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Journal of Integrative Agriculture  2017, Vol. 16 Issue (04): 845-857    DOI: 10.1016/S2095-3119(16)61467-3
Physiology·Biochemistry·Cultivation·Tillage Advanced Online Publication | Current Issue | Archive | Adv Search |
Quantifying the spatial variation in the potential productivity and yield gap of winter wheat in China
ZHANG Shi-yuan, ZHANG Xiao-hu, QIU Xiao-lei, TANG Liang, ZHU Yan, CAO Wei-xing, LIU Lei-lei

National Engineering and Technology Center for Information Agriculture/Jiangsu Key Laboratory for Information Agriculture/Jiangsu Collaborative Innovation Center for Modern Crop Production/Nanjing Agricultural University, Nanjing 210095, P.R.China

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Abstract  Despite the improvement in cultivar characters and management practices, large gaps between the attainable and potential yields still exist in winter wheat of China.  Quantifying the crop potential yield is essential for estimating the food production capacity and improving agricultural policies to ensure food security.  Gradually descending models and geographic information system (GIS) technology were employed to characterize the spatial variability of potential yields and yield gaps in winter wheat across the main production region of China.  The results showed that during 2000–2010, the average potential yield limited by thermal resource (YGT) was 23.2 Mg ha–1, with larger value in the northern area relative to the southern area.  The potential yield limited by the water supply (YGW) generally decreased from north to south, with an average value of 1.9 Mg ha–1 across the entire study region.  The highest YGW in the north sub-region (NS) implied that the irrigation and drainage conditions in this sub-region must be improved.  The averaged yield loss of winter wheat from nutrient deficiency (YGN) varied between 2.1 and 3.1 Mg ha–1 in the study area, which was greater than the yield loss caused by water limitation.  The potential decrease in yield from photo-thermal-water-nutrient-limited production to actual yield (YGO) was over 6.0 Mg ha–1, ranging from 4.9 to 8.3 Mg ha–1 across the entire study region, and it was more obvious in the southern area than in the northern area.  These findings suggest that across the main winter wheat production region, the highest yield gap was induced by thermal resources, followed by other factors, such as the level of farming technology, social policy and economic feasibility.  Furthermore, there are opportunities to narrow the yield gaps by making full use of climatic resources and developing a reasonable production plan for winter wheat crops.  Thus, meeting the challenges of food security and sustainability in the coming decades is possible but will require considerable changes in water and nutrient management and socio-economic policies.
Keywords:   spatial variation      potential productivity      yield gap      winter wheat      China  
Received: 23 May 2016   Accepted:
Fund: 

This study was supported by the National High-Tech R&D Program of China (863 Program, 2013AA100404), the National Natural Science Foundation of China (31301234 and 31271616), the National Research Foundation for the Doctoral Program of Higher Education of China (20120097110042), and the Priority Academic Program Development of Jiangsu Higher Education Institutions, China (PAPD).

Corresponding Authors:  LIU Lei-lei, Tel: +86-25-84396065, Fax: +86-25-84396672, E-mail: liuleilei@njau.edu.cn   
About author:  ZHANG Shi-yuan, E-mail: 2009201013@njau.edu.cn

Cite this article: 

ZHANG Shi-yuan, ZHANG Xiao-hu, QIU Xiao-lei, TANG Liang, ZHU Yan, CAO Wei-xing, LIU Lei-lei. 2017. Quantifying the spatial variation in the potential productivity and yield gap of winter wheat in China. Journal of Integrative Agriculture, 16(04): 845-857.

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