Solís Martín, Rojas-Herrera Vanessa
Tecnológico de Costa Rica, Cartago 159-7050, Costa Rica.
Instituto del Café de Costa Rica, Heredia 280-3011, Costa Rica.
Biomimetics (Basel). 2021 May 14;6(2):29. doi: 10.3390/biomimetics6020029.
The prediction of leaf wetness duration (LWD) is an issue of interest for disease prevention in coffee plantations, forests, and other crops. This study analyzed different LWD prediction approaches using machine learning and meteorological and temporal variables as the models' input. The information was collected through meteorological stations placed in coffee plantations in six different regions of Costa Rica, and the leaf wetness duration was measured by sensors installed in the same regions. The best prediction models had a mean absolute error of around 60 min per day. Our results demonstrate that for LWD modeling, it is not convenient to aggregate records at a daily level. The model performance was better when the records were collected at intervals of 15 min instead of 30 min.
预测叶片湿润持续时间(LWD)是咖啡种植园、森林及其他作物病害预防领域的一个重要研究问题。本研究运用机器学习方法,以气象和时间变量作为模型输入,分析了不同的LWD预测方法。研究数据通过位于哥斯达黎加六个不同地区的咖啡种植园中的气象站收集,叶片湿润持续时间则由安装在同一地区的传感器进行测量。最佳预测模型的平均绝对误差约为每天60分钟。我们的研究结果表明,对于LWD建模而言,按日汇总记录并不适宜。当记录以15分钟而非30分钟的间隔进行收集时,模型性能更佳。