Design of machine learning-based controllers for speed control of PMSM drives

Machine Learning


  • Koç, M. Integrated field-oriented control drive system for all types of PMSM, taking into account the nonlinearity of the system, IEEE AccessVol. 10, pp. 56773–56784, (2022).

  • Kolano, K. A new way to control vectors in PMSM motors, IEEE AccessVol. 11, pp. 43882–43890, (2023).

  • HPH Advanced PMSM speed control using the fuzzy PI method of Khanh, PQ&ANH, HPH hybrid power control technology. in Ain Shams Eng. journal, 1412, (2023).

  • Madichetty, S., Mishra, S. & Basu, M. New trends in electric motors and selection of electric vehicle propulsion systems; IET Elector. syst. transformer. , vol. 11, no. 3, pp. 186–199, September (2021).

  • Adaptive PID speed control design for Jung, JW, Leu, VQ, DO, TD, Kim, EK & Choi, HH permanent magnet synchronous motor drives. IEEE Transformer. Electricity electronics. 30 (2), 900–908 (February 2015).

  • Soliman, HM improves the performance characteristics of IPMSM under the effects of various loads. IET Elector. Power apple. 13 (12), pp1935–1945 (2019).

    ArticleGoogle Scholar

  • Rind, S. J., Ren, Y., Hu, Y., Wang, J. & Jiang, L. Configuration and control of traction motors for electric vehicles: a review. jaw. J. Elector. Eng. 3 (3), 1–17 (December 2017).

  • Pillay, P. & Krishnan, R. Modeling, simulation and analysis of permanent magnetic motor drives. I. Permanent magnet synchronous motor drive. in IEEE Transformer. Ind. application, twenty five,2,pp. 265–273, March to April 1989.

  • Qutubuddin, MD & Yadaiah, N. A new intelligent adaptive mechanism for sensorless control of permanent magnet synchronous motor drives. Biologically inspired cognition. architecture. twenty four47–58 (2018).

    ArticleGoogle Scholar

  • Raia, Mr, Ruba, M., Nemes, Ro & Martis, C. IEEE AccessVol. 9, pp. 102345–102354, (2021).

  • Vector controlled drive system for power assisted steering using Sorial, RR, Soliman, MH, Hasanien, HM & Talaat, Hea hea hall-effect sensors; IEEE AccessVol. 9, pp. 116485–116499, (2021).

  • Hannan, Ma et al. Switching techniques and intelligent controllers for induction motor drives: problems and recommendations, IEEE AccessVol. 6, pp. 47489–47510, (2018).

  • Qutubuddin, MD & Yadaiah, N. Modeling and implementation of brain emotional controllers for permanent magnet synchronous motor drive. Eng. Appl. artif. Intel. 60193–203 (2017).

    ArticleGoogle Scholar

  • Liu, C. &Luo, Y. An overview of advanced control strategies for electrical machines. jaw. J. Elector. Eng. 3 (2), 53–61 (September 2017).

  • Brejl, M. & Princ, M. Using PMSM Vector Controls, Freescale Semiconductor, 2012 [Online]. Available: https://www.nxp.com/docs/en/application-note/an2972.pdf Accessed: June 5th, 2022.

  • Kulkarni, P. Sensorless field oriented control of permanent magnet synchronous motors (surface and internal) for appliances using angle tracking phase lock loop estimator, Microchip Technology Inc.; [Online] (2019). Available: https://ww1.microchip.com/downloads/en/devicedoc/tb3220-sensorless-field-oriented-contol-of-pmsm-for-appliances-ds90003220a.pdf Accessed: July 16, 2024.

  • Infineon Technologies, PSOC™6 MCU using AG Sensorless Field Oriented Control (FOC), [Online]. (2022). https://www.infineon.com/dgdl/Infineon-AN235096_Sensorless_field-oriented_control_FOC_using_PSoC_6_MCU-ApplicationNotes-v01_00-EN.pdf?fileId=8ac78c8c821f280601821f2bea270000 Accessed ON: July 11, 2024.

  • NXP MCUXPRESO SDK Field Oriented Control (FOC) for Semiconductors, 3-Phase PMSM and BLDC Motors – USERGUIDE, 2023 [Online]. Available: https://www.nxp.com/docs/en/user-guide/pmsmmcxn9xxevk.pdf Accessed: July 2024.

  • Karim, A., Azam, S., Shanmugam, B., Kannoorpatti, K. &Alazab, M. IEEE AccessVol. 7, pp. 168261–168295, (2019).

  • Jaffar, F., Farid, T., Sajid, M., Ayaz, Y. & Khan, MJ MJ predicts vehicle drag in platoon configuration using machine learning; IEEE AccessVol. 8, pp. 201823–201834, (2020).

  • Morais, RM & Pedro, J. A machine learning model for estimating the transmission quality of DWDM networks; Journal of Optical Communications and NetworkingVol. 10, no. 10, pp. D84-D99, October (2018).

  • Daliya, VK, Ramesh, TK & KO, an optimized multivariate regression model for predictive analysis of SB diabetic disease progression, IEEE AccessVol. 9, pp. 99768–99780, (2021).

