Abstract:
This paper presents a novel 3D folded capacitive synaptic crossbar array designed for in-memory computing architectures. In this architecture, the bitline is folded over ...Show MoreMetadata
Abstract:
This paper presents a novel 3D folded capacitive synaptic crossbar array designed for in-memory computing architectures. In this architecture, the bitline is folded over the wordline to enhance the synaptic density. The proposed folded capacitive crossbar array ( FC^{2}A ) architecture decreases the wordline interconnect length and physical crossbar area by 50%. Thus, it helps to reduce the crossbar-associated parasitics and optimize space utilization. The proposed folded capacitive synaptic crossbar is used for designing a brain-inspired computing system (BiCoS) to recognize different patterns using CMOS technology. The BiCoS systems are prone to various reliability issues caused by the crossbar’s parasitics. Hence, the 3D folded capacitive crossbar’s Q3D model is developed to investigate the crossbar-associated parasitics and its effect on the proposed system is analyzed. The impact of crossbar parasitics is investigated for two cases: Firstly, how the three different spiking patterns (regular spiking, fast-spiking, and chattering) of the Izhikevich neuron change for the different crossbar sizes. Secondly, the impact is analyzed on the pattern recognition rate, which gets reduced to 70%. Addressing these challenges is critical to ensure the correct and robust working of the proposed system. Therefore, we propose a solution to effectively overcome and resolve these adverse effects. The energy consumed to recognize each pattern is calculated, and the average energy needed is 0.25\,nJ , which is significantly less when compared to the other state-of-the-art works. The circuit is implemented using 65nm standard CMOS technology.
Published in: IEEE Journal on Emerging and Selected Topics in Circuits and Systems ( Volume: 14, Issue: 3, September 2024)