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用于引导植物生长的机器人传感与刺激提供

Robotic Sensing and Stimuli Provision for Guided Plant Growth.

作者信息

Wahby Mostafa, Heinrich Mary Katherine, Hofstadler Daniel Nicolas, Petzold Julian, Kuksin Igor, Zahadat Payam, Schmickl Thomas, Ayres Phil, Hamann Heiko

机构信息

Institute of Computer Engineering, University of Lübeck;

Institute of Computer Engineering, University of Lübeck; Centre for IT and Architecture, Royal Danish Academy.

出版信息

J Vis Exp. 2019 Jul 1(149). doi: 10.3791/59835.

Abstract

Robot systems are actively researched for manipulation of natural plants, typically restricted to agricultural automation activities such as harvest, irrigation, and mechanical weed control. Extending this research, we introduce here a novel methodology to manipulate the directional growth of plants via their natural mechanisms for signaling and hormone distribution. An effective methodology of robotic stimuli provision can open up possibilities for new experimentation with later developmental phases in plants, or for new biotechnology applications such as shaping plants for green walls. Interaction with plants presents several robotic challenges, including short-range sensing of small and variable plant organs, and the controlled actuation of plant responses that are impacted by the environment in addition to the provided stimuli. In order to steer plant growth, we develop a group of immobile robots with sensors to detect the proximity of growing tips, and with diodes to provide light stimuli that actuate phototropism. The robots are tested with the climbing common bean, Phaseolus vulgaris, in experiments having durations up to five weeks in a controlled environment. With robots sequentially emitting blue light-peak emission at wavelength 465 nm-plant growth is successfully steered through successive binary decisions along mechanical supports to reach target positions. Growth patterns are tested in a setup up to 180 cm in height, with plant stems grown up to roughly 250 cm in cumulative length over a period of approximately seven weeks. The robots coordinate themselves and operate fully autonomously. They detect approaching plant tips by infrared proximity sensors and communicate via radio to switch between blue light stimuli and dormant status, as required. Overall, the obtained results support the effectiveness of combining robot and plant experiment methodologies, for the study of potentially complex interactions between natural and engineered autonomous systems.

摘要

机器人系统在自然植物操控方面正受到积极研究,通常局限于诸如收获、灌溉和机械除草控制等农业自动化活动。在此基础上进行拓展,我们引入了一种新颖的方法,通过植物的信号传导和激素分布自然机制来操控植物的定向生长。一种有效的机器人刺激提供方法可为植物后期发育阶段的新实验,或为诸如塑造用于绿墙的植物等新生物技术应用开辟可能性。与植物的交互带来了几个机器人方面的挑战,包括对小而多变的植物器官进行近距离传感,以及除了所提供的刺激外,还需控制受环境影响的植物反应的驱动。为了引导植物生长,我们开发了一组固定机器人,这些机器人带有用于检测生长尖端接近程度的传感器,以及用于提供驱动向光性的光刺激的二极管。在可控环境下,对攀缘菜豆(Phaseolus vulgaris)进行了长达五周的实验来测试这些机器人。通过机器人依次发射波长为465 nm的蓝光峰值——植物生长成功地沿着机械支撑通过连续的二元决策被引导至目标位置。在高达180厘米的装置中测试生长模式,在大约七周的时间里,植物茎的累积长度生长到大约250厘米。这些机器人能够自我协调并完全自主运行。它们通过红外接近传感器检测接近的植物尖端,并根据需要通过无线电进行通信以在蓝光刺激和休眠状态之间切换。总体而言,所获得的结果支持了将机器人和植物实验方法相结合对于研究自然和工程自主系统之间潜在复杂相互作用的有效性。

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