Asynchronous Fuzzy Cognitive Networks Modeling and Control for Goethite Iron Precipitation Process (original) (raw)
References
Deng Y G, Chen Q Y, Yin Z L, et al., Iron removal from zine leaching solution by goethite method, Non-Ferrous Metal, 2010, 62(33): 80–84. Google Scholar
Luo C Y, Application practice of iron removal technology of goethite in Danxia smelter, Non-Ferrous Metal Engineering, 2011, 3(1): 44–46. MathSciNet Google Scholar
Li D B and Jiang J M, Present situation and development trend of zinc smelting technology at home and abroad, China Metal Bulletin, 2015, (6): 41–44.
Chen N, Yang S, Peng J J, et al., Fuzzy cognitive network control of goethite process, Proceddings of 35th Chinese Control Conference, Chengdu, 2016, 325–330.
Chen N, Dai J Y, Zhou X J, et al., Distributed model predictive control of iron precipitation process by goethite based on dual iterative method, International Journal of Control Automation and Systems, 2019, 17(5): 1233–1245. Article Google Scholar
Chen N, Dai J Y, Gui W H, et al., A hybrid prediction model with a selectively updating strategy for iron removal process in zinc hydrometallurgy, Science China Information Sciences, 2020, 63(1): 119205. Article Google Scholar
Kosko B, Fuzzy cognitive maps, International Journal of Man Machine Studie, 1986, 24(1): 65–75. ArticleMATH Google Scholar
Solanagutierrez J, Rincon G, Alonso C, et al., Using fuzzy cognitive maps for predicting river managementresponses: A case study of the Esla River basin, Spain, Ecological Modelling, 2017, (360): 260–269.
Marchal P C, Garca J G, and Ortega J G, Application of fuzzy cognitive maps and run-to-run control to a decision support system for global set-point determination, IEEE Transactions on Systems Man & Cybernetics Systems, 2017, 47(8): 2256–2267. Article Google Scholar
Mourhir A, Papageorgiou E, Kokkinos K, et al., Exploring precision farming scenarios using fuzzy cognitive maps, Sustainability, 2017, 9(7): 1241–1264. Article Google Scholar
Albe S, Neural networks and fuzzy systems, Journal of the Acoustical Society of America, 1992, 103(6): 49–71. Google Scholar
Stylios C D and Groumpos P P, Fuzzy cognitive maps: A soft computing technique for intelligent control, Proc. International Symposium on Intelligent Control Patas, 2000, 97–102.
Papageorgiou E I, Yield prediction in apples using fuzzy cognitive map learning approach, Computers and Electronics, 2013, 91(2): 19–29. Article Google Scholar
Stylios C D and Groumpos P P, Modeling complex systems using fuzzy cognitive maps, IEEE Transactions on Systems, Man, and Cybernetics-Part A: Systems and Humans, 2004, 34(1): 155–162. Article Google Scholar
Stylios C D and Groumpos P P, Fuzzy cognitive maps in modeling supervisory control systems, Journal of Intelligent and Fuzzy Systems, 2000, 8(2): 83–98. MATH Google Scholar
Park K S and Kim S H, Fuzzy cognitive maps considering time relationships, International Journal of Human-Computer Studies, 1995, 42(2): 157–168. Article Google Scholar
Zhang W, Liu L, and Zhu Y, Using fuzzy cognitive time maps for modeling and evaluating trust dynamics in the virtual enterprises, Exper System with Applications, 2008, 35(4): 1583–1592. Article Google Scholar
Kottas T L, Boutalis Y S, and Christodoulou M A, Fuzzy cognitive networks: A general framework, Intelligent Decision Technologies, 2007, 1(4): 183–196. Article Google Scholar
Zhang J, Liu Z Q, and Zhou S, Dynamic domination in fuaay causal networks, IEEE Translations on Fuzzy Systems, 2006, 14(1): 42–57. Article Google Scholar
Liu Z Q and Zhang J Y, Interroating the structure of fuzzy cognitive maps, Soft Computing, 2003, 7(3): 148–153. Article Google Scholar
Kottas T, Stimoniaris D, Tsiamitros D, et al., New operation scheme and control of smart grids using fuzzy cognitive networks, Power Tech., 2015 IEEE Eindhoven, 2015, 151: 1–5. Google Scholar
Kheirandish A, Motlagh F, Shafiabady N, et al., Dynamic fuzzy cognitive network approach for modelling and control of PEM fuel cell for power electric bicycle system, Applied Energy, 2017, 202(9): 20–31. Article Google Scholar
Kottas T L, Boutalis Y S, and Christodoulou M A, Fuzzy Cognitive Networks: Adaptive Network Estimation and Control Paradigms, Springer, Berlin Heidelberg, 2010, 247: 89–134. Book Google Scholar
Papageorgiou E, Stylios C D, and Groumpos P P, Fuzzy cognitive map learning based on nonlinear Hebbian rule, Proc. Aust. Conf. Artif. Intell., 2003, 256–268.
Lindsay G W, Rigotti M, Warden M R, et al., Hebbian learning in a random network captures selectivity properties of prefrontal cortex, Journal of Neuroscience, 2017, 37(45): 1222–1217. Article Google Scholar
Born J, Galeazzi J M, and Stringe S M, Hebbian learning of hand-centred representations in a hierarchical neural network model of the primate visual system, Plos One, 2017, 12(5): e0178304. Article Google Scholar
Zenke F, Gerstner W, and Ganguli S, The temporal paradox of Hebbian learning and homeostatic plasticity, Current Opinion in Neurobiology, 2017, 43: 166–176. Article Google Scholar
Papageorgiou E, Stylios C D, and Groumpos P P, Active Hebbian learning algorithm to train fuzzy cognitive maps, Int. J. Approx. Reason, 2004, 37(3): 219–249. ArticleMathSciNetMATH Google Scholar
Chen N, Wang L, Peng J J, et al., Improved nonlinear Hebbian learning algorithm based on fuzzy cognitive networks model, Control Theory and Applications, 2017, 33(10): 1273–1280 (in Chinese). MATH Google Scholar
Wu K and Liu J, Robust learning of large-scale fuzzy cognitive maps via the lasso from noisy time series, Knowledge-Based Systems, 2016, 113(12): 23–38. Article Google Scholar
Natarajan R, Subramanian J, and Papageorgiou E I, Hybrid learning of fuzzy cognitive maps for sugarcane yield classification, Computers & Electronics in Agriculture, 2016, 127(9): 147–157. Article Google Scholar
Chen N, Peng J J, Wang L, et al., Fuzzy grey cognitive networks modeling and its application, Acta Automatica Sinica, 2018, 44(7): 1227–1236 (in Chinese). MATH Google Scholar
Chen N, Zhou J Q, Peng J J, et al., Modeling of goethite iron precipitation process based on time-delay fuzzy gray cognitive network, Journal of Central South University, 2019, 26(1): 63–74. Article Google Scholar
Boutalis Y and Christocloulou M, Adaptive estimation of fuzzy cognitive maps with proven stability and parameter convergence, IEEE Transactions on Fuzzy Systems, 2009, 17(4): 874–889. Article Google Scholar