Jetson Nano在植物胁迫检测和田间喷洒决策中的应用

M. A. D. Oliveira, Gregory Sedrez, G. Souza, G. H. Cavalheiro
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引用次数: 3

摘要

提高田间生产力不仅是一个经济需求,也是一个社会问题。几种技术融合在一起促进粮食生产,在这种情况下,雾计算范式可以支持精准农业解决方案的开发。本文提出了Jetson纳米装置在农用喷雾器中的应用。该设备根据分布在田间的传感器收集的数据支持灌溉活动的决策。传感器从电信号中读取有关植物压力水平的信息,Jetson Nano通过机器学习算法进行实时分析,根据作物状况管理产品喷洒速度。最初的研究在实验基础上验证了提出的解决方案,表明该设备可以作为这一目的的替代方案,因为它可以有效地用于从传感器收集的数据中进行机器学习任务。实验还突出了所提出的解决方案的一些局限性,例如为了提高喷涂过程中的性能,必须观察整个系统的条件、其背景和环境。
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An Application with Jetson Nano for Plant Stress Detection and On-field Spray Decision
Increasing field productivity is not just a financial need, but also a social issue. Several technologies converge to promote food production and, in this context, the fog computing paradigm can support the development of solutions for precision agriculture. This paper proposes an application of the Jetson Nano device, embedded in an agricultural spraying implement. This device supports the decision on irrigation activity, based on data collected by sensors distributed in the field. The sensors read information about the plant’s stress level from electrical signals and the Jetson Nano enables real-time analysis, through machine learning algorithms, to manage the product spray rate, according to the condition of the crop. Initial studies validated the proposed solution on an experimental basis, showing that the device can be an alternative for this purpose, since it can be used efficiently in machine learning tasks from data collected by the sensors. The experiment also highlighted some limitations of the proposed solution, such as the importance of observing the conditions of the system as a whole, its context and environment, in order to improve performance in spraying process.
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