Integration of Renewable Energy and Microgrid Systems to Enhance Voltage Quality and Minimize Harmonic Distortion Losses Using Advanced Control Techniques

Author:

Tabassum Saleha1,Sandhyakumari G.2,V Madhurima3,Bharathi M.4

Affiliation:

1. Kandula Srinivasa Reddy Memorial College of Engineering

2. Siddartha Institute of Science and Technology

3. S V College of Engineering

4. Mohan Babu University

Abstract

Abstract

This study explores integrating renewable energy sources into microgrid systems to improve voltage quality and reduce harmonic distortion losses using an Adaptive Neuro-Fuzzy Inference System (ANFIS) controller. Microgrids with renewables offer enhanced energy reliability and efficiency but face challenges like voltage fluctuations and harmonic distortions. Renewable sources like solar and wind introduce variability, impacting voltage stability and causing harmonic distortions in the grid. The ANFIS controller adapts to these dynamics by dynamically adjusting parameters, leveraging neural network adaptability and fuzzy logic's interpretability to manage nonlinear and uncertain behaviors typical of renewables. The research aims to optimize microgrid performance by mitigating voltage fluctuations and harmonic distortions through ANFIS. By improving operational stability and efficiency, this approach supports effective renewable energy integration into broader grid infrastructures. Through empirical analysis and simulations, the study provides insights into ANFIS's practical application in microgrid management, contributing to sustainable energy solutions and grid resilience.This research underscores the importance of ANFIS controllers in enhancing renewable energy integration within microgrid systems, offering actionable strategies for improving energy sustainability and reliability in modern power networks.

Publisher

Springer Science and Business Media LLC

Reference17 articles.

1. SmarajitGhosh, “Neuro-Fuzzy-Based IoT Assisted Power Monitoring System for Smart Grid”, IEEE Access, Vol. 9, Dec 2021.

2. Kaushal RK, Pagidimalla PRP, Nalini C, Kumar D. Predicting and Propagation of Diabetic Foot Infection by Deep Learning Model. EAI Endorsed Trans Perv Health Tech [Internet]. 2024 Apr. 2 [cited 2024 Jul. 3];10.https://publications.eai.eu/index.php/phat/article/view/5614

3. E. Parimalasundar, B. Hemanthkumar, B. Roshini, G. M. Hemalatha, C. R. Preethi and D. V. S. Krishna, “Enhancing Efficiency and Improving Power Quality in Grid-Connected 17-Level Multilevel Inverters for Renewable Energy Applications,” 2o24 Second International Conference on Smart Technologies for Power and Renewable Energy (SPECon), Ernakulam, India, 2024.

4. “Controstrategies for grid-connected hybrid renewable energy systems: Integrating modified direct torque control based doubly fed induction generator and ANFIS based maximum power point tracking for solar PV generation;Mihir Mehta Bhinal;e-Prime - Advances in Electrical Engineering, Electronics and Energy

5. Dharamalla Chandra Sekhar, PokanatiVeeraVenkata Rama Rao, RachamaduguKiranmayi, “A novel efficient adaptive-neuro fuzzy inference system control based smart grid to enhance power quality,” International Journal of Electrical and Computer Engineering (IJECE) Vol. 12, No. 4, August 2022, pp. 3375 ~ 3387 ISSN:2o88-8708,doi:0.11591/ijece.v12i4.pp3375-3387-3375,Journalhomepage: http://ijece.iaescore.com

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