Introduction to power market data and their characteristics.- Modeling
load forecasting uncertainty using deep learning models.- Data-driven
load data cleaning and its impacts on forecasting performance.-
Generalized cost-oriented load forecasting in economic dispatch.- A
monthly electricity consumption forecasting method.- Data-driven pattern
extraction for analyzing market bidding behaviors.- Stochastic optimal
offering based on probabilistic forecast on aggregated supply curves.-
Power market simulation framework based on learning from individual
offering strategy.- Deep inverse reinforcement learning for reward
function identification in bidding models.- The subspace characteristics
and congestion identification of LMP data.- Online transmission topology
identification in LMP-based markets.- Day-ahead componential electricity
price forecasting.- Quantifying the impact of price forecasting error on
market bidding.- Virtual bidding and FTR speculation based on
probabilistic LMP forecasting.- Abnormal detection of LMP scenario and
data with deep neural networks.