Publication:
Big Data Analytics Using Cloud Computing Based Frameworks for Power Management Systems: Status, Constraints, and Future Recommendations

Date
2023
Authors
AL-Jumaili A.H.A.
Muniyandi R.C.
Hasan M.K.
Paw J.K.S.
Singh M.J.
Journal Title
Journal ISSN
Volume Title
Publisher
MDPI
Research Projects
Organizational Units
Journal Issue
Abstract
Traditional parallel computing for power management systems has prime challenges such as execution time, computational complexity, and efficiency like process time and delays in power system condition monitoring, particularly consumer power consumption, weather data, and power generation for detecting and predicting data mining in the centralized parallel processing and diagnosis. Due to these constraints, data management has become a critical research consideration and bottleneck. To cope with these constraints, cloud computing-based methodologies have been introduced for managing data efficiently in power management systems. This paper reviews the concept of cloud computing architecture that can meet the multi-level real-time requirements to improve monitoring and performance which is designed for different application scenarios for power system monitoring. Then, cloud computing solutions are discussed under the background of big data, and emerging parallel programming models such as Hadoop, Spark, and Storm are briefly described to analyze the advancement, constraints, and innovations. The key performance metrics of cloud computing applications such as core data sampling, modeling, and analyzing the competitiveness of big data was modeled by applying related hypotheses. Finally, it introduces a new design concept with cloud computing and eventually some recommendations focusing on cloud computing infrastructure, and methods for managing real-time big data in the power management system that solve the data mining challenges. � 2023 by the authors.
Description
Keywords
big data , cloud computing , data mining , parallel computing , power system , Cloud analytics , Computational efficiency , Computer architecture , Computing power , Data mining , Green computing , Information management , Parallel processing systems , Parallel programming , Power management , Cloud-computing , Data analytics , Parallel com- puting , Power , Power management systems , Power system , Process delay , Process time , System conditions , System status , Big data
Citation
Collections