Optimization of Multi-Criteria Selection of Computer Components Based on Hierarchy Analysis
DOI:
https://doi.org/10.15407/intechsys.2025.05.039Keywords:
analytical hierarchy process, multi-criteria selection, component selection, healthcare facilities, dynamic parameter balancing, decision optimization, IT infrastructureAbstract
The paper addresses the problem of optimal selection of components for personal computers in healthcare facilities under conditions of limited budget and multiple evaluation criteria. It is determined that traditional methods of component selection based on empirical experience or simple comparison of characteristics are insufficiently effective for making optimal decisions in multi-criteria choice situations. The application of Thomas Saaty’s adapted Analytical Hierarchy Process as an effective tool for mathematically grounded multi-criteria component selection is substantiated, taking into account technical compatibility, energy balance, and user priorities. Specific examples of applying the method when choosing a processor for a healthcare facility are provided, demonstrating four scenarios with different parameter priorities and three optimization modes. Experimental validation confirmed high algorithm accuracy in tracking user-defined priorities. An economic efficiency analysis of the developed system application has been conducted, demonstrating potential savings of up to 25% of the IT budget for healthcare institutions while maintaining the required performance level.
References
Saaty T.L. The Analytic Hierarchy Process. McGraw-Hill, New York, 1980, 287 p. https://doi.org/10.21236/ADA214804
Fainzilberh L.S., Zhukovska O.A., Yakymchuk V.S. Decision theory. Osvita Ukrainy, Kyiv, 2018, 246 p. [In Ukrainian: Файнзільберг Л.С., Жуковська О.А., Якимчук В.С. Теорія прийняття рішень]
Sytnyk M.V. System for selecting computer components to optimize the work of medical institutions. 122 Computer Sciences, Kyiv, 2024, 94 p. [in Ukrainian: Ситник М.В. Система підбору комп'ютерних комплектуючих для оптимізації роботи медичних закладів] URL: https://ela.kpi.ua/items/930710b5-0b92-463a-8504-fd84a11aa2d0 [Accessed 20 Oct. 2025]
Huang L. Normalization Techniques in Deep Learning. Synthesis Lectures on Computer Vision, Springer International Publishing, 2022, 110 p. https://doi.org/10.1007/978-3-031-14595-7
Popova I.V. Justification of the choice of a potential supplier as a factor in increasing the stability of the enterprise. Visnyk Natsionalnoho universytetu "Lvivska politekhnika", 2010, Issue 690, 421–426. [in Ukrainian: Попова І.В. Обґрунтування вибору потенційного постачальника як фактора підвищення стійкості підприємства] URL: https://ena.lpnu.ua/handle/ntb/11454
Synenko M.A. Saaty method in making managerial decisions on the example of a small business enterprise]. Intelekt XXI, 2018, Issue 1, 235−238. [In Ukrainian: Синенко М.А. Метод Сааті при прийнятті управлінських рішень на прикладі підприємства малого бізнесу] URL: http://nbuv.gov.ua/UJRN/int_XXI_2018_1_53 [Accessed 20 Oct. 2025]
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2025 Copyright Holder is the publisher of the Paper (The Institute of Information Technologies and Systems of the NAS of Ukraine), and/or the publisher of the Paper (PH "Akademperiodika" of the NAS of Ukraine), to that the The Institute of Information Technologies and Systems of the NAS of Ukraine on the basis of a sublicense publishing agreement granted the right to publish the work and the right to indicate the publisher after the copyright sign.

This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
The paper is an Open Access under the CC BY-NC-ND 4.0 license - Attribution-NonCommercial-NoDerivatives 4.0 International.