Mouser Left Banner
Mouser Left Banner
Mouser Left Banner
Mouser Right Banner
Mouser Right Banner
Mouser Right Banner
More

    Artificial Neural Network That is Energy Efficient

    Training neural networks to perform tasks, such as recognizing images or navigating self-driving cars, could one day require less computing power and hardware thanks to a new artificial neuron device developed by researchers at the University of California San Diego. The device can run neural network computations using 100 to 1000 times less energy and area than existing CMOS-based hardware.

    Neural networks are a series of connected layers of artificial neurons, where the output of one layer provides the input to the next. Generating that input is done by applying a mathematical calculation called a non-linear activation function. This is a critical part of running a neural network. But applying this function requires a lot of computing power and circuitry because it involves transferring data back and forth between two separate units—the memory and an external processor.

    Now, UC San Diego researchers have developed a nanometer-sized device that can efficiently carry out the activation function.

    Neural network computations in hardware get increasingly inefficient as the neural network models get larger and more complex. These researchers developed a single nanoscale artificial neuron device that implements these computations in hardware in a very area- and energy-efficient way.

    The new study focuses on developing hardware implementations of energy-efficient artificial neural networks.

    The device implements one of the most commonly used activation functions in neural network training called a rectified linear unit. What’s particular about this function is that it needs hardware that can undergo a gradual change in resistance in order to work. And that’s exactly what the researchers engineered their device to do—it can gradually switch from an insulating to a conducting state, and it does so with the help of a little bit of heat.

    This switch is what’s called a Mott transition. It takes place in a nanometers-thin layer of vanadium dioxide. Above this layer is a nanowire heater made of titanium and gold. When current flows through the nanowire, the vanadium dioxide layer slowly heats up, causing a slow, controlled switch from insulating to conducting.

    This device’s architecture is very interesting and innovative.n Typically, materials in a Mott transition experience an abrupt switch from insulating to conducting because the current flows directly through the material. In this case, they flow current through a nanowire on top of the material to heat it and induce a very gradual resistance change.

    To implement the device, the researchers first fabricated an array of this so-called activation (or neuron) devices, along with a synaptic device array. Then they integrated the two arrays on a custom printed circuit board and connected them together to create a hardware version of a neural network.

    The researchers used the network to process an image—in this case, a picture of Geisel Library at UC San Diego. The network performed a type of image processing called edge detection, which identifies the outlines or edges of objects in an image. This experiment demonstrated that the integrated hardware system can perform convolution operations that are essential for many types of deep neural networks.

    The researchers say the technology could be further scaled up to do more complex tasks such as facial and object recognition in self-driving cars. With interest and collaboration from the industry, this could happen.

    Right now, this is a proof of concept. It’s a tiny system in which they only stacked one synapse layer with one activation layer. By stacking more of these together, you could make a more complex system for different applications.

    ELE Times News
    ELE Times News
    ELE Times provides extensive global coverage of Electronics, Technology, and the Market. In addition to providing in-depth articles, ELE Times attracts the industry’s largest, qualified, and highly engaged audiences, who appreciate our timely, relevant content and popular formats. ELE Times helps you build experience, drive traffic, communicate your contributions to the right audience, generate leads, and market your products favorably.

    Technology Articles

    Popular Posts

    Latest News

    Must Read

    ELE Times Top 10