Instytut Podstawowych Problemów Techniki
Polskiej Akademii Nauk

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R.I. Sosa


Ostatnie publikacje
1.  Shen Z., Sosa R.I., Lengiewicz J., Tkatchenko A., Bordas S.P.A., Machine learning surrogate models of many-body dispersion interactions in polymer melts, Machine Learning Science and Technology, ISSN: 2632-2153, DOI: 10.1088/2632-2153/ae545a, Vol.7, No.2, pp.1-23, 2026

Streszczenie:
Accurate prediction of many-body dispersion (MBD) interactions is essential for understanding the van der Waals forces that govern the behavior of many complex molecular systems. However, the high computational cost of MBD calculations limits their direct application in large-scale simulations. In this work, we introduce a machine learning surrogate model specifically designed to predict MBD forces in polymer melts, a system that demands accurate MBD description and offers structural advantages for machine learning approaches. Our model is based on a trimmed SchNet architecture that selectively retains the most relevant atomic connections and incorporates trainable radial basis functions for geometric encoding. We validate our surrogate model on datasets from polyethylene, polypropylene, and polyvinyl chloride melts, demonstrating high predictive accuracy and robust generalization across diverse polymer systems. In addition, the model captures key physical features, such as the characteristic decay behavior of MBD interactions, providing valuable insights for optimizing cutoff strategies. Characterized by high computational efficiency, our surrogate model enables practical incorporation of MBD effects into large-scale molecular simulations.

Afiliacje autorów:
Shen Z. - inna afiliacja
Sosa R.I. - inna afiliacja
Lengiewicz J. - IPPT PAN
Tkatchenko A. - inna afiliacja
Bordas S.P.A. - University of Luxembourg (LU)
20p.
2.  Shen Z., Sosa R., Bordas S., Tkatchenko A., Lengiewicz J. A., Quantum-informed simulations for mechanics of materials: DFTB+MBD framework, International Journal of Engineering Science, ISSN: 0020-7225, DOI: 10.1016/j.ijengsci.2024.104126, Vol.204, No.104126, pp.1-18, 2024

Streszczenie:
The macroscopic behaviors of materials are determined by interactions that occur at multiple lengths and time scales. Depending on the application, describing, predicting, and understanding these behaviors may require models that rely on insights from atomic and electronic scales. In such cases, classical simplified approximations at those scales are insufficient, and quantum-based modeling is required. In this paper, we study how quantum effects can modify the mechanical properties of systems relevant to materials engineering. We base our study on a high-fidelity modeling framework that combines two computationally efficient models rooted in quantum first principles: Density Functional Tight Binding (DFTB) and many-body dispersion (MBD). The MBD model is applied to accurately describe non-covalent van der Waals interactions. Through various benchmark applications, we demonstrate the capabilities of this framework and the limitations of simplified modeling. We provide an open-source repository containing all codes, datasets, and examples presented in this work. This repository serves as a practical toolkit that we hope will support the development of future research in effective large-scale and multiscale modeling with quantum-mechanical fidelity.

Słowa kluczowe:
DFT, DFTB, Energy range separation, Many-body dispersion, van der Waals interaction, Carbon nanotube, UHMWPE

Afiliacje autorów:
Shen Z. - inna afiliacja
Sosa R. - inna afiliacja
Bordas S. - inna afiliacja
Tkatchenko A. - inna afiliacja
Lengiewicz J. A. - IPPT PAN
200p.
3.  Deshpande S., Sosa R., Bordas S.P., Lengiewicz J.A., Convolution, aggregation and attention based deep neural networks for accelerating simulations in mechanics, Frontiers in Materials, ISSN: 2296-8016, DOI: 10.3389/fmats.2023.1128954, Vol.10, No.1128954, pp.1-12, 2023

Streszczenie:
Deep learning surrogate models are being increasingly used in accelerating scientific simulations as a replacement for costly conventional numerical techniques. However, their use remains a significant challenge when dealing with real-world complex examples. In this work, we demonstrate three types of neural network architectures for efficient learning of highly non-linear deformations of solid bodies. The first two architectures are based on the recently proposed CNN U-NET and MAgNET (graph U-NET) frameworks which have shown promising performance for learning on mesh-based data. The third architecture is Perceiver IO, a very recent architecture that belongs to the family of attention-based neural networks–a class that has revolutionised diverse engineering fields and is still unexplored in computational mechanics. We study and compare the performance of all three networks on two benchmark examples, and show their capabilities to accurately predict the non-linear mechanical responses of soft bodies.

Słowa kluczowe:
surrogate modeling, deep learning-artificial neural network, CNN U-NET, graph U-net, perceiver IO, finite element method

Afiliacje autorów:
Deshpande S. - University of Luxembourg (LU)
Sosa R. - inna afiliacja
Bordas S.P. - University of Luxembourg (LU)
Lengiewicz J.A. - IPPT PAN
70p.

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