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Evolutionary artificial intelligence approach for performance prediction of bio-composites

机译:生物复合材料性能预测的进化人工智能方法

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摘要

Giving the high amount of carbon and energy emission from the use of traditional building materials, the use of bio-composites made from industrial crops especially hemp has caught attention from researchers in recent years. These bio-composites not only enhance the thermal performance of buildings but also promote sustainable development due to their eco-friendly nature. Due to their highly heterogeneous nature, however, most of the existing studies on the bio-composites have only focused on experimental investigations, while mathematical modeling of physical, thermal and mechanical properties of biocomposite remains a challenge for the researchers. In this paper, an artificial intelligence (AI) based gene expression programming (GEP) technique is used to develop the mathematical models for predicting the dry density, compressive strength and thermal conductivity of hemp-based bio-composites. A large amount of database was established based on past studies and the most influential parameters were identified by several trial analyses. The proposed mathematical models showed a high correlation with the experimental results. All the models passed the statistical and performance index checks showing strong predictability, generalization capability and high accuracy of GEP-AI models. Comparison of results with the regression analysis techniques further proved the superiority of GEP-AI models over the traditional methods.(c) 2021 Elsevier Ltd. All rights reserved.
机译:从使用传统建筑材料中提供大量的碳和能量排放,使用由工业庄稼制成的生物复合材料,特别是大麻近年来引起了研究人员的关注。这些生物复合材料不仅提高了建筑物的热性能,而且还促进了由于其环保性质而促进可持续发展。然而,由于它们的高度异质性,但大多数关于生物复合材料的研究仅重点关注实验研究,而生物复合材料的物理,热和机械性能的数学建模仍然是研究人员的挑战。在本文中,使用基于人工智能(AI)的基因表达编程(GEP)技术来开发用于预测大麻基复合材料的干密度,抗压强度和导热率的数学模型。基于过去的研究建立了大量数据库,并通过多种试验分析确定最有影响力的参数。所提出的数学模型与实验结果表现出高的相关性。所有模型通过统计和性能指数检查,显示了GEP-AI模型的强可预测性,泛化能力和高精度。对回归分析技术的结果进行比较进一步证明了通过传统方法的GEP-AI模型的优越性。(c)2021 Elsevier Ltd.保留所有权利。

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