Production Forecasting: Optimistic and Overconfident – Over and Over Again

R. Bratvold, Erlend Mohus, D. Petutschnig, E. Bickel
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引用次数: 5

Abstract

The oil & gas industry uses production forecasts to make a number of decisions as mundane as whether to change the choke setting on a well, or as significant as whether to develop a field. As these forecasts are being used to develop cashflow predictions and value and decision metrics such as Net Present Value and Internal Rate of Return, their quality is essential for making good decision. Thus, forecasting skills are important for value creation and we should keep track of whether production forecasts are accurate and free from bias. In this paper we compare probabilistic production forecasts at the time of the development FID with the actual annual production to assess whether the forecasts are biased; i.e., either optimistic, overconfident, or both. While biases in time and cost estimates in the exploration & production industry are well documented, probabilistic production forecasts have yet to be the focus of a major study. The main reason for this is that production forecasts for exploration & production development projects are not publicly available. Without access to such estimates, the quality of the forecasts cannot be evaluated. Drawing on the Norwegian Petroleum Directorates (NPD) extensive database, annual production forecasts, given at time of project sanction (FID), for 56 fields in the 1995 – 2017 period, have been compared with actual annual production from the same fields. The NPD guidelines specify that the operators should report the annual mean and P10/90-percentiles for the projected life of the field at the time of the FID; that is, the forecasts should be probabilistic. The actual annual production from the fields was statistically compared with the forecast to investigate if the forecasts were biased and to assess the financial impact of such biases. This paper presents the results from the first public study of the quality of probabilistic production forecasts. The main conclusions are that production forecasts that are being used at the FID for E&P development projects are both optimistic and overconfident. As production forecasts form the basis for the main investment decision in the life of a field, biased forecasts will lead to poor decisions and to loss of value.
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生产预测:乐观和过度自信——一次又一次
石油和天然气行业利用产量预测来做出许多决策,从是否改变油井的节流装置到是否开发油田。由于这些预测被用于开发现金流预测以及价值和决策指标,如净现值和内部收益率,因此它们的质量对于做出良好决策至关重要。因此,预测技能对于价值创造是重要的,我们应该跟踪生产预测是否准确和没有偏见。在本文中,我们将开发FID时的概率产量预测与实际年产量进行比较,以评估预测是否有偏差;也就是说,要么乐观,要么过度自信,要么两者兼而有之。虽然勘探和生产行业在时间和成本估算方面的偏差已经有了很好的记录,但概率产量预测尚未成为主要研究的重点。造成这种情况的主要原因是勘探和生产开发项目的产量预测不公开。没有这种估计,就无法评价预测的质量。利用挪威石油管理局(NPD)广泛的数据库,对1995年至2017年期间56个油田在项目批准(FID)时给出的年产量预测与同一油田的实际年产量进行了比较。NPD指南规定,作业者应在FID时报告油田预计寿命的年平均值和p10 /90百分位数;也就是说,预测应该是概率性的。将油田的实际年产量与预测进行统计比较,以调查预测是否存在偏差,并评估这种偏差对财务的影响。本文介绍了首次公开研究概率生产预测质量的结果。主要结论是,FID用于E&P开发项目的产量预测既乐观又过于自信。由于产量预测是油田生命周期中主要投资决策的基础,因此有偏差的预测将导致决策失误和价值损失。
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