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Electrical homogeneity of large-area chemical vapor deposited multilayer hexagonal boron nitride sheets (1811.12777v1)

Published 30 Nov 2018 in cond-mat.mtrl-sci

Abstract: Hexagonal boron nitride (h-BN) is a two dimensional (2D) layered insulator with superior dielectric performance that offers excellent interaction with other 2D materials (e.g. graphene, MoS2). Large-area h-BN can be readily grown on metallic substrates via chemical vapor deposition (CVD), but the impact of local inhomogeneities on the electrical properties of the h-BN and their effect in electronic devices is unknown. Here it is shown that the electrical properties of h-BN stacks grown on polycrystalline Pt vary a lot depending on the crystalline orientation of the Pt grain, but within the same grain the electrical properties of the h-BN are very homogeneous. The reason is that the thickness of the CVD-grown h-BN stack is different on each Pt grain. Conductive atomic force microscopy (CAFM) maps show that the tunneling current across the h-BN stack fluctuates up to 3 orders of magnitude from one Pt grain to another. However, probe station experiments reveal that the variability of electronic devices fabricated within the same Pt grain is surprisingly small. As cutting-edge electronic devices are ultra-scaled, and as the size of the metallic substrate grains can easily exceed 100 {\mu}m (in diameter), CVD-grown h-BN stacks may be useful to fabricate electronic devices with low variability.

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