[1] |
PAN Z B, DONG F, ZHAO JW, et al. Combined resonant controller and two-degree-of-freedom PID controller for PMSLM current harmonics suppression [J]. IEEE Transactions on Industrial Electronics, 2018, 65(9): 7558-7568.
|
[2] |
BHATTI S A, MALIK E S A, DARAZ A. Comparison of P-I and I-P controller by using Ziegler- Nichols tuning method for speed control of DC motor [C]//International Conference on Intelligent Systems Engineering (ICISE). Islamabad, Pakistan: IEEE, 2016: 330-334.
|
[3] |
URBANUCCI L, TESTI D, BRUNO J C. An operational optimization method for a complex polygeneration plant based on real-time measurements [J]. Energy Conversion and Management, 2018, 170: 50-61.
|
[4] |
HAZZA A H, MASHOR M Y, MAHDI M C. Performance of manual and auto-tuning PID controller for unstable plant-nano satellite attitude control system [C]//The 6th International Conference on Cyber and IT Service Management (CITSM 2018). Parapat, Indonesia: IEEE, 2018: 1-5.
|
[5] |
SONKAR P, RAHI O P. Tuning of modified PID load frequency controller for interconnected system with wind power plant via IMC tuning method [C]//2017 4th IEEE Uttar Pradesh Section International Conference on Electrical, Computer and Electronics (UPCON). Mathura: IEEE, 2017: 512-517.
|
[6] |
GRUDIN J, CARROLL J M. From tool to partner: The evolution of human-computer interaction [M]. San Rafael, USA: Morgan & Claypool, 2017.
|
[7] |
YANG S, GUAN Y P. Audio-visual perception-based multimodal HCI [J]. Journal of Engineering, 2018, 2018(4): 190-198.
|
[8] |
WANG R, LAI S M, WU G H, et al. Multi-clustering via evolutionary multi-objective optimization [J]. Information Sciences, 2018, 450: 128-140.
|
[9] |
REYNOSO-MEZA G, BLASCO X, SANCHIS J, et al. Controller tuning using evolutionary multi-objective optimization: Current trends and applications [J]. Control Engineering Practice, 2014, 28: 58-73.
|
[10] |
ANTONIO L M, COELLO C A C. Coevolutionary multi-objective evolutionary algorithms: A survey of the state-of-the-art [J]. IEEE Transactions on Evolutionary Computation, 2018, 22(6): 851-865. [11] TRIVEDI A, SRINIVASAN D, SANYAL K, et al. A survey of multiobjective evolutionary algorithms based on decomposition [J]. IEEE Transactions on Evolutionary Computation, 2017, 21(3): 440-462.
|
[12] |
L′OPEZ-IB′A ?NEZ M, KNOWLES J. Machine decision makers as a laboratory for interactive EMO [M]//Evolutionary multi-criterion optimization. Berlin, Germany: Springer International Publishing, 2015: 1-15.
|
[13] |
YUAN Y, XU H,WANG B, et al. A new dominance relation based evolutionary algorithm for many-objective optimization [J]. IEEE Transactions on Evolutionary Computation, 2016, 20(1): 16-37.
|
[14] |
CELSI L R, DI GIORGIO A, GAMBUTI R, et al. On the many-to-many carpooling problem in the context of multi-modal trip planning [C]//2017 25th Mediterranean Conference on Control and Automation (MED). Valletta, Malta: IEEE, 2017: 303-309.
|
[15] |
DI GIORGIO A, GIUSEPPI A, LIBERALI F, et al. On the optimization of energy storage system placement for protecting power transmission grids against dynamic load altering attacks [C]//2017 25th Mediterranean Conference on Control and Automation (MED). Valletta, Malta: IEEE, 2017: 986-992.
|
[16] |
ANDREA C, GIOVANNI F, MASSIMO R. Novel preconditioners based on quasi-Newton updates for nonlinear conjugate gradient methods [J]. Optimization Letters, 2017, 11: 835-853.
|
[17] |
FASANO G, ANDREA C, ROMA M. Preconditioning strategies for nonlinear conjugate gradient methods, based on quasi-Newton updates [J]. AIP Conference Proceedings, 2016, 1776(1): 090007.
|
[18] |
GARG H, SHARMA S P. Multi-objective reliabilityredundancy allocation problem using particle swarm optimization [J]. Computers & Industrial Engineering, 2013, 64(1): 247-255.
