1887

Abstract

Summary

We present a data driven workflow to improve local history match quality by identifying model regions from correlation between production response and geological modelling parameters for use in an assisted history matching framework. This paper outlines the implementation and results from a large mature field case study. Regions are identified by calculating the partial correlation between individual well production misfits and uncertain geological modelling parameters across 500 models. Wells are then categorised into three groups based on their correlations: positive, negative and insignificant. A probabilistic neural network (PNN) is trained on the location of each well and its group. A map of regions can then be calculated using the PNN. The parameters used to define the region map are then varied separately in each region in an assisted history matching loop. In the full field case study, an 8.8% improvement in oil rate misfit within the positively correlated well group was achieved by regional modification of the net-to-gross multiplier, with no detrimental effect on the other groups match quality. This case study demonstrates the effective identification and utilisation of geologically and dynamically inferred regions which improve the local history match

Loading

Article metrics loading...

/content/papers/10.3997/2214-4609.201902203
2019-09-02
2024-04-25
Loading full text...

Full text loading...

References

  1. Hutton, R., Buckle, T., Demyanov, V., Arnold, D., Antropov, A., Kharyba, E., Kostic, M., & Pilipenko, M. (2018). Handling Geological Uncertainties Across Model Ensembles: A Large Mature Field Example.80th EAGE Conference and Exhibition.
    [Google Scholar]
  2. Kanevski, M., Timonin, V., & Pozdnukhov, A. (2009). Machine learning for spatial environmental data: theory, applications, and software.EPFL press.
    [Google Scholar]
  3. Kazemi, A., Stephen, K. (2012). Schemes for automatic history matching of reservoir modeling: A case of Nelson oilfield in UK.Petroleum Exploration and Development, Volume 39, Issue 3.
    [Google Scholar]
  4. Specht, D. (1989). Probabilistic Neural Networks. Neural Networks, Vol. 3. pp. 109118.
    [Google Scholar]
  5. Stone, M. (1974). Cross-Validatory Choice and Assessment of Statistical Predictions.Journal of the Royal Statistical Society. Series B (Methodological), 36(2), 111–147.
    [Google Scholar]
http://instance.metastore.ingenta.com/content/papers/10.3997/2214-4609.201902203
Loading
/content/papers/10.3997/2214-4609.201902203
Loading

Data & Media loading...

This is a required field
Please enter a valid email address
Approval was a Success
Invalid data
An Error Occurred
Approval was partially successful, following selected items could not be processed due to error