ETLGOPTICSApr 27, 2020

Adaptive model selection in photonic reservoir computing by reinforcement learning

arXiv:2004.12575v114 citations
Originality Incremental advance
AI Analysis

This enables autonomous adaptation in photonic AI for applications like load forecasting with frequent environment changes, but it is incremental as it builds on existing reservoir computing and reinforcement learning methods.

The paper tackled the problem of performance degradation in photonic reservoir computing when input signals deviate from training data by proposing an adaptive model selection scheme using reinforcement learning, achieving successful selection for mixed signals from different dynamic models or parameter variations.

Photonic reservoir computing is an emergent technology toward beyond-Neumann computing. Although photonic reservoir computing provides superior performance in environments whose characteristics are coincident with the training datasets for the reservoir, the performance is significantly degraded if these characteristics deviate from the original knowledge used in the training phase. Here, we propose a scheme of adaptive model selection in photonic reservoir computing using reinforcement learning. In this scheme, a temporal waveform is generated by different dynamic source models that change over time. The system autonomously identifies the best source model for the task of time series prediction using photonic reservoir computing and reinforcement learning. We prepare two types of output weights for the source models, and the system adaptively selected the correct model using reinforcement learning, where the prediction errors are associated with rewards. We succeed in adaptive model selection when the source signal is temporally mixed, having originally been generated by two different dynamic system models, as well as when the signal is a mixture from the same model but with different parameter values. This study paves the way for autonomous behavior in photonic artificial intelligence and could lead to new applications in load forecasting and multi-objective control, where frequent environment changes are expected.

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