Vibration Suppression of Graphene Reinforced Laminates Using Shunted Piezoelectric Systems and Machine Learning

Signals Pub Date : 2024-05-23 DOI:10.3390/signals5020017
Georgios Drosopoulos, Georgia Foutsitzi, Maria-Styliani Daraki, Georgios E. Stavroulakis
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Abstract

The implementation of a machine learning approach to predict vibration suppression, as derived from nanocomposite laminates with piezoelectric shunted systems, is studied in this article. Datasets providing the vibration response and vibration attenuation are developed using parametric finite element simulations. A graphene/fibre-reinforced laminate cantilever beam is used in those simulations. Parameters, including the graphene and fibre reinforcements content, as well as the fibre angles, are among the inputs. Output is the vibration suppression achieved by the piezoelectric shunted system. Artificial Neural Networks are trained and tested using the derived datasets. The proposed methodology can be used for a fast and accurate prediction of the vibration response of nanocomposite laminates.
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利用分流压电系统和机器学习抑制石墨烯增强层压板的振动
本文研究了机器学习方法的实施情况,以预测带有压电分流系统的纳米复合材料层压板的振动抑制情况。提供振动响应和振动衰减的数据集是通过参数化有限元模拟开发的。模拟中使用了石墨烯/纤维增强层压悬臂梁。输入参数包括石墨烯和纤维增强材料的含量以及纤维角度。输出是压电分流系统实现的振动抑制。人工神经网络通过衍生数据集进行训练和测试。所提出的方法可用于快速、准确地预测纳米复合材料层压板的振动响应。
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CiteScore
3.20
自引率
0.00%
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0
审稿时长
11 weeks
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