Recovery of Incomplete IoT Sensed Data using High-Performance Extended-Input Neural-Like Structure

Author(s)
Ivan Izonin, Roman Tkachenko, Natalia Kryvinska, Khrystyna Zub, Oleksandra Mishchuk, Taras Lisovych
Abstract

The task of the recovery of incomplete IoT sensed data is considered. A high-performance extended-input neural network, which is constructed using a non-iterative neural-like structure and a Wiener polynomial for its solution, has been applied. Modelling of its work on the data collected by the IoT device was conducted. The research of hyperparameters selection of the proposed technique for missed data recovery was carried out. The number of neurons in the ANN’s hidden layer and the polynomial degree for the effective method operation were selected by experimental way. It is established the significant reduction of the training time as well as the accuracy increase by reducing the ANN’s hidden neurons number. A comparison of the proposed technique effectiveness with the state-of-the-art has been carried out. The highest accuracy of its work is established in comparison with existing methods. The training time of the proposed technique was determined and compared with existing methods.

Organisation(s)
Department of Marketing and International Business
External organisation(s)
Lviv Polytechnic National University
Journal
Procedia Computer Science
Volume
160
Pages
521-526
No. of pages
6
ISSN
1877-0509
DOI
https://doi.org/10.1016/j.procs.2019.11.054
Publication date
2019
Peer reviewed
Yes
Austrian Fields of Science 2012
502050 Business informatics
Keywords
ASJC Scopus subject areas
General Computer Science
Portal url
https://ucrisportal.univie.ac.at/en/publications/0f4fcfcb-72eb-4c60-8569-a2506bc62bf2