Title :
Assessment of Feeder Voltage Regulation Using Statistical Process Control Methods
Author :
Mago, Nitika V. ; Santoso, Surya ; McGranaghan, Mark F.
Author_Institution :
Electr. Reliability Council of Texas, Taylor
Abstract :
Power-quality voltage and current transient waveform data have been explored rather extensively as the primary input data in predictive maintenance, automatic root-cause analysis, and evaluating system performance to indicate potential problems. Unfortunately, very few efforts have been directed toward making use of the voluminous steady-state data collected alongside waveform data. Therefore, this paper proposes to use steady-state data, particularly, rms voltage data to detect abnormal trend behavior that may be indicative of a problem. Specifically, this paper develops a statistical analysis algorithm based on the well-known statistical process control methods for assessing feeder voltage regulation performance. The assessment results can be used to indicate potential regulator problems as well. The efficacy of the method is demonstrated by applications to two sets of actual RMS voltage data.
Keywords :
power supply quality; statistical analysis; statistical process control; voltage control; RMS voltage data; automatic root-cause analysis; current transient waveform data; feeder voltage regulation; power-quality voltage; predictive maintenance; statistical analysis algorithm; statistical process control methods; steady-state data; voltage control; Performance analysis; Power quality; Predictive maintenance; Process control; Regulators; Statistical analysis; Steady-state; System performance; Transient analysis; Voltage control; Power quality (PQ); process control; statistics; voltage control;
Journal_Title :
Power Delivery, IEEE Transactions on
DOI :
10.1109/TPWRD.2007.905549