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Automated Investigation of Power Structures Annoyance Data with Smart Grid Big Data Perception

  • R. LavanyaEmail author
  • V. Thanigaivelan
Conference paper
Part of the Lecture Notes on Data Engineering and Communications Technologies book series (LNDECT, volume 39)

Abstract

Scrutiny of liability and instability play vital part in protected and trustworthy electrical power supply. Digital error recorders (DER) facilitate digital tracking of the power schemes transitory actions with elevated excellence and huge extent. Though, conversion of statistics to information, expectedly in a computerized way, is a big confront for the power utilities universal. This is a primary focus for apprehending the ‘Smart Grid’. In this paper, the structural design and stipulation for the principal and the derivative information for the computerized schemes are portrayed. This affords qualitative and quantitative strategy about the information to obtain away of the annoyance data. An enumerated approximation of big data for the substations has been anticipated in the paper. Probable customs of dropping the big data by employing intellectual segmentation procedures are depicted, corroborated by factual instance. Deployment of centralized security and distant annoyance scrutiny for dropping big annoyance data are also conversed. Thus, in demand to form a precise real-time observing and predicting scheme, dual original ideas have been engaged into interpretation in the scheme proposal. First, all accessible statistics from diverse bases, has been combined, whereas a communiqué socket has been intended where numerous simulated specialists interrelate and mark conclusions on data.

Keywords

Smart grid Digital tracking Power system Big data Artificial experts 

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Copyright information

© Springer Nature Switzerland AG 2020

Authors and Affiliations

  1. 1.Department of Computer Science and EngineeringSRM Institute of Science and TechnologyChennaiIndia
  2. 2.Department of Mechanical EngineeringSRM Institute of Science and TechnologyChennaiIndia

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