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research article

Redefining energy system flexibility for distributed energy system design

Perera, A. T. D.  
•
Nik, Vahid M.  
•
Wickramasinghe, P. U.
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November 1, 2019
Applied Energy

A novel method is introduced in this study to consider flexibility taking into account both system design and operation strategy by using fuzzy logic. A stochastic optimization algorithm is introduced to optimize the system design and operation strategy of the energy system while considering the flexibility. GPU (Graphics Processing Unit)-accelerated computing is introduced to speed up the computation process when computing the expected values of the objective functions considering a pool up to 5832 scenarios. Subsequently, a Pareto optimization is conducted considering Net Present Value (NPV), Grid Integration (GI) level (which represents the autonomy level of the energy system) and system flexibility. The case study assesses an energy system design problem for the city of Lund in Sweden. According to the obtained NPV and GI Pareto front, a renewable energy penetration level covering more than 45% of the annual demand of the energy hub (an integrated energy system consisting of wind turbines, solar PV panels, internal combustion generator and a battery bank) can be achieved. However, the flexibility of the system notably decreases when the renewable energy penetration level exceeds above 30%. Furthermore, the results show that poor system flexibility notably increases the risk of higher-loss of load probability and operation cost. It is also shown that the utility grid acts as a virtual storage when integrating renewable energy sources. In this context, a grid dependency level of 25-30% (of the annual energy demand) is sufficient while reaching a renewable energy penetration level of 30% and maintaining the system flexibility.

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Type
research article
DOI
10.1016/j.apenergy.2019.113572
Web of Science ID

WOS:000497971400083

Author(s)
Perera, A. T. D.  
Nik, Vahid M.  
Wickramasinghe, P. U.
Scartezzini, Jean-Louis  
Date Issued

2019-11-01

Published in
Applied Energy
Volume

253

Article Number

113572

Subjects

Energy & Fuels

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Engineering, Chemical

•

Energy & Fuels

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Engineering

•

energy hubs

•

flexibility

•

gpu programming

•

uncertainty

•

resilience

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pareto optimization

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operational flexibility

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power-systems

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multiobjective optimization

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stochastic optimization

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distribution networks

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retrofitting measures

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electric vehicles

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combined heat

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buildings

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storage

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LESO-PB  
Available on Infoscience
December 11, 2019
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/163921
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