Purpose This study aims to realize a sensorless metal object detection (MOD) using machine learning, to prevent the wireless power transfer (WPT) system from the risks of electric discharge and fire accidents caused by foreign metal objects. Design/methodology/approach The data constructed by analyzing the input impedance using the finite element method are used in machine learning. From the loci of the input impedance of systems, the trained neural network (NN), support vector machine and naive Bayes classifier judge if a metal object exists. Then the proposed method is tested by experiments too. Findings In the test using simulated data, all of the three machine learning methods show high accuracy of over 80% for detecting an aluminum cyl...
Available digital maps of indoor environments are limited to a description of the geometrical enviro...
In industry, there is a need for remote sensing and autonomous method for the identification of the ...
In this research, the authors propose a novel method to detect 34567890- based on machine learning. ...
This paper presents the machine learning-based detection of foreign metal object for the wireless po...
This study proposes a method for wireless power transfer systems to identify the existence of foreig...
The efficiency of the metal detection method using deep learning with data obtained from multiple ma...
With the rapid development of wireless power transmission technology, safety requirements during use...
Deep learning technology is generally applied to analyze periodic data, such as the data of electrom...
The intrusion of a metal object into a wireless charging system could cause safety issues, such as t...
The early detection of terrorist threat objects, such as guns and knives, through improved metal det...
The early detection of terrorist threat objects, such as guns and knives, through improved metal det...
In the paper, it is proposed to develop a machine learning based intelligent defect detection system...
Designing cutting tools for the turning industry, providing optimal cutting parameters is of importa...
The objective of my research is to propose and demonstrate Machine Learning (ML) applications of wir...
In wireline communication networks, a line impedance entanglement exists since changes of the line i...
Available digital maps of indoor environments are limited to a description of the geometrical enviro...
In industry, there is a need for remote sensing and autonomous method for the identification of the ...
In this research, the authors propose a novel method to detect 34567890- based on machine learning. ...
This paper presents the machine learning-based detection of foreign metal object for the wireless po...
This study proposes a method for wireless power transfer systems to identify the existence of foreig...
The efficiency of the metal detection method using deep learning with data obtained from multiple ma...
With the rapid development of wireless power transmission technology, safety requirements during use...
Deep learning technology is generally applied to analyze periodic data, such as the data of electrom...
The intrusion of a metal object into a wireless charging system could cause safety issues, such as t...
The early detection of terrorist threat objects, such as guns and knives, through improved metal det...
The early detection of terrorist threat objects, such as guns and knives, through improved metal det...
In the paper, it is proposed to develop a machine learning based intelligent defect detection system...
Designing cutting tools for the turning industry, providing optimal cutting parameters is of importa...
The objective of my research is to propose and demonstrate Machine Learning (ML) applications of wir...
In wireline communication networks, a line impedance entanglement exists since changes of the line i...
Available digital maps of indoor environments are limited to a description of the geometrical enviro...
In industry, there is a need for remote sensing and autonomous method for the identification of the ...
In this research, the authors propose a novel method to detect 34567890- based on machine learning. ...