螺旋局部扫描增强afm纳米机器人环境感知能力

Zhiyong Sun, N. Xi, Huiyang Yu, Yuxuan Xue, Sheng Bi, Liangliang Chen
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引用次数: 1

摘要

基于原子力显微镜(AFM)的纳米机器人技术以其纳米级的空间分辨率、对各种环境的适应性以及众多先进的测量方法等优势得到了广泛的应用。尽管AFM具有纳米级的成像分辨率,但由于复杂的不确定性,特别是针尖与环境相互作用的非线性和随机漂移的影响,很难达到纳米级的针尖定位精度。由于AFM图像通常用作纳米操作的地图,因此不确定性失真图像必然会导致真实纳米世界与捕获的纳米世界之间的位置偏差,这通常会导致任务效率低下甚至失败。此外,复杂的尖端-环境相互作用通常难以建模和准确预测,这也会导致任务失败。因此,为了在纳米尺度上实现高精度的操作,需要提高基于afm的纳米机器人的环境感知能力。本文提出了一种局部环境感知方法,通过开发由结构化目标位置检测功能和局部环境成像功能组成的多功能螺旋局部扫描(MSLS)策略来检测纳米机器人尖端与周围环境之间的定位不确定性。简单地说,提出了类球/圆柱体目标位置检测策略;针对数十纳米尺度下检测任务中存在的严重噪声问题,提出了一种尖端运动预测器,并在此基础上建立了局部成像方法。通过实验研究验证了MSLS方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Environmental Sensing Capability of AFM-based Nanorobot Via Spiral Local Scan Strategy
Atomic force microscopy (AFM) based nanorobotic technology has been widely implemented in light of the overwhelming advantages, such as nanometer spatial resolution, adaptability to various ambient, and numerous advanced measurement approaches. It is noted that even though the AFM possesses nanometer imaging resolution, it is hard to achieve nanometer tip locating precision due to complicated uncertainties, especially the nonlinearity of tip-environment interaction and the random drift influence. Since an AFM image is typically utilized as a map for nanomanipulation, the uncertainty distorted image will definitely introduce location deviation between the real and the captured nano-world, which typically leads to low efficiency or even failure of tasks. Besides, complicated tip-environment interaction is generally hard to model and to make accurate prediction, which will also lead to task failure. Therefore, to achieve highly accurate operation at the nanoscale, environmental sensing capability of AFM-based nanorobot should be promoted. In this paper, we propose a local environment sensing approach to detect positioning uncertainty between nanorobot tip and its surroundings by developing a multi-functional spiral local scan (MSLS) strategy comprised of structured objects location detection function and local surroundings imaging function. Briefly, sphere/cylinder-like object location detection strategies were proposed; a tip motion predictor was developed to tackle the heavy noise issue of detection tasks at dozens of nanometers scale, based on which a local area imaging approach was established. Efficiency of the MSLS method was verified through experimental study.
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