Hybrid Fuzzy Logic Models for Performance Evaluation in Complex Decision-Making Systems
DOI:
https://doi.org/10.33050/italic.v4i2.1095Keywords:
Artificial Intelligence, Fuzzy Logic, FLC-GA, Performance Evaluation, Decision-Making SystemsAbstract
Complex decision-making systems increasingly face uncertainty, nonlinearity, incomplete information, and dynamic data streams, making conventional rule-based and statistical approaches less reliable for adaptive and consistent decision support. Fuzzy logic offers interpretability for imprecise reasoning, whereas machine learning contributes predictive strength and optimization capability. This study develops and evaluates fuzzy logic-based hybrid models that integrate fuzzy inference systems with neural learning and evolutionary optimization. Benchmark datasets and simulation-based case studies were used to test model performance under uncertain and nonlinear conditions. The models were assessed using prediction accuracy, decision consistency, computational efficiency, error reduction, scalability, and adaptability, followed by comparison with conventional fuzzy, statistical, and standalone machine learning models. The main objective is to evaluate the effectiveness, reliability, scalability, and adaptability of hybrid fuzzy models for complex decision-making systems. The findings show that the proposed hybrid fuzzy models outperform conventional single model approaches across different scenarios. The models improve prediction precision, stabilize decision outputs under uncertainty, reduce error rates, and enhance adaptability to nonlinear data patterns. Neural learning strengthens predictive capability, while evolutionary optimization improves rule refinement, parameter tuning, and adaptive decision processing. This study concludes that fuzzy logic-based hybrid models provide a robust, interpretable, and scalable framework for intelligent decision support in uncertain and dynamic environments. The findings support the development of adaptive hybrid artificial intelligence systems for healthcare, energy management, smart cities, finance, and industrial automation. This structure also promotes transparent reasoning, reproducible evaluation, and practical deployment in high-stakes environments requiring explainability and resilience simultaneously.
References
[1] G. Demir, “The synergy of fuzzy logic and multi-criteria decision-making: Application areas and global trends,” Journal of Intelligent Decision Making and Information Science, pp. 429–455, 2025.
[2] B. Rawat, J. Nathalie, D. Manongga, G. Fransiso, F. P. O. Moana, and P. A. Sunarya, “Machine learning based risk assessment and default prediction in p2p lending platforms,” Sundara Advanced Research on Artificial Intelligence, vol. 2, no. 1, pp. 48–59, 2026.
[3] L. Yuldinawati et al., “The use of e-commerce and qris as digital payment solutions to enhance sales performance in msmes in west java,” Indonesian Interdisciplinary Journal of Sharia Economics (IIJSE), vol. 8, no. 1, pp. 1157–1178, 2025.
[4] President of the Republic of Indonesia, “Presidential Regulation Number 82 of 2023 concerning the Acceleration of Digital Transformation and Integration of National Digital Services,” Presidential Regulation, Jakarta, Indonesia, 2023, government regulation supporting digital transformation, integrated public digital services, interoperability, and electronic-based government systems. [Online]. Available: https://peraturan.bpk.go.id/Details/273981/perpres-no-82-tahun-2023
[5] N. Lutfiani, N. Fauziyah, F. P. Oganda, R. Setyaningrum, E. A. Natalia et al., “The role of globalization in indonesian evolution influence on media digital literacy language ai,” International Transactions on Artificial Intelligence, vol. 3, no. 2, pp. 192–200, 2025.
[6] H. Regragui, N. Sefiani, H. Azzouzi, and N. Cheikhrouhou, “A hybrid multi-criteria decision-making approach for hospitals’ sustainability performance evaluation under fuzzy environment,” International journal of productivity and performance management, vol. 73, no. 3, pp. 855–888, 2024.
[7] A. A. Adesina, T. V. Iyelolu, P. O. Paul et al., “Leveraging predictive analytics for strategic decision-making: Enhancing business performance through data-driven insights,” World Journal of Advanced Research and Reviews, vol. 22, no. 3, pp. 1927–1934, 2024.
