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The Method of Oilfield Development Risk Forecasting and Early Warning Using Revised Bayesian Network

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  • Yihua Zhong
  • Yuxin Liu
  • Xuxu Lin
  • Shiming Luo

Abstract

Oilfield development aiming at crude oil production is an extremely complex process, which involves many uncertain risk factors affecting oil output. Thus, risk prediction and early warning about oilfield development may insure operating and managing oilfields efficiently to meet the oil production plan of the country and sustainable development of oilfields. However, scholars and practitioners in the all world are seldom concerned with the risk problem of oilfield block development. The early warning index system of blocks development which includes the monitoring index and planning index was refined and formulated on the basis of researching and analyzing the theory of risk forecasting and early warning as well as the oilfield development. Based on the indexes of warning situation predicted by neural network, the method dividing the interval of warning degrees was presented by “ †rule; and a new method about forecasting and early warning of risk was proposed by introducing neural network to Bayesian networks. Case study shows that the results obtained in this paper are right and helpful to the management of oilfield development risk.

Suggested Citation

  • Yihua Zhong & Yuxin Liu & Xuxu Lin & Shiming Luo, 2016. "The Method of Oilfield Development Risk Forecasting and Early Warning Using Revised Bayesian Network," Mathematical Problems in Engineering, Hindawi, vol. 2016, pages 1-10, March.
  • Handle: RePEc:hin:jnlmpe:9564801
    DOI: 10.1155/2016/9564801
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