| Literature DB >> 31861558 |
Nikolay V Perepelkin1, Feodor M Borodich1,2, Alexander E Kovalev3, Stanislav N Gorb3.
Abstract
Classical methods of material testing become extremely complicated or impossible at micro-/nanoscale. At the same time, depth-sensing indentation (DSI) can be applied without much change at various length scales. However, interpretation of the DSI data needs to be done carefully, as length-scale dependent effects, such as adhesion, should be taken into account. This review paper is focused on different DSI approaches and factors that can lead to erroneous results, if conventional DSI methods are used for micro-/nanomechanical testing, or testing soft materials. We also review our recent advances in the development of a method that intrinsically takes adhesion effects in DSI into account: the Borodich-Galanov (BG) method, and its extended variant (eBG). The BG/eBG methods can be considered a framework made of the experimental part (DSI by means of spherical indenters), and the data processing part (data fitting based on the mathematical model of the experiment), with such distinctive features as intrinsic model-based account of adhesion, the ability to simultaneously estimate elastic and adhesive properties of materials, and non-destructive nature.Entities:
Keywords: adhesion; characterization of materials; depth-sensing indentation; non-destructive testing; the BG method
Year: 2019 PMID: 31861558 PMCID: PMC7023166 DOI: 10.3390/nano10010015
Source DB: PubMed Journal: Nanomaterials (Basel) ISSN: 2079-4991 Impact factor: 5.076
Figure 1Preliminary fitting the experimental data with an auxiliary curve .
Figure 2Indentation of a thin elastic layer bonded to the rigid base.
Figure 3The workflow of the numerical simulation demonstrating the accuracy and robustness of the extended Borodich–Galanov (eBG) method.
Figure 4Numerical simulation. The theoretical force-displacement curve (solid line) and an example data sets simulating DSI readings (dots, shifted). (a) High noise scenario. (b) Low noise scenario.
Figure 5Numerical simulation. The results of identification of material properties from 20 data sets containing noise and random coordinate origin shift. (a) High noise scenario. (b) Low noise scenario.