Support Vector Machine in Prediction of Building Energy Demand Using Pseudo Dynamic Approach
Subodh Paudel (Mines Nantes), Phuong H. Nguyen, Wil L. Kling, Mohamed, Elmitri, Bruno Lacarri\`ere (Mines Nantes), Olivier Le Corre (Mines Nantes)

TL;DR
This paper introduces a support vector machine-based model for predicting building energy demand, utilizing a pseudo dynamic approach and relevant days data selection to enhance accuracy and computational efficiency.
Contribution
It presents a novel combination of SVM with relevant days data selection and pseudo dynamic modeling for improved building energy prediction.
Findings
High prediction accuracy with relevant data selection
Significant reduction in training time (8 min vs. 31-116 hours)
Effective for online energy management systems
Abstract
Building's energy consumption prediction is a major concern in the recent years and many efforts have been achieved in order to improve the energy management of buildings. In particular, the prediction of energy consumption in building is essential for the energy operator to build an optimal operating strategy, which could be integrated to building's energy management system (BEMS). This paper proposes a prediction model for building energy consumption using support vector machine (SVM). Data-driven model, for instance, SVM is very sensitive to the selection of training data. Thus the relevant days data selection method based on Dynamic Time Warping is used to train SVM model. In addition, to encompass thermal inertia of building, pseudo dynamic model is applied since it takes into account information of transition of energy consumption effects and occupancy profile. Relevant days data…
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Taxonomy
TopicsBuilding Energy and Comfort Optimization · Time Series Analysis and Forecasting · Energy Load and Power Forecasting
MethodsSupport Vector Machine
