Ayandegan Institute of Higher EducationInternational Journal of Research in Industrial Engineering2783-133711120220301Selecting methodology for developing emergency preparedness and response framework of an NPP accident1814320110.22105/riej.2022.314603.1264ENMuhammed Mufazzal HossenNuclear Power and Energy Division, Bangladesh Atomic Energy Commission, Dhaka, Bangladesh.Mahmud HossainNuclear Power and Energy Division, Bangladesh Atomic Energy Commission, Dhaka, Bangladesh.K. M. Jalal Uddin RumiNuclear Power and Energy Division, Bangladesh Atomic Energy Commission, Dhaka, Bangladesh.Journal Article20211111The Emergency Preparedness and Response (EPR) framework to a radiological emergency in a Nuclear Power Plant (NPP) accident should be developed systematically and efficiently by applying an appropriate methodology. A systematic approach is applied in this study to select the appropriate method from different methodologies for developing EPR framework of a NPP accident by applying trade-off analysis. Ten evaluation criteria, namely causal analysis, decision making analysis, feedback analysis, interactive graphical analysis, nonlinear behavior analysis, organizational factor analysis, quantitative analysis, sensitivity analysis, statistical analysis, and threat analysis were identified for methodology selection by conducting requirement analysis of EPR framework. The System Dynamics (SD) approach was found as the most capable and the best methodologies according to the trade-off analysis by considering the assigned criteria for EPR framework of a NPP accident. The Analytic Hierarchy Process (AHP) and the Bayesian Belief Network (BBN) can also be applied in the EPR framework development process of NPP accident.https://www.riejournal.com/article_143201_821d17ed1f31c808bce46bf398352dae.pdfAyandegan Institute of Higher EducationInternational Journal of Research in Industrial Engineering2783-133711120220301PyIT-MLFS: a Python-based information theoretical multi-label feature selection library91514405710.22105/riej.2022.308916.1252ENSadegh EskandariDepartment of Computer Science, Faculty of Mathematical Sciences, University of Guilan, Rasht, Iran.Journal Article20211004Multi-label learning is an emerging research direction that deals with data in which an instance may belong to multiple class labels simultaneously. As many multi-label data contain very large feature space with hundreds of irrelevant and<br />redundant features, multi-label feature selection is a fundamental pre-processing tool for selecting a subset of most representative and discriminative features. This paper introduces a Python-based open-source library that provides the state-ofthe-art information theoretical filter-based multi-label feature selection algorithms. The library, called PyIT-MLFS, is designed to facilitate the development of new algorithms. It is the first comprehensive open-source library for implementing algorithms of multilabel feature selection. Moreover, it provides a high-level interface that enables the end-users to test and compare different already implemented algorithms. PyIT-MLFS is available from https://github.com/Sadegh28/PyIT-MLFS.https://www.riejournal.com/article_144057_d784382d18541832f86049e1bc2fbe02.pdfAyandegan Institute of Higher EducationInternational Journal of Research in Industrial Engineering2783-133711120220301Assessing the location of relief centers using a combination of multi-criteria decision-making methods and gis (case study: district 18 of tehran)162914405610.22105/riej.2022.291197.1228ENDavood DarvishiDepartment of Mathematics, Payame Noor University, Tehran, Iran.0000-0001-5039-2469Hassan Ahmadi ChoukolaeiDepartment of Industrial Engineering, Faculty of Industrial Technologies, Urmia University of Technology, Urmia, Iran.Soheil ShafaeeDepartment of Industrial Engineering, Payame Noor University, Tehran Iran.Journal Article20210818All governments especially those having a high risk of natural disasters must have a comprehensive and implementable plan. In Iran, the placement of relief centers for the injured is usually done experimentally by relief organizations without considering the necessary standards. In this research, according to the crisis management standard, the criteria are classified and determined as layers of information in the Geographic Information System (GIS). Then, the selected relief centers in the study area were evaluated according to the standard criteria and using the obtained matrix, the research criteria were weighed by entropy method. Finally, using net flows, performance scores and research constraints, the optimal options were identified by the PROMETHEE 5 method. The strengths and weaknesses of each of these options were also assessed. The results showed that half of the relief centers considered in the region