利用ENSO条件优化尼泊尔Terai水稻产量

IF 1.2 4区 地球科学 Q4 ENVIRONMENTAL SCIENCES Climate Research Pub Date : 2022-07-28 DOI:10.3354/cr01699
Prakash K. Jha, Panos Athanasiadis, Silvio Gualdi, Antonio Trabucco, Valentina Mereu, Vakhtang Shelia, Gerrit Hoogenboom
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引用次数: 0

摘要

摘要:季节性预报系统(SPSs)预报结果在农业中的直接应用受到技术的限制,在厄尔尼诺Niño-Southern涛动(El Niño-Southern Oscillation, ENSO)预报方面,SPSs的能力要强于降水预报。直接应用SPSs预报的另一种办法是将ENSO条件预报与动态作物模型联系起来,以便在开始实际种植之前评估备选作物管理办法。尽管这一方法的潜在效益已在世界许多地区得到检验,但迄今为止,关于在尼泊尔Terai地区应用这一方法的证据有限。本研究的总体目标是确定ENSO与尼泊尔Terai夏季风降水之间的潜在关系,并确定SPSs预测ENSO的能力。该分析包括利用作物环境资源综合-水稻(CSM-CERES-Rice)模型,将降水对水稻产量年际变化的相对贡献与其他因素分离出来。作物模型还用于探索通过调整作物管理来提高水稻产量和降低风险的选择。研究发现,降水是影响水稻产量年际变化的主要变量,SPSs较好地预测了ENSO, ENSO信号可用于预测研究区除ENSO中性年以外的所有年份的季节性降水异常。季节性降水异常的先验知识可用于利用作物模型优化水稻产量,并最终帮助农民做出决策。
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Using ENSO conditions to optimize rice yield for Nepal’s Terai
ABSTRACT: The direct application of forecasts from seasonal prediction systems (SPSs) in agriculture is limited by their skill, and SPSs are more skilled at El Niño-Southern Oscillation (ENSO) prediction than precipitation prediction. An alternative to the direct application of forecasts from SPSs could be to link the forecast of ENSO conditions with dynamic crop models to evaluate alternate crop management options prior to the start of the actual planting. Although potential benefits of this approach have been tested in many areas of the world, so far limited evidence exists regarding its application in Nepal’s Terai region. The overall goal of this study was to determine the potential relationship between ENSO and summer monsoon precipitation over Nepal’s Terai and ascertain SPSs’ skill in predicting ENSO. This analysis included disentangling the relative contribution of precipitation to interannual variability in rice yield from other factors using a cropping system model, namely, the Crop Environment Resource Synthesis-Rice (CSM-CERES-Rice). The crop model was also employed to explore options for increasing rice yield and minimizing risk by adjusting crop management. This study found that precipitation was the main variable affecting interannual variability in rice yield, that SPSs are good at predicting ENSO, and that the ENSO signal can be used to predict seasonal precipitation anomalies in the study area in all years except ENSO neutral years. Prior knowledge of seasonal precipitation anomalies can then be used to optimize rice yield using a crop model, and ultimately to assist farmers with decision making.
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来源期刊
Climate Research
Climate Research 地学-环境科学
CiteScore
2.90
自引率
9.10%
发文量
25
审稿时长
3 months
期刊介绍: Basic and applied research devoted to all aspects of climate – past, present and future. Investigation of the reciprocal influences between climate and organisms (including climate effects on individuals, populations, ecological communities and entire ecosystems), as well as between climate and human societies. CR invites high-quality Research Articles, Reviews, Notes and Comments/Reply Comments (see Clim Res 20:187), CR SPECIALS and Opinion Pieces. For details see the Guidelines for Authors. Papers may be concerned with: -Interactions of climate with organisms, populations, ecosystems, and human societies -Short- and long-term changes in climatic elements, such as humidity and precipitation, temperature, wind velocity and storms, radiation, carbon dioxide, trace gases, ozone, UV radiation -Human reactions to climate change; health, morbidity and mortality; clothing and climate; indoor climate management -Climate effects on biotic diversity. Paleoecology, species abundance and extinction, natural resources and water levels -Historical case studies, including paleoecology and paleoclimatology -Analysis of extreme climatic events, their physicochemical properties and their time–space dynamics. Climatic hazards -Land-surface climatology. Soil degradation, deforestation, desertification -Assessment and implementation of adaptations and response options -Applications of climate models and modelled future climate scenarios. Methodology in model development and application
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