{"title":"自适应知识系统支持的多传感器个人导航器:性能评估","authors":"S. Moafipoor, D. Grejner-Brzezinska, C. Toth","doi":"10.1109/PLANS.2008.4570049","DOIUrl":null,"url":null,"abstract":"The prototype of a personal navigator, which integrates Global Positioning System (GPS), tactical grade inertial measurement unit (IMU), digital barometer, magnetometer, and human pedometry to support navigation and tracking of military and rescue ground personnel has been developed at The Ohio State University Satellite Positioning and Inertial Navigation (SPIN) Laboratory. This paper discusses the design, implementation and performance assessment of the prototype, with a special emphasis on dead-reckoning (DR) navigation supported by a human locomotion model. The primary components of the human locomotion model are step frequency (SF), extracted from GPS-timed impact micro-switches placed on the shoe soles of the operator, step length (SL), and step direction (SD), both determined by predictive models derived by the adaptive knowledge based system (KBS). SL KBS is based on Artificial Neural Networks (ANN) and Fuzzy Logic (FL), and is trained a priori using sensory data collected by various operators in various environments during GPS signal reception. An additional KBS module, in the form of a Kalman Filter (KF), is used to improve the heading information (SD) available from the magnetometer and gyroscope under GPS-denied conditions, as well as to integrate the DR parameters to reconstruct the trajectory based on SL and SD. The current target accuracy of the system is 3-5 m CEP (circular error probable, 50%). This paper provides a performance analysis in the indoor and outdoor environments for two different operators. The systempsilas navigation limitation in DR mode is tested in terms of time and trajectory length to determine the upper limit of indoor operation before the need for re-calibration.","PeriodicalId":446381,"journal":{"name":"2008 IEEE/ION Position, Location and Navigation Symposium","volume":"3 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2008-05-05","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"20","resultStr":"{\"title\":\"Multi-sensor personal navigator supported by adaptive knowledge based system: Performance assessment\",\"authors\":\"S. Moafipoor, D. Grejner-Brzezinska, C. 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引用次数: 20
摘要
俄亥俄州立大学卫星定位和惯性导航(SPIN)实验室开发了一种个人导航仪的原型,它集成了全球定位系统(GPS)、战术级惯性测量单元(IMU)、数字气压计、磁力计和人体计步器,以支持军事和救援地面人员的导航和跟踪。本文讨论了原型机的设计、实现和性能评估,重点讨论了基于人体运动模型的航位推算导航。人体运动模型的主要组成部分是步频(SF),从放置在操作员鞋底的gps定时冲击微开关中提取,步长(SL)和步方向(SD),两者都由自适应知识系统(KBS)导出的预测模型确定。SL KBS基于人工神经网络(ANN)和模糊逻辑(FL),在GPS信号接收过程中,使用不同操作员在不同环境中收集的感官数据进行先验训练。另外一个KBS模块,以卡尔曼滤波器(KF)的形式,用于改进在gps拒绝条件下从磁力计和陀螺仪获得的航向信息(SD),并整合DR参数以基于SL和SD重建轨迹。目前系统的目标精度为3-5 m CEP(圆周误差可能为50%)。本文对两种不同运营商在室内和室外环境下的性能进行了分析。在需要重新校准之前,从时间和轨迹长度方面测试了DR模式下系统的导航限制,以确定室内操作的上限。
Multi-sensor personal navigator supported by adaptive knowledge based system: Performance assessment
The prototype of a personal navigator, which integrates Global Positioning System (GPS), tactical grade inertial measurement unit (IMU), digital barometer, magnetometer, and human pedometry to support navigation and tracking of military and rescue ground personnel has been developed at The Ohio State University Satellite Positioning and Inertial Navigation (SPIN) Laboratory. This paper discusses the design, implementation and performance assessment of the prototype, with a special emphasis on dead-reckoning (DR) navigation supported by a human locomotion model. The primary components of the human locomotion model are step frequency (SF), extracted from GPS-timed impact micro-switches placed on the shoe soles of the operator, step length (SL), and step direction (SD), both determined by predictive models derived by the adaptive knowledge based system (KBS). SL KBS is based on Artificial Neural Networks (ANN) and Fuzzy Logic (FL), and is trained a priori using sensory data collected by various operators in various environments during GPS signal reception. An additional KBS module, in the form of a Kalman Filter (KF), is used to improve the heading information (SD) available from the magnetometer and gyroscope under GPS-denied conditions, as well as to integrate the DR parameters to reconstruct the trajectory based on SL and SD. The current target accuracy of the system is 3-5 m CEP (circular error probable, 50%). This paper provides a performance analysis in the indoor and outdoor environments for two different operators. The systempsilas navigation limitation in DR mode is tested in terms of time and trajectory length to determine the upper limit of indoor operation before the need for re-calibration.