用前馈神经网络模拟压缩载荷作用下膨胀聚苯乙烯泡沫的迟滞现象

IF 3.2 4区 工程技术 Q2 CHEMISTRY, APPLIED Journal of Cellular Plastics Pub Date : 2023-05-16 DOI:10.1177/0021955x231174362
Alejandro E. Rodríguez-Sánchez, H. Plascencia-Mora
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引用次数: 0

摘要

膨胀聚苯乙烯泡沫是广泛应用于各种工程应用的材料,包括它们的保护设计。对于这种类型的应用,在工程分析和设计中,需要知道这类材料对压缩的机械响应,因为支持设计有效性分析的能量参数来源于此。其中一个参数是应变迟滞,通过它可以知道材料吸收能量的能力。从分析的角度来看,该参数的建模和预测是一个挑战。本文提出了一种基于前馈人工神经网络模型的方法,该方法解决了从膨胀聚苯乙烯泡沫的力学响应中导出该参数的建模方法。以此为基础,构建了能够预测这种材料在不同密度和加载速率条件下的响应的模型。在总共30个神经网络模型中选择最优的模型,这些模型能够推导出迟滞等能量参数。结果表明,该方法对膨胀聚苯乙烯泡沫塑料的变形能分析是有效的,所得结果与材料现象学基本一致,与实验数据误差小于3%。
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Modeling hysteresis in expanded polystyrene foams under compressive loads using feed-forward neural networks
Expanded polystyrene foams are widely used materials for various applications in engineering, including their use for protective designs. For this type of application, in engineering analysis and design, it is required to know the mechanical response to compression of this type of material, since energy parameters that support the analysis of the effectiveness of a design are derived from it. One of these parameters is strain hysteresis, through which it is possible to know how capable a material is of absorbing energy. The modeling and prediction of this parameter is a challenge from the analysis point of view. This contribution presents a method based on feed-forward artificial neural network models that address a modeling approach to derive this parameter from the mechanical response of expanded polystyrene foam. From this, models are constructed that can predict the response of such material to various density and loading rate conditions. The best of a total of 30 neural network models, which are capable of deriving energy parameters such as hysteresis, is chosen. The results show that this approach is valid for the deformation energy analysis of expanded polystyrene foams since results consistent with the material phenomenology and errors of less than 3% with respect to experimental data are obtained.
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来源期刊
Journal of Cellular Plastics
Journal of Cellular Plastics 工程技术-高分子科学
CiteScore
5.00
自引率
16.00%
发文量
19
审稿时长
3 months
期刊介绍: The Journal of Cellular Plastics is a fully peer reviewed international journal that publishes original research and review articles covering the latest advances in foamed plastics technology.
期刊最新文献
I-WP geometry structural assessment: A theoretical, experimental, and numerical analysis Foam density measurement using a 3D scanner Effect of temperature on the mechanical behavior of pvc foams Preparation and energy absorption of flexible polyurethane foam with hollow glass microsphere A review on the mechanical behaviour of microcellular and nanocellular polymeric foams: What is the effect of the cell size reduction?
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