Publication | Closed Access
Programmable Tanh-, ELU-, Sigmoid-, and Sin-Based Nonlinear Activation Functions for Neuromorphic Photonics
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Citations
41
References
2023
Year
EngineeringNeural Networks (Machine Learning)Programmable AnalogOptogeneticsSocial SciencesProgrammable PhotonicsOptical ComputingNeuromorphic EngineeringNeurocomputersPhotonicsComputer EngineeringNeural Networks (Computational Neuroscience)Deep LearningPhotonic DeviceProgrammable Tanh-Neuromorphic PhotonicsComputational NeuroscienceApplied PhysicsNeuroscienceNonlinear Activation FunctionsBrain-like Computing
We demonstrate a programmable analog opto-electronic (OE) circuit that can be configured to provide a range of nonlinear activation functions for incoherent neuromorphic photonic circuits at up to 10 Gbaud line-rates. We present a set of well-known activation functions that are typically used to train DL models including tanh-, sigmoid-, ReLU- and inverted ReLU-like activations, introducing also a series of novel photonic nonlinear functions that are referred to as Rectified Sine Squared (ReSin), Sine Squared with Exponential tail (ExpSin) and Double Sine Squared. Experimental validation for all these activation functions is performed at 10 Gbaud operation. The ability of the mathematically modelled photonic activation functions to train Deep Neural Networks (DNNs) has been verified through their employment in Deep Learning (DL) models for MNIST and CIFAR10 classification purposes, comparing their performance against corresponding NNs that utilize an ideal ReLU activation function.
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