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Low-Voltage Implementation of Neuromorphic Circuits for a Spike-Based Learning Control Module

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Recent brain emulation engines have been configured using thousands of neurons and billions of synapses. These components make a significant impact on the whole system in terms of power consumption… Click to show full abstract

Recent brain emulation engines have been configured using thousands of neurons and billions of synapses. These components make a significant impact on the whole system in terms of power consumption and silicon area. In this work, several upgraded neuromorphic circuits are used to configure an efficient and compact spike-based learning control module that is capable of operating under ultralow-voltage supplies offering a low energy consumption per spike. In this way, a conductance-based silicon neuron is developed using the simplest highly efficient analog circuits. Moreover, an upgraded winner-take-all (WTA) circuit is used to form a low-voltage multi-threshold current comparator to determine whether to increase or decrease the synaptic weight. Other components such as low-speed amplifier, differential pair integrator (DPI)-based synapse, and weight update controller are designed such that they properly operate under a 0.5V supply voltage. Simulation results in TSMC 0.18 $\mu \text{m}$ CMOS process show an energy consumption of 2.5 pJ for the upgraded learning control module, while its stop-learning mechanism improves the performance of the system by avoiding overfitting.

Keywords: neuromorphic circuits; control module; learning control; voltage

Journal Title: IEEE Access
Year Published: 2022

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