[8] A. Ruangkanjanases, A. Khan, O. Sivarak, U. Rahardja, S.-W. Chien, and S.-C. Chen, “The magic of brand experience: A value co-creation perspective of brand equity on short-form video platforms,” Emerg. Sci. J, vol. 7, no. 5, pp. 1588–1601, 2023.
[9] T. A. Rainy and A. R. Chowdhury, “The role of artificial intelligence in vendor performance evaluation within digital retail supply chains: A review of strategic decision-making models,” American Journal of Scholarly Research and Innovation, vol. 1, no. 01, pp. 220–248, 2022.
[10] S. I. Al-Hawary, J. R. N. Alvarez, A. Ali, A. K. Tripathi, U. Rahardja, I. H. Al-Kharsan, R. M. Romero Parra, H. A. Marhoon, V. John, and W. Hussian, “Multiobjective optimization of a hybrid electricity generation system based on waste energy of internal combustion engine and solar system for sustainable environment,” Chemosphere, vol. 336, p. 139269, 2023.
[11] L. A. M. Nelloh, H. Hartoyo, U. Sumarwan, A. Wirakartakusumah, and S.-H. Joo, “Commitment beyond graduation through entrepreneurial leadership experience in mba program,” Aptisi Transactions on Technopreneurship (ATT), vol. 8, no. 1, pp. 99–113, 2026.
[12] K. Karnawati, D. N. Ramadhan, T. L. Anita, R. Nurmala, and L. Maria, “Designing inclusive companion robots to mitigate bias and enhance empathy in ai-driven care systems,” Journal of Orange Technology, vol. 2, no. 2, pp. 83–92, 2026.
[13] T. Hongsuchon, U. Rahardja, A. Khan, T.-H. Wu, C.-W. Hung, R.-H. Chang, C.-H. Hsu, and S.-C. Chen, “Brand experience on brand attachment: The role of interpersonal interaction, feedback, and advocacy,” Emerging Science Journal, vol. 7, no. 4, pp. 1232–1246, 2023.
[14] M. B. Panjaitan, A. F. Siagian, L. Judijanto, M. Mufarizuddin, H. Herman, N. Saputra, and Z. Mamadi yarov, “Comparison of students science literacy abilities using inquiry and cooperative learning models,” Aptisi Transactions on Technopreneurship (ATT), vol. 8, no. 1, pp. 63–73, 2026.
[15] S. Agarwal and A. P. Singh, “Performance evaluation of textile wastewater treatment techniques using sustainability index: An integrated fuzzy approach of assessment,” Journal of Cleaner Production, vol. 337, p. 130384, 2022.
[16] A. S. Anita, T. Kuusk, G. Nicola, M. Hardini, and U. Rahardja, “Advancements in artificial intelligence and their contributions to sustainable development goals: A multidisciplinary review,” Sundara Advanced Research on Artificial Intelligence, vol. 2, no. 1, pp. 37–47, 2026.
[17] G. P. Cesna, S. Agustiawan, A. S. Panjaitan, S. Purnama, R. S. Ikhsan et al., “Transforming higher education management through evidence based and data oriented approaches,” Jurnal MENTARI: Manajemen, Pendidikan dan Teknologi Informasi, vol. 4, no. 2, pp. 127–139, 2026.
[18] F. A. Alijoyo, S. Janani, K. Santosh, S. N. Shweihat, N. Alshammry, J. V. N. Ramesh, and Y. A. B. El-Ebiary, “Enhancing ai interpretation and decision-making: Integrating cognitive computational models with deep learning for advanced uncertain reasoning systems,” Alexandria Engineering Journal, vol. 99, pp. 17–30, 2024.
[19] S. Zebua, M. H. R. Chakim et al., “Effect of human resources quality, performance evaluation, and incentives on employee productivity at raharja high school,” APTISI Transactions on Management, vol. 7, no. 1, pp. 1–8, 2023.
[20] ¨O. Is¸ık, M. Shabir, G. Demir, A. Puska, and D. Pamucar, “A hybrid framework for assessing pakistani commercial bank performance using multi-criteria decision-making,” Financial Innovation, vol. 11, no. 1, p. 38, 2025.
