Time series forecasting for multidimensional telemetry data using GAN and BiLSTM in a Digital Twin
- URL: http://arxiv.org/abs/2501.08464v1
- Date: Tue, 14 Jan 2025 22:20:55 GMT
- Title: Time series forecasting for multidimensional telemetry data using GAN and BiLSTM in a Digital Twin
- Authors: Joao Carmo de Almeida Neto, Claudio Miceli de Farias, Leandro Santiago de Araujo, Leopoldo Andre Dutra Lusquino Filho,
- Abstract summary: The research related to digital twins has been increasing in recent years.
Besides the mirroring of the physical word into the digital, there is the need of providing services related to the data collected and transferred to the virtual world.
One of these services is the forecasting of physical part future behavior, that could lead to applications, like preventing harmful events or designing improvements to get better performance.
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- Abstract: The research related to digital twins has been increasing in recent years. Besides the mirroring of the physical word into the digital, there is the need of providing services related to the data collected and transferred to the virtual world. One of these services is the forecasting of physical part future behavior, that could lead to applications, like preventing harmful events or designing improvements to get better performance. One strategy used to predict any system operation it is the use of time series models like ARIMA or LSTM, and improvements were implemented using these algorithms. Recently, deep learning techniques based on generative models such as Generative Adversarial Networks (GANs) have been proposed to create time series and the use of LSTM has gained more relevance in time series forecasting, but both have limitations that restrict the forecasting results. Another issue found in the literature is the challenge of handling multivariate environments/applications in time series generation. Therefore, new methods need to be studied in order to fill these gaps and, consequently, provide better resources for creating useful digital twins. In this proposal, it is going to be studied the integration of a BiLSTM layer with a time series obtained by GAN in order to improve the forecasting of all the features provided by the dataset in terms of accuracy and, consequently, improving behaviour prediction.
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