Evaluating the utility of weather generators in crop simulation models for in-season yield forecasting

IF 6.1 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY
Rohit Nandan , Varaprasad Bandaru , Pridhvi Meduri , Curtis Jones , Romulo Lollato
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引用次数: 0

Abstract

CONTEXT

Crop yield forecasting is crucial for ensuring food security and adapting to the impacts of climate change, as it provides early insights into potential harvest outcomes and helps farmers and policymakers make informed decisions in the face of changing environmental conditions. The accuracy of the crop model–based yield forecasting frameworks is affected by the uncertainty in future weather data, which is often substituted with synthetic weather realizations generated by stochastic weather generators.

OBJECTIVE

This study aims to assess the performance of three recent stochastic weather generators—Global Weather Generator (GWGEN), WeatherGEN, and R Multi-Sites Autoregressive Weather GENerator (RMAWGEN) — in producing synthetic weather realizations that accurately represent regional climate variations and their impact on winter wheat yield forecasting.

METHODS

We utilized historical weather data from Daymet, an interpolation of daily meteorological observations that produces gridded datasets with a spatial resolution of 1 km. This data was used both as an input for the weather generators and for evaluating the performance of the generated weather realizations. Furthermore, the weather realizations generated by these weather generators across multiple winter wheat field sites in Kansas were employed in the calibrated Environmental Policy Integrated Climate (EPIC) crop model to assess the potential impact of variations in weather generators on the accuracy of crop yield forecasts.

RESULTS AND CONCLUSIONS

RMAWGEN and WeatherGEN excelled in accurately simulating rainy days and precipitation amounts, with WeatherGEN particularly effective in wet months and RMAWGEN performing best in dry months, showcased their proficiency in diverse weather conditions. RMAWGEN consistently showed lowest error across all variables, including precipitation, solar radiation, and both maximum and minimum temperatures. Except for GWGEN, both RMAWGEN and WeatherGEN demonstrate good agreement with Daymet in replicating spatial variability patterns. RMAWGEN notably outperformed other weather generators, particularly during the forecasting period. Consequently, it showed superior capabilities in forecasting crop yields closely matching the simulated results with Daymet data.

SIGNIFICANCE

The findings of this study are crucial for selecting accurate weather data estimates for crop yield forecasting. Utilizing alternative sources such as ensembles of multiple weather generators or outputs from sub-seasonal multi-model forecast systems may further enhance the accuracy of crop yield forecasts.

Abstract Image

评估作物模拟模型中的天气发生器对季节内产量预测的实用性
作物产量预测对于确保粮食安全和适应气候变化的影响至关重要,因为它能及早洞察潜在的收成结果,帮助农民和决策者在面对不断变化的环境条件时做出明智的决策。基于作物模型的产量预测框架的准确性受到未来天气数据不确定性的影响,而未来天气数据往往被随机天气生成器生成的合成天气实况所替代。本研究旨在评估三种最新的随机天气生成器--全球天气生成器(GWGEN)、WeatherGEN 和 R 多站点自回归天气生成器(RMAWGEN)--在生成合成天气实况方面的性能,这些合成天气实况能准确地反映区域气候变化及其对冬小麦产量预测的影响。我们利用了来自 Daymet 的历史天气数据,该数据是对每日气象观测数据的插值,可生成空间分辨率为 1 千米的网格数据集。这些数据既是天气生成器的输入数据,也用于评估生成的天气实况的性能。此外,这些天气生成器在堪萨斯州多个冬小麦田现场生成的天气实况被用于校准环境政策综合气候(EPIC)作物模型,以评估天气生成器的变化对作物产量预测准确性的潜在影响。RMAWGEN 和 WeatherGEN 在准确模拟雨天和降水量方面表现出色,WeatherGEN 在潮湿月份尤其有效,而 RMAWGEN 则在干燥月份表现最佳,展示了它们在不同天气条件下的能力。RMAWGEN 在降水、太阳辐射、最高气温和最低气温等所有变量上的误差始终最低。除 GWGEN 外,RMAWGEN 和 WeatherGEN 在复制空间变异模式方面均与 Daymet 表现出良好的一致性。RMAWGEN 的表现明显优于其他天气生成器,尤其是在预报期间。因此,它在农作物产量预报方面表现出卓越的能力,模拟结果与 Daymet 数据非常接近。这项研究的结果对于选择准确的天气数据估算进行作物产量预报至关重要。利用其他来源,如多个天气生成器的集合或分季节多模式预报系统的输出,可进一步提高作物产量预报的准确性。
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来源期刊
Agricultural Systems
Agricultural Systems 农林科学-农业综合
CiteScore
13.30
自引率
7.60%
发文量
174
审稿时长
30 days
期刊介绍: Agricultural Systems is an international journal that deals with interactions - among the components of agricultural systems, among hierarchical levels of agricultural systems, between agricultural and other land use systems, and between agricultural systems and their natural, social and economic environments. The scope includes the development and application of systems analysis methodologies in the following areas: Systems approaches in the sustainable intensification of agriculture; pathways for sustainable intensification; crop-livestock integration; farm-level resource allocation; quantification of benefits and trade-offs at farm to landscape levels; integrative, participatory and dynamic modelling approaches for qualitative and quantitative assessments of agricultural systems and decision making; The interactions between agricultural and non-agricultural landscapes; the multiple services of agricultural systems; food security and the environment; Global change and adaptation science; transformational adaptations as driven by changes in climate, policy, values and attitudes influencing the design of farming systems; Development and application of farming systems design tools and methods for impact, scenario and case study analysis; managing the complexities of dynamic agricultural systems; innovation systems and multi stakeholder arrangements that support or promote change and (or) inform policy decisions.
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