Estimating Phosphorescent Emission Energies in Ir(III) Complexes using Large-Scale Quantum Computing Simulations
Scott N. Genin, Ilya G. Ryabinkin, Nathan R. Paisley, Sarah O. Whelan,, Michael G. Helander, and Zachary M. Hudson

TL;DR
This study applies a quantum-inspired simulation method to predict emission energies in iridium complexes, showing comparable accuracy to classical methods and potential for future quantum hardware implementation.
Contribution
It demonstrates the use of the iterative qubit coupled cluster (iQCC) method on classical hardware for phosphorescent complexes, highlighting its accuracy and future potential.
Findings
iQCC matches the accuracy of fine-tuned DFT functionals
iQCC has a better Pearson correlation coefficient than classical methods
Potential for systematic improvement with quantum hardware
Abstract
Quantum chemistry simulations that accurately predict the properties of materials are among the most highly anticipated applications of quantum computing. It is widely believed that simulations running on quantum computers will allow for higher accuracy, but there has not yet been a convincing demonstration that quantum methods are competitive with existing classical methods at scale. Here we apply the iterative qubit coupled cluster (iQCC) method on classical hardware to the calculation of the transition energies in nine phosphorescent iridium complexes, to determine if quantum simulations have any advantage over traditional computing methods. Phosphorescent iridium complexes are integral to the widespread commercialization of organic light-emitting diode (OLED) technology, yet accurate computational prediction of their emission energies remains a challenge. Our…
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Taxonomy
TopicsQuantum and electron transport phenomena · Quantum Computing Algorithms and Architecture · Machine Learning in Materials Science
