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Optimised dispensing of predatory mites by multirotor UAVs in wind: A distribution pattern modelling approach for precision pest management

机译:风化中的多陆无人机优化分配雷维螨:一种精密虫害管理的分布式模型方法

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摘要

Multirotor unmanned aerial vehicles (UAVs), or drones, are increasingly being used to spray liquid pesticides to control emerging pest infestations in field crops. In recent years, UAVs have been used to release predatory mites and other natural enemies to optimise and promote sustainable pest management practices by relying less on conventional insecticides. Drone dispensed samples of predatory mites are typically mixed with a granular material, vermiculite, which serves as a filler. The low density of the vermiculite and weather conditions (mainly wind), influences the distribution pattern of predatory mites when delivered by a UAV-based system. The purpose of this paper is to present a data driven methodology to develop a mathematical model that can be used to optimise UAV-based autonomous dispensing of predatory mites. The model characterises the distribution of vermiculite as a function of wind speed and direction, and the UAVs altitude and forward speed. The model is constructed by first conducting outdoor experiments and then using machine-learning techniques on the collected data. The constructed model produced an average generalisation error of 12.8%, RMSE. Due to its parametric and predictive nature, the model is amenable for the future design of UAV flight controllers that can compensate for the targeting error caused by wind. The proposed modelling methodology could be useful not only for the dispensing of predatory mites, but also for other UAV dispensing applications, such as liquid or granular pesticide deliveries. (C) 2019 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:多陆无人机空中车辆(无人机)或无人机越来越多地用于喷洒液体杀虫剂以控制野外作物中的新兴害虫。近年来,无人机已被用来释放掠食性螨虫和其他自然敌人,以优化和促进可持续的害虫管理实践,依赖于常规杀虫剂。无人机分配的捕食物样品通常与颗粒材料,蛭石混合,其用作填料。蛭石和天气条件的低密度(主要是风),在由无人机的系统交付时,影响掠夺性螨虫的分布模式。本文的目的是提出数据驱动方法,以开发一种数学模型,可用于优化基于UV的自主分配谓语。该模型表征了蛭石的分布作为风速和方向的函数,以及无人机的高度和前进速度。该模型是通过首先进行室外实验构建,然后在收集的数据上使用机器学习技术构成。构造模型产生了12.8%,RMSE的平均泛化误差。由于其参数和预测性质,该模型适用于UAV飞行控制器的未来设计,可以补偿由风引起的目标误差。所提出的建模方法不仅适用于捕食性螨虫的分配,而且可以用于其他无人机分配应用,例如液体或粒状农药递送。 (c)2019年IAGRE。 elsevier有限公司出版。保留所有权利。

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