On-chip Learning In A Conventional Silicon MOSFET Based Analog Hardware Neural Network

Analog hardware Neural Network (NN) that uses a crossbar array of synapses to store the weights of the NN provides an extremely fast and energy efficient hardware platform to implement NN algorithms. Here, we design a crossbar network with a single conventional silicon based MOSFET as a synapse. We model the synapse characteristic using SPICE, benchmarked against experimentally obtained data. We also design analog peripheral circuits for neuron and synaptic weight update calculation. Next, using circuit simulations, we demonstrate "on-chip" learning (training in hardware) in the designed network. We obtain high classification accuracy on a standard machine learning dataset- the Fisher’s Iris dataset. Linear and symmetric conductance response and easy, well developed method of fabrication are the two main advantages of our proposed transistor synapse compared to most synapses, currently used for NN implementation.

[1]  Catherine Blake,et al.  UCI Repository of machine learning databases , 1998 .

[2]  John Ross Computing in Science , 1992 .

[3]  Udayan Ganguly,et al.  A simple and efficient SNN and its performance & robustness evaluation method to enable hardware implementation , 2016, ArXiv.

[4]  D. J. Newman,et al.  UCI Repository of Machine Learning Database , 1998 .

[5]  Hyung-Min Lee,et al.  Analog CMOS-based resistive processing unit for deep neural network training , 2017, 2017 IEEE 60th International Midwest Symposium on Circuits and Systems (MWSCAS).

[6]  Norbert R. Malik Electronic Circuits: Analysis, Simulation, and Design , 2019 .

[7]  P. Cochat,et al.  Et al , 2008, Archives de pediatrie : organe officiel de la Societe francaise de pediatrie.

[8]  Ieee Xplore Computing in science & engineering , 1999 .

[9]  Chenming Calvin Hu,et al.  Modern Semiconductor Devices for Integrated Circuits , 2009 .

[10]  Hyun-Woo Lee,et al.  Spin Hall torque magnetometry of Dzyaloshinskii domain walls , 2013, 1308.1432.

[11]  Front , 2020, 2020 Fourth World Conference on Smart Trends in Systems, Security and Sustainability (WorldS4).