Neuron-based Digital and Mixed-signal Circuit Design: From ASIC to SIMD Processors
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Description
Among the many challenges facing circuit designers in deep sub-micron technologies, power, performance, area (PPA) and process variations are perhaps the most critical. Since existing strategies for reducing power and boosting the performance of the circuit designs have already matured to saturation, it is necessary to explore alternate unconventional strategies. This investigation focuses on using perceptrons to enhance PPA in digital circuits and starts by constructing the perceptron using a combination of complementary metal-oxide-semiconductor (CMOS) and flash technology. The use of flash enables the perceptron to have a variable delay and functionality, making them robust to process, voltage, and temperature variations. By replacing parts of an application-specific integrated circuit (ASIC) with these perceptrons, improvements of up to 30% in the area and 20% in power can be achieved without affecting performance. Furthermore, the ability to vary the delay of a perceptron enables circuit designers to fix setup and hold-time violations post-fabrication, while reprogramming the functionality enables the obfuscation of the circuits. The study extends to field-programmable gate arrays (FPGAs), showing that traditional FPGA architectures can also achieve improved PPA by replacing some Look-Up-Tables (LUTs) with perceptrons. Considering that replacing parts of traditional digital circuits provides significant improvements in PPA, a natural extension was to see whether circuits built dedicatedly using perceptrons as its compute unit would lead to improvements in energy efficiency. This was demonstrated by developing perceptron-based compute elements and constructing an architecture using these elements for Quantized Neural Network acceleration. The resulting circuit delivered up to 50 times more energy efficiency compared to a CMOS-based accelerator without using standard low-power techniques such as voltage scaling and approximate computing.