Conditional Seq2Seq model for the time-dependent two-level system

B Yang, M Wu, W Teizer - arXiv preprint arXiv:2206.02889, 2022 - arxiv.org
B Yang, M Wu, W Teizer
arXiv preprint arXiv:2206.02889, 2022arxiv.org
We apply the deep learning neural network architecture to the two-level system in quantum
optics to solve the time-dependent Schrodinger equation. By carefully designing the network
structure and tuning parameters, above 90 percent accuracy in super long-term predictions
can be achieved in the case of random electric fields, which indicates a promising new
method to solve the time-dependent equation for two-level systems. By slightly modifying
this network, we think that this method can solve the two-or three-dimensional time …
We apply the deep learning neural network architecture to the two-level system in quantum optics to solve the time-dependent Schrodinger equation. By carefully designing the network structure and tuning parameters, above 90 percent accuracy in super long-term predictions can be achieved in the case of random electric fields, which indicates a promising new method to solve the time-dependent equation for two-level systems. By slightly modifying this network, we think that this method can solve the two- or three-dimensional time-dependent Schrodinger equation more efficiently than traditional approaches.
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