Hermansyah Hermansyah
Akademi Komunitas Industri Manufaktur Bantaeng, Indonesia

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Performance Comparison of FLC, P&O, and IC Algorithms for MPPT Optimization in DB-Converter Under Dynamic Partial Shading Hermansyah Hermansyah; Farid Dwi Murdianto; Alamsyah Achmad
Jurnal Media Elektrik Vol. 23 No. 1 (2025): MEDIA ELEKTRIK
Publisher : Jurusan Pendidikan Teknik Elektro

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.59562/metrik.v23i1.11091

Abstract

Solar energy can be converted into electrical energy using photovoltaic (PV) panels. The maximum output power of a PV system is achieved when solar irradiance falls directly on the panel's surface without obstruction. However, in practical conditions, solar irradiance is often disturbed by moving or static objects, which causes more than one maximum power point to appear on the P-V characteristic curve. This condition cannot be accurately addressed by conventional MPPT algorithms, thereby requiring advanced methods for partial shading conditions. Various partial shading algorithms have been developed, ranging from traditional methods to artificial intelligence-based approaches. This study presents a comparison between the FLC, P&O, and IC methods in the application of MPPT in the Double Boost Converter under dynamic partial shading conditions. The accuracy of the three methods is evaluated through simulation. The results indicate that all three methods are capable of addressing the effects of partial shading and can maintain high tracking accuracy. Moreover, the FLC method shows better performance in minimizing output oscillations, while the P and O method demonstrates superior tracking precision in reaching the global maximum power point.
The Effect of Height and Water Discharge on the Output of Electrical Energy Generated at the Sawitto Micro-Hydro Power Plant (PLTM) in Pinrang Regency Syamril Syamril; Muhammad Yusuf Mappeasse; Hermansyah Hermansyah
Energy Insights Vol. 1 No. 2 (2026): Energy Insights
Publisher : Teknik Elektro, Universitas Negeri Makassar

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.59562/ei.v1i2.11470

Abstract

Objective:
This study aims to analyze the relationship between water discharge and water level and their influence on electrical output performance in a Micro Hydro Power Plant (PLTM) using empirical operational data from the Sawitto PLTM in Pinrang Regency, Indonesia. Methods:
A quantitative ex-post facto research design was employed using monthly operational data on water discharge, water level, and electrical output collected from three generating units. The data were analyzed using descriptive statistics and multiple linear regression modeling implemented in Microsoft Excel and MATLAB. Statistical significance was evaluated using t-tests for partial effects and F-tests for simultaneous effects to assess the reliability of the predictive model. Results:
The regression analysis indicates that water discharge and water level collectively explain a substantial proportion of the variation in electrical output, as reflected by high coefficients of determination across generating units. However, individual statistical tests revealed that neither variable was statistically significant at the 5% level, suggesting that additional technical and operational factors, such as turbine efficiency, mechanical condition, hydraulic losses, and seasonal water availability, influence system performance. The findings also reveal discrepancies between theoretical and actual power output, indicating the presence of efficiency losses and operational constraints under field conditions. Novelty:
This study provides empirical evidence based on real operational data from a rural micro-hydro power plant and offers a practical engineering perspective by highlighting the interaction between hydrological variability and technical system performance, offering insights for improving predictive modeling and operational management of small-scale renewable energy systems.