Zhang Yifan, Li Bingjun
College of Information and Management Science, Henan Agricultural University, Zhengzhou 450046, China.
Foods. 2022 May 30;11(11):1617. doi: 10.3390/foods11111617.
The stability of wheat production is closely related to national food security and agricultural sustainable development, and it has been a major policy concern for China. By analyzing the spatiotemporal factors and causes of wheat production, we can grasp the spatiotemporal distribution law of wheat production to rationally allocate agricultural resources. To this end, this study first conducted a quantitative analysis of the yield differentiation patterns in Huang-Huai-Hai (HHH) wheat based on the 2010-2020 wheat agricultural data, comprehensively using the Theil index and exploratory spatial data analysis. Second, to eliminate the spatial heterogeneity and multicollinearity of the modeling variables, a local model of SCA-GWR combining Spearman correlation analysis (SCA) and geographically weighted regression (GWR) was established. Compared with the traditional global regression model, the superiority and applicability of the SCA-GWR model are proved, and it is a simple and effective new method to detect spatial data nonstationarity. Finally, the factors influencing wheat production in the HHH region were detected based on the SCA-GWR local model, and relevant policy recommendations were put forward. The results show that: (1) The yield difference in different farming areas gradually narrowed, and the wheat production had a significant High-High aggregation trend. The center of gravity for wheat production lies in the southwest of the HHH region. (2) Wheat production still has a strong dependence on irrigation and fertilizer. Effective irrigated areas and temperature are the main driving forces for its production. The inhibitory effect of the proportion of nonagricultural employment on wheat production gradually weakened. Radiation and rainfall were only significantly positively correlated with wheat production in the central and southern HHH region. In response to the findings of the study, corresponding policy recommendations are made in terms of optimizing the allocation of resources, increasing investment in agricultural infrastructure, and vigorously researching and developing agricultural science and technology, and the results of the study can provide a basis for decision-making and management by relevant departments.
小麦生产的稳定性与国家粮食安全和农业可持续发展密切相关,一直是中国主要的政策关注点。通过分析小麦生产的时空因素及成因,能够把握小麦生产的时空分布规律,从而合理配置农业资源。为此,本研究首先基于2010 - 2020年小麦农业数据,综合运用泰尔指数和探索性空间数据分析,对黄淮海(HHH)地区小麦产量分化格局进行定量分析。其次,为消除建模变量的空间异质性和多重共线性,构建了结合斯皮尔曼相关分析(SCA)和地理加权回归(GWR)的SCA - GWR局部模型。相较于传统的全局回归模型,证明了SCA - GWR模型的优越性和适用性,它是检测空间数据非平稳性的一种简单有效的新方法。最后,基于SCA - GWR局部模型检测了HHH地区小麦生产的影响因素,并提出相关政策建议。结果表明:(1)不同种植区的产量差异逐渐缩小,小麦生产呈现出显著的高高聚集趋势。小麦生产重心位于HHH地区西南部。(2)小麦生产仍对灌溉和化肥有较强依赖性。有效灌溉面积和温度是其生产的主要驱动力。非农就业比重对小麦生产的抑制作用逐渐减弱。辐射和降雨仅在HHH地区中部和南部与小麦生产显著正相关。针对研究结果,在优化资源配置、增加农业基础设施投入、大力研发农业科技等方面提出了相应的政策建议,研究结果可为相关部门的决策和管理提供依据。