Phenomenological modeling of the stress-free two-way shape-memory effect in semi-crystalline networks: Formulation, numerical simulation, and experimental validation
Matteo Arricca, Nicoletta Inverardi, Stefano Pandini, Maurizio, Toselli, Massimo Messori, Ferdinando Auricchio, Giulia Scalet

TL;DR
This paper develops a phenomenological model for semi-crystalline polymers exhibiting stress-free two-way shape-memory effects, validated through experiments on poly(ε-caprolactone) and analyzed for various influencing factors.
Contribution
It introduces a new one-dimensional continuum model for semi-crystalline polymers with two-way SME, supported by experimental validation and comprehensive analysis.
Findings
Model accurately predicts stress-free two-way SME behavior.
Experimental data confirms the influence of temperature, rates, and phases.
Provides insights for designing shape-memory polymer applications.
Abstract
Polymers exhibiting the stress-free two-way shape-memory effect (SME) represent an appealing solution to achieve self-standing reversible actuation that is a fundamental feature required by numerous applications. The present paper proposes a one-dimensional continuum phenomenological framework to model single-component semi-crystalline polymer networks exhibiting both the one-way SME and the two-way SME under stress and stress-free conditions. A comprehensive experimental campaign is first performed on semi-crystalline networks based on poly(-caprolactone) (PCL) to characterize the mechanical and thermal properties as well as the one-way and two-way shape memory behavior of the material under different thermo-mechanical conditions. The results guide the formulation of the model, elucidating the selection of the control and phase variables and motivating the choice of their…
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