Page 69 - ITU Journal Future and evolving technologies Volume 3 (2022), Issue 2 – Towards vehicular networks in the 6G era
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ITU Journal on Future and Evolving Technologies, Volume 3 (2022), Issue 2




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                                                                                    Jiqing Gu received a BS degree
          [17]  Joon  Ahn,  Yi  Wang,  Bo  Yu,  Fan  Bai,  and  Bhaskar             from the College of Information
               Krishnamachari. “RISA: Distributed Road Informa‑                     Engineering, Henan University
               tion Sharing Architecture”. In: Proc. of IEEE INFO‑                  of Science and Technology, Lu‑
               COM. 2012, pp. 1494–1502.                                            oyang, China, in 2014. She is
          [18] Emmanouil Koukoumidis, Li‑Shiuan Peh, and Mar‑                       working towards her PhD de‑
               garet Rose Martonosi. “SignalGuru: leveraging mo‑                    gree from the School of Com‑
               bile phones for collaborative traf ic signal schedule                puter Science and Engineering,
               advisory”. In: Proc. of ACM MobiSys. 2011, pp. 127–                  University of Electronics Sci‑
               140.                                                                 ence and Technology of China
                                                                                    (UESTC), under the supervision
          [19] Jiadai  Wang,  Jiajia  Liu,  and  Nei  Kato.  “Networ-
                                                               of Prof. Ming Liu. During 2021, she was a visiting student
               king and communications in autonomous driving:   at the University of Toronto, under the supervision of Dr.
               A survey”. In: IEEE Communications Surveys &
               Tutori‑ als (2018), pp. 1243–1274.              Baochun Li. Her research interests include crowdsensing,
                                                               mobile computing, and graph stream mining. Her publi‑
          [20] K.  Saurav  and  R.  Vaze.  “Minimizing  the  Sum  of   cations include those that have appeared in AAAI, ACM
               Age  of  Information  and  Transmission  Cost  under   TKDD, IEEE MSN, IEEE ICPADS, and IEEE ISPA. She re‑
               Stochastic Arrival Model”. In: IEEE (2021).     ceivedtheBest PaperCandidateAwardofIEEEMSN 2019.






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