Goli, Alireza and Zare, Hasan Khademi and Moghaddam, RezaTavakkoli and Sadeghieh, Ahmad (2018): A comprehensive model of demand prediction based on hybrid artificial intelligence and metaheuristic algorithms: A case study in dairy industry. Published in: Journal of Industrial and Systems Engineering , Vol. 11, (20 November 2018): pp. 190-203.
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Abstract
This paper presents a multi-stage model for accurate prediction of demand for dairy products (DDP) by the use of artificial intelligence tools including Multi- Layer Perceptron (MLP), Adaptive-Neural-based Fuzzy Inference System (ANFIS), and Support Vector Regression (SVR). The innovation of this work is the improvement of artificial intelligence tools with various meta-heuristic algorithms including Particle Swarm Optimization (PSO), Genetic Algorithm (GA), Invasive Weed Optimization (IWO), and Cultural Algorithm (CA). First, the best combination of factors with can affect the DDP is determined by solving a feature selection optimization problem. Then, the artificial intelligent tools are improved with the goal of making a prediction with minimal error. The results indicate that demographic behavior and inflation rate have the greatest impact on dairy consumption in Iran. Moreover, PSO still exhibits a better performance in feature selection in compare of newcomer meta-heuristic algorithms such as IWO and CA. However, IWO shows the best performance in improving the prediction tools by achieving an error of 0.008 and a coefficient of determination of 95%. The final analysis demonstrates the validity and reliability of the results of the proposed model, as it supports the simultaneous analysis and comparison of the outputs of different tools and methods.
Item Type: | MPRA Paper |
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Original Title: | A comprehensive model of demand prediction based on hybrid artificial intelligence and metaheuristic algorithms: A case study in dairy industry |
English Title: | A comprehensive model of demand prediction based on hybrid artificial intelligence and metaheuristic algorithms: A case study in dairy industry |
Language: | English |
Keywords: | Multi-layer perceptron, adaptive-neural-based fuzzy inference system, support vector regression, invasive weed optimization algorithm, cultural algorithm, feature selection |
Subjects: | L - Industrial Organization > L2 - Firm Objectives, Organization, and Behavior > L20 - General O - Economic Development, Innovation, Technological Change, and Growth > O3 - Innovation ; Research and Development ; Technological Change ; Intellectual Property Rights Z - Other Special Topics > Z0 - General > Z00 - General |
Item ID: | 101727 |
Depositing User: | Ahmad Sadeghieh |
Date Deposited: | 19 Jul 2020 08:22 |
Last Modified: | 19 Jul 2020 08:22 |
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URI: | https://mpra.ub.uni-muenchen.de/id/eprint/101727 |