单粒子跟踪合成运动的前馈控制。

Nicholas A Vickers, Sean B Andersson
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摘要

单粒子追踪(SPT)是一种以纳米分辨率研究生物分子迁移的方法。遗憾的是,最近的报告显示,位置定位的系统误差和模型参数估计的不确定性限制了这些技术在研究生物过程中的实用性。我们需要一种具有已知地面实况的实验方法,以测试整个 SPT 系统(样本、显微镜、算法)的定位和模型参数估计。合成运动是一种已知的地面实况方法,可使粒子沿轨迹移动。该轨迹是马尔可夫随机过程的实现,代表了生物分子传输模型。在这里,我们描述了一个利用普通设备和众所周知的简单方法来创建合成运动的平台,生物物理学界可以很容易地采用这些方法。在本文中,我们介绍了合成运动系统和校准,以达到纳米级的精度和准确度。通过线扫描和网格扫描分析了稳态输入-输出特性。由此产生的关系用仿射变换来描述,该变换被反转并用作预滤波器。使用模型反馈控制来增加系统带宽。利用 FPGA 控制器内置的相干解调集成步进正弦,通过频率响应函数测量确定系统模型。零幅度误差跟踪控制器方法用于反转非最小相位零点,以实现稳定的离散时间前馈滤波器。
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Feedforward Control for Single Particle Tracking Synthetic Motion.

Single particle tracking (SPT) is a method to study the transport of biomolecules with nanometer resolution. Unfortunately, recent reports show that systematic errors in position localization and uncertainty in model parameter estimates limits the utility of these techniques in studying biological processes. There is a need for an experimental method with a known ground-truth that tests the total SPT system (sample, microscope, algorithm) on both localization and estimation of model parameters. Synthetic motion is a known ground-truth method that moves a particle along a trajectory. This trajectory is a realization of a Markovian stochastic process that represents models of biomolecular transport. Here we describe a platform for creating synthetic motion using common equipment and well-known, simple methods that can be easily adopted by the biophysics community. In this paper we describe the synthetic motion system and calibration to achieve nanometer accuracy and precision. Steady state input-output characteristics are analyzed with both line scans and grid scans. The resulting relationship is described by an affine transformation, which is inverted and used as a prefilter. Model inverse feed forward control is used to increase the system bandwidth. The system model was identified from frequency response function measurements using an integrated stepped-sine with coherent demodulation built into the FPGA controller. Zero magnitude error tracking controller method was used to invert non-minimum phase zeros to achieve a stable discrete time feed forward filter.

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