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November 11, 2020

Connecting two classes of unconventional superconductors

Schematic temperature-pressure phase diagram of CeFeAsO. Credit: MPI CPfS
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Schematic temperature-pressure phase diagram of CeFeAsO. Credit: MPI CPfS

The understanding of unconventional superconductivity is one of the most challenging and fascinating tasks of solid-state physics. Different classes of unconventional superconductors share that superconductivity emerges near a magnetic phase despite that the underlying physics is different. Two of these unconventional materials are the heavy-fermion and the iron-based superconductors.

Researcher from the Max Planck Institute for Chemical Âé¶¹ÒùÔºics of Solids applied large hydrostatic pressures to tiny single crystals of CeFeAsO, a non-superconducting parent compound to iron-based superconductors, using diamond anvil pressure cells. By electrical, magnetic and structural measurements they showed that upon increasing the applied pressure, the material characteristics change from that of an iron-pnictide material to that of a heavy-fermion metal.

Surprisingly, a narrow superconducting phase emerges in the boundary region between the typical iron-pnictide spin-density-wave magnetism and a Ce-based Kondo-regime. This suggests that the two major phenomena characterizing -pnictides and heavy-fermions, spin-density-wave magnetism and the Kondo-effect, work together to produce in CeFeAsO.

This work is published in Âé¶¹ÒùÔºical Review Letters and has been selected by the editors to be a PRL Editors' Suggestion.

More information: K. Mydeen et al, Electron Doping of the Iron-Arsenide Superconductor CeFeAsO Controlled by Hydrostatic Pressure, Âé¶¹ÒùÔºical Review Letters (2020).

Journal information: Âé¶¹ÒùÔºical Review Letters

Provided by Max Planck Society

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