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Predicting the speed of a Wave Glider autonomous surface vehicle from wave model data

机译:从波模型数据预测波浪滑翔机自动表面车辆的速度

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A key component of robotic path planning for monitoring dynamic events is reliable navigation to the right place at the right time. For persistent monitoring applications (e.g., over months), marine robots are beginning to make use of the environment for propulsion, instead of depending on traditional motors and propellers. These vehicles are able to realize dramatically higher endurance by exploiting wave and wind energy, however the path planning problem becomes difficult as the vehicle speed is no longer directly controllable. In this paper, we examine Gaussian process models to predict the speed of the Wave Glider autonomous surface vehicle from observable environmental parameters. Using training data from an on-board sensor, and wave parameter forecasts from the WAVEWATCH III model, our probabilistic regression models create an effective method for predicting Wave Glider speed for use in a variety of path planning applications.
机译:用于监控动态事件的机器人路径规划的一个关键组成部分是在正确的时间到正确的位置的可靠导航。 对于持久的监测应用(例如,超过几个月),海洋机器人开始利用环境的推进,而不是根据传统电机和螺旋桨。 这些车辆能够通过利用波浪和风能来实现显着更高的耐力,但是随着车辆速度不再直接可控的路径规划问题变得困难。 在本文中,我们检查高斯工艺模型,以预测来自可观察的环境参数的波浪滑翔机自主地面车辆的速度。 使用来自车载传感器的培训数据以及来自WaveWatch III模型的波浪参数预测,我们的概率回归模型为预测Wave Plider速度用于各种路径规划应用的有效方法。

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