were not optimal and had poor performance in most of the effective and important criteria for locating relief centers. Criteria of population density and distance from worn tissue were the most important criteria in this study.https://www.riejournal.com/article_144056_bfe2c805bea079c24654131adc2c41e2.pdfAyandegan Institute of Higher EducationInternational Journal of Research in Industrial Engineering2783-133711120220301Designing a model for creating an organization with high reliability, case study: Iran space research institute304914494010.22105/riej.2022.318781.1269ENAminullah TeymouriDepartment of Public Administration, South Tehran Branch, Islamic Azad University, Tehran, Iran.Hasan AmiriDepartment of Public Administration, South Tehran Branch, Islamic Azad University, Tehran, Iran.Somayeh QajariDepartment of Public Administration, Naragh Branch, Islamic Azad University, Naragh, Iran.Farzaneh BeigzadehDepartment of Business Management, South Tehran Branch, Islamic Azad University, Tehran, Iran.Journal Article20211207Given the challenges and global uncertainties in the business’s, the use of futurism to improve management in space research center in Iran has become very important. Hence, space sector needs continuous futurology improvement in its systems and processes to obtain higher levels of reliability. Therefore, this study is aiming to design a model to create an organization with high reliability. So, this research is among developing research. In terms of the nature and approach of research, it is a causal-effect research, while it should also be noted that the present study is mixed by Grounded theory. This research has done based on qualitative part of the research and semi-structured interviews with 20 experts and knowledgeable experts in Iran Space Research Institute and active academic experts at universities. Firstly, categories and subcategories have been selected through individual interviews with experts in the field of reliability based on snowball sampling method. The statistical population of this research in a small part consists of active employees of the organization in the Iranian Space Research Institute of 1000 people. The statistical sample in this research is 277 people and the sampling method is also available. The results showed that, security activities, learning and experience survival, high interaction ability activities, job rotation and trust, high learning ability and difficulties at work activities, managers' special attention to supply line forces, high transfer rate, knowledge management, teamwork, loyalty and dignity, teamwork and collaboration, organizational knowledge management, commitment to flexibility, talent management and organized turmoil are essential to create a highly reliable organization.https://www.riejournal.com/article_144940_a3e4a8ea454978716b7e627d62a643b8.pdfAyandegan Institute of Higher EducationInternational Journal of Research in Industrial Engineering2783-133711120220301Developing a content marketing model with goal to improve brand of countrywide the banking industriestitle506114251610.22105/riej.2021.305326.1247ENKeivan GoodarziDepartment of Business Management, Kish International Branch, Islamic Azad University, Kish, Iran.Mohammadreza Kashefi NeishaboriDepartment of Management, Central Tehran Branch, Islamic Azad University, Tehran, Iran.Abdollah NaamiDepartment of Business Management, South Tehran Branch, Islamic Azad University, Tehran, Iran.Mojtaba DastooriDepartment of Finance and Accounting, Kish International Branch, Islamic Azad University, Kish, Iran.Journal Article20210917The current research has been done pursuing the goal to present a content marketing model with brand improving approach in banking industries. This study is applied in terms of goal and survey- exploratory concerning the approach. The statistical community is made up of a group of experts including the senior executives of the banking industries, academic faculty in marketing and marketing consultants acquainted with the banking industries who were posed in-depth interview. Selecting the experts and their interviews continued until reaching theoretical saturation and then stopped. In this research, snowball sampling method was used and this process continued until the researcher reaching theoretical saturation. And ultimately, the study finished with interviewing 9 experts. Since the data-driven theory has been utilized in this research, collecting the data has been mainly done by in-depth and unstructured interview. Finally, after three steps known as open, axial and selective coding, the conceptual model has been designed based on the paradigm model.https://www.riejournal.com/article_142516_770c0c5f56fc287330d740d5835cb4dc.pdfAyandegan Institute of Higher EducationInternational Journal of Research