An Echo State Network-based Soft Sensor of Downhole Pressure for a Gas-lift Oil Well
Title | An Echo State Network-based Soft Sensor of Downhole Pressure for a Gas-lift Oil Well |
Publication Type | Conference Proceedings |
Year of Conference | 2015 |
Authors | Antonelo EA, Camponogara E |
Conference Name | 16th International Conference on Engineering Applications of Neural Networks |
Volume | Communications in Computer and Information Science, vol 517 |
Pagination | 379-389 |
Publisher | Springer |
ISBN Number | 978-3-319-23981-1 |
Abstract | Soft sensor technology has been increasingly used in indus- try. Its importance is magnified when the process variable to be estimated is key to control and monitoring processes and the respective sensor ei- ther has a high probability of failure or is unreliable due to harsh environ- ment conditions. This is the case for permanent downhole gauge (PDG) sensors in the oil and gas industry, which measure pressure and tempera- ture in deepwater oil wells. In this paper, historical data obtained from an actual offshore oil well is used to build a black box model that estimates the PDG downhole pressure from platform variables, using Echo State Networks (ESNs), which are a class of recurrent networks with power- ful modeling capabilities. These networks, differently from other neural networks models used by most soft sensors in literature, can model the nonlinear dynamical properties present in the noisy real-world data by using a two-layer structure with efficient training: a recurrent nonlinear layer with fixed randomly generated weights and a linear adaptive read- out output layer. Experimental results show that ESNs are a promising technique to model soft sensors in an industrial setting. |
URL | https://link.springer.com/chapter/10.1007/978-3-319-23983-5_35 |
DOI | 10.1007/978-3-319-23983-5_35 |