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Intelligent planning and control
Predictive analytics system for the technical condition of a sinter extractor using artificial intelligence methods
A. V. Chernukhina, E. A. Bogdanovab, T. V. Savitskayaa, D. G. Kulakova, I. R. Pavlova a D. Mendeleev University of Chemical Technology of Russia, Moscow, Russia
b Lomonosov Moscow State University, Moscow, Russia
Abstract:
The article describes approaches to building a software system that allows predicting possible failures and malfunctions of industrial equipment based on data on its condition, which will significantly affect the safety of work and the effective functioning of the enterprise. For the task of predicting equipment failures, a model based on “soft voting” between three algorithms with different approaches to classification is proposed: convolutional neural network, logistic regression and the support vector method. A model based on an isolating forest algorithm and an LSTM-based neural network is proposed to predict failures. A web service has been developed that implements the main functions of a predictive analytics system based on artificial intelligence methods: monitoring the technical condition of the excavators in real time, statistical analysis of malfunctions, fault prediction and model training.
Keywords:
data mining, predictive analytics, machine learning, neural networks, industrial equipment, failures, fault prediction.
Citation:
A. V. Chernukhin, E. A. Bogdanova, T. V. Savitskaya, D. G. Kulakov, I. R. Pavlov, “Predictive analytics system for the technical condition of a sinter extractor using artificial intelligence methods”, Artificial Intelligence and Decision Making, 2024, no. 3, 87–103
Linking options:
https://www.mathnet.ru/eng/iipr600 https://www.mathnet.ru/eng/iipr/y2024/i3/p87
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| Statistics & downloads: |
| Abstract page: | 102 | | Full-text PDF : | 40 | | First page: | 20 |
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