Department of Industrial Engineering, Yazd University, Saffayieh, Iran.
School of Industrial Engineering, College of Engineering, University of Tehran, Tehran, Iran.
Network. 2021 Feb;32(1):1-35. doi: 10.1080/0954898X.2020.1849841. Epub 2021 Jan 4.
This research specifically addresses the prediction of dairy product demand (DPD). Since dairy products have a short consumption period, it is important to have accurate information about their future demand. The main contribution of this research is to provide an integrated framework based on statistical tests, time-series neural networks, and improved MLP, ANFIS, and SVR with novel meta-heuristic algorithms in order to obtain the best prediction of DPD in Iran. At first, a series of economic and social indicators that seemed to be effective in the demand for dairy products is identified. Then, the ineffective indices are eliminated by using the Pearson correlation coefficient, and statistically significant variables are determined. Since the regression relation is not able to predict this demand properly, the artificial intelligence tools including MLP, ANFIS, and SVR are implemented and improved with the help of novel meta-heuristic algorithms such as grey wolf optimization (GWO), invasive weed optimization (IWO), cultural algorithm (CA), and particle swarm optimization (PSO). The designed hybrid method is used to predict the DPD in Iran by using data from 2013 to 2017. The high accurate results confirm that the proposed hybrid methods have the ability to improve the prediction of the demand for various products.
本研究专门针对乳制品需求预测(DPD)。由于乳制品的消费周期短,因此拥有关于其未来需求的准确信息非常重要。本研究的主要贡献是提供了一个基于统计检验、时间序列神经网络以及改进的 MLPS、ANFIS 和 SVR 与新颖的元启发式算法的综合框架,以获得对伊朗 DPD 的最佳预测。首先,确定了一系列似乎对乳制品需求有影响的经济和社会指标。然后,通过使用皮尔逊相关系数消除无效指标,并确定具有统计学意义的变量。由于回归关系无法正确预测这一需求,因此实施了包括 MLP、ANFIS 和 SVR 在内的人工智能工具,并借助于灰狼优化(GWO)、入侵杂草优化(IWO)、文化算法(CA)和粒子群优化(PSO)等新颖的元启发式算法对其进行了改进。使用 2013 年至 2017 年的数据,设计的混合方法用于预测伊朗的 DPD。高精度的结果证实,所提出的混合方法有能力提高对各种产品需求的预测。