Empirical prediction intervals improve energy forecasting.

Lynn H Kaack, Jay Apt, M Granger Morgan, Patrick McSharry
Author Information
  1. Lynn H Kaack: Department of Engineering and Public Policy, Carnegie Mellon University, Pittsburgh, PA 15213; kaack@cmu.edu.
  2. Jay Apt: Department of Engineering and Public Policy, Carnegie Mellon University, Pittsburgh, PA 15213.
  3. M Granger Morgan: Department of Engineering and Public Policy, Carnegie Mellon University, Pittsburgh, PA 15213.
  4. Patrick McSharry: Smith School of Enterprise and the Environment, Oxford University, Oxford OX1 3QY, United Kingdom.

Abstract

Hundreds of organizations and analysts use energy projections, such as those contained in the US Energy Information Administration (EIA)'s Annual Energy Outlook (AEO), for investment and policy decisions. Retrospective analyses of past AEO projections have shown that observed values can differ from the projection by several hundred percent, and thus a thorough treatment of uncertainty is essential. We evaluate the out-of-sample forecasting performance of several empirical density forecasting methods, using the continuous ranked probability score (CRPS). The analysis confirms that a Gaussian density, estimated on past forecasting errors, gives comparatively accurate uncertainty estimates over a variety of energy quantities in the AEO, in particular outperforming scenario projections provided in the AEO. We report probabilistic uncertainties for 18 core quantities of the AEO 2016 projections. Our work frames how to produce, evaluate, and rank probabilistic forecasts in this setting. We propose a log transformation of forecast errors for price projections and a modified nonparametric empirical density forecasting method. Our findings give guidance on how to evaluate and communicate uncertainty in future energy outlooks.

Keywords

References

  1. Proc Natl Acad Sci U S A. 2012 Aug 28;109(35):13915-21 [PMID: 22908249]
  2. Proc Natl Acad Sci U S A. 2014 Sep 16;111 Suppl 4:13664-71 [PMID: 25225390]

Word Cloud

Created with Highcharts 10.0.0projectionsAEOforecastingenergyuncertaintydensityevaluateEnergypastseveralempiricalcontinuousrankedprobabilityscoreerrorsquantitiesprobabilisticforecastsforecastHundredsorganizationsanalystsusecontainedUSInformationAdministrationEIA'sAnnualOutlookinvestmentpolicydecisionsRetrospectiveanalysesshownobservedvaluescandifferprojectionhundredpercentthusthoroughtreatmentessentialout-of-sampleperformancemethodsusingCRPSanalysisconfirmsGaussianestimatedgivescomparativelyaccurateestimatesvarietyparticularoutperformingscenarioprovidedreportuncertainties18core2016workframesproduceranksettingproposelogtransformationpricemodifiednonparametricmethodfindingsgiveguidancecommunicatefutureoutlooksEmpiricalpredictionintervalsimprovefanchartscenarios

Similar Articles

Cited By