Integrating Causal Analysis with Machine Learning for Meteorological-Based Energy Consumption Forecasting: A Multi-Method Approach
Dublin Core
Title
Integrating Causal Analysis with Machine Learning for Meteorological-Based Energy Consumption Forecasting: A Multi-Method Approach
Subject
Energy Consumption,Forecasting, Causal Analysis, Machine Learning, Granger Causality
Description
In the era of climate-aware infrastructure planning, accurate and interpretable energy consumption forecasting is a critical need for policymakers and utility providers. Traditional forecasting models often struggle to capture non-linear and dynamic relationships between meteorological factors and energy use. In this study, we propose a hybrid framework that integrates causal analysis and machine learning to enhance both the accuracy and interpretability of energy consumption prediction. We applied three causal inference techniques,including Granger causality, partial correlation, and mutual information,to identify the most influential weather variables affecting energy use from a dataset of 26,323 hourly records. The results showed that temperature-related variables, particularly dry bulb temperature (MI = 0.0529), were the most causally significant predictors. We then trained five machine learning models: Random Forest, Gradient Boosting, Decision Tree, Ridge Regression, and a Multi-Layer Perceptron Neural Network. Among these, Random Forest achieved the best performance with MAE = 0.0501. Additionally, we performed a temporal correlation analysis showing significant hourly shifts in temperature-energy relationships, offering insights for time-sensitive energy demand strategies. This framework bridges the gap between predictive accuracy and causal understanding, making it valuable for smart grid management and climate-resilient energy planning.It also offers practical adaptability for diverse geographic settings and evolving energy infrastructures
Creator
Zikri Wahyuzi1, Abdurrahim2
Source
https://ijicom.respati.ac.id/index.php/ijicom/article/view/134/103
Publisher
https://ijicom.respati.ac.id/index.php/ijicom/article/view/134/103
Date
2025
Contributor
Fajar bagus W
Format
PDF
Language
English
Type
Text
Files
Collection
Citation
Zikri Wahyuzi1, Abdurrahim2, “Integrating Causal Analysis with Machine Learning for Meteorological-Based Energy Consumption Forecasting: A Multi-Method Approach,” Repository Horizon University Indonesia, accessed December 31, 2025, https://repository.horizon.ac.id/items/show/9766.