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首页> 外文期刊>IEEE transactions on automation science and engineering: a publication of the IEEE Robotics and Automation Society >Simulating Polyculture Farming to Learn Automation Policies for Plant Diversity and Precision Irrigation
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Simulating Polyculture Farming to Learn Automation Policies for Plant Diversity and Precision Irrigation

机译:模拟混养农业,学习植物多样性和精准灌溉的自动化政策

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Polyculture farming, where multiple crop species are grown simultaneously, has potential to reduce pesticide and water usage while improving the utilization of soil nutrients. However, it is much harder to automate polyculture than monoculture. To facilitate research, we present AlphaGardenSim, a fast, first order, open-access polyculture farming simulator with single plant growth and irrigation models tuned using real world measurements. AlphaGardenSim can be used for policy learning as it simulates inter-plant dynamics, including light and water competition between plants in close proximity and approximates growth in a real greenhouse garden at 25, $000times $ the speed of natural growth. This paper extends earlier work with a new action space that includes planting, which dynamically finds new seed locations that increases resources utilization, and an adaptive sampling technique to reduce the number of actions taken at each timestep without affecting performance. We also evaluate other automation policies using a novel metric that combines plant diversity and canopy coverage. Code and supplementary material can be found at https://github.com/BerkeleyAutomation/AlphaGarden. Note to Practitioners—Monoculture farming is often characterized by heavy agrichemical inputs, such as chemical fertilizers and pesticides, and increased vulnerability to disease and pestilence. This paper is motivated by the lack of long-term sustainability of industrial agriculture, and its implications for human food security. Although polyculture is a sustainable alternative to monoculture farming, it requires more human labor and is more challenging to automate. In this paper we propose a fast, first order simulator that simulates the growth of plants in a polyculture setting. Simulation experiments suggest that the simulator can be used to learn a planting, watering and pruning plan a robot can follow to produce maximal yield from a diverse set of plants with limited irrigation, however it has not yet been tested on a physical garden. In future research we will develop a fully automated controller that will operate planting, irrigation and pruning tools in a physical garden over multiple plant growth cycles.
机译:混养农业,即同时种植多种作物,有可能减少农药和水的使用,同时提高土壤养分的利用率。然而,与单一栽培相比,自动化混养要困难得多。为了促进研究,我们推出了 AlphaGardenSim,这是一款快速、一阶、开放获取的混养农业模拟器,具有使用真实世界测量进行调整的单株生长和灌溉模型。AlphaGardenSim 可用于政策学习,因为它模拟植物之间的动态,包括近距离植物之间的光和水竞争,并近似于真实温室花园中的生长速度,即自然生长速度的 25 倍,000 美元。本文通过新的行动空间扩展了早期的工作,其中包括种植,动态找到新的种子位置,提高资源利用率,以及自适应采样技术,以减少每个时间步采取的行动数量,而不会影响性能。我们还使用结合了植物多样性和冠层覆盖率的新指标来评估其他自动化策略。代码和补充材料可在 https://github.com/BerkeleyAutomation/AlphaGarden 上找到。从业者须知——单一栽培农业的特点通常是大量农用化学品投入,如化肥和杀虫剂,并且更容易受到疾病和瘟疫的影响。本文的动机是工业化农业缺乏长期可持续性及其对人类粮食安全的影响。尽管混养是单一栽培农业的可持续替代方案,但它需要更多的人力,并且自动化更具挑战性。在本文中,我们提出了一种快速的一阶模拟器,用于模拟植物在混养环境中的生长。模拟实验表明,该模拟器可用于学习机器人可以遵循的种植、浇水和修剪计划,以在有限的灌溉条件下从各种植物中产生最大产量,但尚未在物理花园中进行测试。在未来的研究中,我们将开发一种全自动控制器,该控制器将在多个植物生长周期内操作物理花园中的种植、灌溉和修剪工具。

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