2021
DOI: 10.1016/j.cpc.2020.107541
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NIC-CAGE: An open-source software package for predicting optimal control fields in photo-excited chemical systems

Abstract: We present an open-source software package, NIC-CAGE (Novel Implementation of Constrained Calculations for Automated Generation of Excitations), for predicting quantum optimal control fields in photo-excited chemical systems. Our approach utilizes newly derived analytic gradients for maximizing the transition probability (based on a norm-conserving Crank-Nicolson propagation scheme) for driving a system from a known initial quantum state to another desired state. The NIC-CAGE code is written in the MATLAB and … Show more

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Cited by 20 publications
(16 citation statements)
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“…46 Finally, we also anticipate that the machine learning techniques used here could be harnessed to predict optimal electric fields for other higherlying transitions, which are known to exhibit more complex patterns in the time and frequency domains. 41 In particular, cross-correlation neural network approaches, which were used to overcome problems associated with the random phase of E(t), could be useful in (1) predicting optimal electric fields for other higher-energy excitations in the time domain or (2) enabling the prediction of the full absorption/emission spectra of molecules since the absorption spectra is merely the Fourier transform of E(t). Taken together, these machine learning techniques show a promising path towards cost-effective statistical approaches for designing control fields that enable desired transitions in quantum dynamical systems.…”
Section: Discussionmentioning
confidence: 99%
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“…46 Finally, we also anticipate that the machine learning techniques used here could be harnessed to predict optimal electric fields for other higherlying transitions, which are known to exhibit more complex patterns in the time and frequency domains. 41 In particular, cross-correlation neural network approaches, which were used to overcome problems associated with the random phase of E(t), could be useful in (1) predicting optimal electric fields for other higher-energy excitations in the time domain or (2) enabling the prediction of the full absorption/emission spectra of molecules since the absorption spectra is merely the Fourier transform of E(t). Taken together, these machine learning techniques show a promising path towards cost-effective statistical approaches for designing control fields that enable desired transitions in quantum dynamical systems.…”
Section: Discussionmentioning
confidence: 99%
“…To generate the data required for our machine learning approaches, we utilized the NIC-CAGE (Novel Implementation of Constrained Calculations for Automated Generation of Excitations) program developed in our previous work. 41 Given a potential, V (x), this program iteratively calculates a numerical representation of E(t) that enables a ≈100% transition probability between two desired electronic transitions (which, in this work, are the ground and first-excited state, schematically shown in Figs. 1a and 1b.…”
Section: B Generation Of Datasets Used For Machine Learningmentioning
confidence: 99%
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“…In this work, we harness new RL techniques to automatically construct optimal control fields, E(t), that enable desired transitions in these continuous/infinitedimensional Hilbert-space dynamical systems. To test the performance of our RL approach, we compare against the NIC-CAGE (Novel Implementation of Constrained Calculations for Automated Generation of Excitations) code [38], which solves the quantum control problem using a traditional gradient-based approach. Specifically, the NIC-CAGE code utilizes analytic gradients based on a Crank-Nicholson propagator, which are computationally more efficient than other matrix exponential approaches (such as those used in the GRAPE [39] or QuTIP [40,41] packages) or higher-order timepropagation methods [42].…”
Section: A Brief Overview Of Quantum Control For Chemical Systemsmentioning
confidence: 99%
“…In particular, the gradient-based method efficiently tailors incident light for photo-excited systems. 25,26 Combining it with molecular design provides a possibility to further optimize desired properties. Such a design by theoretical means requires the time-domain description of the phenomena involving light such as the LSPR.…”
Section: Introductionmentioning
confidence: 99%