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Experimental Evaluation on Depth Control Using Improved Model Predictive Control for Autonomous Underwater Vehicle (AUVs)

机译:基于自主水下车辆(AUV)改进模型预测控制的深度控制试验评价

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摘要

Due to the growing interest using model predictive control (MPC), there are more and more researches about the applications of MPC on autonomous underwater vehicle (AUV), and these researches are mainly focused on simulation and simple application of MPC on AUV. This paper focuses on the improvement of MPC based on the state space model of an AUV. Unlike the previous approaches using a fixed weighting matrix, in this paper, a coefficient, varied with the error, is introduced to adjust the control increment vector weighting matrix to reduce the settling time. Then, an analysis on the effect of the adjustment to the stability is given. In addition, there is always a lag between the AUV real trajectory and the desired trajectory when the AUV tracks a continuous trajectory. To solve this problem, a simple re-planning of the desired trajectory is developed. Specifically, the point certain steps ahead from current time on the desired trajectory is treated as the current desired point and input to the controller. Finally, experimental results for depth control are given to demonstrate the feasibility and effectiveness of the improved MPC. Experimental results show that the method of real-time adjusting control increment weighting matrix can reduce settling time by about 2 s when tracking step trajectory of 1 m, and the simple re-planning of the desired trajectory method can reduce the average of absolute error by about 15% and standard deviation of error by about 17%.
机译:由于使用模型预测控制(MPC)的兴趣日益增长,越来越多地研究MPC对自动水下车辆(AUV)的应用,这些研究主要集中在AUV上的模拟和简单应用。本文重点介绍了基于AUV的状态空间模型的MPC的改进。与使用固定加权矩阵的先前接近不同,在本文中,引入了与误差变化的系数,以调整控制增量矢量加权矩阵以降低稳定时间。然后,给出了对调节对稳定性的影响的分析。另外,当AUV追踪连续轨迹时,AUV实际轨迹和所需的轨迹总是存在滞后。为了解决这个问题,开发了简单的重新规划所需的轨迹。具体地,从所需轨迹上的当前时间前方的某个步骤被视为当前期望点并输入控制器。最后,给出了深度控制的实验结果证明了改进的MPC的可行性和有效性。实验结果表明,当跟踪步骤轨迹为1米的步进轨迹时,实时调整控制增量加权矩阵的实时调整控制增量加权矩阵的方法可以减少约2秒,并且简单的重新规划所需的轨迹方法可以减少绝对误差的平均值误差约15%和标准偏差约17%。

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