固定式遥控车辆非定常波诱导载荷的实验验证

Kyle L. Walker, R. Gabl, S. Aracri, Yu Cao, A. Stokes, A. Kiprakis, F. Giorgio-Serchi
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引用次数: 4

摘要

由于与典型的深海环境相比,浅水环境存在更大的波浪干扰,因此对无人水下航行器(uuv)的操作构成了令人生畏的场景。在这些条件下进行近距离的检查和维护任务需要可靠的控制方法,对外部干扰具有鲁棒性,允许精确的位置和姿态控制,这是经典控制方法经常缺乏的一个方面。改进的性能可以通过预测控制方法来实现,然而,这些方法需要对车辆周围直接海洋环境产生的水动力进行准确和高效的估计。考虑到这一点,我们提出了一个低阶模型,用于更快地实时估计在各种海况条件下作用在水下航行器上的波浪诱导的水动力。该模型得到了实验测试的彻底证实,实验测试使用了位于浅层的远程操作车辆(ROV),同时受到实际海浪干扰。仿真与实验数据验证表明,纵摇力和升沉力的最大归一化平均误差分别为0.16和0.27,俯仰力矩的最大归一化平均误差为0.34。这一经验证据表明,可以通过低阶模型以适合纳入预测控制体系结构的速度对波浪产生的力进行准确预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Experimental Validation of Unsteady Wave Induced Loads on a Stationary Remotely Operated Vehicle
Shallow water environments pose daunting scenarios for the operation of Unmanned Underwater Vehicles (UUVs), due to significantly larger wave disturbances being present in comparison to a typical deep sea situation. Performing inspection and maintenance tasks at close quarters in these conditions requires reliable control methods robust to external disturbances, allowing accurate position and attitude control, an aspect which classical control methods are often lacking. Improved performance can be achieved through predictive control methods, however, these require accurate and time-efficient estimations of the hydrodynamic forces produced by the immediate ocean environment around the vehicle. Considering this, we present a low-order model for faster-than-real time estimation of the wave-induced hydrodynamic forces acting on a submerged vehicle in various sea state conditions. The model is thoroughly corroborated by experimental tests, performed using a Remotely Operated Vehicle (ROV) situated at shallow depth whilst subjected to realistic sea wave disturbances. Validation between simulations and the collected experimental data showed a maximum normalised mean error deviation of 0.16 and 0.27 for surge and heave forces respectively, and 0.34 for the pitching moment. This empirical evidence demonstrates that accurate predictions of wave-generated forces can be produced through low-order models at a speed suitable for incorporation within predictive control architectures.
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