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A trajectory-based calibration method for stochastic motion models

机译:一种基于轨迹的随机运动模型标定方法

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In this paper, we present a quantitative, trajectory-based method for calibrating stochastic motion models of water-floating robots. Our calibration method is based on the Correlated Random Walk (CRW) model, and consists in minimizing the Kolmogorov-Smirnov (KS) distance between the step length and step angle distributions of real and simulated trajectories generated by the robots. First, we validate this method by calibrating a physics-based motion model of a single 3-cm-sized robot floating at a water/air interface under fluidic agitation. Second, we extend the focus of our work to multi-robot systems by performing a sensitivity analysis of our stochastic motion model in the context of Self- Assembly (SA). In particular, we compare in simulation the effect of perturbing the calibrated parameters on the predicted distributions of self-assembled structures. More generally, we show that the SA of water-floating robots is very sensitive to even small variations of the underlying physical parameters, thus requiring real-time tracking of its dynamics.
机译:在本文中,我们提出了一种基于轨迹的定量方法,用于校准水上漂浮机器人的随机运动模型。我们的校准方法基于相关随机游走(CRW)模型,并且包括最小化由机器人生成的真实和模拟轨迹的步长与步距角分布之间的Kolmogorov-Smirnov(KS)距离。首先,我们通过校准在流体搅拌下漂浮在水/空气界面的单个3厘米大小机器人的基于物理学的运动模型来验证该方法。第二,我们通过在自组装(SA)的背景下对随机运动模型进行敏感性分析,将工作重点扩展到多机器人系统。特别是,我们在仿真中比较了扰动校准参数对自组装结构的预测分布的影响。更一般地说,我们显示出水上漂浮机器人的SA对基本物理参数的很小变化都非常敏感,因此需要对其动力学进行实时跟踪。

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