Journal
IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS
Volume 70, Issue 12, Pages 12113-12123Publisher
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIE.2023.3237895
Keywords
Interior permanent magnet synchronous machines motor (IPMSM); look-up table; maximum torque per ampere (MTPA); maximum torque per volt (MTPV); regularization theory; torque tracking
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With the rapid growth of interior permanent magnet synchronous machines in electric vehicle applications, a fast and efficient method is proposed in this article to generate torque tracking look-up tables. The method is based on machine learning regularization theory and uses L1/L2 regularization to establish a data-driven torque tracking model. Experimental results show that the proposed method can achieve the same accuracy as classical methods with reduced test points and testing time.
With the rapid growth of interior permanent magnet synchronous machines in electric vehicle applications, there is a need to generate torque tracking look-up tables that can both track the torque command and implement maximum torque per ampere (MTPA)/maximum torque per volt (MTPV). So far, most torque tracking methods require a large amount of test points, giving rise to long test time and workloads. This article proposes a fast torque tracking MTPA/MTPV look-up table generating method to improve the efficiency. The proposed method is based on a machine learning regularization theory, using an L1/L2 regularization to establish a data-driven torque tracking model. Then, a Lagrange dual principle is introduced to solve the unknown parameters, so that the look-up tables of optimal dq-axis currents are yielded by a global optimization solver. Experimental results show that the proposed method can generate the look-up tables with the same accuracy as classical methods, but requires less test points and testing time. As a result, the testing work loads are reduced, as the time cost is only 10%-15% of the classical methods.
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