Online real-time platform for microrobot steering in a multi-bifurcation

Benjamin W. Jarvis, R. Poli, A. K. Hoshiar
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引用次数: 2

Abstract

The study of methods to control a collection of ferrous microparticles (microswarm) within an electromagnetic field is a branch of medical robotics that has many promising applications. To this date, most simulated data is obtained from accurate but time-consuming simulations of which the biggest disadvantage is the removal of the human from the control loop. In practice a human in the loop will in many cases be controlling the microswarms. In order to re-introduce the human aspect into the control loop, this paper describes the development and validation of a real time simulator. By satisfying the real time requirement, we can record users interactions with the microswarm in a similar way that the user would react with real world particles. The context of each simulation is for the user to direct a microswarm through a multi-bifurcation towards a selected outlet. The percentage of particles reaching the selected outlet is considered as the success metric. The model has been verified against previous experimental data.The platform showed 8% deviation from the experimental data. Parametric studies were then undertaken, providing an initial data set to analyse different real time articulation strategies. It was found that the fluid flow velocity made the most difference to the success of the user. With lower fluid flow velocities of 0.001m/s to 0.005m/s, close to 100% of particles reached the chosen outlet. This drops to around only 30% of particles reaching the chosen outlet at a fluid flow velocity of 0.25m/s. The other parameters particle size and capped magnetic force produced a much lesser variation in results, with the maximum and minimum recorded numbers of particles reaching the chosen outlet for both tests only ranging 20% each. The platform, being generic, would also be appropriate as a training tool.
多分支微型机器人转向在线实时平台
研究在电磁场中控制铁微粒集合(微群)的方法是医疗机器人的一个分支,具有许多有前途的应用。到目前为止,大多数模拟数据都是从精确但耗时的模拟中获得的,其最大的缺点是将人从控制回路中移除。在实践中,在许多情况下,一个人将控制微群。为了在控制回路中重新引入人的方面,本文描述了一个实时模拟器的开发和验证。通过满足实时需求,我们可以记录用户与微群的交互,就像用户与现实世界中的粒子的反应一样。每个模拟的上下文都是用户引导微群通过多分叉走向选定的出口。到达所选出口的颗粒百分比被视为成功度量。该模型已与以往的实验数据进行了验证。该平台与实验数据偏差为8%。然后进行参数化研究,提供初始数据集来分析不同的实时发音策略。研究发现,流体流动速度对用户的成功与否影响最大。在0.001m/s ~ 0.005m/s较低的流体流速下,接近100%的颗粒到达所选出口。当流体流速为0.25m/s时,只有约30%的颗粒到达选定的出口。其他参数粒度和封顶磁力对结果的影响要小得多,两个测试中到达所选出口的最大和最小记录颗粒数各仅为20%。该平台是通用的,也适合作为培训工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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