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EAI Endorsed Transactions on Energy Web
<?xml version="1.0" encoding="utf-8"?> <rdf:RDF xmlns:rdf="http://www.w3.org/1999/02/22-rdf-syntax-ns#" xmlns="http://purl.org/rss/1.0/" xmlns:dc="http://purl.org/dc/elements/1.1/" xmlns:prism="http://prismstandard.org/namespaces/1.2/basic/" xmlns:cc="http://web.resource.org/cc/"> <channel rdf:about="https://publications.eai.eu/index.php/ew"> <title>EAI Endorsed Transactions on Energy Web</title> <link>https://publications.eai.eu/index.php/ew</link> <description><p>EAI Endorsed Transactions on Energy Web is an open access, peer-reviewed scholarly journal focused on cross-section topics related to IT and Energy. The journal publishes research articles, review articles, commentaries, editorials, technical articles, and short communications with a continuous frequency.</p> <p><strong>INDEXING</strong>: Scopus (CiteScore: 2.2), Compendex, DOAJ, ProQuest, EBSCO, DBLP</p></description> <dc:publisher>EAI</dc:publisher> <dc:language>en-US</dc:language> <prism:publicationName>EAI Endorsed Transactions on Energy Web</prism:publicationName> <prism:issn>2032-944X</prism:issn> <prism:copyright><p>This is an open-access article distributed under the terms of the Creative Commons Attribution <a href="https://creativecommons.org/licenses/by/3.0/" target="_blank" rel="noopener">CC BY 3.0</a> license, which permits unlimited use, distribution, and reproduction in any medium so long as the original work is properly cited.</p></prism:copyright> <items> <rdf:Seq> <rdf:li rdf:resource="https://publications.eai.eu/index.php/ew/article/view/3669"/> <rdf:li rdf:resource="https://publications.eai.eu/index.php/ew/article/view/5950"/> <rdf:li rdf:resource="https://publications.eai.eu/index.php/ew/article/view/7728"/> <rdf:li rdf:resource="https://publications.eai.eu/index.php/ew/article/view/5547"/> <rdf:li rdf:resource="https://publications.eai.eu/index.php/ew/article/view/7224"/> <rdf:li rdf:resource="https://publications.eai.eu/index.php/ew/article/view/7325"/> </rdf:Seq> </items> </channel> <item rdf:about="https://publications.eai.eu/index.php/ew/article/view/3669"> <title>Enhancing Power Grid Reliability with AGC and PSO: Insights from the Timimoun Photovoltaic Park</title> <link>https://publications.eai.eu/index.php/ew/article/view/3669</link> <description><p>This article investigates the impact of integrating Variable Renewable Energy (VRE), specifically solar energy from the Timimoun Photovoltaic Park, on the PIAT electrical grid stability in southern Algeria. The study focuses on how fluctuations in power demand and changes in weather conditions can affect grid frequency control, potentially leading to transient stability issues. To address these challenges, the research proposes the implementation of an Automatic Generation Control (AGC) system combined with the Particle Swarm Optimization (PSO) algorithm to optimize solar energy distribution. This approach effectively regulates real-time frequency deviations resulting from VRE integration, ensuring balanced supply and demand, and controllable power factor injection. The findings demonstrate that the integration of AGC and PSO stabilizes the frequency at the Timimoun Photovoltaic Park and reduces total active losses in the PIAT network by 13.88%. Additionally, strategic power factor control at the injection buses ensures optimal power quality and maximizes the utilization of the photovoltaic park, leading to a 4.84% reduction in the PIAT grid's reliance on gas turbines. This approach contributes to lowering operational costs, reducing carbon emissions, and supporting a transition to greener energy.