4.6 Review

A review of approaches to uncertainty assessment in energy system optimization models

Journal

ENERGY STRATEGY REVIEWS
Volume 21, Issue -, Pages 204-217

Publisher

ELSEVIER
DOI: 10.1016/j.esr.2018.06.003

Keywords

Energy system modelling; Uncertainty; Monte Carlo analysis; Stochastic programming; Robust optimization; Modelling to generate alternatives

Categories

Funding

  1. Science Foundation Ireland (SFI)
  2. NTR Foundation [12/RC/2302]
  3. SFI
  4. National Science Foundation [16/US-C2C/3290]
  5. UK Engineering and Physical Sciences Research Council [EP/K039326/1]
  6. EPSRC [EP/K039326/1] Funding Source: UKRI

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Energy system optimization models (ESOMs) have been used extensively in providing insights to decision makers on issues related to climate and energy policy. However, there is a concern that the uncertainties inherent in the model structures and input parameters are at best underplayed and at worst ignored. Compared to other types of energy models, ESOMs tend to use scenarios to handle uncertainties or treat them as a marginal issue. Without adequately addressing uncertainties, the model insights may be limited, lack robustness, and may mislead decision makers. This paper provides an in-depth review of systematic techniques that address uncertainties for ESOMs. We have identified four prevailing uncertainty approaches that have been applied to ESOM type models: Monte Carlo analysis, stochastic programming, robust optimization, and modelling to generate alternatives. For each method, we review the principles, techniques, and how they are utilized to improve the robustness of the model results to provide extra policy insights. In the end, we provide a critical appraisal on the use of these methods.

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