Living Machines Laboratory, School of Information Science and Technology, ShanghaiTech University, Shanghai, China.
Hamlyn Centre, Imperial College London, London, United Kingdom.
PLoS One. 2022 Mar 24;17(3):e0265340. doi: 10.1371/journal.pone.0265340. eCollection 2022.
Robots with the ability to actively acquire power from surroundings will be greatly beneficial for long-term autonomy and to survive in uncertain environments. In this work, a scenario is presented where a robot has limited energy, and the only way to survive is to access the energy from an unregulated power source. With no wires or resistors available, the robot heuristically learns to maximize the input voltage on its system while avoiding potential obstacles during the connection. CircuitBot is a 6 DOF manipulator capable of drawing circuit patterns with graphene-based conductive ink, and it uses a state-of-the-art continuous/categorical Bayesian Optimization to optimize the placement of conductive shapes and maximize the energy it receives. Our comparative results with traditional Bayesian Optimization and Genetic algorithms show that the robot learns to maximize the voltage within the smallest number of trials, even when we introduce obstacles to ground the circuit and steal energy from the robot. As autonomous robots become more present, in our houses and other planets, our proposed method brings a novel way for machines to keep themselves functional by optimizing their own electric circuits.
具有从周围环境主动获取能量能力的机器人将极大地有益于长期自主性,并在不确定的环境中生存。在这项工作中,提出了一种机器人能量有限的情况,其唯一的生存方式是从不受监管的电源获取能量。由于没有电线或电阻器可用,机器人通过启发式学习来最大限度地提高系统的输入电压,同时在连接过程中避免潜在的障碍物。CircuitBot 是一个 6 自由度的机械臂,能够用基于石墨烯的导电墨水绘制电路图案,它使用最先进的连续/分类贝叶斯优化来优化导电形状的放置位置,并最大限度地提高其接收的能量。我们与传统贝叶斯优化和遗传算法的比较结果表明,即使我们引入障碍物来接地电路并从机器人窃取能量,机器人也能在最少的试验次数内学会最大化电压。随着自主机器人在我们的房屋和其他星球上变得越来越普遍,我们提出的方法为机器通过优化自己的电路来保持自身功能提供了一种新的方式。