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A Novel Approach Based on Combining ANFIS, Genetic Algorithm and Fuzzy c-Means Methods for Multiple Criteria Inventory Classification

机译:基于ANFIS,遗传算法和模糊c-均值方法的多指标库存分类新方法

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摘要

Multi-criteria inventory classification (MCIC) is a widely used inventory classification method that groups inventory items with respect to several criteria, in order to facilitate their management. Many researchers have been used several methods to solve MCIC problem. However, some of them are quite complex to understand and are not capable of handling qualitative data which is impractical in today's manufacturing conditions. In addition, one of the most common problem is that, in most of the existing methods, when a new inventory item is stored in a warehouse, the classification process must be repeated. In this paper, a new hybrid model generated by genetic algorithm (GA), fuzzy c-means (FCM) and adaptive neuro-fuzzy inference system (ANFIS) is proposed for inventory classification. To create this model, three steps are followed up which are optimizing FCM algorithm by using GA, clustering the data set with FCM algorithm and generating the ANFIS classification model. This model does not need to be regenerated to solve the classification problem whenever a new inventory item is introduced. The model is also capable of handling both quantitative and qualitative criteria. The proposed model is applied to a real-life problem. Results of the model are compared with those of artificial neural network (ANN) model. The comparison showed that the proposed model is more successful than the ANN model.
机译:多标准库存分类(MCIC)是一种广泛使用的库存分类方法,该方法针对多个标准对库存物料进行分组,以便于对其进行管理。许多研究人员已使用多种方法来解决MCIC问题。但是,其中一些理解起来非常复杂,并且无法处理在当今的制造条件下不切实际的定性数据。另外,最普遍的问题之一是,在大多数现有方法中,当新库存项目存储在仓库中时,必须重复分类过程。本文提出了一种由遗传算法,模糊c均值(FCM)和自适应神经模糊推理系统(ANFIS)生成的新混合模型用于库存分类。要创建此模型,需要执行以下三个步骤:使用GA优化FCM算法,使用FCM算法对数据集进行聚类并生成ANFIS分类模型。每当引入新的库存物料时,无需重新生成该模型即可解决分类问题。该模型还能够处理定量和定性标准。所提出的模型适用于现实生活中的问题。将模型的结果与人工神经网络(ANN)模型的结果进行比较。比较表明,所提出的模型比人工神经网络模型更成功。

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