Keywords: artificial intelligence, time series, artificial neural network, emergency, neural network architecture, convolutional neural networks, direct propagation neural networks, recurrent neural networks
Modeling of artificial intelligence system for early detection of emergency situations at vital facilities
UDC 004.8
DOI: 10.26102/2310-6018/2022.38.3.001
The article presents the results of modeling an artificial intelligence system for early detection of undesirable situations of various types at objects of particular national economic importance. Pipeline transport or any other production system, in which continuous monitoring of operability parameters of critical components and mechanisms is carried out, can be specified as such object. This model can be applied by various oil and gas production companies. The results of modeling and subsequent development of the information system will provide the basis for industrial implementation of highly effective systems of accident detection and prevention in reliance on neural network analysis of continuously received streaming data. As a part of this research, the possibility of using modern neural network architectures for the problem under consideration is examined, namely, convolutional neural networks – TCN, direct propagation neural networks – MLP, recurrent neural networks – LSTM. It was proposed to abandon the activation function for LSTM which helps to provide the neural network with "long-term memory" of stored values, which is crucial to this problem. In addition, a cross-comparison of the error reduction rate during network training was performed to detect an architecture capable of "self-learning". All models were tested with the aid of the training data from the "Vostochny kupol" wells. Acceptable coincidence of test and extrapolation data was obtained for all models.
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Keywords: artificial intelligence, time series, artificial neural network, emergency, neural network architecture, convolutional neural networks, direct propagation neural networks, recurrent neural networks
For citation: Borovskoy I.G., Shelmina E.A., Afanasyeva I.G., Matolygin A.A. Modeling of artificial intelligence system for early detection of emergency situations at vital facilities. Modeling, Optimization and Information Technology. 2022;10(3). URL: https://moitvivt.ru/ru/journal/pdf?id=1197 DOI: 10.26102/2310-6018/2022.38.3.001 (In Russ).
Received 27.05.2022
Revised 28.06.2022
Accepted 13.07.2022
Published 30.09.2022