Quantifying Performance of Distribution System State Estimators in Supporting Advanced Applications
A common challenge forward-looking utilities are facing when deploying advanced applications that facilitate voltage optimization and service restoration is to provide adequate sensor data for a Distribution System State Estimator (DSSE) so that it provides sufficiently accurate estimates of the sys...
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Online Access: | https://ieeexplore.ieee.org/document/9076073/ |
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doaj-064cb246a17f4fccb43742efaeaf82c82021-04-05T17:40:24ZengIEEEIEEE Open Access Journal of Power and Energy2687-79102020-01-01715116210.1109/OAJPE.2020.29896979076073Quantifying Performance of Distribution System State Estimators in Supporting Advanced ApplicationsJens Schoene0Muhammad Humayun1Brenden Russell2Gary Sun3Josh Bui4Armando Salazar5Noah Badayos6Minqi Zhong7Moein Lak8Christopher R. Clarke9EnerNex, Knoxville, TN, USAEnerNex, Knoxville, TN, USASouthern California Edison, Rosemead, CA, USASouthern California Edison, Rosemead, CA, USASouthern California Edison, Rosemead, CA, USASouthern California Edison, Rosemead, CA, USASouthern California Edison, Rosemead, CA, USASouthern California Edison, Rosemead, CA, USASouthern California Edison, Rosemead, CA, USASouthern California Edison, Rosemead, CA, USAA common challenge forward-looking utilities are facing when deploying advanced applications that facilitate voltage optimization and service restoration is to provide adequate sensor data for a Distribution System State Estimator (DSSE) so that it provides sufficiently accurate estimates of the system states to enable these applications in an operational environment. We developed a stochastic method that informs telemetry and operational forecasting requirements by quantifying the DSSE performance in supporting advanced applications. The performance metric used is the α risk, which is the likelihood of a DSSE giving a false positive when determining if voltage and loading constraints are met. We applied this method to six real-world industrial/commercial/residential distribution circuits and evaluated α risk improvements provided by circuit-level sensors and operational forecasting. The results show that a combination of sensor deployment schemes was needed to reduce the α risk for undervoltage to effectively zero. Also, sensors deployed at large loads significantly reduce c risks on industrial/commercial circuits while operational forecasting consistently reduces α risks on all circuits. The practical method does not require advanced mathematics and can be readily used by utilities to inform grid modernization investments in sensor technologies so that advanced applications can be executed optimally and violation-free.https://ieeexplore.ieee.org/document/9076073/Distribution management systemPower system restorationSensor placementSituational awarenessSmart gridState estimation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jens Schoene Muhammad Humayun Brenden Russell Gary Sun Josh Bui Armando Salazar Noah Badayos Minqi Zhong Moein Lak Christopher R. Clarke |
spellingShingle |
Jens Schoene Muhammad Humayun Brenden Russell Gary Sun Josh Bui Armando Salazar Noah Badayos Minqi Zhong Moein Lak Christopher R. Clarke Quantifying Performance of Distribution System State Estimators in Supporting Advanced Applications IEEE Open Access Journal of Power and Energy Distribution management system Power system restoration Sensor placement Situational awareness Smart grid State estimation |
author_facet |
Jens Schoene Muhammad Humayun Brenden Russell Gary Sun Josh Bui Armando Salazar Noah Badayos Minqi Zhong Moein Lak Christopher R. Clarke |
author_sort |
Jens Schoene |
title |
Quantifying Performance of Distribution System State Estimators in Supporting Advanced Applications |
title_short |
Quantifying Performance of Distribution System State Estimators in Supporting Advanced Applications |
title_full |
Quantifying Performance of Distribution System State Estimators in Supporting Advanced Applications |
title_fullStr |
Quantifying Performance of Distribution System State Estimators in Supporting Advanced Applications |
title_full_unstemmed |
Quantifying Performance of Distribution System State Estimators in Supporting Advanced Applications |
title_sort |
quantifying performance of distribution system state estimators in supporting advanced applications |
publisher |
IEEE |
series |
IEEE Open Access Journal of Power and Energy |
issn |
2687-7910 |
publishDate |
2020-01-01 |
description |
A common challenge forward-looking utilities are facing when deploying advanced applications that facilitate voltage optimization and service restoration is to provide adequate sensor data for a Distribution System State Estimator (DSSE) so that it provides sufficiently accurate estimates of the system states to enable these applications in an operational environment. We developed a stochastic method that informs telemetry and operational forecasting requirements by quantifying the DSSE performance in supporting advanced applications. The performance metric used is the α risk, which is the likelihood of a DSSE giving a false positive when determining if voltage and loading constraints are met. We applied this method to six real-world industrial/commercial/residential distribution circuits and evaluated α risk improvements provided by circuit-level sensors and operational forecasting. The results show that a combination of sensor deployment schemes was needed to reduce the α risk for undervoltage to effectively zero. Also, sensors deployed at large loads significantly reduce c risks on industrial/commercial circuits while operational forecasting consistently reduces α risks on all circuits. The practical method does not require advanced mathematics and can be readily used by utilities to inform grid modernization investments in sensor technologies so that advanced applications can be executed optimally and violation-free. |
topic |
Distribution management system Power system restoration Sensor placement Situational awareness Smart grid State estimation |
url |
https://ieeexplore.ieee.org/document/9076073/ |
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