Optimizing Solar Power Plant Efficiency through Advanced Analytical Framework and Comparative Analysis
Abstract
As the world embraces the transition towards renewable energy, the optimization of solar power plants becomes paramount. In this research, we present a comprehensive framework that leverages advanced analytical methodologies to address critical operational challenges and elevate the efficiency of solar power generation. Our framework encompasses data preprocessing, time series analysis, anomaly detection, and equipment performance assessment, synergistically combining their strengths to offer a holistic solution.
The heart of our proposed approach lies in the precision and efficacy of anomaly detection. We introduce two powerful techniques—LSTM Autoencoder and Isolation Forest—to identify anomalies and equipment underperformance. Through meticulous evaluation, we showcase their comparative performance, revealing the nuanced strengths of each. Visualizations depict the model's proficiency in pinpointing anomalies, with LSTM Autoencoder emerging as a standout performer, adept at capturing even subtle deviations from expected patterns.
Our research extends beyond detection to equip stakeholders with real-time insights. The visualization of daily yield trends uncovers potential data anomalies, enabling timely intervention and rectification. Additionally, we address equipment failures by harnessing random forest modeling to establish a robust relationship between irradiance, temperature, and DC power. This approach provides a powerful tool for real-time condition monitoring and fault detection, enabling proactive maintenance and enhancing operational resilience.
The results underscore the transformative impact of our framework. Visual representations offer a compelling narrative of their capabilities, guiding their strategic deployment in solar power plant operations. Our research not only advances solar power plant optimization but also establishes a roadmap for future developments. By refining anomaly detection models, integrating predictive maintenance strategies, and scaling our approach across diverse plant settings, we chart a course towards sustainable energy excellence.
In summation, our research offers a pioneering contribution to the realm of solar power plant optimization. Through an integrated analytical framework, we harness the power of data-driven insights to usher in a new era of efficiency, reliability, and sustainability in solar power generation.
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PDFDOI (PDF): https://doi.org/10.20508/ijrer.v14i2.14587.g8894
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Online ISSN: 1309-0127
Publisher: Gazi University
IJRER is cited in SCOPUS, EBSCO, WEB of SCIENCE (Clarivate Analytics);
IJRER has been cited in Emerging Sources Citation Index from 2016 in web of science.
WEB of SCIENCE in 2025;
h=35,
Average citation per item=6.59
Last three Years Impact Factor=(1947+1753+1586)/(146+201+78)=5286/425=12.43
Category Quartile:Q4