Neural Network-based Nonlinearity Estimation of Voltage Source Inverter for Synchronous Machine Drives
동기전동기 구동용 전압원 인버터의 인공 신경망 기반 비선형성 추정
Yeongho Jeong, Kyunghwan Choi*
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  • 제어로봇시스템학회 (ICROS), 2024 published [🌐 DBpia Online] [📃 Full-Text]
    • Abstract
    • This paper investigates the concept of using a neural network (NN)-based approach for the nonlinearity estimation of voltage source inverter (VSI) in synchronous machine (SM) drives. The proposed scheme utilizes an NN with one hidden layer to model the VSI nonlinearity, accompanied by an adaptive law that ensures stability and bounded weights during the NN’s update process. Assuming known stator flux linkages, the study primarily evaluates the feasibility of applying NN for this estimation. Simulation results from a 35 kW SM drive indicate that the proposed estimator successfully tracks the actual value of the VSI nonlinearity, demonstrating its efficacy.