Stabilization of industrial processes with time series machine learning
Matvei Anoshin, Olga Tsurkan, Vadim Lopatkin, Leonid Fedichkin
- Year
- 2025
- Access
- Open access
Abstract
The stabilization of time series processes is a crucial problem that is ubiquitous in various industrial fields. The application of machine learning to its solution can have a decisive impact, improving both the quality of the resulting stabilization with less computational resources required. In this work, we present a simple pipeline consisting of two neural networks: the oracle predictor and the optimizer, proposing a substitution of the point-wise values optimization to the problem of the neural network training, which successfully improves stability in terms of the temperature control by about 3 times compared to ordinary solvers.
Keywords
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