Evaluation of the most appropriate spatial resolution of input data for assessing the impact of climate change on rice productivity in Japan

IF 1.4 4区 农林科学 Q2 AGRICULTURE, MULTIDISCIPLINARY
Y. Ishigooka, T. Hasegawa, T. Kuwagata, M. Nishimori
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引用次数: 5

Abstract

Process-based crop growth models are increasingly utilized as an essential tool for assessing the impact of climate change on crop productivity at field, regional, and national scales. The reliability of model predictions depends strongly on the quality of the meteorological data used as inputs. For evaluations over large areas, the spatial resolution of input data affects the calculation results because factors such as elevation differences between the mean for an entire grid cell and the portion of crop land in the grid can introduce a major temperature bias in the input data. In this study, we attempted to identify the most appropriate spatial resolution to support assessment of the impact of climate change on rice productivity in Japan. We used the Hasegawa - Horie rice growth model under the baseline climate conditions ( 1981 to 2000 ) and then applied the model to account for temperature increases to 1 and 3 ° C higher than the baseline. First, we calculated the rice yield using inputs at 100-m resolution as the “true value”. We then compared the rice yield calculated using inputs at 10-km and 1-km resolutions with the yield calculated using inputs at 100-m resolution. We found that the yield differences were larger with 10-km resolution than with 1-km resolution in areas that had complex terrain, but the differences were small in homogeneous flat areas. Where the terrain is extremely complex, regional mean yields were underestimated by 11.5 % compared with the yield under baseline climatic conditions but were overestimated by 5.4 % at increased temperatures using 10-km resolution. These differences are likely to be a major cause of uncertainty in predicting the impacts of climate change on yield at a regional scale. Spatial resolution of input data, using 10-km resolution did not affect the assessment results when yield is aggregated at a national scale.
评估气候变化对日本水稻生产力影响的输入数据的最适宜空间分辨率
基于过程的作物生长模型越来越多地被用作评估气候变化对田间、区域和国家尺度作物生产力影响的重要工具。模式预测的可靠性在很大程度上取决于用作输入的气象资料的质量。对于大面积的评估,输入数据的空间分辨率会影响计算结果,因为整个网格单元的平均值与网格中部分农田之间的高程差等因素会在输入数据中引入主要的温度偏差。在这项研究中,我们试图确定最合适的空间分辨率,以支持评估气候变化对日本水稻生产力的影响。我们在基线气候条件下(1981年至2000年)使用了长谷川-堀江水稻生长模型,然后应用该模型来解释温度比基线高1°C和3°C的情况。首先,我们使用100米分辨率的输入作为“真实值”来计算水稻产量。然后,我们将使用10公里和1公里分辨率的投入计算的水稻产量与使用100米分辨率的投入计算的产量进行了比较。在地形复杂的地区,10 km分辨率下的产量差异大于1 km分辨率下的差异,而在均匀的平坦地区,差异较小。在地形极其复杂的地方,与基线气候条件下的产量相比,区域平均产量低估了11.5%,而在使用10公里分辨率的温度升高时,区域平均产量高估了5.4%。这些差异很可能是在预测气候变化对区域范围内产量影响时不确定的主要原因。在全国汇总产量时,输入数据的空间分辨率为10km,对评价结果没有影响。
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来源期刊
Journal of Agricultural Meteorology
Journal of Agricultural Meteorology AGRICULTURE, MULTIDISCIPLINARYMETEOROLOGY-METEOROLOGY & ATMOSPHERIC SCIENCES
CiteScore
2.70
自引率
7.70%
发文量
18
期刊介绍: For over 70 years, the Journal of Agricultural Meteorology has published original papers and review articles on the science of physical and biological processes in natural and managed ecosystems. Published topics include, but are not limited to, weather disasters, local climate, micrometeorology, climate change, soil environment, plant phenology, plant response to environmental change, crop growth and yield prediction, instrumentation, and environmental control across a wide range of managed ecosystems, from open fields to greenhouses and plant factories.
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