2021 Annual Meeting
(560e) What Matters and What Does Not Matter: Parametrizing Common and Sensor-Specific Information across Multiple Sensors in Chemically Reacting Systems
Authors
From this point, it is desirable to also parametrize each uncommon system. We demonstrate an approach using Output-Influenced Diffusion Maps [4], as well as a more reliable approach using Neural Networks to find parametrizations of the disjoint features; these are (in the original sensor data) locally conformal to the common system parametrization.
References:
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[2] R.R. Lederman and R. Talmon, Appl. Comput. Harmon. Anal. 44, 509 (2018).
[3] O. Yair, F. Dietrich, R. Mulayoff, R. Talmon, and I.G. Kevrekidis, Spectral discovery of jointly smooth features for multimodal data, ArXiv (2020).
[4] A. Holiday, M. Kooshkbaghi, J.M. Bello-Rivas, C. William Gear, A. Zagaris, and I.G. Kevrekidis, J. Comput. Phys. 392, 419 (2019).