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基于粒子群改进神经网络的舰艇磁场推算模型
引用本文:连丽婷,肖昌汉,杨明明,周国华.基于粒子群改进神经网络的舰艇磁场推算模型[J].上海交通大学学报,2011,45(6):809-813.
作者姓名:连丽婷  肖昌汉  杨明明  周国华
作者单位:(海军工程大学 电气与信息工程学院, 武汉 430033)
基金项目:中国人民解放军总装备部基金(51310040501); 国家海洋专项基金(420050101)资助项目
摘    要:针对目前线性建模解决舰艇内外磁场推算问题时存在的困难,从非线性优化的角度出发,建立了内外磁场之间的误差反向传播神经网络预报模型.为了改善网络的固有缺陷,利用粒子群算法优化网络的初始权值与阈值,使其能够逃离局部最优点,增强了网络的鲁棒性.该方法避免了利用线性化方法存在的诸多困难,可实现舰艇内外磁场推算.利用船模实验对网络预测的准确性进行了验证,结果表明其换算精度较线性方法有所提高,满足工程实际需求.

关 键 词:   舰艇    磁场    闭环消磁    粒子群算法    误差反向传播  
收稿时间:2010-07-10

The Model of Ship's Magnetic Field Extrapolation Based on Neural Network Improved by Particle Swarm Optimization
LIAN Li-ting,XIAO Chang-han,YANG Ming-ming,ZHOU Guo-hua.The Model of Ship's Magnetic Field Extrapolation Based on Neural Network Improved by Particle Swarm Optimization[J].Journal of Shanghai Jiaotong University,2011,45(6):809-813.
Authors:LIAN Li-ting  XIAO Chang-han  YANG Ming-ming  ZHOU Guo-hua
Institution:(School of Electrical and Information Engineering, Naval University of Engineering, Wuhan 430033, China)
Abstract:The magnetic anomaly created by ferromagnetic submarines may endanger their invisibility.Nowadays,a new technique called closed-loop degaussing system can reduce the magnetic anomaly especially permanent one in real-time.To achieve it,a model which is able to predict off-board magnetic field from on board measurements was required.Many researchers settle the problem by a linear model.A back propagation neural network model was proposed to solve it.The model can escape local optimum thanks to optimizing the ...
Keywords:ship  magnetic field  closed loop degaussing  particle swarm optimizer  error back propagation  
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