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The near-optimal feasible space of a renewable power system model

Fabian Neumann, Tom Brown

2020Electric Power Systems Research181 citationsDOIOpen Access PDF

Abstract

Models for long-term investment planning of the power system typically return a single optimal solution per set of cost assumptions. However, typically there are many near-optimal alternatives that stand out due to other attractive properties like social acceptance. Understanding features that persist across many cost-efficient alternatives enhances policy advice and acknowledges structural model uncertainties. We apply the modeling-to-generate-alternatives (MGA) methodology to systematically explore the near-optimal feasible space of a completely renewable European electricity system model. While accounting for complex spatio-temporal patterns, we allow simultaneous capacity expansion of generation, storage and transmission infrastructure subject to linearized multi-period optimal power flow. Many similarly costly, but technologically diverse solutions exist. Already a cost deviation of 0.5% offers a large range of possible investments. However, either offshore or onshore wind energy along with some hydrogen storage and transmission network reinforcement appear essential to keep costs within 10% of the optimum.

Topics & Concepts

Renewable energyMathematical optimizationElectricityComputer scienceRange (aeronautics)Electric power systemOffshore wind powerOperations researchEnergy storageInvestment (military)Wind powerPower (physics)EngineeringMathematicsElectrical engineeringPolitical sciencePhysicsAerospace engineeringPoliticsLawQuantum mechanicsIntegrated Energy Systems OptimizationElectric Power System OptimizationSmart Grid Energy Management