</p></description> <dc:creator>Ali Abderrazak Tadjeddine</dc:creator> <dc:creator>Iliace Arbaoui</dc:creator> <dc:creator>Ridha Ilyas Bendjillali</dc:creator> <dc:creator>Abdelkader Chaker</dc:creator> <dc:rights> Copyright (c) 2024 EAI Endorsed Transactions on Energy Web https://creativecommons.org/licenses/by/3.0/ </dc:rights> <cc:license rdf:resource="https://creativecommons.org/licenses/by/3.0/" /> <dc:date>2024-11-22</dc:date> <prism:publicationDate>2024-11-22</prism:publicationDate> <prism:volume>12</prism:volume> <prism:doi>10.4108/ew.3669</prism:doi> </item> <item rdf:about="https://publications.eai.eu/index.php/ew/article/view/5950"> <title>Improving Fault Classification Accuracy Using Wavelet Transform and Random Forest with STATCOM Integration</title> <link>https://publications.eai.eu/index.php/ew/article/view/5950</link> <description><p class="ICST-abstracttext"><span lang="EN-GB">INTRODUCTION: Fault detection in transmission lines is critical for keeping the grid stable and reliable. This research offers a new methodology, the Wavelet Transform-Enhanced Random Forest Fault Classification System with STATCOM Integration (WERFCS-SI), to solve the shortcomings of existing fault detection approaches. </span></p><p class="ICST-abstracttext"><span lang="EN-GB">OBJECTIVES: The integration of STATCOM-compensated transmission lines improves fault detection capabilities. The Wavelet Transform finds faults by analysing approximation and detail coefficients, allowing for multiresolution analysis and exact fault localisation. </span></p><p class="ICST-abstracttext"><span lang="EN-GB">METHODS: Feature selection approaches, such as information gain, are used to discover and keep relevant features, increasing classification accuracy. </span></p><p class="ICST-abstracttext"><span lang="EN-GB">RESULTS: Due to its ability to process complex, high-dimensional data and identify minute feature connections, Random Forest (RF) is utilised for classification tasks. The proposed approach improves RF model performance while maintaining precision. </span></p><p class="ICST-abstracttext"><span lang="EN-GB">CONCLUSION: The integrated technique simplifies fault categorisation, increasing accuracy and efficiency by detecting problems in the transmission line system.</span></p></description> <dc:creator>Shradha Umathe</dc:creator> <dc:creator>Prema Daigavane</dc:creator> <dc:creator>Manoj Daigavane</dc:creator> <dc:rights> Copyright (c) 2024 EAI Endorsed Transactions on Energy Web https://creativecommons.org/licenses/by/3.0/ </dc:rights> <cc:license rdf:resource="https://creativecommons.org/licenses/by/3.0/" /> <dc:date>2024-11-05</dc:date> <prism:publicationDate>2024-11-05</prism:publicationDate> <prism:volume>12</prism:volume> <prism:doi>10.4108/ew.5950</prism:doi> </item> <item rdf:about="https://publications.eai.eu/index.php/ew/article/view/7728"> <title>Fuzzy Allocation Optimization Algorithm for High-Density Storage Locations with Low Energy Consumptions</title> <link>https://publications.eai.eu/index.php/ew/article/view/7728</link> <description><p class="ICST-abstracttext" style="margin-left: 0in;"><span lang="EN-GB">The global demand for stored and processed data has surged due to the development of IoTs and similar computational structures, which has led to further energy consumption by concentrated data storage facilities and thus the demands of global energy and environmental needs. The current paper introduces Fuzzy Allocation Optimization Algorithm to mitigate energy consumption in high storage density settings. It uses the principles of Fuzzy logic to determine the best way to assign the tasks in relation to storage density necessity, urgency and energy consumption. Thus, the proposed approach incorporates fuzzy inference systems with multi-objective optimization methods where location of storage is dynamically assessed and assigned according to energy efficiency parameters. The findings of the simulation and case study prove that the algorithm is successful in saving energy while at the same time lowering storage I/O response time, which provides a viable solution to energy issues in evolving data centres. This work satisfies the lack of energy efficient algorithms in high density storage areas and responds to the recent calls for green technology and smart utilization of resources in the energy field. The findings are used in the promotion of significant IT infrastructures towards developing the next generation of energy efficient data centers with respect to Future Internet and evolving energy web environments.