Literature DB >> 26437349

Maize yield gaps caused by non-controllable, agronomic, and socioeconomic factors in a changing climate of Northeast China.

Zhijuan Liu1, Xiaoguang Yang2, Xiaomao Lin3, Kenneth G Hubbard4, Shuo Lv1, Jing Wang5.   

Abstract

Closing the gap between current and potential yields is one means of increasing agricultural production to feed the globally increasing population. Therefore, investigation of the geographic patterns, trends and causes of crop yield gaps is essential to identifying where yields might be increased and quantifying the contributions of yield-limiting factors that may provide us potentials to enhance crop productivity. In this study, the changes in potential yields, attainable yields, potential farmers' yields, and actual farmers' yields during the past five decades in Northeast China (NEC) were investigated. Additionally the yield gaps caused by non-controllable, agronomic, and socioeconomic factors were determined. Over the period 1961 to 2010 the estimated regional area-weighted mean maize potential yield, attainable yield, and potential farmers' yield were approximately 12.3 t ha(-1), 11.5 t ha(-1), and 6.4 t ha(-1) which showed a decreasing tendency. The actual farmers' yield over NEC was 4.5 t ha(-1), and showed a tendency to increase (p<0.01) by 1.27 t ha(-1) per decade. The regional mean total yield gap (YGt), weighted by the area in each county dedicated to maize crop, was 64% of potential yield. Moreover, 8, 40, and 16% reductions in potential yields were due to non-controllable factors (YGI), agronomic factors (YGII), and socioeconomic factors (YGIII), respectively. Therefore, the exploitable yield gap, considered here as the difference between the potential yield and what one can expect considering non-controllable factors (i.e. YGt-YGI), of maize in NEC was about 56%. The regional area-weighted averages of YGt, and YGIII were found to have significant decreases of 11.0, and 10.7% per decade. At the time horizon 2010, the exploitable yield gaps were estimated to equal 36% of potential yield. This led to the conclusion that the yield gap could be deeply reduced by improving local agronomic management and controlling socioeconomic factors.
Copyright © 2015 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Climate zone; Maize; Northeast China; Up-scaling; Yield constraints; Yield gaps

Year:  2015        PMID: 26437349     DOI: 10.1016/j.scitotenv.2015.08.145

Source DB:  PubMed          Journal:  Sci Total Environ        ISSN: 0048-9697            Impact factor:   7.963


  6 in total

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5.  Modelling adaptation strategies to reduce adverse impacts of climate change on maize cropping system in Northeast China.

Authors:  Rong Jiang; Wentian He; Liang He; J Y Yang; B Qian; Wei Zhou; Ping He
Journal:  Sci Rep       Date:  2021-01-12       Impact factor: 4.379

6.  Maize yield in smallholder agriculture system-An approach integrating socio-economic and crop management factors.

Authors:  Sudarshan Dutta; Somsubhra Chakraborty; Rupak Goswami; Hirak Banerjee; Kaushik Majumdar; Bin Li; M L Jat
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  6 in total

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