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Modeling and Optimization of a Supply Chain Loop's Performance by an Integrated Neural Network-Fuzzy Regression-Ridge Regression Approach

机译:集成神经网络模糊回归 - 脊回归方法的供应链环的建模与优化

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The goal of this research is to identify the significant factors affecting the firm performance and estimate the system behavior in different operating conditions. By determining the statistical relations of the productivity and effectiveness of the firm with these factors, a decision-making framework can be provided to improve the system performance within the competitive strategy of the whole supply chain. This research presents a flexible meta modeling approach for modeling and optimization the operating performance of a firm in a supply chain by integrating Fuzzy Linear Regression (FLR), Ridge Regression (RR), and Artificial Neural Network (ANN). The efficiencies of FLR, RR and ANN approaches in prediction and modeling are compared and the superior approach is selected according to Mean Absolute Percentage Error (MAPE) and minimum number of observation (n) for test data calculated from OC curve.
机译:该研究的目标是确定影响公司性能的重要因素,并估计不同操作条件下的系统行为。通过确定企业生产力和有效性与这些因素的统计关系,可以提供决策框架,以改善整个供应链的竞争策略内的系统性能。本研究通过集模糊线性回归(FLR),脊回归(RR)和人工神经网络(ANN)来提出一种灵活的元建模方法,用于建模和优化供应链中的公司的操作性能。比较了FLR,RR和ANN接近预测和建模方法的效率,并且根据平均值百分比误差(MAPE)和最小观察数(n)来选择卓越的方法,用于从OC曲线计算的测试数据。

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