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Rapid QSTS Simulations for High-Resolution Comprehensive Assessment of Distributed PV

Broderick, Robert J.; Reno, Matthew J.; Lave, Matthew S.; Azzolini, Joseph A.; Blakely, Logan; Galtieri, Jason G.; Mather, Barry M.; Weekley, Andrew W.; Hunsberger, Randolph H.; Chamana, Manohar C.; Li, Qinmiao L.; Zhang, Wenqi Z.; Latif, Aadil L.; Zhu, Xiangqi Z.; Grijalva, Santiago G.; Zhang, Xiaochen Z.; Deboever, Jeremiah D.; Qureshi, Muhammad U.; Therrien, Francis T.; Lacroix, Jean-Sebastien L.; Li, Feng L.; BelletĂȘte, Marc B.; HĂ©bert, Guillaume H.; Montenegro, Davis M.; Dugan, Roger D.

The rapid increase in penetration of distributed energy resources on the electric power distribution system has created a need for more comprehensive interconnection modeling and impact analysis. Unlike conventional scenario-based studies, quasi-static time-series (QSTS) simulations can realistically model time-dependent voltage controllers and the diversity of potential impacts that can occur at different times of year. However, to accurately model a distribution system with all its controllable devices, a yearlong simulation at 1-second resolution is often required, which could take conventional computers a computational time of 10 to 120 hours when an actual unbalanced distribution feeder is modeled. This computational burden is a clear limitation to the adoption of QSTS simulations in interconnection studies and for determining optimal control solutions for utility operations. The solutions we developed include accurate and computationally efficient QSTS methods that could be implemented in existing open-source and commercial software used by utilities and the development of methods to create high-resolution proxy data sets. This project demonstrated multiple pathways for speeding up the QSTS computation using new and innovative methods for advanced time-series analysis, faster power flow solvers, parallel processing of power flow solutions and circuit reduction. The target performance level for this project was achieved with year-long high-resolution time series solutions run in less than 5 minutes within an acceptable error.