日本機械学会論文集
Online ISSN : 2187-9761
ISSN-L : 2187-9761
機械力学,計測,自動制御,ロボティクス,メカトロニクス
ローパスフィルタと低次元モデルを用いた生体軟組織の緩和弾性率の同定
本宮 潤一田村 篤敬
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ジャーナル オープンアクセス

2022 年 88 巻 909 号 p. 22-00041

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To predict traumatic injuries using a computational model, accurate mechanical properties of biological materials are required. Especially, soft tissue is a viscoelastic and rate sensitive material that exhibits the decaying stress response when a constant displacement is applied. Thus, it is important to precisely formulate the phenomenon of a stress relaxation, which is readily applicable to computational models. In the current work, we newly developed an identification method of time constants and Young’s moduli for the stress relaxation response of biological soft tissues by assuming that soft tissues can be described by a generalized Maxwell model. Firstly, the decaying stress response was decomposed into a set of slow-to-fast stress components using a low-pass filter. Subsequently, we identified the time constants and Young’s moduli for slow and fast variations independently by solving the optimal problem, in which the correlation coefficient was maximized between each stress component and a corresponding normalized stress component. This method is computationally cost efficient and can semi-automatically determine the number of springs of Maxwell model. By applying the newly proposed method to the experimental data obtained for neural fiber bundles and skeletal muscle fiber bundles subjected to uniaxial stretching, we successfully demonstrated that the stress relaxation response can be well predicted for the mechanical change even in the short time range (0.1–1 s) in addition to the long time range (10–100 s).

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https://creativecommons.org/licenses/by-nc-nd/4.0/deed.ja
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