Zhang Hongli, Chen Yijin, Li Kemeng, Wang Yinggang
College of Geoscience and Surveying Engineering, China University of Mining and Technology (Beijing), Beijing 100083, China.
Sensors (Basel). 2025 Jan 9;25(2):361. doi: 10.3390/s25020361.
Under regional environmental conditions such as open-pit mines and construction sites, there are usually fixed GNSS measurement points. Around these fixed stations, there are also mobile GNSS measurement modules. These mobile measurement modules offer advantages such as low power consumption, low cost, and large data volume. However, due to their low accuracy, these modules can only provide approximate positions as monitoring data, such as for vehicle management in open-pit mines. To extract more information from the existing large volume of low-accuracy data, it is necessary to process these low-accuracy data. Under conditions of the same time and space in a small area, factors affecting measurement accuracy can be comprehensively considered. By analyzing the temporal GNSS data within the same spatiotemporal small region and understanding the variation patterns of measurement errors, a general equation for measurement error variation can be formulated. Using filtering methods, the data quality can be improved. Through the analysis of the experimental data in this study, it was found that the variation patterns of measurement data obtained by devices of the same accuracy during the same time period are generally consistent. After applying filtering methods, the measurement accuracy of each station improved by up to approximately 95.9%, with a minimum improvement of approximately 84.4%. Under the condition of a 95% confidence level, the reliability increased by up to approximately 73.2%, with a minimum improvement of approximately 58.2%. These experimental results fully demonstrate that under regional spatiotemporal conditions, the temporal data obtained by GNSS measurement devices with similar accuracy exhibit similar error distribution patterns. Applying the same filtering method can significantly improve the accuracy and reliability of measurement data.
在露天矿和建筑工地等区域环境条件下,通常存在固定的全球导航卫星系统(GNSS)测量点。在这些固定站周围,还有移动GNSS测量模块。这些移动测量模块具有低功耗、低成本和大数据量等优点。然而,由于其精度较低,这些模块只能提供近似位置作为监测数据,例如用于露天矿的车辆管理。为了从现有的大量低精度数据中提取更多信息,有必要对这些低精度数据进行处理。在小区域内相同的时空条件下,可以综合考虑影响测量精度的因素。通过分析同一时空小区域内的时间GNSS数据,了解测量误差的变化模式,可以制定测量误差变化的通用方程。使用滤波方法,可以提高数据质量。通过对本研究实验数据的分析发现,同一精度的设备在同一时间段内获得的测量数据的变化模式通常是一致的。应用滤波方法后,各站的测量精度提高了约95.9%,最低提高了约84.4%。在95%置信水平的条件下,可靠性提高了约73.2%,最低提高了约58.2%。这些实验结果充分表明,在区域时空条件下,精度相似的GNSS测量设备获得的时间数据呈现出相似的误差分布模式。应用相同的滤波方法可以显著提高测量数据的精度和可靠性。