Bulletin of the American Physical Society
APS March Meeting 2020
Volume 65, Number 1
Monday–Friday, March 2–6, 2020; Denver, Colorado
Session C71: Poster Session I (2:00pm - 5:00pm)
2:00 PM,
Monday, March 2, 2020
Room: Exhibit Hall C/D
Abstract: C71.00378 : The Link between Artificial Neural Networks and Propagation in Random Media
Presenter:
Giulia Marcucci
(Physics Department, Sapienza University of Rome)
Authors:
Giulia Marcucci
(Physics Department, Sapienza University of Rome)
Davide Pierangeli
(Physics Department, Sapienza University of Rome)
Claudio Conti
(Physics Department, Sapienza University of Rome)
TCs in RM can be modulated by tuning the transmission matrix (TM) through iterative algorithms that modify the input until a designed output is obtained. This approach treats RM as black boxes, i.e., it treats the TM as an ANN hidden layer of a reservoir computing (RC) strategy, a machine learning technique that left untrained the ANN internal part and optimizes weights only at input and readout.
By electromagnetic perturbation theory, we prove that weakly tampering the medium generates a new TM, given by the product between the previous TM and the perturbative one. We then design the ANN depth of our ROM by optimizing the amount of perturbations, moving from an extreme learning machine (unperturbed system) to untrained deep learning (many perturbations).
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