Reconfigurable Nonlinear Photonic Networks for In-Situ Learning and Memory Formation via Driven-Dissipative Dynamics
Isaac Yorke

TL;DR
This paper introduces a reconfigurable photonic neuromorphic system that leverages driven-dissipative dynamics for in-situ learning and memory, enabling adaptive and scalable optical computing.
Contribution
It proposes a physically grounded, reconfigurable photonic network that integrates learning, memory, and computation directly within the optical hardware.
Findings
Demonstrates local physical learning rules enabling adaptive state evolution.
Shows tunable stability-plasticity tradeoff via decay and hysteresis mechanisms.
Achieves controlled memory formation and erasure through bistable photonic states.
Abstract
Photonic neuromorphic computing offers a promising route to overcoming the limitations of conventional von Neumann architectures by exploiting the high bandwidth, low latency, and massive parallelism of optical systems. However, most existing implementations rely on fixed dynamical substrates such as classic reservoir computing, where learning is restricted to external readout layers and memory is limited to transient fading effects. In this work, I propose a Reconfigurable Nonlinear Photonic Decision Network (RNPDN), a physically grounded neuromorphic framework in which computation, memory, and learning emerge directly from driven-dissipative dynamics. Through numerical simulations, I demonstrate the simultaneous realization of key properties: local physical learning rules enabling adaptive state evolution, a tunable stability-plasticity tradeoff governed by decay and hysteresis…
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