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Time-series aggregation for synthesis problems by bounding error in the objective function

The complexity of synthesis problems for energy systems is commonly reduced by time-series aggregation. The accuracy of time-series aggregation is commonly measured by the capability of the aggregated time series to represent the full time series. However, this accuracy measure is not linked to the...

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Published in:Energy (Oxford) 2017-09, Vol.135, p.900-912
Main Authors: Bahl, Björn, Kümpel, Alexander, Seele, Hagen, Lampe, Matthias, Bardow, André
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Language:English
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description The complexity of synthesis problems for energy systems is commonly reduced by time-series aggregation. The accuracy of time-series aggregation is commonly measured by the capability of the aggregated time series to represent the full time series. However, this accuracy measure is not linked to the goal of the synthesis problem: to make the right investment decisions. In this work, we propose a method to bound the error of time-series aggregation by measuring the accuracy of the aggregation in the domain of the objective function: For each design, the error is calculated between the cost considering the aggregated time series and the full time series. An adaptive procedure determines the aggregated time series required to accurately represent the costs of the full time series. Feasibility time steps are also identified to ensure security of supply. Results of a case study on the synthesis of an energy supply system show that aggregation to less than 10 time steps is sufficient to represent the full time series with excellent accuracy. •Accuracy of time series aggregation measured by objective function.•Feasibility ensured for the full time series.•Case study with volatile time series including renewable energies.•Few time steps represent the full time series with excellent accuracy.•Generic method with application to synthesis problems in general.
doi_str_mv 10.1016/j.energy.2017.06.082
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subjects Accuracy measure and error bound
Agglomeration
Aggregate planning
Case studies
Energy management
Energy system
Error analysis
Errors
Feasibility studies
k-means clustering
Objective function
Renewable energies
Security
Synthesis
Synthesis optimization
Time series
Time-series aggregation
title Time-series aggregation for synthesis problems by bounding error in the objective function
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