Inverse methods: How feasible are spatially low-resolved capacity expansion modeling results when dis-aggregated at high resolution?

09/06/2022
by   Martha Maria Frysztacki, et al.
0

Spatially highly-resolved capacity expansion models are computationally intensive. As a result, models are often simplified to a lower spatial resolution by clustering multiple regions to a smaller number of representatives. However, when capacity expansion is modeled for electricity systems at a coarse resolution, the aggregation mixes sites with different renewable features while removing transmission lines that can cause congestion. As a consequence, the modeling results may represent an infeasible electricity system when the capacities are fed back into higher spatial detail. Thus far there has been no detailed investigation of how best to dis-aggregate the capacity expansion results into its original resolution and whether the spatially highly-resolved dis-aggregated model is technically feasible. This is a challenge since there is no unique or obvious way to invert the clustering. In this paper we proceed in two stages. First, we propose three methods to dis-aggregate spatially low-resolved model results into higher resolution: (a) uniformly distribute the regionalised results across their original set of regions, (b) re-optimising each clustered region separately at high resolution (c) a novel approach that minimises the custom "excess electricity" function. Second, we investigate the resulting highly-resolved models' feasibility by running an operational dispatch. While re-optimising yields the lowest amounts of load-shedding and curtailment, our novel inverse-method provides comparable results for considerably less computational effort. Feasibility-wise, our results strengthen previously published research that modeling every country by a single region is insufficient. Beyond that, we find that results obtained from state-of-the-art reduced models with 100-200 regions for Europe still yield 3-7 method.

READ FULL TEXT
research
01/22/2021

The strong effect of network resolution on electricity system models with high shares of wind and solar

Energy system modellers typically choose a low spatial resolution for th...
research
11/16/2021

Joint Estimation of Extreme Precipitation at Different Spatial Scales through Mixture Modelling

Parsimonious and effective models for the extremes of precipitation aggr...
research
05/04/2021

Multi-resolution Spatial Regression for Aggregated Data with an Application to Crop Yield Prediction

We develop a new methodology for spatial regression of aggregated output...
research
05/18/2022

A weakly supervised framework for high-resolution crop yield forecasts

Predictor inputs and label data for crop yield forecasting are not alway...
research
10/08/2022

A Higher Purpose: Measuring Electricity Access Using High-Resolution Daytime Satellite Imagery

Governments and international organizations the world over are investing...
research
12/28/2017

Extremal Behavior of Aggregated Data with an Application to Downscaling

The distribution of spatially aggregated data from a stochastic process ...
research
01/24/2017

Learning an attention model in an artificial visual system

The Human visual perception of the world is of a large fixed image that ...

Please sign up or login with your details

Forgot password? Click here to reset