无人机对农田喷洒农药控制规则的微调

Bruno S. Faiçal, G. Pessin, G. P. R. Filho, A. Carvalho, Gustavo Furquim, J. Ueyama
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引用次数: 48

摘要

农业中农药的使用对保持大规模生产的质量至关重要。使用飞机喷洒这些产品加速了这一过程,并防止了土壤的压实。然而,不利的天气条件(例如风速和风向)会影响在目标作物地里喷洒杀虫剂的效果。因此,农药有可能飘到邻近的农田。据认为,世界上使用的农药有很大一部分游离在目标作物田外,只有一小部分农药是有效防治害虫的。然而,随着喷洒精度的提高,有可能减少农药的使用量,提高农产品的质量,并减轻环境破坏的风险。为此,本文提出了一种基于粒子群算法(PSO)的农田农药喷洒控制规则微调方法。该方法考虑了无线传感器网络(WSN)报告的天气条件,可以快速有效地应用并取得良好的效果。在这种情况下,无人机成为WSN的一个移动节点,能够为每个农田做出个性化的决策。实验结果表明,所提出的优化方法能够通过微调控制规则来减少农药的漂移。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fine-Tuning of UAV Control Rules for Spraying Pesticides on Crop Fields
The use of pesticides in agriculture is essential to maintain the quality of large-scale production. The spraying of these products by using aircraft speeds up the process and prevents compacting of the soil. However, adverse weather conditions (e.g. The speed and direction of the wind) can impair the effectiveness of the spraying of pesticides in a target crop field. Thus, there is a risk that the pesticide can drift to neighboring crop fields. It is believed that a large amount of all the pesticide used in the world drifts outside of the target crop field and only a small amount is effective in controlling pests. However, with increased precision in the spraying, it is possible to reduce the amount of pesticide used and improve the quality of agricultural products as well as mitigate the risk of environmental damage. With this objective, this paper proposes a methodology based on Particle Swarm Optimization (PSO) for the fine-tuning of control rules during the spraying of pesticides in crop fields. This methodology can be employed with speed and efficiency and achieve good results by taking account of the weather conditions reported by a Wireless Sensor Network (WSN). In this scenario, the UAV becomes a mobile node of the WSN that is able to make personalized decisions for each crop field. The experiments that were carried out show that the optimization methodology proposed is able to reduce the drift of pesticides by fine-tuning of control rules.
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