Operation and planning of energy hubs under uncertainty - A review of mathematical optimization approaches
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Abstract
Co-designing energy systems across multiple energy carriers is increasingly attracting attention
of researchers and policy makers, since it is a prominent means of increasing the overall efficiency of the
energy sector. Special attention is attributed to the so-called energy hubs, i.e., clusters of energy communities
featuring electricity, gas, heat, hydrogen, and also water generation and consumption facilities. Managing
an energy hub entails dealing with multiple sources of uncertainty, such as renewable generation, energy
demands, wholesale market prices, etc. Such uncertainties call for sophisticated decision-making techniques,
with mathematical optimization being the predominant family of decision-making methods proposed in
the literature of recent years. In this paper, we summarize, review, and categorize research studies that
have applied mathematical optimization approaches towards making operational and planning decisions
for energy hubs. Relevant methods include robust optimization, information gap decision theory, stochastic
programming, and chance-constrained optimization. The results of the review indicate the increasing
adoption of robust and, more recently, hybrid methods to deal with the multi-dimensional uncertainties of
energy hubs.
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energy hub, multi-carrier energy systems, mathematical optimization, robust optimization, IGDT, stochastic programming, chance constrained, uncertainty
Citation
IEEE Access. 2023, vol. 11, p. 7208-7228.