Efficient Energy Transfer in Light-Harvesting Systems, II: Quantum-Classical Comparison, Flux Network, and Robustness Analysis
Jianlan Wu, Fan Liu, Jian Ma, Robert J. Silbey, Jianshu, Cao

TL;DR
This study compares quantum and classical models of energy transfer in the FMO complex, revealing that quantum coherence significantly influences transfer pathways without greatly affecting overall efficiency, demonstrating robustness of the process.
Contribution
It provides a detailed quantum-classical comparison of energy transfer dynamics and flux networks in the FMO complex, highlighting the role of quantum coherence in pathway distribution.
Findings
Quantum corrections have negligible effect on transfer efficiency.
Quantum coherence significantly alters energy transfer pathways.
Energy transfer robustness is maintained despite pathway differences.
Abstract
Following the calculation of optimal energy transfer in thermal environment in our first paper (Wu et al., New J. Phys., 2010, 12, 105012), full quantum dynamics and leading-order `classical' hopping kinetics are compared in the seven-site Fenna-Matthews-Olson (FMO) protein complex. The difference between these two dynamic descriptions is due to higher-order quantum corrections. Two thermal bath models, classical white noise (the Haken-Strobl-Reineker model) and quantum Debye model, are considered. In the seven-site FMO model, we observe that higher-order corrections lead to negligible changes in the trapping time or in energy transfer efficiency around the optimal and physiological conditions (2% in the HSR model and 0.1% in the quantum Debye model for the initial site at BChl 1). However, using the concept of integrated flux, we can identify significant differences in branching…
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