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基于人工鱼群优化的BP神经网络WiFi指纹室内定位方法
引用本文:邓素,薛峰,余敏.基于人工鱼群优化的BP神经网络WiFi指纹室内定位方法[J].全球定位系统,2020,45(1):82-87.
作者姓名:邓素  薛峰  余敏
作者单位:江西师范大学计算机信息工程学院,江西南昌330022;江西师范大学计算机信息工程学院,江西南昌330022;江西师范大学计算机信息工程学院,江西南昌330022
基金项目:国家重点研发计划课题(2016YFB0502204)。
摘    要:针对传统的基于反向传播(BP)神经网络室内定位算法存在着低精度和慢收敛问题,且考虑到室内环境复杂,通常存在多径效应,无法使用信号强度衰减测距模型进行精确定位,提出一种改进的人工鱼群优化的BP神经网络WiFi指纹室内定位算法.利用人工鱼群觅食和寻优方式来提高全局寻优搜索的速度和能力,采用改进的人工鱼群算法(IAFSA)优化选取室内定位BP神经网络的权值和阈值,有效避免了传统BP神经网络的预测值易陷入局部最优的缺点,同时利用高斯滤波对信号进行去噪处理,建立采样点获取到的信号强度值(RSSI)与位置坐标的关系.实验结果证明所提方法与传统的BP神经网络方法相比,平均定位误差减少了0.75 m,平均定位精度提高32.2%,提高了定位可靠性,算法具有更好的稳定性. 

关 键 词:无线室内定位技术  BP神经网络  人工鱼群优化算法  WiFi指纹  高斯滤波

WiFi fingerprint indoor location method with BP neural network based on improved artificial fish swarm optimization algorithm
DENG Su,XUE Feng,YU Min.WiFi fingerprint indoor location method with BP neural network based on improved artificial fish swarm optimization algorithm[J].Gnss World of China,2020,45(1):82-87.
Authors:DENG Su  XUE Feng  YU Min
Institution:College of Computer Information and Engineering,Jiangxi Normal University, Nanchang 330022, China
Abstract:In view of the traditional indoor localization algorithm based on BP neural network existing low precision and sconvergence speed.considering the sophisticated indoor environment,there is usually the multipath effect,in addition that the signal attenuation model unsuitable for accurate positioning,this paper proposes an improved artificial fish optimization WiFi fingerprint indoor localization algorithm of BP neural network.the foraging and searching methods of artificial fish are used to improve the speed and ability of global optimization,using the improved artificial fish algorithm(IAFSA)to optimize the selection of weights and thresholds of BP neural network,which effectively avoid the disadvantage that predicted value of traditional BP neural network is easily plunged into partial optimum,the signal is denoised by gaussian filter in advance.At the same time,the relationship between the signal strength value(RSSI)obtained by the sampling point and the position coordinate is established.Experimental results show that compared with the traditional BP neural network method,the proposed method of this paper reduces the average positioning error by 0.75 m,and the average positioning accuracy is improved by about 32.2%.The algorithm of this paper improves the reliability of positioning and has better stability.
Keywords:wireless indoor positioning technology  BP network  artificial fish swarm optimization algorithm  WiFi fingerprint  Gaussian filter
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