UCSD-SDSU 联合博士项目招生
- 
							
							
							
							
Job description 
 We provide the opportunity for the joint Ph.D. program between UCSD and SDSU.Research motivation 
 Do you know that measurement in a turbulent environment has its own "sixth
 sense"? In fluid dynamical systems, measurements can be used to figure out
 events that happened far away from the probing location.
 Through state-of-art data assimilation techniques, we can trace back the origin
 of any information we have measured. We used this technique to locate the
 release of a pollution release, and reconstruct unknown flow fields from limited
 measurements.Are you self-motivated to do a Ph.D. in interdisciplinary researches about fluid 
 dynamics, inverse problems, and optimization? We are looking for Ph.D. students
 that are willing to spend time studying in an encouraging and creative
 environment!There has been a long-hovering question about how to combine experimental 
 measurements with numerical simulations. Especially in terms of designing a
 turbulence model that agrees with experimental studies. In addition, the design
 of sensor networks or sensor weighting can be optimized in terms of the amount
 of information obtained.
 In this Ph.D. project, you will develop novel simulation techniques that combine
 machine learning techniques with data assimilation.The required skills and preferred profile 
 We are looking for self-motivated young researchers from mechanical
 engineering, aerospace engineering, computational physics, applied mathematics,
 or other closely related areas.- Familiar with MATLAB and FORTRAN with MPI.
- C++ and python is a plus.
- Good conceptual understanding of calculus and linear algebra.
- Experience with simple machine learning algorithms.
- Good communication skills including presentation skills, academic writing
 with latex or word.
- Please note that the GRE is required for all JDP applicants and cannot be
 waived.
- Having a part-time hobby is a plus.
 Location 
 Work is carried out in the Data Assimilation group at Aerospace Engineering, San Diego State University.
 We study various inverse problems in fluid dynamics using numerical simulations
 with the discrete adjoint operator.
 For further information, please visit us at
 https://qiwang.sdsu.edu/Information and application 
 Interested applicants should visit
 https://www.engineering.sdsu.edu/admissions/jointdoc_areomech.aspx
 for more details about applying for the joint program.
 Meanwhile, please reach out to Qi Wang (qwang4@sdsu.edu), including:
 • A short description of your qualifications and motivation to apply for this
 position.
 • CV or resume.
 • Transcripts from your Bachelor and Master degrees.
 Selected candidates will be invited to an interview and should prepare a
 scientific presentation as part of the requirements.We highly value diversity at our university. Applicants from all backgrounds are 
 welcomed.
