NIST chip lights up optical neural network demo

  

The human brain has billions of neurons (nerve cells), each with thousands of connections to other neurons. Many computing research projects aim to emulate the brain by creating circuits of artificial neural networks. But conventional electronics, including the electrical wiring of semiconductor circuits, often impedes the extremely complex routing required for useful neural networks.

The NIST team proposes to use light instead of electricity as a signalling medium, which they say would eliminate interference due to electrical charge and the signals would travel faster and farther.

"Light's advantages could improve the performance of neural nets for scientific data analysis such as searches for Earth-like planets and quantum information science, and accelerate the development of highly intuitive control systems for autonomous vehicles," NIST physicist Jeff Chiles said.

A conventional computer processes information through algorithms, or human-coded rules. By contrast, a neural network relies on a network of connections among processing elements, or neurons, which can be trained to recognise certain patterns of stimuli. A neural or neuromorphic computer would consist of a large, complex system of neural networks.

The NIST researchers say their chip overcomes a challenge to the use of light signals by vertically stacking two layers of photonic waveguides - structures that confine light into narrow lines for routing optical signals, much as wires route electrical signals. This 3D design enables complex routing schemes, which are necessary to mimic neural systems. Furthermore, the researchers say the design can easily be extended to incorporate additional waveguiding layers when needed for more complex networks.

The stacked waveguides form a 3D grid with 10 inputs or ‘upstream’ neurons each connecting to 10 outputs or ‘downstream’ neurons, for a total of 100 receivers. Fabricated on a silicon wafer, the waveguides are made of silicon nitride and are each 800nm wide and 400nm thick. Researchers created software to automatically generate signal routing, with adjustable levels of connectivity between the neurons.

Laser light was directed into the chip through an optical fibre. The goal was to route each input to every output group, following a selected distribution pattern for light intensity or power. Power levels represent the pattern and degree of connectivity in the circuit. The researchers demonstrated two schemes for controlling output intensity: uniform (each output receives the same power) and a ‘bell curve’ distribution (in which middle neurons receive the most power, while peripheral neurons receive less).

To evaluate the results, researchers made images of the output signals. All signals were focused through a microscope lens onto a semiconductor sensor and processed into image frames. This method allows many devices to be analysed at the same time with high precision. The output was highly uniform, with low error rates, confirming precise power distribution, the researcher claim.

"We've really done two things here," Chiles said. "We've begun to use the third dimension to enable more optical connectivity, and we've developed a new measurement technique to rapidly characterise many devices in a photonic system. Both advances are crucial as we begin to scale up to massive optoelectronic neural systems."