A Contemplation on Electricity Meters In-Service Surveillance Assisted by Remote Error Monitoring
Abstract
:1. Introduction
2. Related References Overview
2.1. Standards and Regulations for Statistical Verification
2.2. Remote Error Monitoring Techniques
3. Suggested Applications of Remote Error Monitoring
3.1. Assisting In-Service Surveillance
- Referring to the observations of REM the producer may choose to replace meters exhibiting errors beyond tolerance limits. The decision is made solely by the producer (the owner of the lot of meters), it does not interfere with the sampling requirements but reduces the probability of rejecting the lot based on statistical verification completed using the remaining (not replaced) meters in the lot.
- Referring to the observations of REM the producer may decide to call for statistical verification earlier than at expiration of the verification period. This is the case when the producer sees the lot as unreliable and probably causing financial loss because of negative errors dominating the lot.
3.2. Producer and Consumer Business
- The producer installs remote meter error monitoring at his own cost and not only uses it for internal meter monitoring but offers contractual agreements to disclose the results of REM to a consumer. The consumer is free to sign such an agreement and gain access to REM of the meter measuring his or her revenue. If the consumer discovers that the meter errors are beyond the MPE (it is possible for some percentage of meters according to national regulations) he may ask a provider to check and replace the meter. On the other hand, the consumer may order the remote monitoring service driven by curiosity or seeking to compare consumption results with some internal submetering systems.
- Monitoring of consumers’ submeter errors using a smart revenue meter in the role of reference meter. In this application the REM service is orchestrated by the smart revenue meter acting as a sum meter for down-grid connected consumers’ submeters. HAN (home area network), NAN (neighboring area network), WAN (wide area network), enterprise SCADA systems protocols can be used to establish communication between the smart revenue meter and the submeter under monitoring [21,22], for instance using HomePlug protocol.
- Typically, sum (also called check or balance) meters are installed on the incoming feeder for monitoring of technical losses and/or electricity thefts in the grid [23]. Though check meters do not fall under the scope of legal metrology their measurement accuracy is of importance when making decisions about the status of the energy consumption changes in the distribution grid. Therefore, the error monitoring of the sum (check) meter itself using revenue meters becomes possible.
4. Verification Time Prediction
4.1. Reliability of Smart Meter and Error Drift
4.2. Prediction of Conformance Loss Moment
5. The Payback Period of Remote Error Monitoring
6. Discussion and Future Work
7. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Nakutis, Ž.; Kaškonas, P. A Contemplation on Electricity Meters In-Service Surveillance Assisted by Remote Error Monitoring. Energies 2020, 13, 5245. https://doi.org/10.3390/en13205245
Nakutis Ž, Kaškonas P. A Contemplation on Electricity Meters In-Service Surveillance Assisted by Remote Error Monitoring. Energies. 2020; 13(20):5245. https://doi.org/10.3390/en13205245
Chicago/Turabian StyleNakutis, Žilvinas, and Paulius Kaškonas. 2020. "A Contemplation on Electricity Meters In-Service Surveillance Assisted by Remote Error Monitoring" Energies 13, no. 20: 5245. https://doi.org/10.3390/en13205245
APA StyleNakutis, Ž., & Kaškonas, P. (2020). A Contemplation on Electricity Meters In-Service Surveillance Assisted by Remote Error Monitoring. Energies, 13(20), 5245. https://doi.org/10.3390/en13205245