Dynamic Control Framework for Automated Particle Transport Based on Optically Induced Dielectrophoresis

Jiaxin Liu, Huaping Wang, Qing Shi, Xinyi Dong, Kaijun Lin, Tao Sun, Qiang Huang, Toshio Fukuda
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Abstract

As a high-throughput and highly flexible technique, optically induced dielectrophoresis (ODEP) is one of the most promising micromanipulation techniques applied for biomedical studies. However, most ODEP-based manipulation methods have not been explored deeply in terms of accurate control under unstructured environments with multiple interference. This paper reports a dynamic control framework for automatically transporting single particle to goal position in a complex environment with an optically induced dielectrophoresis platform. The POMDP-based path planner periodically provides the optimal motion strategy based on the real-time environmental information and current position of the particle to avoid collisions with randomly moving obstacles. The optimal motion strategies are smoothly expanded to short-distance trajectories, which are dynamically followed by the target particle with proxy-based sliding mode control (PSMC) closed-loop controller. Experimental results indicated that compared with traditional controllers such as PID, our control method possesses higher accuracy and stability in path following. In addition, the performance of the path planner was demonstrated by transporting a NIH/3T3 cell to the desired position within a relatively crowded environment.
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基于光诱导介质电泳的粒子自动输运动态控制框架
作为一种高通量和高度灵活的技术,光诱导电介质电泳(ODEP)是生物医学研究中最有前途的微操作技术之一。然而,大多数基于odep的操作方法在多干扰的非结构化环境下的精确控制方面还没有得到深入的研究。本文报道了一种利用光诱导电介质电泳平台在复杂环境中实现单粒子自动移动到目标位置的动态控制框架。基于pomdp的路径规划器根据粒子的实时环境信息和当前位置周期性地提供最优运动策略,避免与随机移动的障碍物发生碰撞。将最优运动策略平滑地扩展到短距离运动轨迹,并采用基于代理的滑模控制(PSMC)闭环控制器对目标粒子进行动态跟踪。实验结果表明,与PID等传统控制器相比,该控制方法具有更高的路径跟踪精度和稳定性。此外,通过在相对拥挤的环境中将NIH/3T3细胞运送到所需位置,证明了路径规划器的性能。
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