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Automatic Estimation of Dynamic Lever Arms for a Position and Orientation System

机译:位置和方向系统的动态杠杆臂的自动估计

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摘要

An inertially stabilized platform (ISP) is generally equipped with a position and orientation system (POS) to isolate attitude disturbances and to focus surveying sensors on interesting targets. However, rotation of the ISP will result in a time-varying lever arm between the measuring center of the inertial measurement unit (IMU) and the phase center of the Global Positioning System (GPS) antenna, making it difficult to measure and provide compensation. To avoid the complexity of manual measurement and improve surveying efficiency, we propose an automatic estimation method for the dynamic lever arm. With the aid of the ISP encoder data, we decompose the variable lever arm into two constant lever arms to be estimated on line. With a complete 21-dimensional state Kalman filter, we accurately and simultaneously accomplish navigation and dynamic lever arm calibration. Our observability analysis provides a valuable insight into the conditions under which the lever arms can be estimated, and we use the error distribution method to reveal which error sources are the most influential. The simulation results demonstrate that the dynamic lever arm can be estimated to within [0.0104; 0.0110; 0.0178] m, an accuracy that is equivalent to the positioning accuracy of Carrier-phase Differential GPS (CDGPS).
机译:惯性稳定平台(ISP)通常配备有位置和定向系统(POS),以隔离姿态干扰并将测量传感器集中在有趣的目标上。但是,ISP的旋转会导致惯性测量单元(IMU)的测量中心与全球定位系统(GPS)天线的相位中心之间的时变杠杆臂,使其难以测量并提供补偿。为了避免人工测量的复杂性并提高测量效率,我们提出了一种动态的杠杆臂自动估计方法。借助ISP编码器数据,我们将可变杠杆臂分解为两个恒定杠杆臂,以便在线估算。借助完整的21维状态卡尔曼滤波器,我们可以准确并同时完成导航和动态杠杆臂校准。我们的可观察性分析为估计杠杆臂的条件提供了宝贵的见识,并且我们使用误差分布方法来揭示哪些误差源最具影响力。仿真结果表明,动态杠杆臂可以估计在[0.0104; 0.0110; 0.0178] m,该精度等于载波相位差分GPS(CDGPS)的定位精度。

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