Programmable Neuromorphic Circuit based on Printed Electrolyte-Gated Transistors

2020 25th Asia and South Pacific Design Automation Conference (ASP-DAC)(2020)

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摘要
Neuromorphic computing systems have demonstrated many advantages for popular classification problems with significantly less computational resources. We present in this paper the design, fabrication and training of a programmable neuromorphic circuit, which is based on printed electrolytegated field-effect transistor (EGFET). Based on printable neuron architecture involving several resistors and one transistor, the proposed circuit can realize multiply-add and activation functions. The functionality of the circuit, i.e. the weights of the neural network, can be set during a post-fabrication step in form of printing resistors to the crossbar. Besides the fabrication of a programmable neuron, we also provide a learning algorithm, tailored to the requirements of the technology and the proposed programmable neuron design, which is verified through simulations. The proposed neuromorphic circuit operates at 5V and occupies 385mm 2 of area.
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关键词
learning algorithm,programmable neuron fabrication,crossbar,neural network,activation functions,multiply-add functions,transistor,EGFET,post-fabrication step,printable neuron architecture,printed electrolytegated field-effect transistor,computational resources,classification problems,neuromorphic computing systems,programmable neuromorphic circuit,programmable neuron design,printing resistors,voltage 5.0 V
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