{"title":"Multi-sensor data fusion for autonomous flight of unmanned aerial vehicles in complex flight environments","authors":"Kun Yue","doi":"10.1139/dsa-2024-0005","DOIUrl":null,"url":null,"abstract":"The flight environment of unmanned aerial vehicles faces various challenges. In order to effectively navigate and perform tasks, they need to effectively integrate multiple sensors. This study applies the adaptive weighted average method, combined with data from GPS, inertial measurement unit, 3D optical detection and ranging, and uses linear Kalman filtering to smooth the merged velocity data. High-order B-spline curves for route planning and applying flight constraint formulas to better adapt are used to the dynamics of unmanned aerial vehicles. The research results indicated that the improved adaptive weighting algorithm had high comprehensive performance for multi-sensor data fusion, with the highest accuracy, robustness, real-time performance, and consistency of 94.2%, 93.7%, 100%, and 95.6%, respectively. The flight path lengths planned by the A* algorithm and higher-order B-spline curve were 15.7m and 16.3m, respectively, and the flight time was 8.2s and 7.1s, respectively. The flight path planned by higher-order B-spline curve was further away from obstacles. The use of adaptive weighted fusion and linear Kalman filtering facilitates the fusion of multi-sensor data, and autonomous flight routes planned using high-order B-spline curves can also meet the needs of unmanned aerial vehicle flight in complex flight environments.","PeriodicalId":202289,"journal":{"name":"Drone Systems and Applications","volume":"6 s2","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-06-05","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Drone Systems and Applications","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1139/dsa-2024-0005","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
The flight environment of unmanned aerial vehicles faces various challenges. In order to effectively navigate and perform tasks, they need to effectively integrate multiple sensors. This study applies the adaptive weighted average method, combined with data from GPS, inertial measurement unit, 3D optical detection and ranging, and uses linear Kalman filtering to smooth the merged velocity data. High-order B-spline curves for route planning and applying flight constraint formulas to better adapt are used to the dynamics of unmanned aerial vehicles. The research results indicated that the improved adaptive weighting algorithm had high comprehensive performance for multi-sensor data fusion, with the highest accuracy, robustness, real-time performance, and consistency of 94.2%, 93.7%, 100%, and 95.6%, respectively. The flight path lengths planned by the A* algorithm and higher-order B-spline curve were 15.7m and 16.3m, respectively, and the flight time was 8.2s and 7.1s, respectively. The flight path planned by higher-order B-spline curve was further away from obstacles. The use of adaptive weighted fusion and linear Kalman filtering facilitates the fusion of multi-sensor data, and autonomous flight routes planned using high-order B-spline curves can also meet the needs of unmanned aerial vehicle flight in complex flight environments.
无人飞行器的飞行环境面临着各种挑战。为了有效地导航和执行任务,它们需要有效地整合多种传感器。本研究采用自适应加权平均法,结合全球定位系统、惯性测量单元、三维光学探测和测距的数据,并使用线性卡尔曼滤波来平滑合并后的速度数据。高阶 B 样条曲线用于路线规划,并应用飞行约束公式更好地适应无人飞行器的动力学。研究结果表明,改进后的自适应加权算法在多传感器数据融合方面具有较高的综合性能,其准确性、鲁棒性、实时性和一致性分别达到最高的 94.2%、93.7%、100% 和 95.6%。A*算法和高阶B-样条曲线规划的飞行路径长度分别为15.7米和16.3米,飞行时间分别为8.2秒和7.1秒。用高阶 B 样条曲线规划的飞行路径离障碍物更远。自适应加权融合和线性卡尔曼滤波的使用促进了多传感器数据的融合,使用高阶B-样条曲线规划的自主飞行路线也能满足无人飞行器在复杂飞行环境中的飞行需求。