Probabilistic Load Forecasting Based on Adaptive Online Learning
Abstract
Load forecasting is crucial for multiple energy management
tasks such as scheduling generation capacity, planning
supply and demand, and minimizing energy trade costs. Such
relevance has increased even more in recent years due to the
integration of renewable energies, electric cars, and microgrids.
Conventional load forecasting techniques obtain singlevalue
load forecasts by exploiting consumption patterns of past
load demand. However, such techniques cannot assess intrinsic
uncertainties in load demand, and cannot capture dynamic
changes in consumption patterns. To address these problems,
this paper presents a method for probabilistic load forecasting
based on the adaptive online learning of hidden Markov models.
We propose learning and forecasting techniques with theoretical
guarantees, and experimentally assess their performance in
multiple scenarios. In particular, we develop adaptive online
learning techniques that update model parameters recursively,
and sequential prediction techniques that obtain probabilistic
forecasts using the most recent parameters. The performance of
the method is evaluated using multiple datasets corresponding
with regions that have different sizes and display assorted
time-varying consumption patterns. The results show that the
proposed method can significantly improve the performance of
existing techniques for a wide range of scenarios.