Litcius/Paper detail

Applying Endogenous Learning Models in Energy System Optimization

Jabir Ali Ouassou, Julian Straus, Marte Fodstad, Gunhild Reigstad, Ove Wolfgang

2021Energies22 citationsDOIOpen Access PDF

Abstract

Conventional energy production based on fossil fuels causes emissions that contribute to global warming. Accurate energy system models are required for a cost-optimal transition to a zero-emission energy system, which is an endeavor that requires a methodical modeling of cost reductions due to technological learning effects. In this review, we summarize common methodologies for modeling technological learning and associated cost reductions via learning curves. This is followed by a literature survey to uncover learning rates for relevant low-carbon technologies required to model future energy systems. The focus is on (i) learning effects in hydrogen production technologies and (ii) the application of endogenous learning in energy system models. Finally, we discuss methodological shortcomings of typical learning curves and possible remedies. One of our main results is an up-to-date overview of learning rates that can be applied in energy system models.

Topics & Concepts

Learning curveEnergy (signal processing)Computer scienceProduction (economics)Fossil fuelLearning-by-doingEfficient energy useEnergy systemLearning effectRisk analysis (engineering)Energy transitionBiochemical engineeringFocus (optics)Technological changeArtificial intelligenceEnergy engineeringActive learning (machine learning)Energy economicsSystem optimizationSystem dynamicsEmerging technologiesMachine learningIntegrated Energy Systems OptimizationHybrid Renewable Energy SystemsThermodynamic and Exergetic Analyses of Power and Cooling Systems