Journal Article10.1007/S42044-019-00043-0
A bibliometric survey on incremental clustering algorithm for electricity smart meter data analysis
Archana Chaudhari,Preeti Mulay +1 more
- 01 Dec 2019
- Vol. 2, Iss: 4, pp 197-206
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TL;DR: The purpose of the paper is to dig out all the researches in smart meter data analytics and incremental clustering to make the concept clear for future researchers.
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Abstract: Smart meters (SMs) are an electronic device for recording customer energy consumption in the time intervals of an hour or less. The use of SMs incurs benefits to people in various aspects such as environmental, social, and economical. SMs frequently communicate with utility companies for monitoring and management of energy usage as well as with customers for observing their energy consumption. It generates a considerable amount of electricity smart meter data incrementally. In the clustering task, instead of re-clustering all data from scratch on the influx of new data, it is better to update clustering result incrementally based on new as well as old data. Thus, an incremental clustering approach is an essential way to overcome the issue related to clustering with growing data. The purpose of the paper is to dig out all the researches in smart meter data analytics and incremental clustering to make the concept clear for future researchers. This bibliometric analysis is implemented using the repositories such as Scopus, Google Scholar, ResearchGate, and the tools like Gephi, Table2Net, and GPS Visualizer, etc. The study revealed that the maximum number of the reviews on smart meter and incremental clustering had explored very recently.
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Citations
Control and Optimisation of Power Grids Using Smart Meter Data: A Review
TL;DR: In this article , the authors provide a comprehensive review of the applications of smart meters in the control and optimisation of power grids to support a smooth energy transition towards the renewable energy future.
63
A Bibliometric Analysis of Digital Image Forensics
TL;DR: The results of this study indicate an increasing awareness of DIF in countries like China, India, and Italy along with an increase in publications since 2018, specifically, with the application of deep learning techniques for DIF.
47
Distributed Incremental Clustering Algorithms: A Bibliometric and Word-Cloud Review Analysis
TL;DR: Understanding the current status of “Distributed Incremental Clustering Algorithms (DICA),” its scope, limitations and other details so as to formulate better than the best algorithm in future is focused on.
30
Smart Energy Meter: Applications, Bibliometric Reviews and Future Research Directions
TL;DR: This research study revealed that the insights of the SEMs data-enabled significant advancement in many fields such as energy consumption pattern analysis and prediction, demand response, load profiling, and direct-indirect phone charging analysis.
17
Algorithmic analysis of intelligent electricity meter data for reduction of energy consumption and carbon emission
Archana Chaudhari,Preeti Mulay +1 more
TL;DR: A Distributed Log-likelihood Based Gradational Clustering Algorithm on Microsoft Azure for analysis of IEM data will be extremely useful for maintaining the environment by reducing pollution via carbon production by power plants.
14
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