Real-Time Event Detection with Random Forests and Temporal Convolutional
Networks for More Sustainable Petroleum Industry
- URL: http://arxiv.org/abs/2310.08737v1
- Date: Thu, 12 Oct 2023 21:50:53 GMT
- Title: Real-Time Event Detection with Random Forests and Temporal Convolutional
Networks for More Sustainable Petroleum Industry
- Authors: Yuanwei Qu, Baifan Zhou, Arild Waaler, David Cameron
- Abstract summary: The petroleum industry is crucial for modern society, but the production process is complex and risky.
undesired production events can cause severe environmental and economic damage.
Previous studies have investigated machine learning (ML) methods for undesired event detection.
This paper proposes two ML approaches, random forests and temporal convolutional networks, to detect undesired events in real-time.
- Score: 1.9370374882811083
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The petroleum industry is crucial for modern society, but the production
process is complex and risky. During the production, accidents or failures,
resulting from undesired production events, can cause severe environmental and
economic damage. Previous studies have investigated machine learning (ML)
methods for undesired event detection. However, the prediction of event
probability in real-time was insufficiently addressed, which is essential since
it is important to undertake early intervention when an event is expected to
happen. This paper proposes two ML approaches, random forests and temporal
convolutional networks, to detect undesired events in real-time. Results show
that our approaches can effectively classify event types and predict the
probability of their appearance, addressing the challenges uncovered in
previous studies and providing a more effective solution for failure event
management during the production.
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