tlab High School Intern Wins Congressional App Challenge

Shreya Suresh, a high school intern in the lab, won the Congressional App Challenge.

Shreya created an app called “Sightly” for people who are visually impaired. The app uses a smartphone’s camera to identify objects in the world, like a staircase or crosswalk signal, and report them to the user with audio messages.

Read Congresswoman Suzanne Bonamici’s press release at https://bonamici.house.gov/media/press-releases/bonamici-congratulates-local-student-who-won-district-s-congressional-app-0

Watch Shreya’s submission video at https://youtu.be/h74XZBPo2yM

Shreya will be presenting the app on Capitol Hill in DC in 2022.

OPENING: REU Site Program Administrator

We are seeking an undergraduate student administrator to help us run the NSF-funded Research Experience for Undergraduates (REU) Site on “Computational Modeling Serving the City.”

AS AN REU SITE PROGRAM ADMINISTRATOR, YOU WILL:

  • Communicate with potential and admitted students via e-mail and phone
  • Coordinate recruiting efforts
  • Design and maintain online application forms
  • Prepare application packages for review
  • Plan and organize meetings and events
  • Arrange student travel, lodging, transportation
  • Analyze and visualize data
  • Prepare flyers, presentations, and advertising materials for the program
  • Maintain the WordPress website

Continue reading

New Paper: Proximal Policy Optimization for Radiation Source Search

Proctor, P.; Teuscher, C.; Hecht, A.; Osiński, M. Proximal Policy Optimization for Radiation Source Search. Journal of Nuclear Engineering, 2:368-397, 2021. https://doi.org/10.3390/jne2040029

Rapid search and localization for nuclear sources can be an important aspect in preventing human harm from illicit material in dirty bombs or from contamination. In the case of a single mobile radiation detector, there are numerous challenges to overcome such as weak source intensity, multiple sources, background radiation, and the presence of obstructions, i.e., a non-convex environment. In this work, we investigate the sequential decision making capability of deep reinforcement learning in the nuclear source search context. A novel neural network architecture (RAD-A2C) based on the advantage actor critic (A2C) framework and a particle filter gated recurrent unit for localization is proposed. Performance is studied in a randomized 20×20 m convex and non-convex simulation environment across a range of signal-to-noise ratio (SNR)s for a single detector and single source. RAD-A2C performance is compared to both an information-driven controller that uses a bootstrap particle filter and to a gradient search (GS) algorithm. We find that the RAD-A2C has comparable performance to the information-driven controller across SNR in a convex environment. The RAD-A2C far outperforms the GS algorithm in the non-convex environment with greater than 95% median completion rate for up to seven obstructions.

IEEE Transactions on Parallel and Distributed Special Section on Non-Von Neumann Technologies Published

S. Pakin, K. Schuman, C. Teuscher. Special Section on Parallel and Distributed Computing Techniques for Non-Von Neumann Technologies, IEEE Transactions on Parallel and Distributed Systems (TPDS), 32(2), 2022, https://ieeexplore.ieee.org/xpl/tocresult.jsp?isnumber=9493664