Optimization via Statistical Emulation and Uncertainty Quantification: Hosting Capacity Analysis of Distribution Networks

In power systems modelling, optimization methods based on certain objective function(s) are widely used to provide solutions for decision makers. For complex high-dimensional problems, such as network hosting capacity evaluation of intermittent renewables, simplifications are often used which can le...

Full description

Bibliographic Details
Main Authors: Hailiang Du, Wei Sun, Michael Goldstein, Gareth P. Harrison
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9517296/
id doaj-d3494d83ac714aa2ba9ead6a306d4103
record_format Article
spelling doaj-d3494d83ac714aa2ba9ead6a306d41032021-08-31T23:00:21ZengIEEEIEEE Access2169-35362021-01-01911847211848310.1109/ACCESS.2021.31059359517296Optimization via Statistical Emulation and Uncertainty Quantification: Hosting Capacity Analysis of Distribution NetworksHailiang Du0https://orcid.org/0000-0001-7182-9455Wei Sun1https://orcid.org/0000-0002-4180-3040Michael Goldstein2Gareth P. Harrison3https://orcid.org/0000-0003-1697-630XDepartment of Mathematical Sciences, Durham University, Durham, U.K.School of Engineering, The University of Edinburgh, Edinburgh, U.K.Department of Mathematical Sciences, Durham University, Durham, U.K.School of Engineering, The University of Edinburgh, Edinburgh, U.K.In power systems modelling, optimization methods based on certain objective function(s) are widely used to provide solutions for decision makers. For complex high-dimensional problems, such as network hosting capacity evaluation of intermittent renewables, simplifications are often used which can lead to the ‘optimal’ solution being suboptimal or nonoptimal. Even where the optimization problem is resolved, it would still be valuable to introduce some diversity to the solution for long-term planning purposes. This paper introduces a general framework for solving optimization for power systems that treats an optimization problem as a history match problem which is resolved via statistical emulation and uncertainty quantification. Emulation constructs fast statistical approximations to the complex computer simulation model in order to identify appropriate choices of candidate solutions for given objective function(s). Uncertainty quantification is adopted to capture multiple sources of uncertainty attached to each candidate solution and is conducted via Bayes linear analysis. It is demonstrated through a hosting capacity case study involving variable wind generation and active network management. The proposed method effectively identified not only the maximum connectable capacities but also a diverse set of near-optimal solutions, and so provided flexible guides for using the existing network to maximize the benefits of renewable generation.https://ieeexplore.ieee.org/document/9517296/Hosting capacitydistribution networkdistributed generationwind curtailmenthistory matchingoptimization
collection DOAJ
language English
format Article
sources DOAJ
author Hailiang Du
Wei Sun
Michael Goldstein
Gareth P. Harrison
spellingShingle Hailiang Du
Wei Sun
Michael Goldstein
Gareth P. Harrison
Optimization via Statistical Emulation and Uncertainty Quantification: Hosting Capacity Analysis of Distribution Networks
IEEE Access
Hosting capacity
distribution network
distributed generation
wind curtailment
history matching
optimization
author_facet Hailiang Du
Wei Sun
Michael Goldstein
Gareth P. Harrison
author_sort Hailiang Du
title Optimization via Statistical Emulation and Uncertainty Quantification: Hosting Capacity Analysis of Distribution Networks
title_short Optimization via Statistical Emulation and Uncertainty Quantification: Hosting Capacity Analysis of Distribution Networks
title_full Optimization via Statistical Emulation and Uncertainty Quantification: Hosting Capacity Analysis of Distribution Networks
title_fullStr Optimization via Statistical Emulation and Uncertainty Quantification: Hosting Capacity Analysis of Distribution Networks
title_full_unstemmed Optimization via Statistical Emulation and Uncertainty Quantification: Hosting Capacity Analysis of Distribution Networks
title_sort optimization via statistical emulation and uncertainty quantification: hosting capacity analysis of distribution networks
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2021-01-01
description In power systems modelling, optimization methods based on certain objective function(s) are widely used to provide solutions for decision makers. For complex high-dimensional problems, such as network hosting capacity evaluation of intermittent renewables, simplifications are often used which can lead to the ‘optimal’ solution being suboptimal or nonoptimal. Even where the optimization problem is resolved, it would still be valuable to introduce some diversity to the solution for long-term planning purposes. This paper introduces a general framework for solving optimization for power systems that treats an optimization problem as a history match problem which is resolved via statistical emulation and uncertainty quantification. Emulation constructs fast statistical approximations to the complex computer simulation model in order to identify appropriate choices of candidate solutions for given objective function(s). Uncertainty quantification is adopted to capture multiple sources of uncertainty attached to each candidate solution and is conducted via Bayes linear analysis. It is demonstrated through a hosting capacity case study involving variable wind generation and active network management. The proposed method effectively identified not only the maximum connectable capacities but also a diverse set of near-optimal solutions, and so provided flexible guides for using the existing network to maximize the benefits of renewable generation.
topic Hosting capacity
distribution network
distributed generation
wind curtailment
history matching
optimization
url https://ieeexplore.ieee.org/document/9517296/
work_keys_str_mv AT hailiangdu optimizationviastatisticalemulationanduncertaintyquantificationhostingcapacityanalysisofdistributionnetworks
AT weisun optimizationviastatisticalemulationanduncertaintyquantificationhostingcapacityanalysisofdistributionnetworks
AT michaelgoldstein optimizationviastatisticalemulationanduncertaintyquantificationhostingcapacityanalysisofdistributionnetworks
AT garethpharrison optimizationviastatisticalemulationanduncertaintyquantificationhostingcapacityanalysisofdistributionnetworks
_version_ 1721183166158340096