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open-access-imgOpen AccessIntermittent Deployment for Large-Scale Multi-Robot Forage Perception: Data Synthesis, Prediction, and Planning
Author(s)
Jun Liu,
Murtaza Rangwala,
Kulbir Singh Ahluwalia,
Shayan Ghajar,
Harnaik Dhami,
Pratap Tokekar,
Benjamin Tracy,
Ryan K. Williams
Publication year2024
Publication title
ieee transactions on automation science and engineering
Resource typeMagazines
PublisherIEEE
Monitoring the health and vigor of grasslands is vital for informing management decisions to optimize rotational grazing in agriculture applications. To take advantage of forage resources and improve land productivity, we require knowledge of pastureland growth patterns that is simply unavailable at the state of the art. In this paper, we propose to deploy a team of robots to monitor the evolution of an unknown pastureland environment to fulfill the above goal. To monitor such an environment, which usually evolves slowly, we need to design a strategy for rapid assessment of the environment over large areas at a low cost. Thus, we propose an integrated pipeline comprising data synthesis, deep neural network training, and prediction along with a multi-robot deployment algorithm that monitors pasturelands intermittently. Specifically, using expert-informed agricultural data coupled with novel data synthesis in ROS Gazebo, we first propose a new neural network architecture to learn the spatiotemporal dynamics of the environment. Such predictions help us to understand pastureland growth patterns on large scales and make appropriate monitoring decisions for the future. Based on our predictions, we then design an intermittent multi-robot deployment policy for low-cost monitoring. Finally, we compare the proposed pipeline with other methods, from data synthesis to prediction and planning, to corroborate our pipeline’s performance. Note to Practitioners—Pasturelands are an integral part of agricultural production in the United States. To take full advantage of the forage resource and avoid environmental degradation, pastureland must be managed optimally. This paper focuses on the question of how to deploy robot teams to sense and model physical processes over varying timescales. The goal of this work is to develop a new integrated pipeline for the long-term deployment of heterogeneous robot teams grounded in the problem of autonomous monitoring in precision grazing to improve land productivity. By using the proposed pipeline in grassland ecosystem management, we will have a better understanding of the physical environment while respecting energy budgets.
Subject(s)components, circuits, devices and systems , power, energy and industry applications , robotics and control systems
Keyword(s)Monitoring, Predictive models, Pipelines, Agriculture, Spatiotemporal phenomena, Planning, Data models, Precision agriculture, intermittent deployment, planning, spatiotemporal prediction, deep learning
Language(s)English
SCImago Journal Rank1.314
H-Index87
eISSN1558-3783
pISSN1545-5955
DOI10.1109/tase.2022.3211873

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