Data-Driven Machine Learning to Predict Mechanical Properties of Monolayer TMDs
Prottay Malakar, Md Shajedul Hoque Thakur, Shahriar Muhammad Nahid and, Md Mahbubul Islam

TL;DR
This study employs machine learning models, LSTM and FFNN, combined with molecular dynamics simulations to accurately predict the mechanical properties of monolayer TMDs under various conditions, advancing materials understanding.
Contribution
It introduces a data-driven ML approach using LSTM and FFNN to predict TMDs' mechanical properties, demonstrating high accuracy and exploring effects of temperature, orientation, and cracks.
Findings
Both models predict mechanical response with over 95% accuracy.
LSTM predicts entire stress-strain curves; FFNN predicts specific properties.
FFNN is computationally more efficient than LSTM.
Abstract
The understanding of the material properties of the layered transition metal dichalcogenides (TMDs) is critical for their applications in structural composites. The data-driven machine learning (ML) based approaches are being developed in contrast to traditional experimental or computational approach to predict and understand materials properties under varied operating conditions. In this study, we used two ML algorithms such as Long Short-Term Memory (LSTM) and Feed Forward Neural Network (FFNN) combined with molecular dynamics (MD) simulations to predict the mechanical properties of MX2 (M = Mo, W, and X = S, Se) TMDs. The LSTM model is found to be capable of predicting the entire stress-strain response whereas the FFNN is used to predict the material properties such as fracture stress, fracture strain, and Young's modulus. The effects of operating temperature, chiral orientation, and…
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Taxonomy
TopicsMachine Learning in Materials Science · 2D Materials and Applications · MXene and MAX Phase Materials
