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Growing Science » Authors » Farid Momayezi

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Sort articles by: Volume | Date | Most Rates | Most Views | Reviews | Alphabet
1.

Enhancing safety and risk management through an integrated spherical fuzzy approach for managing laboratory errors Pages 545-564 Right click to download the paper Download PDF

Authors: Shayandokht Sadat Eftekharzadeh, Saeid Jafarzadeh Ghoushchi, Farid Momayezi

DOI: 10.5267/j.dsl.2024.5.006

Keywords: Laboratory errors, Risk management, Spherical fuzzy, FMEA, MOORA, COPRAS

Abstract:
Hospital hazards and human errors pose a significant and complex problem, with rising incidents and irreversible consequences. Managing laboratory errors and risks is vital due to the presence of chemicals, electrical equipment, and the involvement of students, professors, and staff. The high value of laboratory equipment further underscores the need for robust risk management strategies. To address these challenges, researchers have explored the Failure Mode and Effects Analysis (FMEA) method for risk identification and assessment in healthcare settings. However, recognizing its limitations, this study aims to prioritize and evaluate laboratory errors using an integrated approach that combines the Best-Worst Method (BWM) and Complex Proportional Assessment with a Fuzzy Spherical Environment (CoCoSo-FSE). By applying the BWM, criteria such as severity, detectability, and occurrence probability are weighted to account for the nature of laboratory errors. The CoCoSo-FSE is then employed to evaluate and prioritize 18 identified laboratory errors, reducing uncertainty and enhancing decision-making. The fuzzy spherical set is used to address uncertainties by providing a flexible framework for decision-makers to define membership functions in specific spherical regions, enhancing the representation of knowledge and decision-making information. The proposed approach is compared with other decision-making methods, namely MOORA and COPRAS, demonstrating reliable ranking results. Sensitivity analysis confirms the stability of the approach's ranking when adjusting the flexibility parameter. This integrated approach offers a reliable and robust decision-making technique for managing laboratory errors, providing valuable insights to enhance laboratory safety and risk management for stakeholders, managers, and policymakers.
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Journal: DSL | Year: 2024 | Volume: 13 | Issue: 3 | Views: 749 | Reviews: 0

 
2.

Optimizing Modular Hub Location in Air and Road Transportation Systems Pages 277-300 Right click to download the paper Download PDF

Authors: Zahra Arabzadeh Nosrat Abad, Farid Momayezi

DOI: 10.5267/j.jpm.2024.3.001

Keywords: Hub Network, Modular Hub Location Problem (MHLP), Mixed-Integer Programming (MIP), LP Relaxation-based Method, Genetic Algorithm (GA), Taguchi method

Abstract:
Hub networks play a crucial role in optimizing transportation costs in air and road systems. Their main objective is to strategically locate hubs and allocate non-hub nodes within the network. The modular hub location problem is a specific area of hub network design that focuses on accurately calculating transportation costs, considering factors like trip numbers and capacity constraints in network routes. This study proposes a mixed-integer programming model to address the modular hub location problem with multiple allocations. It considers dependent and independent costs associated with vehicles per trip between hub network routes, considering specific vehicle capacities. Two datasets are utilized for validation: the CAB dataset representing 25 nodes of US airports and the TR dataset representing the Turkish transportation system with 81 nodes. To tackle the NP-hard nature of hub location models and the computational complexity of the proposed model, two solutions are developed. Firstly, a novel LP relaxation-based method using GAMS software provides near-optimal solutions for medium-sized instances. Additionally, a Genetic Algorithm (GA) implemented in MATLAB handles larger instances. The GA's efficiency is enhanced by tuning its parameters using the Taguchi method. Results analysis shows that both proposed algorithms yield high-quality solutions within significantly reduced timeframes compared to the CPLEX solver in GAMS software. The LP relaxation-based method performs well for medium-sized instances, while the GA approach is efficient for larger instances after parameter tuning with the Taguchi method.
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Journal: JPM | Year: 2024 | Volume: 9 | Issue: 3 | Views: 1112 | Reviews: 0

 
3.

An adaptive large neighborhood search heuristic for solving the reliable multiple allocation hub location problem under hub disruptions Pages 191-202 Right click to download the paper Download PDF

Authors: S. K. Chaharsooghi, Farid Momayezi, Nader Ghaffarinasab

DOI: 10.5267/j.ijiec.2016.11.001

Keywords: Hub location problem, Reliability, Stochastic programming, Adaptive large neighborhood search

Abstract:
The hub location problem (HLP) is one of the strategic planning problems encountered in different contexts such as supply chain management, passenger and cargo transportation industries, and telecommunications. In this paper, we consider a reliable uncapacitated multiple allocation hub location problem under hub disruptions. It is assumed that every open hub facility can fail during its use and in such a case, the customers originally assigned to that hub, are either reassigned to other operational hubs or they do not receive service in which case a penalty must be paid. The problem is modeled as two-stage stochastic program and a metaheuristic algorithm based on the adaptive large neighborhood search (ALNS) is proposed. Extensive computational experiments based on the CAB and TR data sets are conducted. Results show the high efficiency of the proposed solution method.
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Journal: IJIEC | Year: 2017 | Volume: 8 | Issue: 2 | Views: 3913 | Reviews: 0

 

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