Abstract
Classification is one of the most common methods of supervised learning, which is divided into a process of data acquisition, data mining, feature analysis, machine learning algorithm selection, model learning and validation, as well as prediction of the result, which was done in the current work. The data that were analyzed concerned ionizing radiation signals generated by partial discharges, recorded by a method using the phenomenon of scintillation. It was decided to check if the data could be classified and if it was possible to determine the defect of an electrical power device. It was possible to find out which classifier (algorithm) worked best for the task, and that the data obtained can be classified, as well as that it is possible to determine the defect. In addition, it was possible to check what effect changing the default values of the classifier’s parameters has on the effectiveness of classification.
Funder
National Science Centre Poland
Subject
Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction
Reference21 articles.
1. A Brief History of Artificial Intelligence: On the Past, Present, and Future of Artificial Intelligence;Haenlein;Calif. Manag. Rev.,2019
2. Artificial Intelligence, Machine Learning and Health Systems;Panch;J. Glob. Health,2018
3. Classification, Ontology, and Precision Medicine;Haendel;N. Engl. J. Med.,2018
4. Deep Learning for Cardiovascularmedicine: A Practical Primer;Krittanawong;Eur. Heart J.,2019
5. Artificial Intelligence with Multi-Functional Machine Learning Platform Development for Better Healthcare and Precision Medicine;Ahmed;Database,2020