基于Transformer-TCN-GRU的场面滑行轨迹预测模型OA北大核心
A Model for Aircraft Surface Taxiing Trajectory Prediction Base on Transformer-TCN-GRU
对于航空器滑行轨迹预测,现有方法在实时推算中等时间尺度内的未来位置精度较低,为进一步提高中等时间尺度内轨迹预测的精度,并保证实时预测的高效性,将Transformer网络、交叉注意力机制、时间卷积网络(temporal convolutional network,TCN)与门控循环单元(gated recurrent unit,GRU)相结合,构建1种输出多条候选轨迹的地面滑行轨迹预测模型.引入Transformer编码器捕捉航空器历史轨迹数据中的时间依赖性和运动状态,获取轨迹特征序列的全局特征表示;结合机场矢量地图和管制系统给出的滑行路径指令计算航空器在未来计划的滑行路径坐标序列,使用交叉注意力机制,以轨迹序列的全局特征作为查询,关注路径坐标序列中对未来滑行影响最大的位置,将融合路径特征后的轨迹全局特征映射为多种模态,对应每条候选轨迹的特征;TCN-GRU轨迹解码器对每种模态的轨迹特征进行解码,捕捉轨迹序列中的长期时间依赖,输出多条预测轨迹及其概率.以国内某大型机场航空器真实滑行轨迹进行验证,未来8s的位置轨迹预测最小平均位移误差(minimum average displacement error,minADE)为1.932 m,最小最终位移误差(minimum final displace-ment error,minFDE)为1.811 m,相较于单一的GRU、TCN模型,minADE降低14.10%、16.62%,minFDE降低30.88%、34.72%,测试样本平均耗时17.70 ms,可以准确、快速预测滑行轨迹,有利于保障飞行区的安全运行.
For aircraft taxiing trajectory prediction,existing methods exhibit low accuracy in real-time estimation of future positions over medium-term time horizons.To enhance prediction precision within this temporal scope while maintaining computational efficiency,this study proposes a taxiing trajectory prediction model integrating trans-former networks,cross-attention mechanisms,temporal convolutional networks(TCN),and gated recurrent units(GRU)to generate multiple candidate trajectories.The Transformer encoder captures temporal dependencies and motion patterns from historical trajectory data to derive global feature representations.Airport vector maps and taxi-ing route instructions from air traffic control systems are utilized to compute planned future taxiing path coordi-nates.A cross-attention mechanism then aligns the global trajectory features(as Query)with critical positions in the planned path sequence,mapping the fused path-enhanced features into multimodal representations corresponding to candidate trajectories.The TCN-GRU decoder processes each modality to capture long-term temporal dependencies and outputs multiple predicted trajectories with associated probabilities.Validation on real taxiing trajectories from a major Chinese airport demonstrates minimum average displacement error(minADE)of 1.932 m and minimum fi-nal displacement error(minFDE)of 1.811 m for 8-second predictions.Compared to individual GRU and TCN mod-els,the proposed approach reduces minADE/minFDE by 14.10%/30.88%and 16.62%/34.72%respectively,while maintain an average runtime of 17.70 milliseconds per sample.The proposed method achieves accurate and efficient trajectory prediction,supporting enhanced safety management in airport maneuvering areas.
王兴隆;李国祥;张钊;叶可;苏婷;葛京
中国民航大学民航飞联网重点实验室 天津 300300中国民航大学计算机科学与技术学院 天津 300300中国民航大学计算机科学与技术学院 天津 300300中国民航信息网络股份有限公司信息服务部 北京 100011中国民航信息网络股份有限公司信息服务部 北京 100011中国民航信息网络股份有限公司安全生产与质量管理部 北京 100011
航空航天
滑行轨迹轨迹预测Transformer模型时间卷积网络门控循环单元
taxiing trajectorytrajectory predictiontransformertemporal convolutional networkgated recurrent unit
《交通信息与安全》 2025 (2)
44-53,64,11
天津市教育委员会自然科学重点项目(2020ZD01)资助
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