# A HLBDA, GA, and COA for optimal operation of distributed energy resources

**Authors:** Bilal Naji Alhasnawi, Sabah Mohammed Mlkat Almutoki, Hayder Khenyab Hashim, Abdellatif M. Sadeq, Ali Qasim Almousawi, Basil H. Jasim, Raad Z. Homod, Firas Faeq K. Hussain, Mahmood A. Al-Shareeda, Alžběta Dočekalová, Vladimír Bureš

PMC · DOI: 10.1371/journal.pone.0340259 · PLOS One · 2026-01-30

## TL;DR

This paper introduces a new energy management system using advanced algorithms to optimize the operation of renewable energy sources in microgrids, reducing costs and emissions.

## Contribution

The paper proposes a novel Hyper Learning Binary Dragonfly Algorithm (HLBDA) for optimizing microgrid operations, showing superior performance over existing methods.

## Key findings

- The HLBDA algorithm achieved a 12.4% cost saving compared to Genetic Algorithms (GA).
- HLBDA recorded a 9.54% improvement in carbon emission reduction compared to GA.
- The COA algorithm showed a 3.24% improvement in cost reduction and a 2.40% improvement in emission reduction.

## Abstract

Although renewable energy sources offer enormous potential to improve environmental sustainability, maximizing economic benefits inside microgrids requires resolving their intermittency and irregularity. A viable alternative is to combine energy storage with renewable energy technologies. This article introduced a energy management system for hybrid renewable power plants that includes fuel cells, wind turbines, solar cells, battery energy storage devices, and micro-turbines. Optimization problem is formulated as Hyper Learning Binary Dragonfly Algorithm (HLBDA) for optimizing economic benefits and with objectives of minimizing operating costs and pollutant gas emissions. Suggested model is compared with existing methods like Genetic Algorithms (GA), and Crayfish Optimization Algorithm (COA). Also, stochastic framework is considered suitable solution for achieving optimal operation point in microgrids to cope with uncertain parameters. According to the simulation results, suggested method proves reductions in overall system costs and pollutant gas emissions. The proposed system achieved significant superiority across all indicators. In the area of cost reduction, the algorithms demonstrated remarkable progress. The algorithms achieved significant improvements in cost reduction compared to genetic algorithm (GA). HLBDA algorithm achieved a 12.4% cost saving compared to GA, and the COA algorithm showed a 3.24% improvement in cost reduction. In the area of carbon emission reduction, the algorithms also showed significant progress: the HLBDA algorithm recorded the highest emission reduction rate at 9.54%, and the COA algorithm showed a 2.40% improvement in emission reduction.

## Full text

_Full body text omitted from this summary view._ Fetch the complete paper as Markdown: https://tomesphere.com/paper/PMC12858022/full.md

## Figures

16 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12858022/full.md

## References

98 references — full list in the complete paper: https://tomesphere.com/paper/PMC12858022/full.md

---
Source: https://tomesphere.com/paper/PMC12858022