Abstract
For the stable supply of oil and gas resources, industry is pushing for various attempts and technology development to produce not only existing land fields but also deep-sea, where production is difficult. The development of flow assurance technology is necessary because hydrate is aggregated in the pipeline and prevent stable production. This study established a system that enables hydrate diagnosis in the gas pipeline from a flow assurance perspective. Learning data were generated using an OLGA simulator, and temperature, pressure, and hydrate volume at each time step were generated. Stacked auto-encoder (SAE) was used as the AI model after analyzing training loss. Hyper-parameter matching and structure optimization were carried out using the greedy layer-wise technique. Through time-series forecast, we determined that AI diagnostic model enables depiction of the growth of hydrate volume. In addition, the average R-square for the maximum hydrate volume was 97%, and that for the formation location was calculated as 99%. This study confirmed that machine learning could be applied to the flow assurance area of gas pipelines and it can predict hydrate formation in real time.
| Original language | English |
|---|---|
| Article number | 2313 |
| Journal | Energies |
| Volume | 14 |
| Issue number | 8 |
| DOIs | |
| State | Published - 2021.04.2 |
Keywords
- Artificial intelligence
- Diagnostic model
- Gas hydrate
- Greedy layer-wise
- Stacked auto-encoder
Quacquarelli Symonds(QS) Subject Topics
- Mathematics
- Engineering - Electrical & Electronic
- Engineering - Petroleum
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