  • Simeone, O. A very brief introduction to machine learning using applications to communication systems, IEEE Transactions on Cognitive Communication and NetworkingVol. 4, no. 4, pp. 648–664, December (2018).

  • Dahrouj, H. Etal. An overview of machine learning-based methods for solving optimization problems in communication and signal processing IEEE AccessVol. 9, pp. 74908–74938, (2021).

  • Mahmud, K. et al. Machine learning-based PV generation forecasting at Alice Springs; IEEE AccessVol. 9, pp. 46117–46128, (2021).

  • Farsi, B., Amayri, M., Bougila, N. & Eicker, U. Short-term load prediction using machine learning technology and a new parallel deep LSTM-CNN approach. IEEE AccessVol. 9, pp. 31191–31212, (2021).

  • Méndez, M., Núñez, M. & Machine Learning Algorithms for Predicting MG and Machine Learning Algorithms: A Study. artif. Intel. Pastor 5610031–10066 (2023).

    ArticleGoogle Scholar

  • Martínez, V. & Rocha, A. Golems: A common data-driven model of oil and gas prediction based on recurrent neural networks, in IEEE AccessVol. 11, pp. 41105–41132, (2023).

  • Li, S. Etal. Neural Network Vector Controller for Persistent Magnet Synchronous Motor Drives: Simulation and Hardware Verification Results. IEEE Transformer. cybernetics. 50 (7), 3218–3230 (July 2020).

  • Zhang, S., Wallscheid, O. &Porrmann, M. Machine learning for the control and monitoring of electromechanical drives: advances and trends. IEEE open. J.Ind. Appl. 4188–214 (2023).

    ArticleGoogle Scholar

  • Bat, CB & Lerman, Massachusetts Interior Permanent Magnet Motor Drive Intelligent Speed ​​Control Using Single Untrained Artificial Neurons IEEE Transactions for Industry ApplicationsVol. 49, no. 4, pp. 1836–1843, July to August. (2013).

  • Hu, J., Peng, T., Jia, M., Yang, Y. & Guan, Y. IEEE AccessVol. 7, pp. 166493–166508, (2019).

  • Li, L. & Liu, Q. IPMSM Drive System Control Technology for Energy Consumption in Electric Vehicles, IEEE AccessVol. 7, pp. 186201–186210, (2019).

  • Gutiérrez-Gómez, L., Petry, F. & Khadraoui, D. Comparative framework for machine learning algorithms for mixed variable datasets: case studies on tire performance prediction; IEEE AccessVol. 8, pp. 214902–214914, (2020).

  • Performance comparison of machine learning algorithms for load prediction in Alquthami, T., Zulfiqar, M., Kamran, M., Milyani, Ah & Rasheed, MB Smart Grid, and In Smart Grid IEEE AccessVol. 10, pp. 48419–48433, (2022).

  • Pirbazari, Am, Sharma, E., Chakravorty, A., Elmenreich, W. & Rong, C. IEEE AccessVol. 9, pp. 36218–36240, (2021).

  • Zhang, C., Zhang, H. & Hu, X. IEEE AccessVol. 7, pp. 106307–106315, (2019).

  • Shalev-Shwartz, S. & Ben-David, S. Understanding Machine Learning: From theory to algorithms (Cambridge University Press, 2014).

  • Naz, F. Etal. Deep learning of urban air pollutants prediction and comparative analysis of statistical models; IEEE AccessVol. 11, pp. 64016–64025, (2023).

  • Ahmadi, A. Etal. Long-term wind power generation using tree-based learning algorithms, in IEEE AccessVol. 8, pp. 151511–151522, (2020).

  • Jawad, M. Etal. Using weather parameters for machine learning-based cost-effective power load prediction model correlations, IEEE AccessVol. 8, pp. 146847–146864, (2020).

  • Bao, Y., Xiong, T. & Hu, Z. Neural calculationsVol. 129, pp. 482–493, (2014).

  • Duan, J. & Kashima, H. IEEE AccessVol. 9, pp. 49372–49386, (2021).

  • Lemke, C. & Gabrys, B. Meta-learning for time series prediction and prediction combination; Neural calculationsVol. 73, pp. 2006–2016, (2010).

  • Asthana, P., Mishra, S., Gupta, N., DeRawi, M. & Kumar, A. IEEE AccessVol. 11, pp. 72732–72742, (2023).

  • Varoquaux, G. & Colliot, O. Evaluating machine learning models and their diagnostic value. Mach. learn. Brain disorder nerve measurement. 197601–630 (2023).

    Article CAS Google Scholar

  • Li, T., Sun, X., Yang, Z. &Lei, G. in IEEE Transformer. Industrial Electronicshttps://doi.org/10.1109/tie.2024.3447757

  • Machine learning technology for vector control of Tom, Am & Febin daya, JL machine synchronous motor drives. Cogent Engineering, 111, (2024).



  • Source link

    Leave a Reply

    Your email address will not be published. Required fields are marked *