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Naji, M. |
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Motta, Antonella |
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Aletan, Dirar |
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Mohamed, Tarek |
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Ertürk, Emre |
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Taccardi, Nicola |
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Kononenko, Denys |
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Petrov, R. H. | Madrid |
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Alshaaer, Mazen | Brussels |
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Bih, L. |
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Casati, R. |
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Muller, Hermance |
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Kočí, Jan | Prague |
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Šuljagić, Marija |
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Kalteremidou, Kalliopi-Artemi | Brussels |
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Azam, Siraj |
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Ospanova, Alyiya |
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Blanpain, Bart |
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Ali, M. A. |
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Popa, V. |
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Rančić, M. |
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Ollier, Nadège |
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Azevedo, Nuno Monteiro |
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Landes, Michael |
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Rignanese, Gian-Marco |
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Mukhopadhyay, Tanmoy
University of Southampton
in Cooperation with on an Cooperation-Score of 37%
Topics
Publications (43/43 displayed)
- 2024Nonlinear stability of curved multi-phase composite panels: influence of agglomeration in randomly distributed carbon nanotubes with non-uniform in-plane loadscitations
- 2023Programmable multi-physical mechanics of mechanical metamaterialscitations
- 2023Manipulating flexural waves to enhance the broadband vibration mitigation through inducing programmed disorder on smart rainbow metamaterialscitations
- 2023Multilevel fully integrated electromechanical property modulation of functionally graded graphene‐reinforced piezoelectric actuators: coupled effect of poling orientationcitations
- 2023On characterizing the viscoelastic electromechanical responses of functionally graded graphene-reinforced piezoelectric laminated compositescitations
- 2023Microstructural image based convolutional neural networks for efficient prediction of full-field stress maps in short fiber polymer compositescitations
- 2023Viscoelastic free vibration analysis of in-plane functionally graded orthotropic plates integrated with piezoelectric sensors: Time-dependent 3D analytical solutionscitations
- 2023Programmed Out-of-Plane curvature to enhance multimodal stiffness of bending-dominated composite latticescitations
- 2023Effective elastic moduli of space-filled multi-material composite latticescitations
- 2023Probing the molecular-level energy absorption mechanism and strategic sequencing of graphene/Al composite laminates under high-velocity ballistic impact of nano-projectilescitations
- 2023Multi-fidelity machine learning based uncertainty quantification of progressive damage in composite laminates through optimal data fusioncitations
- 2022Voltage modulation of elastic properties of asymmetric hybrid lattice structurecitations
- 2022Unfolding the mechanical properties of buckypaper composites: nano- to macro-scale coupled atomistic-continuum simulationscitations
- 2022Modified embedded-atom method interatomic potentials for Al-Cu, Al-Fe and Al-Ni binary alloys: from room temperature to melting pointcitations
- 2022Damage modeling of MWCNT reinforced Carbon/Epoxy composite using different failure criteria: a comparative studycitations
- 2022Damage modeling of MWCNT reinforced Carbon/Epoxy composite using different failure criteria: a comparative studycitations
- 2022High-velocity ballistics of twisted bilayer graphene under stochastic disorder
- 2022Multiscale bending and free vibration analyses of functionally graded graphene platelet/fiber composite beams
- 2022Liquid ordering induced heterogeneities in homogeneous nucleation during solidification of pure metalscitations
- 2022Liquid ordering induced heterogeneities in homogeneous nucleation during solidification of pure metalscitations
- 2022Experimental data-driven uncertainty quantification for the dynamic fracture toughness of particulate polymer compositescitations
- 2022Probability-based unified sensitivity analysis for multi-objective performances of composite laminates: a surrogate-assisted approachcitations
- 2021Broadband dynamic elastic moduli of honeycomb lattice materials: a generalized analytical approachcitations
- 2021Voltage-dependent modulation of elastic moduli in lattice metamaterialscitations
- 2020Genetic programming-assisted multi-scale optimization for multi-objective dynamic performance of laminated composites: the advantage of more elementary-level analysescitations
- 2019Negative In-plane Elastic Moduli of Metallic Lattices: Experimental Investigations
- 2019Probing the frequency-dependent elastic moduli of lattice materialscitations
- 2019Spatially varying fuzzy multi-scale uncertainty propagation in unidirectional fibre reinforced compositescitations
- 2019Frequency domain homogenization for the viscoelastic properties of spatially correlated quasi-periodic latticescitations
- 2018Spatial vulnerability analysis for the first ply failure strength of composite laminates including effect of delaminationcitations
- 2018Probing the shear modulus of two-dimensional multiplanar nanostructures and heterostructurescitations
- 2018Probing the chirality-dependent elastic properties and crack propagation behavior of single and bilayer stanenecitations
- 2017Stochastic mechanics of metamaterialscitations
- 2017Metamodel based high-fidelity stochastic analysis of composite laminatescitations
- 2016Free-vibration analysis of sandwich panels with randomly irregular honeycomb corecitations
- 2016Effect of platen restraint on stress–strain behavior of concrete under uniaxial compressioncitations
- 2016Fuzzy uncertainty propagation in composites using Gram-Schmidt polynomial chaos expansioncitations
- 2016Probabilistic analysis and design of HCP nanowirescitations
- 2016Effective in-plane elastic properties of auxetic honeycombs with spatial irregularitycitations
- 2016Equivalent in-plane elastic properties of irregular honeycombscitations
- 2016Bottom up surrogate based approach for stochastic frequency response analysis of laminated composite platescitations
- 2015Stochastic natural frequency of composite conical shellscitations
- 2015Stochastic free vibration analysis of angle-ply composite plates - A RS-HDMR approachcitations
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article
High-velocity ballistics of twisted bilayer graphene under stochastic disorder
Abstract
<p>Graphene is one of the strongest, stiffest, and lightest nanoscale materials known to date, making it a potentially viable and attractive candidate for developing lightweight structural composites to prevent high-velocity ballistic impact, as commonly encountered in defense and space sectors. In-plane twist in bilayer graphene has recently revealed unprecedented electronic properties like superconductivity, which has now started attracting the attention for other multi-physical properties of such twisted structures. For example, the latest studies show that twisting can enhance the strength and stiffness of graphene by many folds, which in turn creates a strong rationale for their prospective exploitation in high-velocity impact. The present article investigates the ballistic performance of twisted bilayer graphene (tBLG) nanostructures. We have employed molecular dynamics (MD) simulations, augmented further by coupling gaussian process-based machine learning, for the nanoscale characterization of various tBLG structures with varying relative rotation angle (RRA). Spherical diamond impactors (with a diameter of 25Å) are enforced with high initial velocity (Vi) in the range of 1 km/s to 6.5 km/s to observe the ballistic performance of tBLG nanostructures. The specific penetration energy (Ep*) of the impacted nanostructures and residual velocity (Vr) of the impactor are considered as the quantities of interest, wherein the effect of stochastic system parameters is computationally captured based on an efficient Gaussian process regression (GPR) based Monte Carlo simulation approach. A data-driven sensitivity analysis is carried out to quantify the relative importance of different critical system parameters. As an integral part of this study, we have deterministically investigated the resonant behaviour of graphene nanostructures, wherein the high-velocity impact is used as the initial actuation mechanism. The comprehensive dynamic investigation of bilayer graphene under the ballistic impact, as presented in this paper including the effect of twisting and random disorder for their prospective exploitation, would lead to the development of improved impact-resistant lightweight materials.</p>