Abstract
The permanent magnet synchronous motor (PMSM) is the heart of the electric drive system in electric vehicle technology. The effects of load variation and motor parameter changes are the important key challenges, which deteriorate the dynamic performances of interior PMSM (IPMSM) drives. To overcome these issues, this study suggests the development of an efficient new control drive system by integrating the Model Reference Adaptive Control (MRAC) with a fuzzy logic controller (FLC) using a finite-element model optimized motor model. The proposed cascaded system comprises two loops: a main outer loop that runs MRAC to mitigate the effects of load variation, and a secondary inner loop with FLC for resilient performance against parametric fluctuations of the IPMSM drive system. The proposed controller uses the hybrid space vector pulse width modulation technique to regulate the switching components of the inverter. It also reduces total harmonic distortion (THD) and torque ripple during the startup of the motor. The overall examination of the PMSM drive system is accomplished by co-simulation using MATLAB and Simcenter MAGNET software. The simulated results demonstrate the superiority of the proposed fuzzy adaptive controller in terms of higher maximum torque and improved speed tracking accuracy. A prototype of the proposed PMSM is developed and validated by experiment, which shows the robustness of the proposed methodology against load and speed fluctuations by reducing THD and torque ripples.
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Ogbuka, C., Nwosu, M., Agu, M.: Dynamic and steady state performance comparison of line-start permanent magnet synchronous motors with interior and surface rotor magnets. Arch. Electr. Eng. 65(1), 105–116 (2016)
Kanuch, J., Girovsky, P.: Analysis of the PM motor with external rotor for direct drive of electric wheelchair. Commun. Sci. Lett. Univ. Zilina Komunikacie 21(1), 66–71 (2019)
Li, G.J., Ren, B., and Zhu, Z.Q.: Cogging torque and torque ripple reduction of modular permanent magnet machines. International Conference on Electrical Machines (ICEM), IEEE, Lausanne, pp. 193–199 (2016)
Mustafa, Y., Bdewi, A., Mohammed, M., Ezzaldean, M.M.: Design and performance analysis of permanent magnet synchronous motor for electric vehicles application. Eng. Technol. J. 39(3A), 394–406 (2021)
Wu, Z., Zuo, S., and Chen, S.: Accurate Modeling of PMSM Considering Orthotropic Material Parameters of Stator System for Vibro-acoustic Prediction. SAE Technical Paper 2022-01-0725, (2022).
Liu G., Dong. B., Chen L., Zhao W.: A new model reference adaptive control of PMSM using neural network generalized inverse. Proceedings of the 8th international conference on Advances in neural networks, Vol. 3, pp. 58–67. Springer, Switcherland (2011)
Qu, Z., Ye, Z.: Speed regulation of a permanent magnet synchronous motor via model reference adaptive control. Adv. Mater. Res. 268–270, 513–516 (2011)
Sharaf, B.S.M., Hogg, B.W., Abdalla, O.H., El-Sayed, M.L.: Multi-variable adaptive controller for a turbogenerator. Proc. IEEE 133(2), 83–89 (1986)
Sharaf, B.S.M., Hogg, B.W., Abdalla, O.H.: Real-time adaptive controllers for a turbine generator. Int. J. Control 50(2), 603–626 (1989)
Uma Maheswara Rao, C., Krishna, B.M., Soundarya, A.L., Kumari, N.K.: Field oriented control of PMSM with model reference adaptive control using Fuzzy-PI controller. Int. J. Circuit Theor. Appl. 8(1), 96–108 (2015)
SaiKumar, P., SivaKumar, J.S.V.: Model reference adaptive controlled application to the vector controlled permanent magnet synchronous motor drive. Int. J. Power Syst. Oper. Energy Manag. 1(1), 10 (2012)
Li, X., Li, S.: Speed control for a PMSM servo system using model reference adaptive control and an extended state observer. J. Power Electron. 14(3), 549–563. (2014)
Huang, Y., Xu, Y., Zhang, W., Zou, J.: Hybrid RPWM technique based on modified SVPWM to reduce the PWM acoustic noise. IEEE Trans. Power Electron. 99, 1–9 (2018)
Bhattacharya S., Mascarella D., Joos G., Moschopoulos G., Reduced Switching Random PWM Technique for Two-Level Inverters. 2015 IEEE Energy Conversion Congress and Exposition (ECCE). pp. 695–702. IEEE, Montreal, QC, Canada (2015).
