A Hierarchical Genetic Optimization of a Fuzzy Logic System for Flow Control in Micro Grids
Enrico De Santis, Antonello Rizzi, Alireza Sadeghian

TL;DR
This paper introduces a hierarchical genetic algorithm to optimize a fuzzy logic controller for microgrid power management, achieving simpler rule sets and significantly higher profits compared to traditional methods.
Contribution
It presents a novel fuzzy-HGA approach that reduces fuzzy rule complexity while improving economic performance in microgrid energy trading.
Findings
Fuzzy-HGA outperforms classic fuzzy-GA by 67% profit increase.
The approach simplifies the fuzzy rule base.
Results demonstrate improved decision-making in microgrid control.
Abstract
Bio-inspired algorithms like Genetic Algorithms and Fuzzy Inference Systems (FIS) are nowadays widely adopted as hybrid techniques in commercial and industrial environment. In this paper we present an interesting application of the fuzzy-GA paradigm to Smart Grids. The main aim consists in performing decision making for power flow management tasks in the proposed microgrid model equipped by renewable sources and an energy storage system, taking into account the economical profit in energy trading with the main-grid. In particular, this study focuses on the application of a Hierarchical Genetic Algorithm (HGA) for tuning the Rule Base (RB) of a Fuzzy Inference System (FIS), trying to discover a minimal fuzzy rules set in a Fuzzy Logic Controller (FLC) adopted to perform decision making in the microgrid. The HGA rationale focuses on a particular encoding scheme, based on control genes and…
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