in Industrial Engineering2783-133711120220301Customer segmentation to identify key customers based on RFM model by using data mining techniques627613837910.22105/riej.2021.291738.1229ENAbdolmajid ImaniFaculty of Management and Economics, University of Sistan and Baluchestan, Zahedan, Iran.Meysam AbbasiFaculty of Management and Economics, University of Sistan and Baluchestan, Zahedan, Iran.Farahnaz AhangFaculty of Management and Economics, University of Sistan and Baluchestan, Zahedan, Iran.Hassan GhaffariFaculty of Management and Economics, University of Sistan and Baluchestan, Zahedan, Iran.Mohamad MehdiFaculty of Management and Economics, University of Sistan and Baluchestan, Zahedan, Iran.Journal Article20210622Accurate identification, attracting, and keeping the customers particularly loyal Customer Relationship Management (CRM) with the goal of optimum allotment of resources and achievement to higher profit is not a competitive profit, but it is a life persistence necessity of companies in virtual space. One of the challenges of companies in this part is how to identify the customer’s traits and the separation of different segments of them. Now Customer Lifetime Value (CLV) is the comparison priority in the segmentation of customers to congruous segments. The main goal of this research is to identify key or strategic customers using the RFM model. In this part after determining the amount of Recency, Frequency and Monetary (RFM) in, registered transactions of one store in Iran (Refah Chain Store) at a time about seven months from 23 September 2017 to 20 April 2018 (71161 transactions as final inputs were used), the weight of each variable according to the fuzzy Analytic Hierarchy Process (AHP) was determined. At the next stage customers using the K-means and Two-step’s algorithms were clustered and K-means the method according to the Silhouette index was the better algorithm of this letter. According to the results, customers were segmented into three parts and CLV was calculated and for identifying key or strategic customer segmentation, the clustering process was repeated and priorities of all clusters were indicated. Results of data analysis are below: Segment 3: customers of this segment were 3425 members and 11.5% of all company customers were the most loyal customers those are identified as golden customer's segment and all of the variables were higher than average of all data. This research identified the valuable customers for the shop, and it gives them a chance to choose goal customers and invest in them.https://www.riejournal.com/article_138379_2db2dd42423125ffd041fef6e313c9a0.pdfAyandegan Institute of Higher EducationInternational Journal of Research in Industrial Engineering2783-133711120220301Data mining and diagnosis of heart diseases: a hybrid approach to the b-mine algorithm and association rules779114694810.22105/riej.2022.302672.1243ENShookoofa MostofiDepartment of Mathematics, Lahijan Branch, Islamic Azad University, Lahijan, Iran.Sohrab KordrostamiDepartment of Mathematics, Lahijan Branch, Islamic Azad University, Lahijan, Iran.0000-0003-0081-8008Amir Hossein RefahiDepartment of Mathematics, Lahijan Branch, Islamic Azad University, Lahijan, Iran.0000-0003-1664-5471Marzieh Faridi MasoolehComputer and Information Technology Department, Ahrar Institute of Technology and Higher Education, Rasht, Iran.Soheil ShokriDepartment of Mathematics, Lahijan Branch, Islamic Azad University, Lahijan, Iran.Journal Article20210901Existing systems for diagnosing heart disease are time consuming, expensive, and prone to error. In this regard, a diagnostic algorithm has been proposed for the causes of heart disease based on a frequent pattern with the B-mine algorithm optimized by association rules. Initially, a data set of disease is used to select a feature, so that it deals with a set of training features. Then, association rules are used to classify educational and experimental sets, and then the factors affecting heart disease are analyzed. The numerical results from the experiments of real and standard datasets of cardiac patients show that the average accuracy of the proposed method is approximately 98%, which has been tested on the Cleveland database that includes 76 features in the case of heart disease dataset, 14 features of which are related to heart disease. This paper also uses four common categories such as decision tree to build the model. The data set studied in this article contains 270 records as well as 14 features. The accuracy of predicting the results of the support vector machine classifications, k nearest neighbor, decision tree and simple Bayesian is 81.11%, 66.67%, 59.72% and 19.85%, respectively, which are relatively satisfactory results.https://www.riejournal.com/article_146948_e97c31f57df44b704e47ab0eb155708b.pdf