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首页> 外文期刊>Fibers and Polymers >A New Hybrid Artificial Intelligence Approach to Predicting Global Thermal Comfort of Stretch Knitted Fabrics
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A New Hybrid Artificial Intelligence Approach to Predicting Global Thermal Comfort of Stretch Knitted Fabrics

机译:一种新的混合人工智能方法来预测弹力针织物的整体热舒适性

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摘要

Today numerous consumers consider thermal comfort to be one of the most significant attributes when purchasing textile and apparel products, so there is a need to develop a model able to simulate objectively the consumers' perception. The global thermal comfort of stretch knitted fabrics is a:multi-criteria phenomenon that requires the satisfaction of several properties at the same time. In this paper, we used the desirability functions to evaluate the satisfaction degree of global thermal comfort. Statistical method was used to investigate the interrelationship among knit thermo-physical properties, and group them into factors. Two models of artificial neural network (general and special) have been set up to predict the global thermal comfort from structural parameters (inputs) of knitted fabrics made from pure yam cotton (cellulose) and viscose (regenerated cellulose) fibers and plated knitted with elasthane (Lycra) fibers. A virtual leave one out approach dealing with over fitting phenomenon and allowing the selection of the optimal neural network architecture was used. By combining the strengths of statistics and fuzzy logic (data reduction and information summation) also a neural network (self-learning ability), hybrid model was developed to simulate the consumer thermal comfort perception. After that, ANN model is inverted. With a required output value and some input parameters it is possible to calculate the unknown optimum input parameter. Finally, this forecasting can help industrials to anticipate the consumer's taste. Thus, they can adjust the knitting production parameter to reach the desired global thermal comfort to satisfy this consumer.
机译:如今,许多消费者将热舒适性视为购买纺织品和服装产品时最重要的属性之一,因此需要开发一种能够客观模拟消费者感知的模型。弹力针织物的总体热舒适性是一种多准则现象,需要同时满足多种性能。在本文中,我们使用期望函数来评估整体热舒适度的满意度。统计方法用于研究针织物热物理性质之间的相互关系,并将其分为因素。已建立了两种人工神经网络模型(通用模型和特殊模型),以根据由纯山药棉(纤维素)和粘胶纤维(再生纤维素)纤维制成的针织面料的结构参数(输入值)来预测全局热舒适度,并用弹性纤维板电镀(莱卡)纤维。使用了一种虚拟的“一劳永逸”方法来处理过度拟合现象,并允许选择最佳的神经网络体系结构。通过结合统计和模糊逻辑(数据减少和信息求和)的优势以及神经网络(自学习能力),开发了混合模型来模拟消费者的热舒适感。之后,将ANN模型反转。通过所需的输出值和某些输入参数,可以计算未知的最佳输入参数。最后,这种预测可以帮助工业界预测消费者的口味。因此,他们可以调整针织生产参数以达到所需的整体热舒适性,以满足该消费者的需求。

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