ПОХИБКИ ПРОГНОЗУВАННЯ ЗНАЧЕННЯ ТЕМПЕРАТУРИ НЕЙРОННИМИ МЕРЕЖАМИ ЗА ІДЕАЛЬНИМ ПЕРЕХІДНИМ ПРОЦЕСОМ
Journal Title: Вимірювальна техніка та метрологія - Year 2017, Vol 1, Issue 78
Abstract
The present article describes the results of the study of the prediction error of temperature values using neural networks. In the introduction, the authors point out problems that arise (come up) during the measurement of high temperatures. The method proposed to solve these problems is neural networks application. At the very beginning the authors present a neural networks classification based on their architecture (feedforward neural networks, recurrent neural networks and completely linked neural networks were specially highlighted). Also mentioned previous researches where were made conclusions about the most relevant neural network architecture in case of temperature prediction problem using transition process. The studies described in the article are implemented in the MATLAB computing environment. An algorithm for creating and teaching neural networks was described. Sequences modeling for the neural network training, the functions using for neural network creation and studding, the formula for calculating the absolute error of temperature prediction were given. During the sequences creation, the measurement error was not taken into account, that is, the network studied on ideal sequences. The results of the study of dependence of the temperature value prediction error on the number of layers in the network, on the number of network inputs and on the number of sequences for training are presented. Investigation of the dependence of the temperature prediction error on the number of network inputs was carried out for two cases: when the time of transition process temperature measurement is the same and when the measurement time is different. In addition, the neural network was tested on sequences that coincided and did not coincide with the sequences on which the neural network studied. Each research was provided with drawings. At the end of the article the authors make conclusions about the most relevant neural network parameters (number of layers, number of inputs and the number of sequences for training neural network). Maximum temperature prediction error value was mentioned. Plans for further research were also outlined.
Authors and Affiliations
Ольга Лопатко, Ігор Микитин
ВИПРОБУВАННЯ БЕТОННИХ КУБІВ ТА ПРИЗМ З ТЕПЛОВІЗІЙНИМ СПОСТЕРЕЖЕННЯМ ЗРАЗКІВ ТА РЕЄСТРАЦІЄЮ СИГНАЛІВ АКУСТИЧНОЇ ЕМІСІЇ ПРИ РУЙНУВАННІ
The results with registration temperature in the destruction of samples and crack acoustic emission signals of the test compression of concrete cubes and prisms presented on stand. The possibility of using thermal method...
ЄМНІСНИЙ ВОЛОГОМІР
The structure of a capacitor measuring instrument of humidity capillary-porous materials in which reduction of an error of measurement from astable dielectric losses provided is developed.
ВИМІРЮВАЛЬНИЙ КОМПЛЕКС ДЛЯ КАЛІБРУВАННЯ, ПЕРЕВІРКИ І АТЕСТАЦІЇ ЗАСОБІВ ВИМІРЮВАННЯ ТЕМПЕРАТУРИ НА БАЗІ ЕТАЛОННОГО ЯДЕРНО-КВАДРУПОЛЬНОГО ТЕРМОМЕТРА ПЕРШОГО РОЗРЯДУ ЯКРТ-5М
Based on the nuclear quadrupole thermometer YAKRT-5M developed automated measuring system for calibration, inspection and certification of temperature measurement with high accuracy. It allows you to more than 10 times t...
ОПТИМІЗОВАНИЙ МЕТОД ВИМІРЮВАННЯ ПОЗИТРОННИХ АНІГІЛЯЦІЙНИХ СПЕКТРІВ У НАНОМАТЕРІАЛАХ З РОЗВИНЕНОЮ ПОРУВАТІСТЮ ДЛЯ СЕНСОРНИХ ЗАСТОСУВАНЬ
An optimized by hardware complexity method for measuring of positron annihilation lifetime spectra was proposed and used to investigation of humidity-sensitive MgO-Al2O3 ceramics with advanced nanoporosity. Positron-posi...
МЕТОД ВИМІРЮВАННЯ ЕЛЕКТРИЧНИХ ПАРАМЕТРІВ ВЕЛИКОГАБАРИТНИХ АНТЕННИХ СИСТЕМ
The method of measurement and evaluation of electrical parameters a larg antenna systems for ultra-high frequency bands is developed, that were not provided for the use of such antennas by their design. For ensure the ne...