SBIR-STTR Award

Implementing Neural Network Algorithms on Neuromorphic Processors
Award last edited on: 9/19/2022

Sponsored Program
SBIR
Awarding Agency
DOD : Navy
Total Award Amount
$1,331,830
Award Phase
2
Solicitation Topic Code
N202-099
Principal Investigator
Eric Blowers

Company Information

Bascom Hunter Technologies Inc

7117 Florida Boulevard
Baton Rouge, LA 70806
   (225) 590-3553
   inquire@bascomhunter.com
   www.bascomhunter.com
Location: Single
Congr. District: 02
County: East Baton Rouge Parish

Phase I

Contract Number: N68335-21-C-0011
Start Date: 10/7/2020    Completed: 1/10/2022
Phase I year
2021
Phase I Amount
$239,198
When choosing hardware for implementing neural networks, one must consider what are the most important performance constraints for the operator in the field. We propose to implement low-latency, high-bandwidth neural networks employing hardware such as FPGAs and novel neuromorphic photonic chips. It is often assumed that pattern classification networks are best when they can classify a large number of inputs per second, while spending the least amount of energy per input. But the warfighter in the field needs to make decisions within a very short response time window, especially when tracking hostile objects in physical space or responding to attacks in cyberspace. Unless the enhanced processing power of neuromorphic processors can be harnessed to produce low-latency results, they cannot be used in certain classes of real-time decision-making applications. Most traditional AI accelerator hardware, such as GPUs, are focused on having high throughput and although they have kilowatt-high power consumption, it is diluted by the massive amount of data flowing through them. This satisfies the computing needs for training large neural networks, which can be done upfront in data centers with optimal cooling and access to bulk electricity. But the same hardware is not as power-efficient when deployed in mobile computers for running pre-trained neural networks with lower data volume. This motivated development of efficient neuromorphic processors, e.g. IBMs TrueNorth and Intels Loihi, but they are limited to low-bandwidth signals (100 Hz) designed for human-machine interactions. We propose to investigate hardware implementations of neuromorphic algorithms that run at sub-microsecond latencies, with signals that approach GHz speed. This would enhance command of the radio spectrum, which requires real-time processing of many radiofrequency (RF) signals, e.g. for suppressing jamming and interference in adversarial environments. It would also enable control or tracking of supersonic missiles and aircraft, which require sub-millisecond-scale feedback loops.

Benefit:
The commercialization of this technology has recently become viable and advancements in standardized photonic foundries, both in the US and abroad, have proven the feasibility of mass photonic fabrication and packaging. The proposed hybrid system requires an FPGA, a photonic integrated circuit, control hardware, and packaging which interfaces the electronics and photonics for commercialization. A COTS FPGA will be sufficient for the system which can easily be purchased in bulk. The custom photonic integrated circuit can be fabricated in large quantities at AIM Photonic Foundry in the US or abroad in foundries such as Advanced Micro Foundry (AMF). Bascom Hunter and Princeton University has worked in collaboration for the past few years to design and fabricate photonic specific control hardware, which can be tailored to this system and fabricated at any US based PCB manufacturer. Lastly, the packaging interface between the photonics and electronic is the least mature step of the commercialization process. Bascom Hunter has invested in developing this in house over the past few years with assistance from Linear Photonics (see Figure 4). While achievable in house for prototyping, outsourcing packaging at scale is preferable. AIM Photonic Foundry offers these services and could be utilized to scale for commercialization. Bascom Hunter foresees no obstacles in the commercialization of this technology in later phases of the research.

Keywords:
optical processing neuromorphic neural networks, optical processing neuromorphic neural networks

Phase II

Contract Number: N68335-22-C-0159
Start Date: 2/17/2022    Completed: 8/23/2024
Phase II year
2022
Phase II Amount
$1,092,632
Bascom Hunter has demonstrated in Phase 1 the superior performance of photonic based neurons within Continuous Neuromorphic Computing architectures in both electronic and hybrid-photonic hardware. In Phase 2 we will extend that work to create designs for a Neuromorphic Toolbox of solutions providing Electronic, Spiking Electronic and Hybrid Photonic hardware for Neural Network topologies. These designs will be focused on the Specific Emitter Identification use case and may use Government Furnished Information to better train the network. The Phase 2 Option will develop these designs into benchtop prototypes. The Phase 2 Option will also include the development of a VPX Neuromorphic Hardware that is HOST compatible. In Phase 3 we will be looking at optimizing solutions for the Navy and creating deployable Neuromorphic Hardware. This will be based on the Neuromorphic Hardware Toolbox that was started in Phase 2 as well as a Neuromorphic Software Toolbox which will aid the rapid migration of machine learning algorithms from Desktop Computing Systems to Edge Computing modules.

Benefit:
The generation of real-time insights for the warfighter is an increasingly important area of interest, especially due to the growth of Electronic Warfare challenges. These insights require faster processors and smarter models that can be deployed at the edge in low Size, Weight and Power (SWaP) configurations. Traditional von-Neumann based computing architectures are challenged by the complex learning models, low power budget and real-time needs of the warfighter. Neuromorphic Processors provide a realistic solution to this problem by leveraging an architecture that more closely resembles the Human Brain and is better suited to run Neural Network models. Our toolbox approach allows the best hardware architectures to be matched with the best software solutions, enabling the rapid conversion of cutting-edge technology into ruggedized, modular hardware. Our Hardware and Software Toolboxes will bring immediate benefits to warfighters in the Navy and beyond by extracting actionable insights in real-time at the edge (no need to do processing in the cloud). One tangible application is the real-time identification of Radio Frequency (RF) emitters using Neuromorphic processors operating trained Neural Networks.

Keywords:
High Performance Computing, photonic integrated circuit, OpenVPX, Machine Learning, neuromorphic processors, Spiking Neural Network, Artificial Intelligence, Host