Achieving High-Performance Dynamic Wireless Charging through Model-Free Predictive Control: Theoretical Insights and Practical Implementations
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Type
ThesisThesis type
Doctor of PhilosophyAuthor/s
Zhang, YuhanAbstract
Dynamic Wireless Charging (DWC) for Electric Vehicles (EVs) is constrained by a critical, dual-sided
control challenge. A receiver-side voltage regulation bottleneck, caused by severe disturbances,
severely hampers the transmitter's ability to achieve Maximum Energy Efficiency ...
See moreDynamic Wireless Charging (DWC) for Electric Vehicles (EVs) is constrained by a critical, dual-sided control challenge. A receiver-side voltage regulation bottleneck, caused by severe disturbances, severely hampers the transmitter's ability to achieve Maximum Energy Efficiency Tracking (MEET) on a non-monotonic landscape, especially at high speeds. This thesis develops a systematic solution using Model-Free Predictive Control (MFPC), advancing both its theory and practical implementation for DWC systems. First, a novel unified modelling framework is developed to analyze and generalize MFPC strategies. This systematic tool predicts controller behavior, expedites the design process, and reveals a new structural design criterion for enhancing performance robustness. Second, a specific MFPC controller, MFC1, is proposed for the power receiver to eliminate the voltage regulation bottleneck. Small-signal analysis and comprehensive experiments validate that MFC1’s cascaded control structure inherently enhances disturbance rejection compared to Proportional-Integral (PI) control. Finally, a multi-layered adaptive MFPC (ad-MFPC) is developed for ultra-fast MEET. It overcomes the fundamental limitations of standard MFPC for non-monotonic tasks by integrating two key innovations: an adapted Ultra-Local Model (ULM) with gradient-sign detection and a dual-factor adaptive step-size mechanism. Experimental validation demonstrates the superiority of the ad-MFPC in achieving both rapid transient and robust performance.
See less
See moreDynamic Wireless Charging (DWC) for Electric Vehicles (EVs) is constrained by a critical, dual-sided control challenge. A receiver-side voltage regulation bottleneck, caused by severe disturbances, severely hampers the transmitter's ability to achieve Maximum Energy Efficiency Tracking (MEET) on a non-monotonic landscape, especially at high speeds. This thesis develops a systematic solution using Model-Free Predictive Control (MFPC), advancing both its theory and practical implementation for DWC systems. First, a novel unified modelling framework is developed to analyze and generalize MFPC strategies. This systematic tool predicts controller behavior, expedites the design process, and reveals a new structural design criterion for enhancing performance robustness. Second, a specific MFPC controller, MFC1, is proposed for the power receiver to eliminate the voltage regulation bottleneck. Small-signal analysis and comprehensive experiments validate that MFC1’s cascaded control structure inherently enhances disturbance rejection compared to Proportional-Integral (PI) control. Finally, a multi-layered adaptive MFPC (ad-MFPC) is developed for ultra-fast MEET. It overcomes the fundamental limitations of standard MFPC for non-monotonic tasks by integrating two key innovations: an adapted Ultra-Local Model (ULM) with gradient-sign detection and a dual-factor adaptive step-size mechanism. Experimental validation demonstrates the superiority of the ad-MFPC in achieving both rapid transient and robust performance.
See less
Date
2025Rights statement
The author retains copyright of this thesis. It may only be used for the purposes of research and study. It must not be used for any other purposes and may not be transmitted or shared with others without prior permission.Faculty/School
Faculty of EngineeringAwarding institution
The University of SydneyShare