In this study, machine learning representation is introduced to evaluate the flexoelectricity effect in truncated pyramid nanostructure under compression. A Non-Uniform Rational B-spline (NURBS) based IGA formulation is employed to model the flexoelectricity. We investigate 2D system with an isotropic linear elastic material under plane strain conditions discretized by 45×30 grid of B-spline elements. Six input parameters are selected to construct a deep neural network (DNN) model. They are the Young's modulus, two dielectric permittivity constants, the longitudinal and transversal flexoelectric coefficients and the order of the shape function. The outputs of interest are the strain in the stress direction and the electric potential due fle...
We first revisit the mathematical modeling of the flexoelectric effect in the context of continuum m...
A novel machine learning model is presented in this work to obtain the complex high-dimensional defo...
Abstract Developing accurate yet fast computational tools to simulate complex physical phenomena is ...
Flexoelectricity is a universal property of all dielectrics by which they generate a voltage in resp...
Purpose of this paper is the presentation of a novel Machine Learning (ML) technique for nanoscopic ...
Flexoelectricity is a size-dependent electromechanical mechanism coupling polarization and strain gr...
In the present work, a machine learning based constitutive model for electro-mechanically coupled ma...
The paper proposes a method for analyzing the mechanical properties of flexoelectric materials based...
We present an interpretable machine learning model to predict accurately the complex rippling deform...
Lattice cell structures (LCS) are being investigated for applications in sandwich composites. To obt...
Cellular structures are lightweight-engineered materials that have gained much attention with the de...
This paper investigates the structure-property relations of thin-walled lattices under dynamic longi...
Human skin is characterized by rough, elastic, and uneven features that are difficult to recreate us...
Additively manufactured structures can be tailor-made to optimally distribute mechanical loads while...
Extensive amount of research on additively manufactured (AM) lattice structures has been made to dev...
We first revisit the mathematical modeling of the flexoelectric effect in the context of continuum m...
A novel machine learning model is presented in this work to obtain the complex high-dimensional defo...
Abstract Developing accurate yet fast computational tools to simulate complex physical phenomena is ...
Flexoelectricity is a universal property of all dielectrics by which they generate a voltage in resp...
Purpose of this paper is the presentation of a novel Machine Learning (ML) technique for nanoscopic ...
Flexoelectricity is a size-dependent electromechanical mechanism coupling polarization and strain gr...
In the present work, a machine learning based constitutive model for electro-mechanically coupled ma...
The paper proposes a method for analyzing the mechanical properties of flexoelectric materials based...
We present an interpretable machine learning model to predict accurately the complex rippling deform...
Lattice cell structures (LCS) are being investigated for applications in sandwich composites. To obt...
Cellular structures are lightweight-engineered materials that have gained much attention with the de...
This paper investigates the structure-property relations of thin-walled lattices under dynamic longi...
Human skin is characterized by rough, elastic, and uneven features that are difficult to recreate us...
Additively manufactured structures can be tailor-made to optimally distribute mechanical loads while...
Extensive amount of research on additively manufactured (AM) lattice structures has been made to dev...
We first revisit the mathematical modeling of the flexoelectric effect in the context of continuum m...
A novel machine learning model is presented in this work to obtain the complex high-dimensional defo...
Abstract Developing accurate yet fast computational tools to simulate complex physical phenomena is ...