</span></p></description> <dc:creator>Ziyi Gao</dc:creator> <dc:creator>Linze Huang</dc:creator> <dc:creator>Zhigang Wu</dc:creator> <dc:creator>Zhenyan Wu</dc:creator> <dc:creator>Chunhui Li</dc:creator> <dc:rights> Copyright (c) 2024 EAI Endorsed Transactions on Energy Web https://creativecommons.org/licenses/by/3.0/ </dc:rights> <cc:license rdf:resource="https://creativecommons.org/licenses/by/3.0/" /> <dc:date>2024-11-04</dc:date> <prism:publicationDate>2024-11-04</prism:publicationDate> <prism:volume>12</prism:volume> <prism:doi>10.4108/ew.7728</prism:doi> </item> <item rdf:about="https://publications.eai.eu/index.php/ew/article/view/5547"> <title>Construction and Application Analysis of an Intelligent Distribution Network Identification System Based on Deep Neural Networks</title> <link>https://publications.eai.eu/index.php/ew/article/view/5547</link> <description><p>INTRODUCTION: At present, the communication between measuring data and network topology in the distribution system cannot be accurately established. Therefore, deep neural networks were utilized to learn the mapping relationship between the measurement data and network topology, achieving topology structure discrimination under different working conditions.</p><p>OBJECTIVES: This study aims to establish a machine learning-based Intelligent Distribution Network (IDN) online topology recognition model to address the limited measurement equipment in distribution networks and improve the accuracy and efficiency of network topology recognition.</p><p>METHODS: First, light GBM was used for feature selection to reduce computational complexity and improve learning efficiency. Then, a DNN model was constructed for topological identification and enhances the model scalability through incremental and transfer learning mechanisms. In addition, the Cross-Validation Grid Search Algorithm (GSA) was used to optimize the hyperparameters to ensure that the model can achieve the optimal performance on different data sets. Finally, a new intelligent distribution network identification model (Intelligent Distribution Electricity Network Identification System, IDENIS) was constructed.</p><p>RESULTS: The study was experimentally verified on the distribution system of IEEE 33 and PG&amp;E 69. The experimental results showed that the accuracy of the DNN-based model reached 0.9817 on the test set, while the accuracy after feature selection only decreased by 1.3%, and the features decreased by 81.8%. In the PG&amp;E 69 node system, the features were reduced by 85.5%, while the identification accuracy was decreased by only 0.51%. These results demonstrated that the proposed method maintained high identification accuracy while reducing the computational resource consumption.</p><p>CONCLUSION: Its efficient computing speed fully meets the real-time requirements in practical applications. This paper provides new ideas and methods for achieving intelligent distribution network topology recognition of high proportion distributed power sources.</p></description> <dc:creator>Yu Ma</dc:creator> <dc:rights> Copyright (c) 2024 EAI Endorsed Transactions on Energy Web https://creativecommons.org/licenses/by/3.0/ </dc:rights> <cc:license rdf:resource="https://creativecommons.org/licenses/by/3.0/" /> <dc:date>2024-11-21</dc:date> <prism:publicationDate>2024-11-21</prism:publicationDate> <prism:volume>12</prism:volume> <prism:doi>10.4108/ew.5547</prism:doi> </item> <item rdf:about="https://publications.eai.eu/index.php/ew/article/view/7224"> <title>Research on Fault Diagnosis Method for Photovoltaic Array Based on XGBoost Algorithm</title> <link>https://publications.eai.eu/index.php/ew/article/view/7224</link> <description><p class="ICST-abstracttext"><span lang="EN-GB">INTRODUCTION: Photovoltaic (PV) energy sources frequently experience issues, including fragmentation, open-circuit, short-circuiting, and other common and hazardous problems. The current focus of PV research is on fault detection within solar arrays. Traditional models encounter challenges in identifying errors due to uncertainties in panel settings and the complex nature of the actual PV structure.</span></p><p class="ICST-abstracttext"><span lang="EN-GB">OBJECTIVES: This study aims to introduce a novel Extreme Gradient Boosting (XGBoost) approach for fault diagnosis in PV arrays.