相关链接

Links

Contact us

电气办:027-59750430

电气学工办:027-59725239

导师列表

赵楠

发表时间:2025-03-11 作者:电气与电子工程 浏览次数:

博导个人简介

赵楠:女,博士(后),三级教授,博士生导师。湖北省杰出青年基金获得者、湖北省青年拔尖人才、“3551光谷人才计划”财产教授、湖北工业大学“南湖学者”学术带头人,多次入选Elsevier“全球前2%顶尖科学家”榜单。

主要从事物联网通信、边缘智能、无线大数据等方面研究工作。

项目:

  1. 湖北省自然科学基金杰出青年项目、学习-知识融合的移动边缘网络多维资源安全协同优化研究、主持.

  2. 湖北省重点研发计划项目、新能源汽车动力电池安全监测大数据分析平台中试研究、主持.

  3. 国家自然科学基金青年项目、面向非对称网络信息的协作频谱共享合约机制研究、主持.

  4. 湖北省自然科学基金面上项目、认知无线网络中基于重复博弈的动态频谱共享关键技术研究、主持.

  5. 湖北省自然科学基金青年项目、基于契约理论的认知无线电协作频谱共享技术研究、主持.

奖励:

  1. 大规模物联网高效智能协同关键技术及应用,湖北省科技进步奖二等奖, 2022年.

  2. 面向汽车电子组件的视觉引导智能装配关键技术与应用,湖北省科技进步奖二等奖, 2018年.

  3. 视频采集与综合管理系统关键技术与应用,湖北省科技进步奖二等奖, 2016年.

代表性论著:

  1. N. Zhao, Y. Sun, Y. Pei, D. Niyato. Joint sensing and computation incentive mechanism for mobile crowdsensing networks: A multi-agent reinforcement learning approach. IEEE Internet of Things Journal. 2024. 10.1109/JIOT.2024.3523407.[SCI一区]

  2. N. Zhao, Y. Pei, D. Niyato. Incentive mechanism for task offloading and resource cooperation in vehicular edge computing networks: A deep reinforcement learning-assisted contract approach. IEEE Internet of Things Journal. 2024, 11(24): 41098-41109.[SCI一区]

  3. N. Zhao, H. Zhu, Y. Sun, Y. Pei, D. Niyato. A contract-based incentive mechanism for joint data sensing and communication in mobile crowdsourcing networks. IEEE Transactions on Vehicular Technology. 2024, 11(73), 17929-17934.[SCI二区]

  4. N. Zhao, Y. Pei, Y.-C. Liang, D. Niyato. Deep reinforcement learning-based contract incentive mechanism for joint sensing and computation in mobile crowdsourcing networks. IEEE Internet of Things Journal. 2024, 11(7): 12755-12767.[SCI一区]

  5. N. Zhao, Y. Pei, Y.-C. Liang, D. Niyato. A deep reinforcement learning-based contract incentive mechanism for mobile crowdsourcing networks. IEEE Transactions on Vehicular Technology. 2024, 73(3): 4511-4516.[SCI二区]

  6. J. Chen, J. Zhang,N. Zhao*, Y. Pei, Y.-C. Liang, D. Niyato. Joint device participation, dataset management, and resource allocation in wireless federated learning via deep reinforcement learning. IEEE Transactions on Vehicular Technology. 2024, 73(3): 4505-4510.[SCI二区]

  7. N. Zhao, Y. Pei, Y.-C. Liang, D. Niyato. Multi-agent deep reinforcement learning based incentive mechanism for multi-task federated edge learning. IEEE Transactions on Vehicular Technology. 2023, 72(10): 13530-13535.[SCI二区]

  8. N. Zhao, Z. Ye, Y. Pei, Y.-C. Liang, D. Niyato. Multi-agent deep reinforcement learning for task offloading in UAV-assisted mobile edge computing. IEEE Transactions on Wireless Communications, 2022, 21(9): 6949-6960.[SCI一区,ESI高被引]

  9. N. Zhao, Y. Liang, D. Niyato, Y. Pei, M. Wu, Y. Jiang. Deep reinforcement learning for user association and resource allocation in heterogeneous cellular networks. IEEE Transactions on Wireless Communications, 2019, 18(11), 5141-5152.[SCI一区,ESI高被引]

  10. N. Zhao, Y. Liang, Y. Pei. Dynamic contract incentive mechanism for cooperative wireless networks. IEEE Transactions on Vehicular Technology, 2018, 67(11), 10970-10982.[SCI二区,ESI高被引]

    所授课程:主要承担《现代数字信号处理》等研究生课程教学工作。

百度 搜狗 360搜索 图片重命名工具 特朗普:未来几周将发“金卡”签证 玫瑰公主孟子义 间客 商务部回应美宣布对等关税:将坚决采取反制措施维护自身权益

      <code id='2f711'></code><style id='954ba'></style>
    • <acronym id='5186d'></acronym>
      <center id='a7238'><center id='e54ac'><tfoot id='3d437'></tfoot></center><abbr id='136ad'><dir id='91b14'><tfoot id='4d60b'></tfoot><noframes id='15f07'>

    • <optgroup id='a8d81'><strike id='90911'><sup id='1b467'></sup></strike><code id='01069'></code></optgroup>
        1. <b id='ecb8a'><label id='0a37e'><select id='07956'><dt id='98d64'><span id='891ba'></span></dt></select></label></b><u id='a9020'></u>
          <i id='e3af8'><strike id='c9690'><tt id='34d2f'><pre id='5c621'></pre></tt></strike></i>