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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Creep modelling of polypropylenes using artificial neural networks trained with Bee algorithms
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Creep modelling of polypropylenes using artificial neural networks trained with Bee algorithms

机译:使用受Bee算法训练的人工神经网络对聚丙烯进行蠕变建模

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摘要

Polymeric materials, being capable of high mouldability, usability of long lifetime up to 50 years and availability at low cost properties compared to metallic materials, are in demand but finite element-based design engineers have limited means in terms of the limited material data and mathematical models. In particular, in the analysis of products with complex geometry, the stresses and strains of various amounts formed in the product should be known and evaluated in terms of a precise design of the product to fulfil life expectancy. Due to time and cost constraints, experimental data cannot be available for all cases required in analysis, therefore, finite element method-based simulations are commonly used by design engineers. This is also computationally expensive and requires a simpler and more precise way to complete the design more realistically. In this study, the whole creep behaviour of polypropylene for all stresses were obtained with 10% accuracy errors by artificial neural networks trained using existing experimental test results of the materials for a particular working range. The artificial neural network model was trained with traditional as well as heuristic based methods. It is demonstrated that heuristically trained ANN models have provided much accurate and precise results, which are in line with 10% accuracy of experimental data.
机译:与金属材料相比,聚合物材料具有高的可模塑性,高达50年的长寿命可用性以及低成本特性的需求,但基于有限元素的设计工程师在有限的材料数据和数学方面手段有限。楷模。特别是在分析具有复杂几何形状的产品时,应了解产品中形成的各种量的应力和应变,并根据产品的精确设计来评估它们的寿命,以达到预期寿命。由于时间和成本的限制,无法提供分析所需的所有情况的实验数据,因此,设计工程师通常使用基于有限元方法的模拟。这在计算上也是昂贵的,并且需要更简单和更精确的方式来更实际地完成设计。在这项研究中,通过人工神经网络对聚丙烯在所有应力下的整体蠕变行为进行了精确度为10%的误差训练,这些人工神经网络使用了材料在特定工作范围内的现有实验测试结果进行了训练。人工神经网络模型使用传统的以及基于启发式的方法进行训练。结果表明,经过启发式训练的ANN模型提供了非常准确的结果,与10%的实验数据准确度相符。

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