Optimal Pesticide Scheduling in Precision Agriculture

Austin Jones, Usman Ali, M. Egerstedt
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引用次数: 16

Abstract

Agricultural automation presents challenges typically encountered in the realm of cyber-physical systems, such as incomplete information (plant health indicators), external disturbances (weather), limited control authority (fertilizers cannot make a plant mature arbitrarily fast), and a combination of discrete events and continuous plant dynamics. In this paper, we investigate the problem of optimal pesticide spray scheduling. Regulations impose strict requirements on scheduling, e.g., individual pesticides are only effective during certain seasons and pesticides cannot be sprayed too close to harvest time. We show how to translate these requirements to a metric temporal logic formula over the space of schedules. We next use the theory of optimal mode scheduling to generate a schedule that minimizes the risk of various infestations over time while guaranteeing the satisfaction of the constraints. We demonstrate this methodology via simulation with scheduling constraints based on recommendations and regulations from agricultural experts. Our case study considers blueberries, a crop whose cultivation currently involves little automation.
精准农业中农药最优调度
农业自动化提出了通常在网络物理系统领域遇到的挑战,例如不完整的信息(植物健康指标),外部干扰(天气),有限的控制权限(肥料不能使植物任意快速成熟),以及离散事件和连续植物动态的组合。本文研究了最优农药喷洒调度问题。法规对时间表有严格的要求,例如,个别农药只在某些季节有效,不能太接近收获时间喷洒农药。我们将展示如何将这些需求转换为日程空间上的度量时态逻辑公式。接下来,我们使用最优模式调度理论来生成一个调度计划,该计划可以在保证满足约束的情况下,使各种侵扰的风险随着时间的推移最小化。我们通过基于农业专家的建议和法规的调度约束的仿真来证明这种方法。我们的案例研究以蓝莓为例,这种作物的种植目前几乎没有自动化。
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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