An End-to-End Data and Machine Learning Pipeline for Energy Forecasting: A Systematic Approach Integrating MLOps and Domain Expertise

Read the full article See related articles

Listed in

This article is not in any list yet, why not save it to one of your lists.
Log in to save this article

Abstract

Energy forecasting is critical for modern power systems, enabling proactive grid control and efficient resource optimization. However, energy forecasting projects require systematic approaches that span from project inception to model deployment while ensuring technical excellence, domain alignment, regulatory compliance, and reproducibility. Existing methodologies such as CRISP-DM provide a foundation but lack explicit mechanisms for iterative feedback, decision checkpoints, and continuous energy domain expert involvement. This paper proposes a modular end-to-end framework for energy forecasting that integrates formal decision gates in each phase, embeds domain expert validation, and produces fully traceable artefacts. The framework supports controlled iteration, rollback, and automation within an MLOps-compatible structure. A comparative analysis demonstrates its advantages in functional coverage, workflow logic, and governance over existing approaches. A case study on short-term electricity forecasting for a 2,560 m² Office building validates the framework, achieving 24-hour-ahead predictions with a RNN, reaching RMSE of 1.04 kWh and MAE of 0.78 kWh. The results confirm that the framework enhances forecast accuracy, reliability, and regulatory readiness in real-world energy applications.

Article activity feed