|
[19] |
GARG H. Multi-objective optimization problem of system reliability under intuitionistic fuzzy set environment using Cuckoo search algorithm [J]. Journal of Intelligent and Fuzzy Systems, 2015, 29(4): 1653-1669.
|
[20] |
GARG H, RANI M, SHARMA S P, et al. Intuitionistic fuzzy optimization technique for solving multiobjective reliability optimization problems in interval environment [J]. Expert Systems with Applications, 2014, 41(7): 3157-3167.
|
[21] |
PICARD R W. Affective computing [R]. Cambridge, MA, USA: MIT Media Laboratory, 1997.
|
[22] |
PORIA S, CAMBRIA E, BAJPAI R, et al. A review of affective computing: From unimodal analysis to multimodal fusion [J]. Information Fusion, 2017, 37: 98- 125.
|
[23] |
ORTONY A, CLORE G, COLLINS A. The Cognitive Structure of Emotions [M]. Cambridge, UK: Cambridge University Press, 1988.
|
[24] |
KELTNER D, SAUTER D, TRACY J, et al. Emotional expression: Advances in basic emotion theory [J]. Journal of Nonverbal Behavior, 2019, 43: 133-160.
|
[25] |
KORCSOK B, KONOK V, PERSA G, et al. Biologically inspired emotional expressions for artificial agents [J]. Frontiers in Psychology, 2018, 9: 1191.
|
[26] |
DEVI N, EASWARAKUMAR K S. A clinical evaluation of human computer interaction using multi modal fusion techniques [J]. Journal of Medical Imaging and Health Informatics, 2017, 7(8): 1759-1766.
|
[27] |
ETZIONI A. Normative-affective factors: Toward a new decision-making model [J]. Journal of Economic Psychology, 1988, 9(2): 125-150.
|
[28] |
JUVINA I, LARUE O, HOUGH A. Modeling valuation and core affect in a cognitive architecture: The impact of valence and arousal on memory and decision-making [J]. Cognitive Systems Research, 2018, 48: 4-24.
|
[29] |
KSHIRSAGAR S. A multilayer personality model [C]//Proceedings of International Symposium on Smart Graphics. Hawthorne, NY, USA: ACM, 2002: 107-115.
|
[30] |
MCCRAE K R, JOHN O P. An introduction to the five-factor model and its applications [J]. Journal of Personality, 1992, 60(2): 175-215.
|
[31] |
MEHRABIAN A. Analysis of the big-five personality factors in terms of the pad temperament model [J]. Australian Journal of Psychology, 1996, 48(2): 86-92.
|
[32] |
MEHRABIAN A. Pleasure-arousal-dominance: A general framework for describing and measuring individual differences in Temperament [J]. Current Psychology, 1996, 14(4): 261-292.
|
[33] |
SU C, LI H G. An affective learning agent with Petri-net-based implementation [J]. Applied Intelligence, 2012, 37(4): 569-585.
|
[34] |
CORRIOU J P. Process control: Theory and applications [M]. 2nd ed. Cham, Switzerland: Springer, 2018.
|
[35] |
XIONG Q, CAI W J, HE M J. Equivalent transfer function method for PI/PID controller design of MIMO processes [J]. Journal of Process Control, 2007, 17(8): 665-673.
|
[36] |
WANG ZW, ZHU P, LIU Z. Relationships between the decoupled and coupled transfer functions: Theoretical studies and experimental validation [J]. Mechanical Systems and Signal Processing, 2018, 98: 936-950
|
[37] |
CHEN J, HE Z F, QI X. A new control method for MIMO first order time delay non-square systems [J]. Journal of Process Control, 2011, 21(4): 538-546.
|
[38] |
CARRILLO-URETA G E, ROBERTS P D, BECERRA V M. Genetic algorithms for optimal control of beer fermentation [C]//Proceedings of the 2001 IEEE International Symposium on Intelligent Control. Mexico City, Mexico: IEEE, 2001: 391-395.
|
[39] |
BRINTRUP A, RAMSDEN J, TIWARI A. A review on design optimization with interactive evolutionary computation [M]//Applications of soft computing. Berlin, Germany: Springer, 2006: 111-120.
|
[40] |
TSYGANOK V V, KADENKO S V, ANDRIICHUK O V. Significance of expert competence consideration in group decision making using AHP [J]. International Journal of Production Research, 2012, 50(17): 4785- 4792.
|