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UKF-based Identification of Time-Varying Manual Control Behaviour

机译:基于UKF的时变手动控制行为识别

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摘要

This paper describes a novel method for time-varying identification of Human Controller (HC) manual control parameters (called UKF-FPV), based on a steady-state (constant state covariance) Unscented Kalman Filter (UKF). This approach requires noa prioriassumptions on the shape of HC parameter variations, which is a potential advantage over state-of-the-art methods such as the recently proposed MLE-APV approach, for which a sigmoid-shaped parameter variation is assumed. For a scenario where an HC performs a single-loop compensatory tracking task with time-varying controlled system dynamics, both identification methods are compared using Monte Carlo simulations and human-in-the-loop experiment data. Despite some lag in the HC parameter traces of UKF-FPV, the identification results and the HC model quality-of-fit obtained with both methods were found to match well for both the simulation and experiment data. For the experiment data, UKF-FPV even revealed clear "local" changes in HC parameters not captured by the MLE-APV approach, which confirms that HCs adaptunpredictablyeven in what are considered time-invariant conditions. Overall, the results show that an identification method that requires noa prioriassumptions on HC parameter variations is of critical importance for a complete analysis of time-varying HC behaviour.
机译:本文介绍了一种基于状态(恒定协方差)无味卡尔曼滤波器(UKF)的时变识别人机控制器(HC)手动控制参数(称为UKF-FPV)的新方法。该方法不需要对HC参数变化的形状进行先验假设,这相对于最新方法(例如最近提出的MLE-APV方法)具有潜在优势,在该方法中,假定为S型曲线参数变化。对于HC执行时变受控系统动力学的单回路补偿跟踪任务的情况,使用蒙特卡洛模拟和人工在环实验数据对两种识别方法进行了比较。尽管UKF-FPV的HC参数轨迹有些滞后,但发现通过两种方法获得的识别结果和HC模型拟合质量与仿真和实验数据都非常匹配。对于实验数据,UKF-FPV甚至揭示了MLE-APV方法无法捕获的HC参数的明显“局部”变化,这证实了HC即使在被认为是时不变的条件下也无法预测地适应。总体而言,结果表明,对于HC参数变化的完整分析,不需要HC参数变化的先验假设的鉴定方法至关重要。

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