Silva Eudocio Rafael Otavio da, Silva Thiago Lima da, Wei Marcelo Chan Fu, Souza Ricardo Augusto de, Molin José Paulo
Laboratory of Precision Agriculture (LAP), Department of Biosystems Engineering, "Luiz de Queiroz" College of Agriculture (ESALQ), University of São Paulo (USP), Piracicaba 13418-900, São Paulo, Brazil.
Laboratory of Agricultural Machinery and Precision Agriculture (LAMAP), Department of Biosystems Engineering, Luiz de Queiroz College of Agriculture, University of São Paulo, Piracicaba 13418-900, São Paulo, Brazil.
Plants (Basel). 2025 Jan 9;14(2):169. doi: 10.3390/plants14020169.
Coffee yield exhibits plant-level variability; however, due to operational issues, especially in smaller operations, the scouting and management of coffee yields are often hindered. Thus, a cell-size approach at the field level is proposed as a simple and efficient solution to overcome these constraints. This study aimed to present the feasibility of a cell-size approach to characterize spatio-temporal coffee production based on soil and plant attributes and yield (biennial effects) and to assess strategies for enhanced soil fertilization recommendations and economic results. The spatio-temporal study was conducted using a database composed of yield and soil and plant attributes from four harvest seasons of coffee plantation in the southeast region of Brazil. We used small plots as cells, where soil, leaf, and yield samples were taken, and the average value of each variable was assigned to each cell. The results indicated that macro- and micronutrient contents in the soil and leaves exhibited spatio-temporal heterogeneity between cells, suggesting that customized coffee tree management practices could be employed. The cell-size sampling strategy identified regions of varying yield over time and associated them with their biennial effect, enabling the identification of profitable areas to direct resource and input management in subsequent seasons. This approach optimized the recommendation of potassium and phosphate fertilizers on farms, demonstrating that localized management is feasible even with low spatial resolution. The cell-size approach proved to be adequate on two coffee farms and can be applied in scenarios with limited resources for high-density sampling, especially for small- and medium-sized farms.
咖啡产量存在植株水平的变异性;然而,由于运营问题,尤其是在规模较小的运营中,咖啡产量的监测和管理常常受到阻碍。因此,提出了一种田间尺度的单元格大小方法,作为克服这些限制的简单有效解决方案。本研究旨在展示一种基于土壤、植株属性和产量(两年期效应)来表征时空咖啡产量的单元格大小方法的可行性,并评估增强土壤施肥建议和经济效益的策略。时空研究使用了一个数据库,该数据库由巴西东南部咖啡种植园四个收获季节的产量、土壤和植株属性组成。我们将小块土地用作单元格,在那里采集土壤、叶片和产量样本,并将每个变量的平均值分配给每个单元格。结果表明,土壤和叶片中的大量和微量营养元素含量在单元格之间呈现时空异质性,这表明可以采用定制的咖啡树管理措施。单元格大小的采样策略识别出随时间变化的不同产量区域,并将它们与其两年期效应相关联,从而能够识别出有利可图的区域,以便在后续季节指导资源和投入管理。这种方法优化了农场钾肥和磷肥的推荐,表明即使空间分辨率较低,局部管理也是可行的。单元格大小方法在两个咖啡农场被证明是适用的,并且可以应用于高密度采样资源有限的场景,特别是对于中小型农场。