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The use of artificial neural networks for the intelligent optimal control of surface ships

机译:人工神经网络在水面舰艇智能优化控制中的应用

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Many conventional ship autopilots use proportional integral and derivative (PID) control algorithms to guide a ship on a fixed heading (course-keeping) or a new heading (course-changing). Such systems usually have a gyrocompass as a single sensory input. Modern sea going vessels have a range of navigation aids most of which may be interconnected to form integrated systems. It is possible to employ the navigational data to provide best estimates of state vectors (Kalman filter) and optimal guidance strategies. Such techniques require powerful computing facilities, particularly if the dynamic characteristics of the vessel are changing, as may be the case in a maneuvering situation or changes in forward speed. This paper investigates the possibility of training a neural network to behave in the same manner as an optimal ship guidance system, the objective being to provide a system that can adapt its parameters so that it provides optimal performance over a range of conditions, without incurring a large computational penalty. A series of simulation studies have been undertaken to compare the performance of a trained neural network with that of the original optimal guidance system over a range of forward speeds. It is demonstrated that a single network has comparable performance to a set of optimal guidance control laws, each computed for different forward speeds.
机译:许多常规的船舶自动驾驶仪都使用比例积分和微分(PID)控制算法在固定航向(航向)或新航向(航向变化)上引导船舶。这样的系统通常具有陀螺罗经作为单个感官输入。现代远洋船具有一系列助航设备,其中大多数可相互连接以形成集成系统。可以使用导航数据来提供状态向量的最佳估计(卡尔曼滤波器)和最佳制导策略。这样的技术需要强大的计算设备,特别是在船舶的动态特性正在变化的情况下,例如在操纵情况或前进速度变化的情况下。本文研究了训练神经网络以与最佳船舶制导系统相同的方式工作的可能性,目的是提供一种能够适应其参数的系统,以便在各种条件下提供最佳性能,而不会产生计算量大。已经进行了一系列模拟研究,以在一定的前进速度范围内将经过训练的神经网络的性能与原始最佳制导系统的性能进行比较。结果表明,单个网络的性能可与一组最佳制导控制律相媲美,每个最优制导律的计算均针对不同的前进速度。

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