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Main Authors: Zadeh, Sina Hossein, Cakirhan, Cem, Khatamsaz, Danial, Broucek, John, Brown, Timothy D., Qian, Xiaoning, Karaman, Ibrahim, Arroyave, Raymundo
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2402.12520
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author Zadeh, Sina Hossein
Cakirhan, Cem
Khatamsaz, Danial
Broucek, John
Brown, Timothy D.
Qian, Xiaoning
Karaman, Ibrahim
Arroyave, Raymundo
author_facet Zadeh, Sina Hossein
Cakirhan, Cem
Khatamsaz, Danial
Broucek, John
Brown, Timothy D.
Qian, Xiaoning
Karaman, Ibrahim
Arroyave, Raymundo
contents The martensitic transformation in NiTi-based Shape Memory Alloys (SMAs) provides a basis for shape memory effect and superelasticity, thereby enabling applications requiring solid-state actuation and large recoverable shape changes upon mechanical load cycling. In order to tailor the transformation to a particular application, the compositional dependence of properties in NiTi-based SMAs, such as martensitic transformation temperatures and hysteresis, has been exploited. However, the compositional design space is large and complex, and experimental studies are expensive. In this work, we develop an interpretable piecewise linear regression model that predicts the $λ_2$ parameter, a measure of compatibility between austenite and martensite phases, and an (indirect) factor that is well-correlated with martensitic transformation hysteresis, based on the chemical features derived from the alloy composition. The model is capable of predicting, for the first time, the type of martensitic transformation for a given alloy chemistry. The proposed model is validated by experimental data from the literature as well as in-house measurements. The results show that the model can effectively distinguish between $B19$ and $B19^{\prime}$ regions for any given composition in NiTi-based SMAs and accurately estimate the $λ_2$ parameter. Our analysis also reveals that the weighted average of the quotient of the first ionization energy and the Voronoi coordination number is a key compositional characteristic that correlates with the $λ_2$ parameter and thermodynamic responses, including the transformation hysteresis, martensite start temperature, and critical temperature. The work herein demonstrates the potential of data-driven methodologies for understanding and designing NiTi-based SMAs with desired transformation characteristics.
format Preprint
id arxiv_https___arxiv_org_abs_2402_12520
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Data-driven study of composition-dependent phase compatibility in NiTi shape memory alloys
Zadeh, Sina Hossein
Cakirhan, Cem
Khatamsaz, Danial
Broucek, John
Brown, Timothy D.
Qian, Xiaoning
Karaman, Ibrahim
Arroyave, Raymundo
Materials Science
The martensitic transformation in NiTi-based Shape Memory Alloys (SMAs) provides a basis for shape memory effect and superelasticity, thereby enabling applications requiring solid-state actuation and large recoverable shape changes upon mechanical load cycling. In order to tailor the transformation to a particular application, the compositional dependence of properties in NiTi-based SMAs, such as martensitic transformation temperatures and hysteresis, has been exploited. However, the compositional design space is large and complex, and experimental studies are expensive. In this work, we develop an interpretable piecewise linear regression model that predicts the $λ_2$ parameter, a measure of compatibility between austenite and martensite phases, and an (indirect) factor that is well-correlated with martensitic transformation hysteresis, based on the chemical features derived from the alloy composition. The model is capable of predicting, for the first time, the type of martensitic transformation for a given alloy chemistry. The proposed model is validated by experimental data from the literature as well as in-house measurements. The results show that the model can effectively distinguish between $B19$ and $B19^{\prime}$ regions for any given composition in NiTi-based SMAs and accurately estimate the $λ_2$ parameter. Our analysis also reveals that the weighted average of the quotient of the first ionization energy and the Voronoi coordination number is a key compositional characteristic that correlates with the $λ_2$ parameter and thermodynamic responses, including the transformation hysteresis, martensite start temperature, and critical temperature. The work herein demonstrates the potential of data-driven methodologies for understanding and designing NiTi-based SMAs with desired transformation characteristics.
title Data-driven study of composition-dependent phase compatibility in NiTi shape memory alloys
topic Materials Science
url https://arxiv.org/abs/2402.12520