Title :
Leveraging AMI Data for Distribution System Model Calibration and Situational Awareness
Author :
Peppanen, Jouni ; Reno, Matthew J. ; Thakkar, Mohini ; Grijalva, Santiago ; Harley, Ronald G.
Author_Institution :
Georgia Inst. of Technol., Atlanta, GA, USA
Abstract :
The many new distributed energy resources being installed at the distribution system level require increased visibility into system operations that will be enabled by distribution system state estimation (DSSE) and situational awareness applications. Reliable and accurate DSSE requires both robust methods for managing the big data provided by smart meters and quality distribution system models. This paper presents intelligent methods for detecting and dealing with missing or inaccurate smart meter data, as well as the ways to process the data for different applications. It also presents an efficient and flexible parameter estimation method based on the voltage drop equation and regression analysis to enhance distribution system model accuracy. Finally, it presents a 3-D graphical user interface for advanced visualization of the system state and events. We demonstrate this paper for a university distribution network with the state-of-the-art real-time and historical smart meter data infrastructure.
Keywords :
calibration; distribution networks; graphical user interfaces; regression analysis; smart meters; state estimation; 3-D graphical user interface; AMI data; DSSE; distributed energy resources; distribution system model; distribution system model calibration; distribution system state estimation; historical smart meter data infrastructure; intelligent methods; parameter estimation method; quality distribution system models; regression analysis; situational awareness; smart meters; university distribution network; voltage drop equation; Accuracy; Decision support systems; Load modeling; Reliability; Smart meters; Substations; Voltage measurement; Graphical user interfaces; load modeling; parameter estimation (PE); power distribution; power system measurements; smart grids; state estimation (SE); visualization;
Journal_Title :
Smart Grid, IEEE Transactions on
DOI :
10.1109/TSG.2014.2385636