Operations and investment modelling of an energy microgrid with mixed-integer linear programming
Abstract
The increase in electricity demand worldwide is driven by economic growth and a rising
population. The traditional power system, which is based on a centralised network, is
facing many challenges and is not capable of meeting the demand. As a result, the advancement
towards a smarter grid has occurred, and the concept of Microgrids has gained
a lot of attention. Microgrids are seen as the building blocks of Smart Grid and can
be de ned as local small-scale grids which enable the integration of Distributed Energy
Resources (DER), storage systems and various loads. The microgrid system can operate
collaboratively or independently from the main power grid.
The adoption of a microgrid with alternative energy options is being considered by numerous
individuals and investors. The investment in microgrids is especially considered by
those who lack access to the traditional grid or when the main power grid cannot provide
su cient and reliable power to end-users. However, the planning and implementation of
a microgrid are not simple, and the investment in alternative energy sources and storage
can be costly. The individual needs to know whether the investment is feasible and what
to invest in, considering multiple options.
A Mixed-Integer Linear Programming (MILP) model is proposed to minimise the total
cost of an energy microgrid while addressing the operational and investment aspects.
The model can minimise the total cost of a microgrid while determining the optimal
operation, con guration and investment time for the technologies. The model examines
a grid-connected system which supports the integration of DERs and battery storage
options. The proposed model considers the daily operation and technical aspects of each
technology, and based on that, determines the optimal design and investment plan over a
long-term period.
The veri cation process proves that the formulation and implementation of the proposed
model are correct. The model complies with all constraints, and the model results are as
expected during each evaluation. Furthermore, the model is validated by showing that
it provides a feasible solution to several real-life scenarios. During the model validation,
changing economic factors are incorporated to show the e ect thereof on the model results.
The proposed optimisation model aims to provide individuals that are considering an
investment in a microgrid with alternative energy sources and storage with a planning
and decision-making framework. The operational and investment components are closely
connected and are therefore addressed in a single model. An important contribution of
this study is to provide a way for investors to determine the optimal time to invest when
considering a changing economic environment.
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- Engineering [1424]