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Growing Science » Uncertain Supply Chain Management » Supply chain risk assessment of the Iranian mining industry by using fuzzy inference system

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Uncertain Supply Chain Management

ISSN 2291-6830 (Online) - ISSN 2291-6822 (Print)
Quarterly Publication
Volume 3 Issue 3 pp. 273-282 , 2015

Supply chain risk assessment of the Iranian mining industry by using fuzzy inference system Pages 273-282 Right click to download the paper Download PDF

Authors: Amir Ahadi Oroumieh

DOI: 10.5267/j.uscm.2015.3.003

Keywords: Fuzzy inference system, Mining industry, Risk assessment, Supply chain risk management

Abstract: Mining is one of the most important sectors in most countries. It produces raw material for other sectors such as industry, agriculture, etc. Therefore, governments always seek the solutions to prevent or at least reduce the risk of mining industry to minimize the waste of time and resource. One of the most popular risk in mining industry that should be clearly assessed is supply chain. There is a variety of methods to evaluate and classify risks. Fuzzy set is one of the most appropriate methods to categorize and evaluate risks, because this method is able to take into account the uncertainty involved in the process of risk assessment. In this article, fuzzy inference system is applied to evaluate and assess the supply chain risk of the Iranian mining industry. This research shows that the proposed model had a high accuracy and efficiency for assessing the risk of mining industry.

How to cite this paper
Oroumieh, A. (2015). Supply chain risk assessment of the Iranian mining industry by using fuzzy inference system.Uncertain Supply Chain Management, 3(3), 273-282.

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Journal: Uncertain Supply Chain Management | Year: 2015 | Volume: 3 | Issue: 3 | Views: 2123 | Reviews: 0

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