Causal Relationship Discovery and Causal-Oriented Approaches for
Enhanced Performance and Interpretability in Prediction of Prosumer
Behavior and Demand Flexibility
- Mingyue He,
- Mojdeh Khorsand
Abstract
Causal analysis paves the way for more interpretable assessment of
complex systems and phenomena, such as human-in-the-loop components of
energy systems. This paper will pursue novel approaches for causal
analysis of prosumers' behavior. The knowledge of this causality is core
for multiple smart grid applications including but not limited to the
design of demand side management programs, retail electricity market
design, development of effective distributed energy resources
aggregation strategies, and net load forecasting. The complex nature of
human interactions with energy relies on many factors and understanding
behavior causality is a core, unsolved challenge. This paper presents a
probabilistic algorithm for discovering causal relationships between the
end users' consumption flexibility and its influencing factors. The
obtained causal knowledge is then utilized to boost the precision of
demand flexibility prediction. Two causal-oriented approaches are
proposed to enhance the performance and interpretability of predictive
models, incorporating causal information through causal regularization
and data preprocessing. Simulation results demonstrate that the
algorithm can effectively identify causal probabilities among different
factors and unveil key characteristics of the prosumers' behavior.
Additionally, these proposed causal-oriented approaches outperform the
non-causal oriented predictive models in terms of both performance and
interpretability, highlighting the advantages of incorporating causal
information.23 Mar 2024Submitted to IET Generation, Transmission & Distribution 02 Apr 2024Submission Checks Completed
02 Apr 2024Assigned to Editor
02 Apr 2024Review(s) Completed, Editorial Evaluation Pending
12 Jun 20241st Revision Received
15 Oct 2024Submission Checks Completed
15 Oct 2024Assigned to Editor
15 Oct 2024Review(s) Completed, Editorial Evaluation Pending
15 Oct 2024Reviewer(s) Assigned
30 Oct 2024Editorial Decision: Accept