扫描二维码关注“博士后招聘网”微信订阅号或微信搜一搜“博士后招聘网”关注我们。
当前位置: 博士后招聘网 > 国外博士后招聘 > 卢森堡大学2019年招聘博士后职位

卢森堡大学2019年招聘博士后职位

信息来源:未知 | 作者:admin | 时间:2019-07-24 10:02

【简介】博士后招聘网整理分享“卢森堡大学2019年招聘博士后职位”,浏览查询更多博士后招聘计划请访问博士后招聘网

招聘简介:卢森堡大学博士后职位招聘

英文原文:

The University of Luxembourg is a multilingual, international research university.

The Interdisciplinary Centre for Security, Reliability and Trust (SnT) invites applications from PhD holders for conducting research in signal processing for Radar applications in mmWave and beyond.

Research Associates (Postdocs) in Signal Processing for Extremely High Frequency Radar (M/F)

SnT is carrying out interdisciplinary research in secure, reliable and trustworthy ICT systems and services, often in collaboration with industrial, governmental or international partners. The SIGCOM group in SnT is pursuing research on automotive radar applications in partnership with IEE (www.iee.lu), a Luxembourg based global leader in automotive safety sensing systems for occupant detection and classification. Recently, Prof. Bjorn Ottersten Director of SnT and head of SIGCOM, has been awarded the prestigious European Research Council (ERC) Advanced Grant to pursue research on cognitive radar systems with applications to automotive radar. For further information, you may visit www.securityandtrust.lu and http://wwwen.uni.lu/snt/research/sigcom.

Project Description

Radar sensor based driver assistance systems for automotive applications are currently under investigation to increase comfort and safety of drivers. Due to spectrum allocation trends and requirements of high bandwidth, an investigation of extremely high frequencies, namely mmWave and terahertz (THz) (with a corresponding wavelength of about 1 mm), has been attracting significant attention in the automotive radar industry. Compared to microwaves, operation in these bands provides access to larger bandwidth enabling higher range resolution and fine details of the targets. Besides, the size of system components such as the antennas required to process the THz signals reduces drastically; this enables the possibility of accommodating high number of antenna elements on the device to enhance the spatial resolution. Further, their incorporation on a moving platform, e.g., automobile, results in a synthetic aperture radar (SAR) / inverse synthetic aperture radar (ISAR) whose advantages are well documented. However, to explore and exploit the advantages of such systems, several challenges need to be solved. System operations need to be modelled including extended target and clutter, waveforms tailored to this new models, mathematical approaches are necessary to be developed for high-resolution tomography, specifically in distributed radar case. Super-resolution methods also can be useful, as the non-static scenes will be viewed from different angles.

This emerging field opens interesting avenues for pursuing research in radar signal processing, especially on

· Devising architectures and system models for extremely high frequency radar systems possibly including SAR/ ISAR

· Devising optimization algorithms to enhance the imaging performance of such systems with focus on waveform design, beam-pattern shaping, array design etc.

· Robust receiver designs for super-resolution parametric estimation, detection classification and localization optimization using model based mechanisms as well as machine learning approaches

· System simulator development incorporating non-idealities

The SIGCOM research group is in a unique position towards realizing the objectives of the project having exposure to radar signal processing through ongoing research projects, evolution of communication standards through participation and contribution as well as experience with prototype chip sets from the test-bench development activity. The group has strong experience in different radar applications, particularly developing optimization algorithms and prototyping of automotive radar systems.

Your Role

The successful candidates will join a strong and motivated research team lead by Prof. Björn Ottersten in order to carry out research in the area of signal processing for mmWave and THz radar systems.

The position holder will be required to perform the following tasks:

· Shaping research directions in line with project objectives, pursuing research and delivering project outputs

- Carrying out cutting edge research activities in architectural definition, waveform design and receiver processing, enabling cognition in extremely high frequency radar systems

- Collaborating with the industrial partner, gathering requirements, problem formulation, discussions on feasibility of solutions

· Writing scientific papers jointly with the other members in the group

· Participating in development and upgradation of the SDR based Radar test bench based on pursued research is considered as a plus

· Disseminating the results through scientific publications in high impact factor journals

· Presenting the results in the internationally well-known conferences and workshops

· Attracting funding in cooperation with partners

· Providing guidance to PhD and MSc students

· Assisting in teaching duties

· Organizing relevant workshops

For further information, please contact us at Mohammad.Alaee@uni.lu or Bhavani.Shankar@uni.lu

Your Profile

Qualification: The candidate should possess (or be in the process of completing) a PhD degree or equivalent in Electrical/Electronics Engineering, Computer Science or Applied Mathematics.

Experience:

The ideal candidate should have research project-based experience (FP7/H2020, Industry) and publication record in a number of the following topics:

· Signal processing techniques for distributed automotive sensors

· Developing scientific algorithms in the fields of mmWave/THz radar signal/image processing

· Waveform design and optimization algorithms applied to the radar systems

· Awareness of various SAR/ISAR processing methods, as well as array signal processing in multi-channel, multi-target applications

· Machine/Deep Learning with applications to radar systems

Exposure to USRP/SDR implementation and familiarity with FPGA programming is considered as an advantage. Development skills in one of the programming languages, MATLAB, LabVIEW or C++ are required.

Exposure to the latest radar technology and digital communications is desirable.

Language Skills: Fluent written and verbal communication skills in English are required.

We offer

The University offers a two-year employment contract that may be extended up to five years. The University is an equal opportunity employer. You will work in an exciting international environment and will have the opportunity to participate in the development of a newly created university.

Application

Application should be submitted online and include:

· Full CV, including list of publications and name (and email address, etc.) of three referees

· Transcript of all modules and results from university-level courses taken

· Research statement and topics of particular interest to the candidate (300 words).

Deadline for applications: September 15, 2019. Applications will be processed as they arrive; early application is highly encouraged.

请您在邮件申请时在标题注明信息来自:博士后招聘网-boshihoujob.com,电话咨询时说明从博士后招聘网(www.boshihoujob.com)看到的博士后招聘信息。

声明:凡本网注明“来源:XXX”的文/图等稿件,本网转载出于传递更多信息及方便产业探讨之目的,并不意味着本站赞同其观点或证实其内容的真实性,文章内容仅供参考。如其他媒体、网站或个人从本网站转载使用,须保留本网站注明的“来源”,并自负版权等法律责任。作者如果不希望被转载或者联系转载等事宜,请与我们联系。邮箱:boshihoujob@163.com。

博士后招聘网微信公众号

博士后招聘网微信公众号

扫描二维码关注公众号,ID:boshihoujob

发布博士后招聘信息 加入博士人才库

博士&博士后社群

  • 博士后招聘1号群
    799173148

  • 博士后招聘2号群
    373726562

  • 哲学博士群
    934079716

  • 经济学博士群
    945762011

  • 法学博士群
    934096817

  • 教育学博士群
    934118244

  • 文学博士群
    934106321

  • 历史学博士群
    945803407

  • 理学博士群
    934102752

  • 工学博士群
    945827064

  • 农学博士群
    114347294

  • 医学博士群
    729811942

  • 管理学博士群
    797229360

Copyright©2018-2023 博士后招聘网(boshihoujob.com) 版权所有 皖ICP备18007485号-1 皖公网安备 34070202000340号

本网站所有资讯内容、广告信息,未经书面同意,不得转载。

博士后招聘网(www.boshihoujob.com)专注服务于海内外博士后研究人员。

博士后招收信息发布请联系邮箱boshihoujob@163.com,QQ:878065319,微信号:bshjob001。
联系时请注明单位名称(如:单位名称+博士后招收信息发布)。