[1]童庆耘,公沛良,张丽颖,等.时序注意力网络评估空管员认知负荷[J].智能系统学报,2026,21(3):792-801.[doi:10.11992/tis.202507018]
 TONG Qingyun,GONG Peiliang,ZHANG Liying,et al.Temporal attention memory network for evaluating air traffic controller cognitive load[J].CAAI Transactions on Intelligent Systems,2026,21(3):792-801.[doi:10.11992/tis.202507018]
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时序注意力网络评估空管员认知负荷

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备注/Memo

收稿日期:2025-6-22。
基金项目:国家自然科学基金项目(62276130,62136004,62406131);国家重点研发计划项目(2023YFF1204803);江苏省重点研究发展计划项目(BE2022842).
作者简介:童庆耘,硕士研究生,主要研究方向为时间序列分析、脑机接口与深度学习。E-mail:qingyuntong@nuaa.edu.cn。;公沛良,博士研究生,主要研究方向为时间序列分析、脑机接口与深度学习。E-mail:plgong@nuaa.edu.cn。;张道强,教授,博士,南京航空航天大学人工智能学院院长,IEEE高级会员,主要研究方向为机器学习、模式识别、数据挖掘和医学图像分析。在Nature Communications、IEEE TMI/TPAMI/TIP、中国科学、NeurIPS、CVPR、KDD、MICCAI等重要国内外期刊和会议发表学术论文200余篇。连续12年入选 Elsevier 中国高被引学者榜,论文被引用20000余次,其中有3篇论文的单篇引用均超1000次。E-mail:dqzhang@nuaa.edu.cn。
通讯作者:张道强. E-mail:dqzhang@nuaa.edu.cn

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