Samuel Shapero - Ph.D. Defense Presentation

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Event Details
  • Date/Time:
    • Monday January 7, 2013 - Tuesday January 8, 2013
      9:00 am - 10:59 am
  • Location: Technology Square Research Building, Room 509
  • Phone:
  • URL:
  • Email:
  • Fee(s):
    N/A
  • Extras:
Contact

Mr. Christopher Ruffin

Summaries

Summary Sentence: "Configurable Analog Hardware for Neuromorphic Bayesian Inference and Least-Squares Solutions"

Full Summary: Configurable Analog Hardware for Neuromorphic Bayesian Inference and Least-Squares Solutions

Advisor:  Dr. Jennifer Hasler (Georgia Institute of Technology)
Committee Members: 
Dr. David Anderson (Georgia Institute of Technology)
Dr. Chris Eliasmith (University of Waterloo)
Dr. Christopher Rozell (Georgia Institute of Technology)
Dr. Garrett Stanley (Georgia Institute of Technology)

Sparse approximation is a Bayesian inference program with a wide number of signal processing applications, such as Compressed Sensing recovery used in medical imaging. Previous sparse coding implementations relied on digital algorithms whose power consumption and performance scale poorly with problem size, rendering them unsuitable for portable applications, and a bottleneck in high speed applications.

A novel analog architecture, implementing the Locally Competitive Algorithm (LCA), was designed and programmed onto a Field Programmable Analog Arrays (FPAAs), using floating gate transistors to set the analog parameters. A network of 6 coefficients was demonstrated to converge to similar values as a digital sparse approximation algorithm, but with better power and performance scaling. A rate encoded spiking algorithm was then developed, which was shown to converge to similar values as the LCA. A second novel architecture was designed and programmed on an FPAA implementing the spiking version of the LCA with integrate and fire neurons. A network of 18 neurons converged on similar values as a digital sparse approximation algorithm, with even better performance and power efficiency than the non-spiking network.

Novel algorithms were created to increase floating gate programming speed by more than two orders of magnitude, and reduce programming error from device mismatch. A new FPAA chip was designed and tested which allowed for rapid interfacing and additional improvements in accuracy. Finally, a neuromorphic chip was designed, containing 400 integrate and fire neurons, and capable of converging on a sparse approximation solution in 10$\upmu$s, over 1000 times faster than the best digital solution.

Additional Information

In Campus Calendar
No
Groups

Bioengineering Graduate Program

Invited Audience
No audiences were selected.
Categories
Other/Miscellaneous
Keywords
bioengineering
Status
  • Created By: Chris Ruffin
  • Workflow Status: Published
  • Created On: Dec 19, 2012 - 10:04am
  • Last Updated: Oct 7, 2016 - 10:01pm