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A Long-term Probabilistic Forecasting Approach of TBM Operating Parameters based on Deep Learning

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Long-term-Probabilistic-Forecasting-of-TBM-Operating-Parameters

A Long-term Probabilistic Forecasting Approach of TBM Operating Parameters based on Deep Learning

The work was presented in the the 4th International Conference on Information Technology in Geo-Engineering (4ICITG). The presentation video can be found here and the slides can be found here.

Description

Abstraction: In tunnel construction, tremendous data of Tunnel Boring Machine (TBM) operating parameters will be produced, which makes the automatic construction based on data-driven models possible. The work develops a recurrent neural network (RNN) -based pipeline for probabilistic forecasting of the trend of TBM operating parameters in the next one minute in real-time from historical 40-second tunneling data. In the Jilin Yinsong Water Tunnel dataset, the cutter head torque and thrust prediction accuracies are more than 82% and 93%, respectively. The model shows strong potential to give long-term and real-time guidance for TBM drivers in practice and thus reduces the uncertainties in the TBM excavation process.

Keywords: Tunnel Boring Machine, Probabilistic Forecasting, Deep Learning

Installation

The project was implemented with python 3.9

pip install -r requirements.txt

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A Long-term Probabilistic Forecasting Approach of TBM Operating Parameters based on Deep Learning

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