Open Access
Issue |
E3S Web Conf.
Volume 140, 2019
International Scientific Conference on Energy, Environmental and Construction Engineering (EECE-2019)
|
|
---|---|---|
Article Number | 05012 | |
Number of page(s) | 6 | |
Section | Engineering Nets and Equipment | |
DOI | https://doi.org/10.1051/e3sconf/201914005012 | |
Published online | 18 December 2019 |
- Kavalerov, B.V. Mini-power plants based on converted aircraft engines: problems of control and testing of self-propelled guns of gas turbines Vestnik Severo-Vostochnogo federal’nogo universiteta im. MK Ammosova Jakutsk: Federal’noe gosudarstvennoe avtonomnoe obrazovatel’noe uchrezhdenie vysshego professional’nogo obrazovanija Severo-Vostochnyj federal’nyj universitet im. M.K. Ammosova 8, 3, 42-49 (2011) [Google Scholar]
- Voskoboinikov, D. V. Simulation of the physical processes of the main systems of gas turbine engines with converted aviation gas turbine engines. Fundamental’nye issledovanija: Obshhestvo s ogranichennoj otvetstvennost’ju “Izdatel’skij Dom “Akademija Estestvoznanija” 2-18 3926-3930 (2015) [Google Scholar]
- A.I. Polulyakh, I.G. Lisovin, B.V. Kavalerov, A.A. Shigapov The study of the interaction of control systems of a gas turbine installation and an electric generator with automated adjustment of regulators, Vestnik Voronezhskogo gosudarstvennogo tehnicheskogo universiteta Voronezh: Voronezhskij gosudarstvennyj tehnicheskij universitet 7, 11.1, 129-132 (2011) [Google Scholar]
- D.I. Volkov, V.M. Grudinkin, V.A. Kachura, A.A. Razladsky Simulator stands and their application at various stages of the life cycle of gas turbine engine control systems, Aviacionno-kosmicheskaja tehnika i tehnologija Har’kov 9, 133-137 (2008) [Google Scholar]
- Kilin, G.A. Obtaining a nonlinear model of gas turbines based on a neural network / G.A. Kilin, I.V. Bakhirev, B.V. Kavalerov // Avtomatizacija v elektrojenergetike i elektrotehnike: Permskij nacional’nyj issledovatel’skij politehnicheskij universitet 1, 72-77 (2015) [Google Scholar]
- Kilin, G. A. Application of the genetic algorithm in the tasks of tuning and optimizing control systems for gas turbine plants / G. A. Kilin, B. V. Kavalerov, K. A. Odin // Vestnik Permskogo nacional’nogo issledovatel’skogo politehnicheskogo universiteta. Jelektrotehnika, informacionnye tehnologii, sistemy upravlenija: Permskij nacional’nyj issledovatel’skij politehnicheskij universitet 2, 7-19 (2014) [Google Scholar]
- Kilin, G. A. Obtaining a non-linear mathematical model of the system “gas turbine installation-synchronous generator” using identification / G. A. Kilin // Vestnik IzhGTU imeni MT Kalashnikova: Federal’noe gosudarstvennoe bjudzhetnoe obrazovatel’noe uchrezhdenie vysshego professional’nogo obrazovanija “Izhevskij gosudarstvennyj tehnicheskij universitet im. M.T. Kalashnikova” “ 2, 87-91 (2015) [Google Scholar]
- Haikin S. Neural networks: full course, 2nd edition. Williams Publishing House, (2008) [Google Scholar]
- Borisov VV Artificial neural networks. Theory and Practice M .: Hotline Telecom (2001) [Google Scholar]
- Lipu M. S. H., Hannan M. A., Hussain A. Feature selection and optimal neural network algorithm for the state of charge estimation of lithium-ion battery for electric vehicle application // International Journal of Renewable Energy Research 7, 4, 1701-1708 (2017) [Google Scholar]
- Lu C. H. et al. Fuzzy neural network speed estimation method for induction motor speed sensorless control // International Journal of Innovative Computing, Information and Control 11, 2, 433-446 (2015) [Google Scholar]
- Hu W. et al. Deep convolutional neural networks for hyperspectral image classification // Journal of Sensors (2015) [Google Scholar]
- B. Omarov, A. Suliman, Kushibar Face recognition using artificial neural networks in parallel architecture // Journal of Theoretical and Applied Information Technology 91, 2, 238-248 (2016) [Google Scholar]
- M. Nikoo, F. Torabian Moghadam, Ł. Sadowski, Prediction of concrete compressive strength by evolutionary artificial neural networks // Advances in Materials Science and Engineering (2015) [Google Scholar]
- S. Sladojevic et al. Deep neural networks based recognition of plant diseases by leaf image classification // Computational intelligence and neuro science (2016) [Google Scholar]
- Z. Q. Chen, C. Li, R. V. Sanchez, Gearbox fault identification and classification with convolutional neural networks // Shock and Vibration (2015) [Google Scholar]
- V. G. Spitsyn, et al. Using a Haar wavelet transform, principal component analysis and neural networks for OCR in the presence of impulse noise // Computer Optics 40, 2, 249-257 (2016) [CrossRef] [Google Scholar]
- C. M. C. Razali, et al. Estimation of building energy efficiency performance using Radial Basis Function Neural Network // International Journal of Engineering and Technology (UAE) 7, 4, 755-759 (2018) [CrossRef] [Google Scholar]
- Z. Ali, et al. Forecasting drought using multilayer perceptron artificial neural network model // Advances in Meteorology (2017) [Google Scholar]
- B. Xu, P. Zhang, Minimal-learning-parameter technique based adaptive neural sliding mode control of MEMS gyroscope // Complexity (2017) [Google Scholar]
- A. Teramoto, et al. Automated classification of lung cancer types from cytological images using deep convolutional neural networks // BioMed research international. Li W. et al. Pulmonary nodule classification with deep convolutional neural networks on computed tomography images //Computational and mathematical methods in medicine. (2016) [Google Scholar]
- D. Nagasato, et al. Deep neural network-based method for detecting central retinal vein occlusion using ultrawide-field fundus ophthalmoscopy // Journal of ophthalmology (2018) [Google Scholar]
- L. Eren, Bearing fault detection by one-dimensional convolutional neural networks // Mathematical Problems in Engineering (2017) [PubMed] [Google Scholar]
- H. Asgari, X.Q. Chen, M. B. Menhaj, R. Sainudiin Artificial neural network–based system identification for a single-shaft gas turbine Journal of Engineering for Gas Turbines and Power: American Society of Mechanical Engineers 135, 9, 0926017 (2013) [Google Scholar]
- Asgari, H. Modeling and simulation of gas turbines / H. Asgari, X.Q. Chen, R. Sainudiin // International Journal of Modeling, Identification and Control: Inderscience 20, 3, 253-270 (2013) [CrossRef] [Google Scholar]
- Vasiliev V.G. Quality criteria for automatic control systems. Tver: Tver state. tech. Univ 17 (2007) [Google Scholar]
Current usage metrics show cumulative count of Article Views (full-text article views including HTML views, PDF and ePub downloads, according to the available data) and Abstracts Views on Vision4Press platform.
Data correspond to usage on the plateform after 2015. The current usage metrics is available 48-96 hours after online publication and is updated daily on week days.
Initial download of the metrics may take a while.