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Real-time path planning for automating optical tweezers based particle transport operations.

机译:实时路径规划,用于基于镊子的粒子传输操作自动化。

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Optical tweezers (OT) have been developed to successfully trap, orient, and transport micro and nano scale components of many different sizes and shapes in a fluid medium. They can be viewed as robots made out of light. Components can be simply released from optical traps by switching off laser beams. By utilizing the principle of time sharing or holograms, multiple optical traps can perform several operations in parallel. These characteristics make optical tweezers a very promising technology for creating directed micro and nano scale assemblies. In the infra-red regime, they are useful in a large number of biological applications as well. This dissertation explores the problem of real-time path planning for autonomous OT based transport operations. Such operations pose interesting challenges as the environment is uncertain and dynamic due to the random Brownian motion of the particles and noise in the imaging based measurements. Silica microspheres having diameters between (1-20) mum are selected as model components.;Offline simulations are performed to gather trapping probability data that serves as a measure of trap strength and reliability as a function of relative position of the particle under consideration with respect to the trap focus, and trap velocity. Simplified models are generated using Gaussian Radial Basis Functions to represent the data in a compact form. These metamodels can be queried at run-time to obtain estimated probability values accurately and efficiently. Simple trapping probability models are then utilized in a stochastic dynamic programming framework to compute optimum trap locations and velocities that minimizes the total, expected transport time by incorporating collision avoidance and recovery steps. A discrete version of an approximate partially observable Markov decision process algorithm, called the QMDP_NLTDV algorithm, is developed. Real-time performance is ensured by pruning the search space and enhancing convergence rates by introducing a non-linear value function. The algorithm is validated both using a simulator as well as a physical holographic tweezer set-up. Successful runs show that the automated planner is flexible, works well in reasonably crowded scenes, and is capable of transporting a specific particle to a given goal location by avoiding collisions either by circumventing or by trapping other freely diffusing particles. This technique for transporting individual particles is utilized within a decoupled and prioritized approach to move multiple particles simultaneously. An iterative version of a bipartite graph matching algorithm is also used to assign goal locations to target objects optimally. As in the case of single particle transport, simulation and some physical experiments are performed to validate the multi-particle planning approach.
机译:已经开发了光镊(OT),以在流体介质中成功捕获,定向和运输许多不同大小和形状的微米和纳米级组件。可以将它们视为发光的机器人。通过关闭激光束,可以简单地从光阱释放组件。通过利用分时或全息图原理,多个光阱可以并行执行多个操作。这些特性使光镊成为制造定向微米和纳米级组件的非常有前途的技术。在红外条件下,它们也可用于许多生物学应用。本文探讨了基于OT的自主运输作业的实时路径规划问题。由于颗粒的随机布朗运动和基于成像的测量中的噪声,环境不确定且动态,因此此类操作提出了有趣的挑战。选择直径在(1-20)微米之间的二氧化硅微球作为模型组件;进行离线模拟以收集捕获概率数据,该数据用作捕获强度和可靠性的量度,该数据是所考虑的颗粒相对位置的函数到陷阱焦点和陷阱速度。使用高斯径向基函数生成简化的模型,以紧凑的形式表示数据。可以在运行时查询这些元模型,以准确,高效地获取估计的概率值。然后,在随机动态编程框架中使用简单的捕获概率模型来计算最佳的捕获位置和速度,从而通过合并避免碰撞和恢复步骤来最大程度地缩短总预期运输时间。开发了一种离散的近似可观察的马尔可夫决策过程算法,称为QMDP_NLTDV算法。通过修剪搜索空间并通过引入非线性值函数来提高收敛速度,可以确保实时性能。该算法已通过仿真器和物理全息镊子设置进行了验证。成功的运行表明,自动计划器灵活,在拥挤的场景中也能很好地工作,并且能够通过规避或捕获其他自由扩散的粒子来避免碰撞,从而能够将特定粒子运送到给定的目标位置。在分离和优先处理的方法中利用了这种用于运输单个粒子的技术,以同时移动多个粒子。二部图匹配算法的迭代版本也用于将目标位置最佳地分配给目标对象。与单粒子传输的情况一样,进行模拟和一些物理实验以验证多粒子规划方法。

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