UAV and UGV Assisted Path Planning for Sensor Data Collection in Precision Agriculture

Himanshu Singh, Moirangthem Biken Singh, Harsh Pratik, A. Pratap
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Abstract

In recent years, automated (Intelligent) decision support systems have become prevalent in various smart city applications such as healthcare, transportation, energy management, and environmental monitoring. Internet of Things (IoT) and Unmanned Aerial Vehicle (UAV)-based smart sensing and actuation devices in agricultural events can change the sector from static and manual to dynamic and intelligent, resulting in increased production with minimal human efforts. In addition, soil measurements that are time-consuming can be collected using Unmanned Ground Vehicles (UGVs). However, to collect data efficiently from wireless sensors in agricultural fields, UAV and UGV need to follow an optimal path. Thus, in this paper, we formulate utility maximization problem using UAV and UGV by simultaneously minimizing energy consumption and maximizing data collection. To solve the formulated problem, we propose a modified Greedy Randomised Adaptive Search Procedure (GRASP) algorithm to predict an efficient path for UAV and UGV to collect data from the agricultural field. Moreover, the efficacy of the proposed algorithm is showcased theoretically and experimentally on real-world data and compared with other state-of-the-art methods.
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无人机和UGV辅助的精准农业传感器数据采集路径规划
近年来,自动化(智能)决策支持系统在各种智能城市应用中变得普遍,例如医疗保健、交通、能源管理和环境监测。农业活动中基于物联网(IoT)和无人机(UAV)的智能传感和驱动设备可以将该部门从静态和手动转变为动态和智能,从而以最少的人力增加产量。此外,耗时的土壤测量可以使用无人地面车辆(ugv)进行收集。然而,为了有效地从农业领域的无线传感器中收集数据,无人机和UGV需要遵循最优路径。因此,在本文中,我们通过同时最小化能耗和最大化数据收集来制定无人机和UGV的效用最大化问题。为了解决这个问题,我们提出了一种改进的贪婪随机自适应搜索程序(GRASP)算法来预测无人机和UGV从农田收集数据的有效路径。此外,该算法的有效性在理论和实验上都得到了验证,并与其他最新方法进行了比较。
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