Title :
A 57 mW 12.5 µJ/Epoch Embedded Mixed-Mode Neuro-Fuzzy Processor for Mobile Real-Time Object Recognition
Author :
Jinwook Oh ; Gyeonghoon Kim ; Byeong-Gyu Nam ; Hoi-Jun Yoo
Author_Institution :
Dept. of Electr. Eng., Korea Adv. Inst. of Sci. & Technol. (KAIST), Daejeon, South Korea
Abstract :
A digital/analog mixed-mode processor is proposed to realize low-power and real-time neuro-fuzzy system for mobile object recognition. It integrates 1024 highly-parallel analog processing element for high dimensional inference operation, and accurate and fast digital accelerator for cascaded learning operation of neuro-fuzzy network. A neuro-fuzzy controller is proposed to manage the mixed-mode operations as a host processor while reducing extra processing delay and power consumption on inter-domain communications. To solve the conventional problems of a large dimensional mixed-mode VLSI system such as throughput degradation due to long channel delay, limited functionality of fixed analog circuits, and mismatches from process variation, the proposed processor adopts 2-stage asynchronous mixed-mode pipeline, flexible channel configuration of each domain, and learning-based calibration technologies respectively. As a result, the processor only consumes 57 mW on average and obtains 12.5 μJ/epoch energy efficiency for on-line learning mixed-mode neuro-fuzzy system with 50 fuzzy rules.
Keywords :
VLSI; asynchronous circuits; calibration; embedded systems; fuzzy logic; fuzzy systems; learning (artificial intelligence); low-power electronics; mixed analogue-digital integrated circuits; neurocontrollers; object recognition; pipeline processing; 2-stage asynchronous mixed-mode pipeline; cascaded learning operation; digital accelerator; digital-analog mixed-mode processor; epoch embedded mixed-mode neuro-fuzzy processor; flexible channel configuration; highly-parallel analog processing element; interdomain communications; large dimensional mixed-mode VLSI system; learning-based calibration technologies; low-power neuro-fuzzy system; mobile real-time object recognition; neuro-fuzzy controller; power 57 mW; power consumption; real-time neuro-fuzzy system; Computer architecture; Delays; Fuzzy logic; Inference algorithms; Object recognition; Power demand; Real-time systems; A/D; analog-digital mixed-mode; fuzzy logic; learning-based calibration; low-power; mixed-mode processor; mobile; neural network; neuro-fuzzy; object recognition; on-line learning; real-time;
Journal_Title :
Solid-State Circuits, IEEE Journal of
DOI :
10.1109/JSSC.2013.2280238