Use of Plant Health Level Based on Random Forest Algorithm for Agricultural Drone Target Points

Try Kusuma Wardana, Y. Arkeman, K. Priandana, F. Kurniawan
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Abstract

Chemical residues from the use of pesticides in agriculture can impact human health through environmental and food pollution. To lessen the negative effects of excessive pesticide use, pesticides must be applied to plants by dose. The dose of pesticide application can be based on a plant health level, which is the result of drone Normalized Difference Vegetation Index (NDVI) image analysis. Drones can also be used for spraying pesticides. Analysis of plant health levels was carried out using the Random Forest (RF) algorithm. The results of the classification plant health levels will be used to design spray drone flight routes. The objective of this research is to classify plant health levels of rice based on NDVI imagery using the RF algorithm and to compile a database of spray drone target points. The results of this study indicate that the classification of plant health levels using the RF algorithm produces an accuracy value of 98% and a Kappa value of 0.96. As a result, the model developed and the algorithm employed is quite effective at classifying the level of plant health. Furthermore, spray drone target points based on plant health levels can be generated. Optimally the spray distance between rows is 2 m.  
基于随机森林算法的植物健康水平农业无人机目标点定位
农业中使用农药产生的化学残留物会通过环境和食品污染影响人类健康。为了减少过量使用农药的负面影响,必须按剂量施用农药。农药施用剂量可以基于植物健康水平,这是无人机归一化植被指数(NDVI)图像分析的结果。无人机也可以用于喷洒农药。采用随机森林(RF)算法对植物健康水平进行分析。植物健康水平的分类结果将用于设计喷雾无人机的飞行路线。本研究的目的是利用射频算法基于NDVI图像对水稻植物健康水平进行分类,并建立喷雾无人机目标点数据库。研究结果表明,利用射频算法对植物健康水平进行分类,准确率为98%,Kappa值为0.96。结果表明,所建立的模型和所采用的算法对于植物健康水平的分类是非常有效的。此外,可以根据植物健康水平生成喷雾无人机目标点。最佳喷雾间距为2米。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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