Litcius/Paper detail

Machine Learning Assisted Characteristics Prediction for Wireless Power Transfer Systems

Shamsul Arefeen Al Mahmud, Prasad Jayathurathnage, Sergei Tretyakov

2022IEEE Access25 citationsDOIOpen Access PDF

Abstract

One of the main challenges in wireless power transfer (WPT) devices is performance degradation when the receiver’s position and characteristics vary. Therefore, the load resistance and receiver position must be monitored to ensure proper optimization of power transfer. This study proposes a machine learning (ML) assisted method that estimates the power delivered to the receiver by only using measurements at the transmitter side. Based on the delivered power estimation, we also propose a method to identify if the system efficiency is too low, so that the transmitter should be turned off. This activation control method can be useful in multi-transmitter WPT systems. In addition, we propose an ML method to estimate the load resistance and the coupling coefficient. Using the proposed method, the characteristics of an inductor-capacitor-capacitor (LCC)-Series tuned WPT system are successfully predicted only using the measured root-mean-square and the harmonic contents of the input current. The proposed approach is experimentally validated using a laboratory prototype.

Topics & Concepts

TransmitterWireless power transferCapacitorComputer scienceMaximum power transfer theoremPower (physics)InductorAC powerCoupling coefficient of resonatorsElectronic engineeringControl theory (sociology)WirelessElectrical engineeringEngineeringVoltageTelecommunicationsChannel (broadcasting)Control (management)Artificial intelligenceQuantum mechanicsPhysicsResonatorWireless Power Transfer SystemsEnergy Harvesting in Wireless NetworksAdvanced Battery Technologies Research