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Estimation of Electrostatic Interaction Energies on a Trapped-Ion Quantum Computer

Pauline J. Ollitrault, Matthias Loipersberger, Robert M. Parrish, A. Erhard, Christine Maier, Christian Sommer, J. Ulmanis, T. Monz, Christian Gogolin, C. Tautermann, G. Anselmetti, M. Degroote, Nikolaj Moll, Raffaele Santagati, Michael Streif·December 22, 2023·DOI: 10.1021/acscentsci.4c00058
PhysicsMedicine

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Abstract

We present the first hardware implementation of electrostatic interaction energies by using a trapped-ion quantum computer. As test system for our computation, we focus on the reduction of NO to N2O catalyzed by a nitric oxide reductase (NOR). The quantum computer is used to generate an approximate ground state within the NOR active space. To efficiently measure the necessary one-particle density matrices, we incorporate fermionic basis rotations into the quantum circuit without extending the circuit length, laying the groundwork for further efficient measurement routines using factorizations. Measurements in the computational basis are then used as inputs for computing the electrostatic interaction energies on a classical computer. Our experimental results strongly agree with classical noise-less simulations of the same circuits, finding electrostatic interaction energies within chemical accuracy despite hardware noise. This work shows that algorithms tailored to specific observables of interest, such as interaction energies, may require significantly fewer quantum resources than individual ground state energies would require in the straightforward supermolecular approach.

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