Biconnected tree for robust data collection in advanced metering infrastructure

Author(s):  
Joseph Kamto ◽  
Lijun Qian ◽  
Wei Li ◽  
Zhu Han
2013 ◽  
Vol 805-806 ◽  
pp. 1210-1214
Author(s):  
Kai Wang ◽  
Bo Zeng ◽  
Hong Liu ◽  
Long Wang ◽  
Tao Zhu

In order to constructure and promote the intelligent grid demonstration community project, this paper presents the functional framework and business model of Advanced Metering Infrastructure (AMI). Firstly, the basic conception of AMI is introduced. Secondly, the functional framework of AMI is constructured, which contains metering data management, user interaction, electricity data collection and electrical appliances control. After that, the business model of metering data managing, user interacting, electricity data collecting and electrical appliances controlling are proposed. At last, the whole work in this paper is concluded. The functional framework and business model provide the theoretical reference for the construction of the intelligent grid demonstration community project in China.


Author(s):  
KISHORE PESHWANI ◽  
SWAPNA CHOUDHARY

An Energy Efficient Advanced Metering infrastructure (EEAMI) is proposed for meter data collection and energy management. The best solution for collecting data from electronic/digital energy meters, based on displacement of public, tends to be replaced by modern solutions: Automated Meter Reading (AMR). AMR means to automatic collection of data from meters and send them to a central station. An Energy efficient Advanced Metering Infrastructure (AMI) is an AMR infrastructure with bidirectional meters. These meters are called smart meters they are connected to the gateway through power lines and gateway communicates to the central station which can be a computer. The central station communicates through GSM.


Smart Cities ◽  
2021 ◽  
Vol 4 (1) ◽  
pp. 195-203
Author(s):  
Eric Garrison ◽  
Joshua New

While urban-scale building energy modeling is becoming increasingly common, it currently lacks standards, guidelines, or empirical validation against measured data. Empirical validation necessary to enable best practices is becoming increasingly tractable. The growing prevalence of advanced metering infrastructure has led to significant data regarding the energy consumption within individual buildings, but is something utilities and countries are still struggling to analyze and use wisely. In partnership with the Electric Power Board of Chattanooga, Tennessee, a crude OpenStudio/EnergyPlus model of over 178,000 buildings has been created and used to compare simulated energy against actual, 15-min, whole-building electrical consumption of each building. In this study, classifying building type is treated as a use case for quantifying performance associated with smart meter data. This article attempts to provide guidance for working with advanced metering infrastructure for buildings related to: quality control, pathological data classifications, statistical metrics on performance, a methodology for classifying building types, and assess accuracy. Advanced metering infrastructure was used to collect whole-building electricity consumption for 178,333 buildings, define equations for common data issues (missing values, zeros, and spiking), propose a new method for assigning building type, and empirically validate gaps between real buildings and existing prototypes using industry-standard accuracy metrics.


2021 ◽  
pp. 1-1
Author(s):  
Wen Tian ◽  
Miao Du ◽  
Xiaopeng Ji ◽  
Guangjie Liu ◽  
Yuewei Dai ◽  
...  

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