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An integrated model for green supplier selection under fuzzy environment: application of data envelopment analysis and genetic programming approach

机译:模糊环境下绿色供应商选择的集成模型:数据包络分析和遗传规划方法的应用

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摘要

Supplier evaluation plays a critical role in a successful supply chain management. Hence, the evaluation and selection of the right suppliers have become a central decision of manufacturing business activities around the world. Consequently, numerous individual and integrated methods have been presented to evaluate and select suppliers. The current literature shows that hybrid artificial intelligence (AI)-based models have received much attention for supplier evaluation. Integrated data envelopment analysis-artificial neural network (DEA-ANN) is one of the combined methods that have recently garnered great attention from academics and practitioners. However, DEA-ANN model has some drawbacks, which make some limitation in the evaluation process. In this study, we aim at improving the previous DEA-AI models by integrating the Kourosh and Arash method as a robust model of DEA with a new AI approach namely genetic programming (GP) to overcome the shortcomings of previous DEA-AI models in supplier selection. Indeed, in this paper, GP provides a robust nonlinear mathematical equation for the suppliers' efficiency using the determined criteria. To validate the model, adaptive neuro-fuzzy inference system as a powerful tool was used to compare the result with GP-based model. In addition, parametric analysis and unseen data set were used to validate the precision of the model.
机译:供应商评估在成功的供应链管理中起着至关重要的作用。因此,评估和选择合适的供应商已成为全球制造业务活动的中心决策。因此,已经提出了许多单独的和综合的方法来评估和选择供应商。当前文献表明,基于混合人工智能(AI)的模型已受到供应商评估的广泛关注。集成数据包络分析-人工神经网络(DEA-ANN)是最近引起学者和实践者极大关注的一种组合方法。但是,DEA-ANN模型有一些缺点,这在评估过程中有一定的局限性。在这项研究中,我们旨在通过将Kourosh和Arash方法作为鲁棒的DEA模型与一种新的AI方法(即遗传编程(GP))相集成来改进以前的DEA-AI模型,以克服供应商中以前DEA-AI模型的缺点选择。实际上,在本文中,GP使用确定的标准为供应商的效率提供了一个鲁棒的非线性数学方程。为了验证该模型,使用自适应神经模糊推理系统作为功能强大的工具将结果与基于GP的模型进行比较。此外,使用参数分析和看不见的数据集来验证模型的精度。

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