QED driven QAOA for network-flow optimization

We present a general framework for modifying quantum approximate optimization algorithms (QAOA) to solve constrained network flow problems. By exploiting an analogy between flow-constraints and Gauss' law for electromagnetism, we design lattice quantum electrodynamics (QED)- inspired mixing Ham...

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Main Authors: Yuxuan Zhang, Ruizhe Zhang, Andrew C. Potter
Format: Article
Language:English
Published: Verein zur Förderung des Open Access Publizierens in den Quantenwissenschaften 2021-07-01
Series:Quantum
Online Access:https://quantum-journal.org/papers/q-2021-07-27-510/pdf/
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spelling doaj-19b9c8318a464a7abe94ba5cc59a8aea2021-07-27T13:34:43ZengVerein zur Förderung des Open Access Publizierens in den QuantenwissenschaftenQuantum2521-327X2021-07-01551010.22331/q-2021-07-27-51010.22331/q-2021-07-27-510QED driven QAOA for network-flow optimizationYuxuan ZhangRuizhe ZhangAndrew C. PotterWe present a general framework for modifying quantum approximate optimization algorithms (QAOA) to solve constrained network flow problems. By exploiting an analogy between flow-constraints and Gauss' law for electromagnetism, we design lattice quantum electrodynamics (QED)- inspired mixing Hamiltonians that preserve flow constraints throughout the QAOA process. This results in an exponential reduction in the size of the configuration space that needs to be explored, which we show through numerical simulations, yields higher quality approximate solutions compared to the original QAOA routine. We outline a specific implementation for edge-disjoint path (EDP) problems related to traffic congestion minimization, numerically analyze the effect of initial state choice, and explore trade-offs between circuit complexity and qubit resources via a particle-vortex duality mapping. Comparing the effect of initial states reveals that starting with an ergodic (unbiased) superposition of solutions yields better performance than beginning with the mixer ground-state, suggesting a departure from the ``short-cut to adiabaticity" mechanism often used to motivate QAOA.https://quantum-journal.org/papers/q-2021-07-27-510/pdf/
collection DOAJ
language English
format Article
sources DOAJ
author Yuxuan Zhang
Ruizhe Zhang
Andrew C. Potter
spellingShingle Yuxuan Zhang
Ruizhe Zhang
Andrew C. Potter
QED driven QAOA for network-flow optimization
Quantum
author_facet Yuxuan Zhang
Ruizhe Zhang
Andrew C. Potter
author_sort Yuxuan Zhang
title QED driven QAOA for network-flow optimization
title_short QED driven QAOA for network-flow optimization
title_full QED driven QAOA for network-flow optimization
title_fullStr QED driven QAOA for network-flow optimization
title_full_unstemmed QED driven QAOA for network-flow optimization
title_sort qed driven qaoa for network-flow optimization
publisher Verein zur Förderung des Open Access Publizierens in den Quantenwissenschaften
series Quantum
issn 2521-327X
publishDate 2021-07-01
description We present a general framework for modifying quantum approximate optimization algorithms (QAOA) to solve constrained network flow problems. By exploiting an analogy between flow-constraints and Gauss' law for electromagnetism, we design lattice quantum electrodynamics (QED)- inspired mixing Hamiltonians that preserve flow constraints throughout the QAOA process. This results in an exponential reduction in the size of the configuration space that needs to be explored, which we show through numerical simulations, yields higher quality approximate solutions compared to the original QAOA routine. We outline a specific implementation for edge-disjoint path (EDP) problems related to traffic congestion minimization, numerically analyze the effect of initial state choice, and explore trade-offs between circuit complexity and qubit resources via a particle-vortex duality mapping. Comparing the effect of initial states reveals that starting with an ergodic (unbiased) superposition of solutions yields better performance than beginning with the mixer ground-state, suggesting a departure from the ``short-cut to adiabaticity" mechanism often used to motivate QAOA.
url https://quantum-journal.org/papers/q-2021-07-27-510/pdf/
work_keys_str_mv AT yuxuanzhang qeddrivenqaoafornetworkflowoptimization
AT ruizhezhang qeddrivenqaoafornetworkflowoptimization
AT andrewcpotter qeddrivenqaoafornetworkflowoptimization
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