Motion Prediction for Teleoperating Autonomous Vehicles using a PID Control Model

M. Prexl, N. Zunhammer, U. Walter
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引用次数: 1

Abstract

Teleoperating autonomous vehicles is challenging due to latency and bandwidth constraints. In order to increase operator safety and situation awareness, techniques similar to motion planning for control of autonomous cars in dynamic environments have been adapted for aerial vehicles in this study. An overview of a novel concept based on reconstruction of the environment, user handling, and predictive modeling will be given. The working principle of predictive motion for teleoperating vehicles is explained and key metrics are introduced to compare changes of model parameters. A proportional-integral-derivative (PID) control model has been developed and integrated into the concept. The concept has been evaluated based on flight simulations as well as with actual test flights. The sensitivity of the PID parameters and the impact of the correct estimation of the predicted latency were investigated. The concept has been successfully been demonstrated with a DJI M600 hexacopter. The analysis indicates a high sensitivity for the P-component and low sensitivity for I and D components for an accurate prediction. Latency analysis shows that underestimation of the real latency does not have as high an impact as overestimating it and that the model fits best for latencies below 250 ms. Furthermore, the implemented model lacks the prediction accuracy in the acceleration phase and a representative inertial model. The here presented model is a novel approach to handle the predicted motion of teleoperated vehicles and shows promising results in accuracy and parameter sensitivity.
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基于PID控制模型的遥控自动驾驶汽车运动预测
由于延迟和带宽限制,远程操作自动驾驶汽车具有挑战性。为了提高操作人员的安全性和态势感知能力,本研究将类似于动态环境中自动驾驶汽车控制的运动规划技术应用于飞行器。本文将概述一种基于环境重建、用户处理和预测建模的新概念。阐述了遥操作车辆预测运动的工作原理,并引入了关键指标来比较模型参数的变化。建立了比例-积分-导数(PID)控制模型,并将其集成到该概念中。这个概念已经在飞行模拟和实际试飞的基础上进行了评估。研究了PID参数的灵敏度和正确估计预测时延的影响。这个概念已经成功地用一架大疆M600六旋翼机进行了演示。分析表明,为了准确预测,p分量的灵敏度较高,而I和D分量的灵敏度较低。延迟分析表明,低估实际延迟的影响没有高估实际延迟的影响大,并且该模型最适合低于250 ms的延迟。此外,所实现的模型缺乏加速度阶段的预测精度和具有代表性的惯性模型。本文提出的模型是一种处理遥操作车辆运动预测的新方法,在精度和参数灵敏度方面显示出良好的效果。
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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