Global coherence of quantum evolutions based on decoherent histories: theory and application to photosynthetic quantum energy transport
Michele Allegra, Paolo Giorda, Seth Lloyd

TL;DR
This paper introduces measures to quantify quantum coherence in dissipative evolutions and applies them to photosynthetic energy transport, revealing how decoherence can enhance transport efficiency by managing interference effects.
Contribution
It develops new tools within the decoherent histories framework to quantify coherence in quantum dynamics and demonstrates their application to photosynthetic exciton transport.
Findings
High efficiency linked to quantum recoil avoiding effects.
Intermediate decoherence suppresses negative interference.
Coherence quantification relates to transport performance.
Abstract
Assessing the role of interference in natural and artificial quantum dyanamical processes is a crucial task in quantum information theory. To this aim, an appopriate formalism is provided by the decoherent histories framework. While this approach has been deeply explored from different theoretical perspectives, it still lacks of a comprehensive set of tools able to concisely quantify the amount of coherence developed by a given dynamics. In this paper we introduce and test different measures of the (average) coherence present in dissipative (Markovian) quantum evolutions, at various time scales and for different levels of environmentally induced decoherence. In order to show the effectiveness of the introduced tools, we apply them to a paradigmatic quantum process where the role of coherence is being hotly debated: exciton transport in photosynthetic complexes. To spot out the essential…
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Taxonomy
TopicsSpectroscopy and Quantum Chemical Studies · Neural Networks and Reservoir Computing · stochastic dynamics and bifurcation
