Tong Peng

Tong Peng Email and Phone Number

系主任 @ 浙江海洋学院
China
Tong Peng's Location
China, China
About Tong Peng

Dynamic, highly innovative data professional with expertise in research & development, programming, and machine learning. Over eight years of hands-on experience in industrial and academic research on wireless communications. Proven ability to project manage multidisciplinary teams. Excels in neural network projects. Personable and engaging with the communication skills needed to build consensus on critical decisions.

Tong Peng's Current Company Details
浙江海洋学院

浙江海洋学院

View
系主任
China
Website:
zjou.edu.cn
Employees:
147
Tong Peng Work Experience Details
  • 浙江海洋学院
    系主任
    浙江海洋学院
    China
  • 浙江海洋学院
    系主任
    浙江海洋学院 Dec 2021 - Present
  • 浙江海洋学院
    Lecturer
    浙江海洋学院 Jan 2021 - Present
    中国 浙江省
  • Loughborough University Mechanical, Electrical And Manufacturing Engineering
    Research Associate
    Loughborough University Mechanical, Electrical And Manufacturing Engineering May 2021 - Aug 2021
    Loughborough, Uk
    Working on an EPSRC funded project, researching on advanced wireless transmissions technologies for 5G internet of things (IoT), including learning-based algorithms, advanced coding techniques, multi-layer network structures, etc. Cooperation with researchers in different high education and industrial partners to carry out the collaborative research.
  • King'S College London
    Teaching And Supervision Assistance
    King'S College London Oct 2017 - Aug 2020
    London, United Kingdom
    Design and teach in postgraduate-level tutorials and workshops, and help in teaching materials development. Beside teaching-related work, experiences of independent supervision of MSc graduates' final projects is accumulated, including guide students to understand the theories, carry out their own researches, weekly meeting and report writing, etc.
  • 英国伦敦大学 - 伦敦国王学院
    Research Associate
    英国伦敦大学 - 伦敦国王学院 Aug 2017 - Aug 2020
    英国 英格兰 倫敦
    Working on an EPSRC funded project, researching on random linear network code and Fountain code design and routing protocol development in wireless sensor networks and internet of things (IoT). Different from conventional cameras, the coding approaches and routing protocols are designed for multi-hop WSNs dealing dynamic vision sensors (DVS) data. Cooperation with researchers in UCL, Kingston University London and industrial partners, including iVision, Samsung, etc., to carry out the research and hardware demonstrations. Numbers of journal publications have been published and being under preparation in IEEE Trans./Letter on Comms, Wireless Comms., and Information Theory.
  • University Of York
    Research Associate
    University Of York Jun 2015 - Jun 2017
    York, United Kingdom
    Postdoc research focused on industrial applicable physical layer network coding design and decoding algorithms in distributed MIMO systems. Optimal binary mapping matrices are selected to resolve singular and non-singular fade states for general QAM modulation schemes with simple detection method. Optimal mapping matrices selection algorithm for different combinations between QAM modulation schemes have been designed. Cooperating with colleagues in the research group, the proposed algorithm is implemented and tested using USRP boards in practical scenarios. Another project is focused on coded constant envelope modulation waveform design and iterative decoding algorithms for VHF narrowband multipath channel circumstances. High spectrum efficiency are achieved by the proposed GFSK waveform, and parameters to achieve optimum bandwidth are designed. Low complexity bit-wise BCJR decoder are designed with the help of Laurent decomposition.
  • Pontifícia Universidade Católica Do Rio De Janeiro
    Research Associate
    Pontifícia Universidade Católica Do Rio De Janeiro Jan 2014 - Jun 2015
    Rio De Janeiro Area, Brazil
    Postdoc research focused on space-time coding techniques in multi-hop cooperative networks, including adaptive optimal code design, decoding algorithms and cooperation protocols. The adaptive optimisation algorithm is implemented on space-time block code schemes, in order to obtain the optimal codes, a feedback link is used and the effect of feedback errors are analysed. Buffers are used at each relay node which allows to store the received symbols if the channel in the next hop is weak.
  • Graduates' Students Association, University Of York
    Finance And Community Officer
    Graduates' Students Association, University Of York Sep 2011 - Sep 2013
    York, United Kingdom
    Working as an officer for Graduate Students’ Association (GSA), University of York. This role involves finance management, strategy planning, risk management, budget making team leading and events organisation. As a principal officer in the GSA, attend meetings with vice presents and other staff in board meeting for university development strategy discussion presenting all graduate students. Organise events and workshops for international students to help them to understand and ease cross-cultural impact.

Tong Peng Skills

Microsoft Word Microsoft Excel Microsoft Office Matlab Research Powerpoint Customer Service English

Tong Peng Education Details

Frequently Asked Questions about Tong Peng

What company does Tong Peng work for?

Tong Peng works for 浙江海洋学院

What is Tong Peng's role at the current company?

Tong Peng's current role is 系主任.

What schools did Tong Peng attend?

Tong Peng attended University Of York, 英国约克大学, University Of York.

What skills is Tong Peng known for?

Tong Peng has skills like Microsoft Word, Microsoft Excel, Microsoft Office, Matlab, Research, Powerpoint, Customer Service, English.

Not the Tong Peng you were looking for?

Free Chrome Extension

Find emails, phones & company data instantly

Find verified emails from LinkedIn profiles
Get direct phone numbers & mobile contacts
Access company data & employee information
Works directly on LinkedIn - no copy/paste needed
Get Chrome Extension - Free

Aero Online

Your AI prospecting assistant

Download 750 million emails and 100 million phone numbers

Access emails and phone numbers of over 750 million business users. Instantly download verified profiles using 20+ filters, including location, job title, company, function, and industry.