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Decoding disorder signatures of AuCl 3 and vacancies in MoS 2 films: from synthetic to experimental inversion.

Fabio Rangel Duarte FilhoFilipe MatusalemDaniel GrasseschiAlexandre Reily Reily RochaLeandro Seixas RochaChristiano J S de MatosShardul MukimMauro S Ferreira
Published in: Journal of physics. Condensed matter : an Institute of Physics journal (2024)
This study investigates the scope of application of a recently designed inversion methodology that is capable of obtaining structural information about disordered systems through the analysis of their conductivity response signals. Here we demonstrate that inversion tools of this type are capable of sensing the presence of disorderly distributed defects and impurities even in the case where the scattering properties of the device are only weakly affected. This is done by inverting the DC conductivity response of monolayered MoS 2 films containing a minute amount of AuCl 3 coordinated complexes. Remarkably, we have successfully extracted detailed information about the concentration of AuCl 3 by decoding its signatures on the transport features of simulated devices. In addition to the case of theoretically-generated Hamiltonians, we have also carried out a full inversion procedure from experimentally measured signals of similar structures. Based on experimental input signals of MoS 2 with naturally occurring vacancies, we were able to quantify the vacancy concentration contained in the samples, which indicates that the inversion methodology has experimental applicability as long as the input signal is able to resolve the characteristic contributions of the type of disorder in question. Being able to handle more complex, realistic scenarios unlocks the method's applicability for designing and engineering even more elaborate materials.
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