Please use this identifier to cite or link to this item: https://hdl.handle.net/10321/4785
Title: Optimization of hybrid renewable energy generation using a nature-inspired algorithm with advanced IoT analytics
Authors: Frimpong, Samuel Ofori 
Keywords: Hybrid energy system;Cost-effective power supply;Hybrid Renewable Energy System (HRES);Internet of Things (IoT)
Issue Date: 1-Nov-2022
Abstract: 
A stable and cost-effective power supply in an autonomous hybrid energy system requires
an efficient design process for renewable energy technologies. Accordingly, the best
design of a standalone hybrid renewable energy system (HRES) should consider several
factors such as renewable energy data, load profile, technical and economic analysis of the
renewable technologies, ideal location for the power system, etc. Different data from
renewable energy sources are modelled into an optimization problem which incorporates
the crucial point, in HRES, of the correct sizing of the various power components, which
directly affect the cost and power security/reliability of the system. This thesis proposes an
innovative meta-heuristic optimization algorithm called Social Spider-Prey (SSP) that
mimics the foraging behaviour of social spiders and prey(s) on the social web. By
examining the foraging behavioural traits of social spiders and prey(s), a global
optimization algorithm was developed to solve a hybrid renewable energy optimization
problem of correct sizing, minimal cost, and highest reliability. In SSP, artificial spiders
are considered search agents. On the one hand, every spider can freely roam the social
web, a hyperdimensional search space, to implement an exploratory search scheme. On the
other hand, nearby spiders relative to a captured prey search the neighbourhood, which is
implemented as an exploitative search mechanism. These two search strategies are
harmonized in SSP to solve the multi-source renewable power generation optimization
problem effectively. Four different power generation scenarios were analysed to determine
optimal power generation using experimental real-time environment data collected with
sensors and secondary data retrieved from a benchmark dataset, National Renewable
Energy Laboratory (NREL). The optimization algorithms inspired by nature, namely
Social Spider-Prey (SSP), Particle Swarm Optimization (PSO), Teaching-Learning Based
Optimization (TLBO) algorithm and Social Spider Algorithm (SSA), were used in a
comparative study to search for a near-optimal result for the hybrid system configuration
that satisfies the optimization problem. The results show the economic and reliable
implications of different system configurations that meet the specified combined criteria,
as indicated in the HRES optimization problem, to make the best investment decision. The
SSP guaranteed optimal annualized system costs and met the reliability constraints for all
the case scenarios: wind/biomass/battery (ZAR 3,431,512.26 and LPSP of 0.011),
PV/wind/ biomass (ZAR 2,549,792.71 and LPSP of 0, 0011), PV/biomass/battery (ZAR1,
638,628.82 and LPSP of 0.00021) and PV/wind/biomass/battery (ZAR1, 412,142.80 and
LPSP of 0.0141). Based on this result, the study proposes the SSP as an optimization
approach for the solar PV/wind/biomass/battery hybrid system, as it ensures 99.98% power
reliability. In addition, a Kruskal-Wallis test was performed to determine the significant
differences among the comparison algorithms.
Description: 
Submitted in fulfillment of the requirements of the degree of Doctor of Philosophy in Information Technology (IT) at Durban University of Technology, Durban, South Africa, 2022.
URI: https://hdl.handle.net/10321/4785
DOI: https://doi.org/10.51415/10321/4785
Appears in Collections:Theses and dissertations (Accounting and Informatics)

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