Fuzzy modeling of coffee productivity under different irrigation depths, water deficit and temperature

Emmanuel Zullo Godinho, Fernando De Lima Caneppele, Luís Roberto Almeida Gabriel Filho, Camila Pires Cremasco Gabriel
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Abstract

The coffee culture has great economic importance on the world stage, especially for Brazil. Considered one of the most traded commodities on the world's trading exchanges. Thus, the main objective of this study was to develop a system based on fuzzy rules to evaluate coffee productivity, using irrigation, soil water deficit and ambient temperature as the main production factors. The research was developed from searches of scientific data on the main variables for coffee production. The work was divided into two stages: the first in the scientific search for data collection and the second in the development of the fuzzy model. With this, it was parameterized that the input variables would be the temperature, the irrigation depth, and the water deficit of the soil and for the output variable the coffee productivity. Based on the model prediction, the fuzzy system showed which variable values are necessary for the best coffee productivity, by a set of rules involving the variation of water deficit (60%), temperature (30°C) and irrigation (300 mm), for a productivity of 24 sc ha-1. The performance of the fuzzy system was tested by comparing it with articles on the subject that relate coffee production with irrigation, water deficit and temperature of the environment and in almost all cases the model was efficient, reinforcing the assessment of the strength of the scheme, the analysis was extended to several scenarios relating the same three input variables.
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不同灌溉深度、水分亏缺和温度下咖啡产量的模糊建模
咖啡文化在世界舞台上具有重要的经济意义,尤其是对巴西而言。被认为是世界上交易最多的商品之一。因此,本研究的主要目的是以灌溉、土壤水分亏缺和环境温度为主要生产因素,建立一个基于模糊规则的咖啡产量评价系统。这项研究源于对咖啡生产主要变量的科学数据的搜索。这项工作分为两个阶段:第一阶段是对数据收集的科学搜索,第二阶段是模糊模型的开发。有了这个,它被参数化了,输入变量将是温度,灌溉深度,土壤水分亏缺,输出变量是咖啡产量。在模型预测的基础上,模糊系统通过一组涉及水分亏缺(60%)、温度(30°C)和灌溉(300毫米)变化的规则,显示出最佳咖啡产量所必需的变量值,生产力为24 sc ha-1。通过将模糊系统的性能与有关咖啡生产与灌溉,水亏缺和环境温度的主题的文章进行比较,测试了模糊系统的性能,并且在几乎所有情况下,该模型都是有效的,加强了对方案强度的评估,分析扩展到与相同的三个输入变量相关的几个场景。
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发文量
24
审稿时长
7 weeks
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