Echo State network for coarsening dynamics of charge density waves
- URL: http://arxiv.org/abs/2412.11982v1
- Date: Mon, 16 Dec 2024 17:04:10 GMT
- Title: Echo State network for coarsening dynamics of charge density waves
- Authors: Clement Dinh, Yunhao Fan, Gia-Wei Chern,
- Abstract summary: echo state network (ESN) is a type of reservoir computer that uses a recurrent neural network with a sparsely connected hidden layer.<n>Here we build an ESN to model the coarsening dynamics of charge-density waves (CDW) in a semi-classical Holstein model.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: An echo state network (ESN) is a type of reservoir computer that uses a recurrent neural network with a sparsely connected hidden layer. Compared with other recurrent neural networks, one great advantage of ESN is the simplicity of its training process. Yet, despite the seemingly restricted learnable parameters, ESN has been shown to successfully capture the spatial-temporal dynamics of complex patterns. Here we build an ESN to model the coarsening dynamics of charge-density waves (CDW) in a semi-classical Holstein model, which exhibits a checkerboard electron density modulation at half-filling stabilized by a commensurate lattice distortion. The inputs to the ESN are local CDW order-parameters in a finite neighborhood centered around a given site, while the output is the predicted CDW order of the center site at the next time step. Special care is taken in the design of couplings between hidden layer and input nodes to ensure lattice symmetries are properly incorporated into the ESN model. Since the model predictions depend only on CDW configurations of a finite domain, the ESN is scalable and transferrable in the sense that a model trained on dataset from a small system can be directly applied to dynamical simulations on larger lattices. Our work opens a new avenue for efficient dynamical modeling of pattern formations in functional electron materials.
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