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Detection of energy theft and defective smart meters in smart grids using linear regression
Affiliation:1. School of Computer and Software, Nanjing University of Information Science and Technology, Nanjing, 210044, China;2. Department of Computer Science, the University of Alabama, Tuscaloosa, AL 35487-0290, USA;1. School of Computer & Software, Nanjing University of Information Science & Technology, Nanjing 210044, China;2. Department of Computer Science, The University of Alabama, Tuscaloosa, AL 35487-0290, USA
Abstract:The utility providers are estimated to lose billions of dollars annually due to energy theft. Although the implementation of smart grids offers technical and social advantages, the smart meters deployed in smart grids are susceptible to more attacks and network intrusions by energy thieves as compared to conventional mechanical meters. To mitigate non-technical losses due to electricity thefts and inaccurate smart meters readings, utility providers are leveraging on the energy consumption data collected from the advanced metering infrastructure implemented in smart grids to identify possible defective smart meters and abnormal consumers’ consumption patterns. In this paper, we design two linear regression-based algorithms to study consumers’ energy utilization behavior and evaluate their anomaly coefficients so as to combat energy theft caused by meter tampering and detect defective smart meters. Categorical variables and detection coefficients are also introduced in the model to identify the periods and locations of energy frauds as well as faulty smart meters. Simulations are conducted and the results show that the proposed algorithms can successfully detect all the fraudulent consumers and discover faulty smart meters in a neighborhood area network.
Keywords:Energy theft detection  Defective meter detection  Smart Grid  Linear regression  Categorical variable  NTL"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  k0035"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  non-technical loss  UP"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  k0045"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  utility provider  SG"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  k0055"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  Smart Grid  SM"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  k0065"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  smart meter  AMI"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  k0075"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  Advanced Metering Infrastructure  NAN"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  k0085"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  neighborhood area network  MLR"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  k0095"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  multiple linear regression  RFID"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  k0105"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  radio frequency identification  SVM"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  k0115"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  support vector machine  GA"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  k0125"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  genetic algorithm  LUD"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  k0135"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  LU decomposition  DS"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  k0145"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  distribution station  TL"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  k0155"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  technical loss  LSE"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  k0165"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  linear system of equations  TOU"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  k0175"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  Time-of-Use
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