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An improved differential evolution algorithm for learning high-fidelity quantum controls 被引量:1

An improved differential evolution algorithm for learning high-fidelity quantum controls
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摘要 Precisely and efficiently designing control pulses for the preparation of quantum states and quantum gates are the fundamental tasks for quantum computation.Gradient-based optimal control methods are the routine to design such pulses.However,the gradient information is often difficult to calculate or measure,especially when the system is not well calibrated or in the presence of various uncertainties.Gradient-free evolutionary algorithm is an alternative choice to accomplish this task but usually with low-efficiency.Here,we design an efficient mutation rule by using the information of the current and the former individuals together.This leads to our improved differential evolution algorithm,called da DE.To demonstrate its performance,we numerically benchmark the pulse optimization for quantum states and quantum gates preparations on small-scale NMR system.Further numerical comparisons with conventional differential evolution algorithms show that da DE has great advantages on the convergence speed and robustness to several uncertainties including pulse imperfections and measurement errors. Precisely and efficiently designing control pulses for the preparation of quantum states and quantum gates are the fundamental tasks for quantum computation.Gradient-based optimal control methods are the routine to design such pulses.However,the gradient information is often difficult to calculate or measure,especially when the system is not well calibrated or in the presence of various uncertainties.Gradient-free evolutionary algorithm is an alternative choice to accomplish this task but usually with low-efficiency.Here,we design an efficient mutation rule by using the information of the current and the former individuals together.This leads to our improved differential evolution algorithm,called da DE.To demonstrate its performance,we numerically benchmark the pulse optimization for quantum states and quantum gates preparations on small-scale NMR system.Further numerical comparisons with conventional differential evolution algorithms show that da DE has great advantages on the convergence speed and robustness to several uncertainties including pulse imperfections and measurement errors.
出处 《Science Bulletin》 SCIE EI CAS CSCD 2019年第19期1402-1408,共7页 科学通报(英文版)
基金 supported by the National Natural Science Foundation of China(11605005,11875159,and U1801661) Science,Technology and Innovation Commission of Shenzhen Municipality(ZDSYS20170303165926217 and JCYJ20180302174036418) Guangdong Innovative and Entrepreneurial Research Team Program(2016ZT06D348) supported by the National Key Research and Development Program of China(2018YFA0306600) the National Science Fund for Distinguished Young Scholars(11425523) Projects of International Cooperation and Exchanges NSFC(11661161018) Anhui Initiative in Quantum Information Technologies(AHY050000)
关键词 Control PULSES SEARCHING Differential evolution Quantum STATES and GATES preparation Pulse IMPERFECTIONS Random measurement ERRORS Control pulses searching Differential evolution Quantum states and gates preparation Pulse imperfections Random measurement errors
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