dc.description.abstract |
In the modern era of rapid urbanization and pressing environmental concerns, the concept
of smart grids has emerged as a pivotal solution towards sustainable and energyefficient
cities. To fully leverage the capabilities of smart grids and make them integral
to green cities, it is imperative to effectively harness the data generated by these intelligent
power systems. Data analytics facilitates in an efficient and swift analysis of the
huge volume of data generated by the diverse components and devices of a smart grid.
The existing literature on the application of data analytics for smart grids primarily
focuses on preliminary techniques that do not fully exploit the value of the available
data. This thesis explores the application of advanced data analytics approaches to
enhance the efficiency, reliability, and sustainability in urban energy systems. We propose
a graph theory-based predictive data analytics algorithm designed to enhance
electricity transmission reliability within microgrids. By accurately predicting power
transmission losses and identifying optimal routes, the algorithm outperforms existing
methods, demonstrating improved power loss reduction, congestion management, accuracy,
reliability, and adaptability to different power flow scenarios. Additionally, the
study focuses on optimizing load management within microgrids and proposes a prescriptive
data analytics algorithm to efficiently cover power deficiencies using various
energy sources like battery storage, main grid and on-site generators. This approach
improves power supply reliability and overall microgrid efficiency. Transitioning to
the smart home level, the research employs prescriptive data analytics to propose an
optimal energy trading system in smart grids, potentially increasing energy trading
profitability while reducing reliance on the main grid. Lastly, building upon advanced
data analytics approaches, we define smart grid software problems and propose an
automated solution development framework for smart grids. Our framework outperforms
current approaches in scalability, concurrency, efficiency, and support for various
revenue-generating business models, presenting promising prospects for innovation
and fostering self-sufficiency in smart grids. Together, these research findings have
the potential to contribute to the transformation of urban energy systems, fostering
sustainability, reliability, and economic viability amid rising energy demands and environmental
challenges. |
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