1. An Offline Parameter Self-Learning Method Considering Inverter Nonlinearity With Zero-Axis Voltage
- Author
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Gaolin Wang, Dianguo Xu, Zhixue Chen, Nannan Zhao, Shouhua Zhao, Wang Qiwei, and Guoqiang Zhang
- Subjects
Inductance ,Nonlinear system ,Polynomial ,Rotor (electric) ,law ,Control theory ,Computer science ,Inverter ,Electrical and Electronic Engineering ,Finite element method ,Voltage drop ,law.invention ,Voltage - Abstract
In the voltage source inverter applications, inverter nonlinearities would affect the parameter identification process in many ways. Hence, this article proposes an offline identification method for resistance and dq -axis inductance surface by considering the inverter nonlinearity characteristics. A variable amplitude square-wave injection (VASI) scheme is proposed for the dq -axis inductance identification. The VASI method achieves the inductance identification with a novel data sampling strategy. Meanwhile, it can also establish the inductance surfaces by only a few identified data points with a polynomial fitting algorithm, which greatly reduces the identification time compared with the existing methods. The resistance identification is realized by a slope signal injection method, in which the effect of IGBT voltage drop is analyzed. In order to improve the identification accuracy, the inverter nonlinearities are compensated by a self-learning method considering the zero-axis voltage at different rotor positions. At the same time, the sampling error in zero current zones of abc-phases is researched. In order to verify the effectiveness and generality, the proposed method is carried out on two different test machines and confirmed by finite element analysis.
- Published
- 2021
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