Globalization for Scalable Short-term Load Forecasting
Amirhossein Ahmadi, Hamidreza Zareipour, Henry Leung

TL;DR
This paper explores global load forecasting models for power networks, demonstrating their advantages over local models in scalability, robustness, and handling data heterogeneity, through experiments on Alberta's electricity data.
Contribution
It introduces novel clustering techniques for global models and compares feature-transforming and target-transforming approaches under data drift conditions.
Findings
Global target-transforming models outperform local models.
Clustering improves model performance with heterogeneous data.
Global models enhance peak load forecasting accuracy.
Abstract
Forecasting load in power transmission networks is essential across various hierarchical levels, from the system level down to individual points of delivery (PoD). While intuitive and locally accurate, traditional local forecasting models (LFMs) face significant limitations, particularly in handling generalizability, overfitting, data drift, and the cold start problem. These methods also struggle with scalability, becoming computationally expensive and less efficient as the network's size and data volume grow. In contrast, global forecasting models (GFMs) offer a new approach to enhance prediction generalizability, scalability, accuracy, and robustness through globalization and cross-learning. This paper investigates global load forecasting in the presence of data drifts, highlighting the impact of different modeling techniques and data heterogeneity. We explore feature-transforming and…
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Taxonomy
TopicsEnergy Load and Power Forecasting