[21] H. Amoozad Mahdiraji, K. Hafeez, H. Kord, and A. Abbasi Kamardi, “Analysing the voice of customers by a hybrid fuzzy decision-making approach in a developing country’s automotive market,” Management Decision, vol. 60, no. 2, pp. 399–425, 2022.
[22] Association of Southeast Asian Nations, “ASEAN Guide on AI Governance and Ethics,” Association of Southeast Asian Nations, Jakarta, Indonesia, Tech. Rep., 2024, regional policy guide supporting responsible AI governance, ethical AI design, transparency, explainability, and trustworthy AI deployment. [Online]. Available: https://asean.org/book/asean-guide-on-ai-governance-and-ethics/
[23] A. Aulia, C. Sukmadilaga, I. Avianti, D. Rosdini, and E. K. Ghani, “The role of esg and digitalization driving sustainable agropreneurship in emerging market,” Aptisi Transactions on Technopreneurship (ATT), vol. 8, no. 1, pp. 51–62, 2026.
[24] R. Saatchi, “Fuzzy logic concepts, developments and implementation,” Information, vol. 15, no. 10, p. 656, 2024.
[25] K. Koc, ¨O. Ekmekcioglu, and Z. Is¸ık, “Developing a hybrid fuzzy decision-making model for sustainable circular contractor selection,” Journal of Construction Engineering and Management, vol. 149, no. 10, p. 04023095, 2023.
[26] A. Erica, L. Gantari, O. Qurotulain, A. Nuche, and O. Sy, “Optimizing decision-making: Data analytics applications in management information systems,” APTISI Transactions on Management, vol. 8, no. 2, pp. 115–122, 2024.
[27] M. R. Khan, K. Ullah, D. Pamucar, and M. Bari, “Performance measure using a multi-attribute decision-making approach based on complex t-spherical fuzzy power aggregation operators,” Journal of computational and cognitive engineering, vol. 1, no. 3, pp. 138–146, 2022.
[28] U. Leicht-Deobald, T. Busch, C. Schank, A. Weibel, S. Schafheitle, I. Wildhaber, and G. Kasper, “The challenges of algorithm-based hr decision-making for personal integrity,” in Business and the ethical implications of technology. Springer, 2022, pp. 71–86.
[29] D. Tribuana, U. Narimawati, and M. Y. Syafei, “A multi-group structural analysis of digital banking adoption determinants across generational cohorts in indonesia,” Aptisi Transactions on Technopreneurship (ATT), vol. 8, no. 1, pp. 37–50, 2026.
[30] R. Amironesei, A. Godil, C. Greenberg, K. Greene, J. P. Hall, T. Jensen, J. Fiscus, and N. Schulman, “Assessing risks and impacts of ai (aria): Pilot evaluation report,” National Institute of Standards and Technology, Tech. Rep. NIST AI 700-2, 2025. [Online]. Available:
https://www.nist.gov/publications/assessing-risks-and-impacts-ai-aria-pilot-evaluation-report
[31] D. Hidayati, A. Andriyansah, G. P. Cesna, A. Y. Fauzi, D. Apriliasari, and U. Rahardja, “Building efficient iot systems with edge computing integration,” International Journal of Cyber and IT Service Management (IJCITSM), vol. 4, no. 2, pp. 72–79, 2024.
[32] S. Sefati, M. Mousavinasab, and R. Zareh Farkhady, “Load balancing in cloud computing environment using the grey wolf optimization algorithm based on the reliability: performance evaluation,” The Journal of Supercomputing, vol. 78, no. 1, pp. 18–42, 2022.
[33] Y. Ismiyanti, S. D. W. Prajanti, C. B. Utomo, E. Handoyo, E. Banowati, I. Kusmaryono, and M. N. Huda,“Technopreneurship enhancing student msmes competitive edge via digital marketing,” Aptisi Transactions on Technopreneurship (ATT), vol. 8, no. 1, pp. 24–36, 2026.
