Del Dottore Emanuela, Mondini Alessio, Rowe Nick, Mazzolai Barbara
Bioinspired Soft Robotics Laboratory, Fondazione Istituto Italiano di Tecnologia, Genova, Italy.
AMAP Laboratory, University of Montpellier, CIRAD, CNRS, INRAE, IRD, Montpellier, France.
Sci Robot. 2024 Jan 17;9(86):eadi5908. doi: 10.1126/scirobotics.adi5908.
Self-growing robots are an emerging solution in soft robotics for navigating, exploring, and colonizing unstructured environments. However, their ability to grow and move in heterogeneous three-dimensional (3D) spaces, comparable with real-world conditions, is still developing. We present an autonomous growing robot that draws inspiration from the behavioral adaptive strategies of climbing plants to navigate unstructured environments. The robot mimics climbing plants' apical shoot to sense and coordinate additive adaptive growth via an embedded additive manufacturing mechanism and a sensorized tip. Growth orientation, comparable with tropisms in real plants, is dictated by external stimuli, including gravity, light, and shade. These are incorporated within a vector field method to implement the preferred adaptive behavior for a given environment and task, such as growth toward light and/or against gravity. We demonstrate the robot's ability to navigate through growth in relation to voids, potential supports, and thoroughfares in otherwise complex habitats. Adaptive twining around vertical supports can provide an escape from mechanical stress due to self-support, reduce energy expenditure for construction costs, and develop an anchorage point to support further growth and crossing gaps. The robot adapts its material printing parameters to develop a light body and fast growth to twine on supports or a tougher body to enable self-support and cross gaps. These features, typical of climbing plants, highlight a potential for adaptive robots and their on-demand manufacturing. They are especially promising for applications in exploring, monitoring, and interacting with unstructured environments or in the autonomous construction of complex infrastructures.
自生长机器人是软机器人领域中一种新兴的解决方案,用于在非结构化环境中导航、探索和开拓。然而,它们在与现实世界条件相当的异质三维(3D)空间中生长和移动的能力仍在发展中。我们展示了一种自主生长机器人,它从攀缘植物的行为适应性策略中汲取灵感,以在非结构化环境中导航。该机器人模仿攀缘植物的顶芽,通过嵌入式增材制造机制和带有传感器的尖端来感知和协调累加式适应性生长。与真实植物中的向性类似,生长方向由包括重力、光和阴影在内的外部刺激决定。这些因素被纳入矢量场方法中,以实现针对给定环境和任务的首选适应性行为,例如向光生长和/或逆重力生长。我们展示了该机器人通过在复杂栖息地中的空洞、潜在支撑物和通道周围生长来导航的能力。围绕垂直支撑物的适应性缠绕可以因自我支撑而摆脱机械应力,减少构建成本的能量消耗,并形成一个锚固点以支持进一步生长和跨越间隙。机器人会调整其材料打印参数,以形成较轻的主体并实现快速生长以便缠绕在支撑物上,或者形成更坚固的主体以实现自我支撑并跨越间隙。这些攀缘植物所特有的特征突出了自适应机器人及其按需制造的潜力。它们在探索、监测非结构化环境以及与之交互或在复杂基础设施的自主建设方面的应用前景尤其广阔。