December 16, 2020
Conference Paper

Probabilistic Forecasting of Generators Startups and Shutdowns in the MISO System Based on Random Forest

Abstract

Solving security constrained unit commitment (SCUC) problems to plan an economical generation schedule for day-head electricity market has been an important research topic in recent years. Mixed integer programming method (MIP), the-state-of-art approach for solving SCUC problem, is known computationally hard when the number of binary status variables is large. In this paper, a machine learning-based algorithm - random forest (RF), was applied to forecast the startups (SU) and shutdowns (SD) hours of generators, based on historical hourly system condition observations in the Midcontinent Independent System Operator (MISO) system. The main purpose is to reduce the number of binary status variables, by fixing the SU/SD hours to a narrow range of high confidence. This would significantly reduce the size of the decision space, and therefore speed up SCUC solutions with reduced uncertainty.

Revised: January 19, 2021 | Published: December 16, 2020

Citation

Lin X., Z. Hou, Y. Chen, S. Rose, Y. Ma, and F. Pan. 2020. "Probabilistic Forecasting of Generators Startups and Shutdowns in the MISO System Based on Random Forest." In IEEE Power & Energy Society General Meeting (PESGM 2020), August 2-6, 2020, Montreal, Canada, 1-5. Piscataway, New Jersey:IEEE. PNNL-SA-149108. doi:10.1109/PESGM41954.2020.9281926

Research topics