Physics-informed neural networks for an optimal counterdiabatic quantum computation

被引:1
|
作者
Ferrer-Sanchez, Antonio [1 ,2 ]
Flores-Garrigos, Carlos [1 ]
Hernani-Morales, Carlos [1 ,3 ]
Orquin-Marques, Jose J. [1 ]
Hegade, Narendra N. [4 ]
Cadavid, Alejandro Gomez [4 ]
Montalban, Iraitz [4 ]
Solano, Enrique [4 ]
Vives-Gilabert, Yolanda [1 ]
Martin-Guerrero, Jose D. [1 ,2 ,3 ]
机构
[1] Univ Valencia, Elect Engn Dept, ETSE UV, Avgda Univ S-N, Burjassot 46100, Valencia, Spain
[2] Valencian Grad Sch & Res Network Artificial Intell, Valencia, Spain
[3] Quantum Spain, Burjassot 46100, Valencia, Spain
[4] Kipu Quantum, Greifswalderstr 226, D-10405 Berlin, Germany
来源
关键词
physics-informed neural networks; quantum computing; shortcuts to adiabaticity; counterdiabatic driving; Pauli operators; OPTIMIZATION; ALGORITHM; FRAMEWORK; MECHANICS; MODEL;
D O I
10.1088/2632-2153/ad450f
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
A novel methodology that leverages physics-informed neural networks to optimize quantum circuits in systems with N Q qubits by addressing the counterdiabatic (CD) protocol is introduced. The primary purpose is to employ physics-inspired deep learning techniques for accurately modeling the time evolution of various physical observables within quantum systems. To achieve this, we integrate essential physical information into an underlying neural network to effectively tackle the problem. Specifically, the imposition of the solution to meet the principle of least action, along with the hermiticity condition on all physical observables, among others, ensuring the acquisition of appropriate CD terms based on underlying physics. This approach provides a reliable alternative to previous methodologies relying on classical numerical approximations, eliminating their inherent constraints. The proposed method offers a versatile framework for optimizing physical observables relevant to the problem, such as the scheduling function, gauge potential, temporal evolution of energy levels, among others. This methodology has been successfully applied to 2-qubit representing H 2 molecule using the STO-3G basis, demonstrating the derivation of a desirable decomposition for non-adiabatic terms through a linear combination of Pauli operators. This attribute confers significant advantages for practical implementation within quantum computing algorithms.
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页数:21
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