Assessment of extreme climate stress across China’s maize harvest region in CMIP6 simulations

Author:

Xiao Dengpan1,Shi Zexu1,Chen Xinmin1,Lu Yang1,Bai Huizi2,Zhang Man1,Ren Dandan3,Qi Yongqing4

Affiliation:

1. Hebei Normal University

2. Hebei Academy of Sciences

3. Linyi University

4. Chinese Academy of Sciences

Abstract

Abstract

Climate change is expected to increase the frequency and severity of climate extremes, which will negatively impact crop production. As one of the main food and feed crops, maize is also vulnerable to extreme climate events. In order to accurately and comprehensively assess the future climate risk to maize, it is urgent to project and evaluate the stress of extreme climate related maize production under future climate scenarios. In this study, we comprehensively evaluated the spatio-temporal changes in the frequency and intensity of six extreme climate indices (ECIs) across China’s maize harvest region by using a multi-model ensemble method, and examined the capability of the Coupled Model Intercomparison Project Phase 6 (CMIP6) to capture these variations. We found that the Independence Weight Mean (IWM) ensemble results calculated by multiple Global Change Models (GCMs) with bias correction could better reproduce each ECI. The results indicated that heat stress for maize showed consistent increase trends under four future climate scenarios in the 21st century. The intensity and frequency of the three extreme temperature indices in 2080s were significantly higher than these in 2040s, and in the high emission scenario were significantly higher than these in the low emission scenario. The three extreme precipitation indices changed slightly in the future, but the spatial changes were relatively prominent. Overall, the temporal characteristics and trends of extreme temperature events were consistent, while the spatial heterogeneity of extreme precipitation events was more significant.

Publisher

Research Square Platform LLC

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