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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 >Informed Sampling-Based Motion Planning for Manipulating Multiple Micro Agents Using Global External Electric Fields
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Informed Sampling-Based Motion Planning for Manipulating Multiple Micro Agents Using Global External Electric Fields

机译:基于采样的知情运动规划,用于使用全局外部电场操纵多个微代理

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Online manipulation of multiple micro- and nanoscale agents is of major interest for various research applications. Among the biggest limitations of wireless external actuation are its global and coupled influences in the workspace, which limit the robust manipulation of multiple agents independently and simultaneously. In this paper, we propose novel motion planning algorithms, $tt Bi$ - $tt iSST$ and $tt Ref$ - $tt iSST$ , to quickly generate time-optimal trajectories for multiple agents sharing global external fields. Both algorithms are extended by the stable sparse rapidly-exploring random tree kinodynamic motion planning algorithm. The $tt Bi$ - $tt iSST$ uses a bidirectional approach to speed up the searching process. A novel connection process is proposed to connect the two trees efficiently by applying an optimization procedure. The $tt Ref$ - $tt iSST$ uses the workspace information to quickly generate global-routing trajectories as references, then guides the search process more effectively by getting more accurate heuristics according to the reference global-routing trajectories. A transition matrix similar to that in Markov Decision Processes is used to form the reference trajectory. Compared with the state-of-the-art $tt iSST$ algorithm, the proposed algorithms quickly update feasible solutions and converge to a near-optimal, minimum-time solution to increase the efficiency of the simultaneous manipulation of multiple micro agents using global external fields. Extensive analysis and physical experiments are presented to confirm the effectiveness and the performance of the motion planning algorithms. Note to Practitioners—Autonomous manipulation of multiple micro- and nanoscale agents is of major interest for various research applications. Wireless actuation is a promising way to position those objects. The commonly used non-contact actuation techniques include magnetic actuation, electrical field actuation, optical tweezers, and actuated flows, etc. Among the biggest limitations of wireless external actuation are its global and coupled influences in the workspace, which limit the capability to robustly manipulate multiple agents independently and simultaneously. In this paper, we propose novel bidirectional informed sampling-based motion planning algorithms to quickly generate time-optimal trajectories for multiple agents sharing global external fields. Novel heuristics and informed reference trajectory are used to guide the search for manipulating multiple agents under global fields. Numerical simulations and physical experiments are presented to demonstrate the performance of the motion planning design. The proposed algorithm guarantees anytime performance and quickly converges to a near-optimal minimum time solution for multiple agents. Although we focus on the electric-field actuated multiple-micro-agent system, the proposed motion planning strategies are not limited to the actuation and can be generalized to other field-based applications, in which the actuation among a group of multiple agents are coupled or intertwined.
机译:在线操作多种微米级和纳米级试剂是各种研究应用的主要兴趣。无线外部驱动的最大局限性之一是其在工作空间中的全局和耦合影响,这限制了独立和同时对多个代理的稳健操作。在本文中,我们提出了一种新的运动规划算法,$tt Bi$ - $tt iSST$ 和 $tt Ref$ - $tt iSST$ ,以快速为共享全局外部场的多个智能体生成时间最优轨迹。这两种算法都由稳定稀疏快速探索的随机树动力学运动规划算法进行扩展。$tt Bi$ - $tt iSST$ 使用双向方法来加快搜索过程。提出了一种新的连接过程,通过应用优化程序有效地连接两棵树。$tt Ref$ - $tt iSST$ 使用工作空间信息快速生成全局路由轨迹作为参考,然后根据参考全局路由轨迹获得更准确的启发式方法,从而更有效地指导搜索过程。使用类似于马尔可夫决策过程中的转移矩阵来形成参考轨迹。与最先进的$tt iSST$算法相比,所提算法可以快速更新可行的解决方案,并收敛到一个近乎最优的、最短时间的解决方案,以提高使用全局外场同时操作多个微代理的效率。通过大量的分析和物理实验,验证了运动规划算法的有效性和性能。从业者须知 - 自主操作多个微米级和纳米级试剂对于各种研究应用都具有重要意义。无线驱动是定位这些物体的一种很有前途的方法。常用的非接触式致动技术有磁致动、电场致动、光镊、驱动流等。无线外部驱动的最大局限性之一是其在工作空间中的全局和耦合影响,这限制了独立和同时稳健地操纵多个代理的能力。在本文中,我们提出了一种基于双向知情采样的运动规划算法,以快速为共享全局外部场的多个智能体生成时间最优轨迹。采用新颖的启发式方法和知情参考轨迹来指导全局场下操纵多个智能体的搜索。通过数值模拟和物理实验验证了运动规划设计的性能。所提出的算法保证了随时性能,并快速收敛到多个智能体的近乎最优的最短时间解。虽然我们专注于电场驱动的多微智能体系统,但所提出的运动规划策略并不局限于驱动,还可以推广到其他基于现场的应用,其中一组多个智能体之间的驱动是耦合或交织的。

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