利用树莓派卡尔曼滤波提高低成本GPS跟踪精度的实现

Iis Nur Kumalasari, Ahmad Zainudin, Aries Pratiarso
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引用次数: 2

摘要

由于GPS的可靠性和实用性,它被广泛应用于各种场景。智能手机上的GPS比GPS接收器更精确。平均而言,现代智能手机已经在使用A-GPS来帮助全球导航系统快速锁定智能手机卫星。虽然GPS接收器用于可再生技术,例如需要高精度的自动化无人机农业应用,但显然需要大规模精确农场监测,以提高生产力,以满足不断增长的人口需求。无人机需要精确的GPS来绘制农田地图,并精确地喷洒土地GPS GPS接收器的坐标数据通常是由于GPS信号所产生的许多不同因素造成的不准确。影响GPS定位精度和精度的主要误差原因是天空中卫星数量不足。我们关注的是GPS计算方法本身。我们采用卡尔曼滤波来计算GPS的定位。在GPS直接测量中使用卡尔曼滤波,可以得到比给定位置更好的位置估计。采用卡尔曼滤波参数,在较差的情况下提高了单机模式下SPS定位的精度和精度。因此,可以通过将卡尔曼滤波器作为后处理滤波器进行积分来减小误差。测试结果表明,卡尔曼滤波产生的位置比协方差噪声值参数(R) = 10-6和协方差噪声(Q) = 10-6更精确。
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An Implementation of Accuracy Improvement for Low-Cost GPS Tracking Using Kalman Filter with Raspberry Pi
GPS is widely extended to various scenarios, owing to its trust and utilities. The GPS on smartphones is more accurate than the GPS receivers. On average, modern smartphones are already using A-GPS to help the global navigation system quickly lock-in smartphone satellites. Although the GPS receiver is used for renewable technologies, such as automated drone applications for farming that require high accuracy, there is a clear need for large-scale precision farm monitoring to increase productivity to meet rising population demands. Drones need accurate GPS to map the agricultural land and precisely spray the land GPS Coordinate data from GPS receiver has often been due to inaccuracies caused by many different factors that GPS signals have made. The main cause of error affecting the accuracy and precision of GPS positioning is the lack of the number of satellites in the sky. We paid attention to the GPS calculation method itself. We adapted the Kalman filter to calculate the positioning of the GPS. Kalman filter is used by direct GPS measurements to make better location estimates than those given. The Kalman filter parameter has been adapted to improve the accuracy and accuracy of SPS positioning in stand-alone mode in worse situations. The error can, therefore, be reduced by integrating the Kalman filter as a post-processing filter. The test result shows that Kalman Filter produces a position that is more accurate than the covariance noise value parameter (R) = 10–6 and the covariance noise (Q) = 10–6.
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