Risk Assessment Using the PFDA-FMEA Integrated Method

Miroslav Čička (1), Renáta Turisová (2), Darina Čičková (3)
(1) Technical University of Kosice, Slovakia,
(2) Technical University of Kosice, Slovakia,
(3) , Slovakia

Abstract

Purpose: The paper aims to introduce risk assessment in new product development as an important activity for a successful new product launch. A practical example is presented to demonstrate the integration of tools Failure Mode and Effect Analysis (FMEA) and Pythagorean Fuzzy Dimensional Analysis (PFDA) at new product development process, which is a machined component.


Methodology/Approach: Individual steps for creating a case study were carried out: create a Subject Matter Expert (SME) team, identify product failure modes, use linguistic values to assess the FMEA, compute and obtain the PFDA-FMEA and determine the product failure modes ranking.


Findings: Minimized uncertainty in the final evaluation of the FMEA and improvement in the decision-making process based on the risks already identified in the new product development process.


Research Limitation/Implication: The PFDA-FMEA method was based on the risk assessment of a machined part development process. Nevertheless, this method can be used for application in many other areas of industry that require high precision in risk analysis.


Originality/Value of paper: The aim of this paper is to reveal a new integrated method in which FMEA, Pythagorean Fuzzy Sets (PFS) and Dimensional Analysis (DA) are coherent in one model.

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Authors

Miroslav Čička
mirko.cicka@gmail.com (Primary Contact)
Renáta Turisová
Darina Čičková
Author Biographies

Miroslav Čička, Technical University of Kosice

Department of Safety and Production Quality

Faculty of Mechanical Engineering

Technical University of Kosice

Kosice

Slovakia

Renáta Turisová, Technical University of Kosice

Department of Safety and Production Quality

Faculty of Mechanical Engineering

Technical University of Kosice

Košice

Slovakia

Čička, M., Turisová, R., & Čičková, D. (2022). Risk Assessment Using the PFDA-FMEA Integrated Method. Quality Innovation Prosperity, 26(3), 112–134. https://doi.org/10.12776/qip.v26i3.1772

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