4.5 Article

Application of Linear Viscoelastic Continuum Damage Theory to the Low and High Strain Rate Response of Thermoplastic Polyurethane

期刊

EXPERIMENTAL MECHANICS
卷 60, 期 7, 页码 925-936

出版社

SPRINGER
DOI: 10.1007/s11340-020-00608-2

关键词

Polyurethane; Dynamic mechanical analysis; High strain-rates; Viscoelasticity; Viscoelastic damage

资金

  1. Air Force Office of Scientific Research, Air Force Material Command, USAF [FA9550-15-1-0448]

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Background Understanding the mechanical response of elastomers to applied deformation at different strain rates and temperatures is crucial in industrial design and manufacture; however, this response is often difficult to measure, especially at high strain rates (e.g. > 100 s(- 1)), and more predictive methods to obtain constitutive relationships are required. Objective The objective of the research described in this paper is to develop such methods. Method The paper outlines a novel approach combining quasi-static monotonic tests in tension and compression, quasi-static cyclic tests in tension, and high strain rate tests in compression, with dynamic mechanical analysis and time-temperature superposition. A generalized viscoelastic model incorporating continuum damage is calibrated. Results The results show that a model calibrated using data from quasi-static compression and dynamic mechanical analysis can be used to adequately predict the compressive high strain rate response: hence, this paper provides an important step in the development of a methodology that avoids the requirement to obtain constitutive data from high strain rate experiments. In addition, data from FE models of the dynamic mechanical analysis experiments are provided, along with a discussion of data obtained from tensile and cyclic loading. Conclusions The paper demonstrates the effectiveness of 'indirect' predictive methods to obtain information about high rate behaviour of low modulus materials.

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