响。我们的框架是数据驱动的,可以很容易地应用到任何有合适历史观察的位置。这将使严格的风险评估和气候适应规划所需的具体地点研究成为可能。该框架结合了基于物理的作物产量模型和用于气象输入的随机过程模型。结合不确定性量化、全局敏感性分析和机器学习等技术,这种混合统计-物理框架可以研究气象不确定性对未来农业产量的潜在影响,并确定对预测不确定性贡献最大的环境变量。为了突出我们的通用方法的实用性,我们研究了根据历史数据构建的多种场景下多种作物的预测产量。利用全球敏感性分析,我们确定了导致这些情景预测不确定性的关键环境因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterizing Prediction Uncertainty in Agricultural Modeling via a Coupled Statistical–Physical Framework
Multiple factors, many of them environmental, coalesce to inform agricultural decisions. Farm planning is often done months in advance. These decisions have to be made with the information available at the time, including current trends, historical data, or predictions of what future weather patterns may be. The effort described in this work is geared towards a flexible mathematical and software framework for simulating the impact of meteorological variability on future crop yield. Our framework is data driven and can easily be applied to any location with suitable historical observations. This will enable site-specific studies that are needed for rigorous risk assessments and climate adaptation planning. The framework combines a physics-based model of crop yield with stochastic process models for meteorological inputs. Combined with techniques from uncertainty quantification, global sensitivity analysis, and machine learning, this hybrid statistical–physical framework allows studying the potential impacts of meteorological uncertainty on future agricultural yields and identify the environmental variables that contribute the most to prediction uncertainty. To highlight the utility of our general approach, we studied the predicted yields of multiple crops in multiple scenarios constructed from historical data. Using global sensitivity analysis, we then identified the key environmental factors contributing to uncertainty in these scenarios’ predictions.
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