Publication | Closed Access
Bridging Chance-Constrained and Robust Optimization in an Emission-Aware Economic Dispatch With Energy Storage
51
Citations
32
References
2021
Year
Distributed Energy SystemEngineeringEnergy EfficiencyDistributed Energy GenerationOptimal System DesignStorage SystemsEnergy OptimizationSystems EngineeringEmission-aware Economic DispatchRenewable Energy SystemsRobust OptimizationEnergy Demand ManagementPower SystemsLinear OptimizationRobust Optimization FrameworkComputer EngineeringElectricity SectorEnergy StoragePower System OptimizationUnit CommitmentSmart GridEnergy ManagementSustainable EnergyEnergy PolicyStorage SystemEnergy Economics
In the electricity sector the carbon tax is a common environmental policy aiming to reduce CO <sub xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">2</sub> emissions, but is often regarded as economically unfriendly, especially for areas relying on coal-fire and other carbon-intensive generators. A power grid utilizing an energy storage system can be a promising solution to alleviate the regional economy pressure in a grid where the carbon tax is enforced. With the increasing exploitation of clean energy, e.g., solar and wind power, in this work, we characterize the stochastic emission-aware economic dispatch with a storage system utilizing two frameworks, namely a chance-constrained framework and a robust optimization framework. We highlight their differences and connections by studying the trade-offs between robustness and overall cost. Specifically, we bridge the two frameworks with a novel distributed robust optimization framework that considers practical bounds to estimate the optimal system performance under the reliability requirement. Numerical studies on the six-bus model and the IEEE-118 bus model further justify our findings.
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