Response of Grain Yield to Planting Density and Maize Hybrid Selection in High Latitude China—A Multisource Data Analysis

Author:

Sun Shanwen1,Huang Zhaofu2ORCID,Liu Haiyan1,Xu Jian1,Zheng Xu13,Xue Jun2ORCID,Li Shaokun2ORCID

Affiliation:

1. Qiqihar Branch of Heilongjiang Academy of Agricultural Science, Qiqihar 161006, China

2. Chinese Academy of Agricultural Sciences/Key Laboratory of Crop Physiology and Ecology, Institute of Crop Sciences, Ministry of Agriculture and Rural Affairs, Beijing 100081, China

3. Engineering Research Center of Agricultural Microbiology Technology, Ministry of Education, Heilongjiang University, Harbin 150500, China

Abstract

Identifying the relationships between the yield of rainfed maize and planting densities as well as the hybrids used is crucial for ensuring the sustainable development of the grain industry in high latitude China. In this study, we collected 108 grain yield date points from our multiyear (2017–2020) field experiments and combined 213 data points collected from 21 published papers to appraise the impact of planting density and hybrids on maize yield. It was found that grain yield forms a curvilinear relationship with plant density as it increased from 22,500 to 112,500 plants ha−1. The optimum plant density (OPD) was determined to be 72500 plants ha−1, with a maximum maize grain yield of 10.56 Mg ha−1. The interannual variability in grain yields among hybrids with different planting densities was mainly due to the differences in dry matter (DM), especially post-silking. Grain yields increased significantly with a rise in the proportion of post-silking DM to DM at maturity. In addition, both the collected literature and our field experiments showed that the OPD was positively correlated with solar radiation accumulated during the maize growth period and with each hybrid’s year of release. This study suggests that increasing plant density and selecting new hybrids with suitable growth periods are effective approaches for increasing grain yield in high latitude China.

Funder

China Agriculture Research System of MOF and MARA

Agricultural Science and Technology Innovation Program

Publisher

MDPI AG

Subject

Agronomy and Crop Science

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