论文标题
基于神经模糊网络的GPS智能浮标(GIB)系统中的动态建模和自适应控制
Dynamic Modeling and Adaptive Controlling in GPS-Intelligent Buoy (GIB) Systems Based on Neural-Fuzzy Networks
论文作者
论文摘要
最近,已经提出了各种关系和标准,以在控制系统和控制全球定位系统(GPS)智能浮标系统之间建立适当的关系。考虑到控制浮标的位置和智能系统的构建的重要性,在本文中,动态系统建模应用于通过改进的神经网络通过反向替代技术来定位海洋浮标。这项研究旨在开发基于自适应模糊神经网络的新型控制器,以最佳的方式跟踪以不可用的速度和身份不明的控制参数在水上动态定位的车辆。为了用所提出的技术对网络进行建模,在神经网络中研究了不确定性和不必要的干扰。介绍的研究旨在开发一种神经控制,该神经控制将矢量后步进技术应用于表面船,该技术已经动态地定位了不确定的干扰和矛盾。此外,目标函数是最大程度地减少基于闭环系统神经网络(NN)的输出误差。提议的定位浮标模型的最重要特征是它远离对比较知识或有关船只的动力学和不良干扰的信息的独立性。数值和获得的后果表明,控制系统可以将浮标的路线和位置调整为相对较少的位置误差。
Recently, various relations and criteria have been presented to establish a proper relationship between control systems and control the Global Positioning System (GPS)-intelligent buoy system. Given the importance of controlling the position of buoys and the construction of intelligent systems, in this paper, dynamic system modeling is applied to position marine buoys through the improved neural network with a backstepping technique. This study aims at developing a novel controller based on an adaptive fuzzy neural network to optimally track the dynamically positioned vehicle on the water with unavailable velocities and unidentified control parameters. In order to model the network with the proposed technique, uncertainties and the unwanted disturbances are studied in the neural network. The presented study aims at developing a neural controlling which applies the vectorial back-stepping technique to the surface ships, which have been dynamically positioned with undetermined disturbances and ambivalences. Moreover, the objective function is to minimize the output error for the neural network (NN) based on the closed-loop system. The most important feature of the proposed model for the positioning buoys is its independence from comparative knowledge or information on the dynamics and the unwanted disturbances of ships. The numerical and obtained consequences demonstrate that the control system can adjust the routes and the position of the buoys to the desired objective with relatively few position errors.