[34] W. Widiyawati, A. S. Widyasih, S. Hanadwiputra, Z. M. Subekti, and L. Marlinda, “Selection of the best employees using the complex proportional assessment method,” Journal of Information System, Applied, Management, Accounting and Research, vol. 7, no. 1, pp. 151–159, 2023.
[35] Z. N. Khlaif, A. Mousa, M. K. Hattab, J. Itmazi, A. A. Hassan, M. Sanmugam, and A. Ayyoub, “The potential and concerns of using ai in scientific research: Chatgpt performance evaluation,” JMIR medical education, vol. 9, p. e47049, 2023.
[36] T. Nursugiharti, A. Yulianto, S. Bahri, R. A. Hidayat, J. Jahdiah, and M. Safei, “Analysis of balamut performance structure for cultural preservation in southern kalimantan,” Aptisi Transactions on Technopreneurship (ATT), vol. 8, no. 1, p. 14–23, 2025.
[37] L.-V. Herm, K. Heinrich, J. Wanner, and C. Janiesch, “Stop ordering machine learning algorithms by their explainability! a user-centered investigation of performance and explainability,” International Journal of Information Management, vol. 69, p. 102538, 2023.
[38] F. Shwedeh and H. M. Alzoubi, “Artificial intelligence (ai) integration into the decision support systems of health care centers,” in International Scientific Conference Management and Engineering. Springer, 2024, pp. 165–176.
[39] L. Unsriana, B. Perdana, S. Ariana, and D. R. Saputra, “Smart e-learning systems for japanese literature education in an industry 4.0 perspective,” Aptisi Transactions on Technopreneurship (ATT), vol. 8, no. 1, pp. 1–13, 2026.
[40] K. Creel and D. Hellman, “The algorithmic leviathan: Arbitrariness, fairness, and opportunity in algorithmic decision-making systems,” Canadian Journal of Philosophy, vol. 52, no. 1, pp. 26–43, 2022.
[41] P. Ferrans, M. N. Torres, J. Temprano, and J. P. R. S´anchez, “Sustainable urban drainage system (suds) modeling supporting decision-making: A systematic quantitative review,” Science of the Total Environment, vol. 806, p. 150447, 2022.
[42] A. Amroni, M. Y. Syafei, and U. Narimawati, “The role of customer satisfaction as a mediator for price and service quality on revisit intention,” Aptisi Transactions on Technopreneurship (ATT), vol. 7, no. 3, pp. 1080–1090, 2025.
[43] R. Indrawan, E. D. Very, D. Tribuana, and E. A. Nabila, “Aiot driven smart solar system for real time predictive sustainable energy management,” International Transactions on Artificial Intelligence, vol. 4, no. 1, pp. 105–114, 2025.
[44] S. Gupta, S. Modgil, S. Bhattacharyya, and I. Bose, “Artificial intelligence for decision support systems in the field of operations research: review and future scope of research,” Annals of Operations Research, vol. 308, no. 1, pp. 215–274, 2022.
[45] S. M. Shokory, N. N. A. Wahab, J. Zanubiya, and Z. Zainol, “Customer purchase patterns and loyalty in msme catering businesses using the rfm method,” IAIC Transactions on Sustainable Digital Innovation (ITSDI), vol. 7, no. 2, pp. 188–197, 2026.
[46] F. Xiao, J. Wen, and W. Pedrycz, “Generalized divergence-based decision making method with an application to pattern classification,” IEEE transactions on knowledge and data engineering, vol. 35, no. 7, pp. 6941–6956, 2022.
[47] I. Faulconbridge and M. Ryan, Managing complex technical projects: A systems engineering approach. Artech House, 2026.
[48] K. Moyo, S. D. W. Prajanti, M. Muhtarom, and F. Adzim, “Evaluating the impact of interdisciplinary learning factory models on innovation skills using statistical analysis,” International Transactions on Education Technology (ITEE), vol. 4, no. 2, pp. 100–115, 2026.
Downloads
Published
Issue
Section
License
Copyright (c) 2026 Cicilia Sriliasta Bangun, Padeli, Muhamad Yusup, Adele Valerry

This work is licensed under a Creative Commons Attribution 4.0 International License.








