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Tiêu đề: |
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Tiêu đề: |
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Tiêu đề: |
Detection of diabetes mellitus using fuzzy inferencesystem,” "Studies in Indian Place Names |
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Tiêu đề: |
A novel adaptive neuro fuzzy inferencesystem based classification model for heart disease prediction.,”"Pertanika Journal of Science & Technology |
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Tiêu đề: |
Application ofdecision trees and fuzzy inference system for quality classification andmodeling of black and green tea based on visual features,” "Journal ofFood Measurement and Characterization |
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Tiêu đề: |
The application of mamdani fuzzy inferencesystem in evaluating green supply chain management performance,”"International Journal of Fuzzy Systems |
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Tiêu đề: |
An adaptiveneuro-fuzzy inference system-based intelligent grid-connectedphotovoltaic power generation,” in "Advances in ComputationalIntelligence |
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Tiêu đề: |
Fuzzy inference system-based for tbm fieldpenetration index estimation in rock mass,” "Geotechnical andGeological Engineering |
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[14] J.-S. Jang, “Anfis: adaptive-network-based fuzzy inference system,”IEEE transactions on systems, man, and cybernetics, vol. 23, no. 3, pp. 665–685, 1993 |
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Tiêu đề: |
Application of s-anfis method in coronary artery disease,” "Malaya Journal ofMatematik (MJM) |
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Tiêu đề: |
Application of anfis and lssvm strategies forestimating thermal conductivity enhancement of metal and metal oxidebased nanofluids,” "Engineering Applications of Computational FluidMechanics |
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[18] G. K. Tairidis, N. Stojanovic, D. Stamenkovic, and G. E. Stavroulakis,“Neuro-fuzzy techniques and natural risk management. applications of anfis models in floods and comparison with other models,” in Natural Risk Management and Engineering, pp. 169–189, Springer, 2020 |
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Tiêu đề: |
Neuro-fuzzy techniques and natural risk management. applications ofanfis models in floods and comparison with other models,” in "NaturalRisk Management and Engineering |
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Tiêu đề: |
Prediction of unsaturated hydraulicconductivity using adaptive neuro-fuzzy inference system (anfis),” "ISHJournal of Hydraulic Engineering |
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[20] A. Azad, M. Manoochehri, H. Kashi, S. Farzin, H. Karami, V. Nourani, and J. Shiri, “Comparative evaluation of intelligent algorithms to improve adaptive neuro-fuzzy inference system performance in precipitation modelling,” Journal of Hydrology, vol. 571, pp. 214–224, 2019 |
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Tiêu đề: |
Comparative evaluation of intelligent algorithms to improveadaptive neuro-fuzzy inference system performance in precipitationmodelling,” "Journal of Hydrology |
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[21] Y. K. Semero, J. Zhang, and D. Zheng, “Emd–pso–anfis-based hybrid approach for short-term load forecasting in microgrids,” IET Generation, Transmission & Distribution, vol. 14, no. 3, pp. 470–475, 2019 |
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Tiêu đề: |
Emd–pso–anfis-based hybridapproach for short-term load forecasting in microgrids,” "IET Generation,Transmission & Distribution |
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