An intelligent approach for classification of GPS satellites based on neural network, genetic algorithm and particle swarm optimization

H. Azami, Mohammad Dehghani Soltani, Iman Tavakkolnia
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引用次数: 2

Abstract

Geometric dilution of precision (GDOP) factor, which is broadly utilized in satellite navigation, denotes the additional multiplicative impact of navigation satellite geometry on positional measurement precision. This factor is frequently employed to select suitable satellites' subsets from at least 24 orbited existing satellites. The GDOP calculation has a time burden including complicated transformation and inversion of measurement matrices. To tackle this shortcoming, neural network- (NN-) based methods using the back propagation (BP) training algorithm have been broadly used. However, there are several parameters for the NN-based approaches that ought to be chosen by many trials. To alleviate this problem and enhance the BP training algorithm, we propose an intelligent approach based on the improved NN training methods and evolutionary algorithms (EAs), including namely, genetic algorithm (GA) and particle swarm optimization (PSO), to classify global positioning system (GPS) satellites using the GDOP factor. The simulation results for the real GPS GDOP data indicate that both the GA and PSO enhance the classification ratios, although the GA leads to higher ratios. The highest classification ratio is obtained by Levenberg-Marquardt training algorithm with GA.
基于神经网络、遗传算法和粒子群优化的GPS卫星智能分类方法
几何精度稀释因子(GDOP)是卫星导航中广泛使用的一种因子,它表示导航卫星几何对位置测量精度的附加乘法影响。这一因素经常用于从至少24颗在轨现有卫星中选择合适的卫星子集。GDOP的计算具有时间负担,包括测量矩阵的复杂变换和反演。为了解决这一缺点,基于神经网络(NN)的反向传播(BP)训练算法被广泛应用。然而,对于基于神经网络的方法,有几个参数应该通过许多试验来选择。为了解决这一问题并增强BP训练算法,我们提出了一种基于改进的神经网络训练方法和进化算法(EAs)的方法,包括遗传算法(GA)和粒子群算法(PSO),利用GDOP因子对全球定位系统(GPS)卫星进行分类。对真实GPS GDOP数据的仿真结果表明,遗传算法和粒子群算法都提高了分类比,但遗传算法的分类比更高。采用遗传算法的Levenberg-Marquardt训练算法获得的分类率最高。
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