Powered by acoustics, existing therapeutic and diagnostic procedures will become less invasive and new methods will become available that have never been available before. Acoustically driven microrobot navigation based on microbubbles is a promising approach for targeted drug delivery. Previous studies have used acoustic techniques to manipulate microbubbles in vitro and in vivo for the delivery of drugs using minimally invasive procedures. Even though many advanced capabilities and sophisticated control have been achieved for acoustically powered microrobots, there remain many challenges that remain to be solved. In order to develop the next generation of intelligent micro/nanorobots, it is highly desirable to conduct accurate identification of the micro-nanorobots and to control their dynamic motion autonomously. Here we use reinforcement learning control strategies to learn the microrobot dynamics and manipulate them through acoustic forces. The result demonstrated for the first time autonomous acoustic navigation of microbubbles in a microfluidic environment. Taking advantage of the benefit of the second radiation force, microbubbles swarm to form a large swarm, which is then driven along the desired trajectory. More than 100 thousand images were used for the training to study the unexpected dynamics of microbubbles. As a result of this work, the microrobots are validated to be controlled, illustrating a good level of robustness and providing computational intelligence to the microrobots, which enables them to navigate independently in an unstructured environment without requiring outside assistance.
翻译:以声学、现有治疗和诊断程序为动力,现有治疗和诊断程序将减少侵入性,新的方法将出现,而以前从未提供过。以微泡为主的由声力驱动微机器人导航是一种很有希望的定向药物交付方法。以前的研究曾使用声学技术在体外和体内操纵微泡,使用极小侵入程序运送药物。尽管对声力微机器人已经取得了许多先进的能力和尖端控制,但仍有许多挑战有待解决。为了发展下一代智能微型/纳米机器人,极有必要对微型-纳米机器人进行精确识别,并自主控制其动态。我们使用强化控制战略来学习微机器人的动态,并通过声学力量加以操纵。在微氟化环境中首次对微泡进行自主的声学导航,利用第二发辐射力的优势,微泡将微泡变成一个大浪,然后沿着理想的轨迹驱动,对微型-纳米机器人进行精确的精确识别,这样可以独立地将100 000多张的显性图像用于对精密的计算。