Analyzing Robustness and Accuracy of Different Controllers for Underactuated Ships

Anand Mohan, Abhilash Sharma Somayajula
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引用次数: 1

Abstract

Most ships that carry cargo from one place to another are underactuated. Therefore, controlling such vessels is challenging, and even a few major accidents in the industry can be attributed to ineffective control by a human operator. Automated control can significantly aid in the prevention of such incidents. This paper demonstrates the practical implementation of a path-following algorithm for an underactuated scaled model of a container ship. In this research, two different control strategies have been compared against each other: Proportional Derivative Control (PD) and Sliding Mode Control (SMC). The underactuated vessel is made to track a given set of waypoints, and the performance of the controllers is measured. For this study, a 1:75.5 scaled free-running model of the KRISO Container Ship (KCS) is chosen as the test ship. Simulations were done using a numerical model of the vessel’s dynamics and the controllers are compared for their accuracy and robustness.
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欠驱动船舶不同控制器鲁棒性和精度分析
大多数将货物从一个地方运送到另一个地方的船只都是动力不足的。因此,控制这样的船只是具有挑战性的,甚至行业中的一些重大事故都可以归因于人类操作员的无效控制。自动化控制可以显著地帮助预防这类事件。本文给出了一种针对欠驱动集装箱船比例模型的路径跟踪算法的实际实现。在本研究中,比较了两种不同的控制策略:比例导数控制(PD)和滑模控制(SMC)。使欠驱动船舶跟踪一组给定的航路点,并测量控制器的性能。本研究选择KRISO集装箱船(KCS) 1:7 .5 5比例自由运行模型作为试验船。利用船舶动力学数值模型进行了仿真,并对控制器的精度和鲁棒性进行了比较。
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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