</span></p><p class="ICST-abstracttext"><span lang="EN-GB">METHODS: The XGBoost algorithm is trained using collected PV array defect data samples. Data preprocessing is performed to manage missing values and remove noisy data. Feature extraction is conducted using Linear Discriminant Analysis (LDA) to improve detection accuracy. To further enhance XGBoost鈥檚 performance, the World Cup Optimization (WCO) approach is applied to select optimal features from the extracted data. Fault detection is then conducted using the XGBoost algorithm on the processed data. Various indicators are utilized for performance assessment within the Python environment.</span></p><p class="ICST-abstracttext"><span lang="EN-GB">RESULTS: The comparative analysis demonstrates that this research improves fault detection efficiency in PV arrays compared to existing methodologies.</span></p><p class="ICST-abstracttext"><span lang="EN-GB">CONCLUSION: The study presents an effective method for enhancing fault detection in PV systems, showcasing the advantages of the XGBoost and WCO-based approach over conventional methods.</span></p></description> <dc:creator>Zongyu Zhang</dc:creator> <dc:creator>Bodi Liu</dc:creator> <dc:creator>Chun Xie</dc:creator> <dc:creator>Ermei Yan </dc:creator> <dc:rights> Copyright (c) 2024 EAI Endorsed Transactions on Energy Web https://creativecommons.org/licenses/by/3.0/ </dc:rights> <cc:license rdf:resource="https://creativecommons.org/licenses/by/3.0/" /> <dc:date>2024-11-19</dc:date> <prism:publicationDate>2024-11-19</prism:publicationDate> <prism:volume>12</prism:volume> <prism:doi>10.4108/ew.7224</prism:doi> </item> <item rdf:about="https://publications.eai.eu/index.php/ew/article/view/7325"> <title>Research on a New Maximum Power Tracking Algorithm for Photovoltaic Power Generation Systems</title> <link>https://publications.eai.eu/index.php/ew/article/view/7325</link> <description><p class="ICST-abstracttext"><span lang="EN-GB">INTRODUCTION: Significant advances have been made in photovoltaic (PV) systems, resulting in the development of new Maximum Power Point Tracking (MPPT) methods. The output of PV systems is heavily influenced by the varying performance of solar-facing PV panels under different weather conditions. Partial shading (PS) conditions pose additional challenges, leading to multiple peaks in the power-voltage (P-V) curve and reduced output power. Therefore, controlling MPPT under partial shading conditions is a complex task.</span></p><p class="ICST-abstracttext"><span lang="EN-GB">OBJECTIVES: This study aims to introduce a novel MMPT algorithm based on the ant colony incorporated bald eagle search optimization (AC-BESO) method to enhance the efficiency of PV systems.</span></p><p class="ICST-abstracttext"><span lang="EN-GB">METHODS: The effectiveness of the proposed MPPT algorithm was established through a series of experiments using MATLAB software, tested under various levels of solar irradiance.</span></p><p class="ICST-abstracttext"><span lang="EN-GB">RESULTS: Compared to existing methods, the proposed AC-BESO algorithm stands out for its simplicity in implementation and reduced computational complexity. Furthermore, its tracking performance surpasses that of conventional methods, as validated through comparative analyses.</span></p><p class="ICST-abstracttext"><span lang="EN-GB">CONCLUSION: This study confirms the efficacy of the AC-BESO method over traditional strategies. It serves as a framework for selecting an MPPT approach when designing PV systems.</span></p></description> <dc:creator>Lei Shi</dc:creator> <dc:creator>Zongyu Zhang</dc:creator> <dc:creator>Yongrui Yu</dc:creator> <dc:creator>Chun Xie</dc:creator> <dc:creator>Tongbin Yang</dc:creator> <dc:rights> Copyright (c) 2024 EAI Endorsed Transactions on Energy Web https://creativecommons.org/licenses/by/3.0/ </dc:rights> <cc:license rdf:resource="https://creativecommons.org/licenses/by/3.0/" /> <dc:date>2024-11-19</dc:date> <prism:publicationDate>2024-11-19</prism:publicationDate> <prism:volume>12</prism:volume> <prism:doi>10.4108/ew.7325</prism:doi> </item> </rdf:RDF>