Muthukumar, P., Melba Mary, P., Jeevananthan, S.: An improved hybrid space vector PWM technique for IM drives. Circuits Syst. 7, 2120–2131 (2016)
Du, R., Liu, Q., Bu, F., Qin, H.: Hybrid Random SVPWM Strategy for High Order Harmonics Suppression of Permanent Magnet Synchronous Motor Servo Drive System. 24th International Conference on Electrical Machines and Systems (ICEMS). pp. 1928–1932. IEEE, Gyeongju, Korea, Republic of Korea (2021)
Boopathi, R., Jayanthi, R., Ansari, M.M.T.: Power quality improvement in wind energy conversion system using hybrid SVPWM inverter control technique for THD reduction. Int. J. Dyn. Control 8, 592–603 (2020)
Fitouri, M., Bensalem, Y., Abdelkrim, M.N.: Modeling and detection of the short-circuit fault in PMSM using finite element analysis. IFAC Pap. OnLine 49(12), 1418–1423 (2016)
You, Y.-M.: Optimal design of PMSM based on automated finite element analysis and metamodeling. Energies 12(24), 4673 (2020)
Oksuztepe, E., Omac, Z., Polat, M., Celik, H., Selcuk, A.H., Kurum, H.: Sensorless field oriented control of non-sinusoidal flux-distribution permanent magnet synchronous motor with a FEM based ANN observer. Turk. J. Electr. Eng. Comput. Sci. 24(4), 67 (2016)
Suryakant, M.S., Singh, M.: Improved ANFIS based MRAC observer for sensor-less control of PMSM. J. Intell. Fuzzy Syst. 42, 1061–1073 (2022)
Mersha, T.K., Du, C.: Co-simulation and modeling of PMSM based on ansys software and simulink for EVs. World Electr. Veh. J. 4, 1–13 (2022)
Sheela, A., Atshaya, M., Revathi, S., Jeyapaul Singh, N.: Investigation on PMSM for electric vehicle applications using co-simulation of MATLAB and magnet software. IOP Conf. Ser. 1055, 012138 (2021)
Iqbal, A., Abu-Rub, H., Nounou, H.: Adaptive fuzzy logic controlled surface mount permanent magnet synchronous motor drive. Syst. Sci. Control Eng. 2(1), 465–475 (2014)
Qiu, G., Jiang, K., Shengyou, Xu., Yang, X., Wang, W.: Modeling and analysis of the characteristics of SiC MOSFET. IOP Publ. J. Phys. 2125, 1–7 (2021)
Ding, X., Min, D., Guo, T.Z.H., Zhang, C.: Comprehensive comparison between silicon carbide MOSFETs and silicon IGBTs based traction systems for electric vehicles. Appl. Energy (2016). https://doi.org/10.1016/j.apenergy.2016.05.059
Ding, X., Chen, F., Min, D., Guo, H., Ren, S.: Effects of silicon carbide MOSFETs on the efficiency and power quality of a micro-grid connected inverter. Appl. Energy 201, 270–283 (2016)
Acknowledgements
This work was supported by the Department of Science & Technology, Government of India for funding the Research Infrastructure under the Scheme entitled “Funds for the Improvement of S&T Infrastructure (DST-FIST)” with Ref. No. SR/FST/College–110/2017.
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Suganthi, S., Karpagam, R. Dynamic performance improvement of PMSM drive using fuzzy-based adaptive control strategy for EV applications. J. Power Electron. 23, 510–521 (2023). https://doi.org/10.1007/s43236-023-00594-3
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DOI: https://doi.org/10.1007/s43236-023-00594-3