首页> 外文期刊>Journal of The Institution of Engineers (India), Series E. Chemical Engineering and Textile Engineering >A Multivariate Quality Loss Function Approach for Optimization of Spinning Processes
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A Multivariate Quality Loss Function Approach for Optimization of Spinning Processes

机译:多元质量损失功能方法,用于优化纺纱工艺

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摘要

Recent advancements in textile industry have given rise to several spinning techniques, such as ring spinning, rotor spinning etc., which can be used to produce a wide variety of textile apparels so as to fulfil the end requirements of the customers. To achieve the best out of these processes, they should be utilized at their optimal parametric settings. However, in presence of multiple yarn characteristics which are often conflicting in nature, it becomes a challenging task for the spinning industry personnel to identify the best parametric mix which would simultaneously optimize all the responses. Hence, in this paper, the applicability of a new systematic approach in the form of multivariate quality loss function technique is explored for optimizing multiple quality characteristics of yarns while identifying the ideal settings of two spinning processes. It is observed that this approach performs well against the other multi-objective optimization techniques, such as desirability function, distance function and mean squared error methods. With slight modifications in the upper and lower specification limits of the considered quality characteristics, and constraints of the non-linear optimization problem, it can be successfully applied to other processes in textile industry to determine their optimal parametric settings.
机译:纺织工业的最新发展催生了几种纺纱技术,如环锭纺纱、转杯纺纱等,可用于生产各种各样的纺织服装,以满足客户的最终需求。为了实现这些过程的最佳效果,应在其最佳参数设置下使用它们。然而,由于存在多个纱线特性,这些特性在本质上往往是相互冲突的,因此,对于纺纱行业人员来说,确定最佳参数组合,从而同时优化所有响应,成为一项具有挑战性的任务。因此,本文探讨了多元质量损失函数技术形式的新系统方法的适用性,以优化纱线的多种质量特性,同时确定两种纺纱工艺的理想设置。结果表明,与期望函数法、距离函数法和均方误差法等多目标优化方法相比,该方法具有良好的性能。只要对所考虑的质量特性的规格上限和下限稍加修改,以及非线性优化问题的约束,它就可以成功地应用于纺织行业的其他流程,以确定其最佳参数设置。

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