Physics-Guided Memory Network for Building Energy Modeling
Muhammad Umair Danish, Kashif Ali, Kamran Siddiqui, Katarina Grolinger

TL;DR
This paper presents a Physics-Guided Memory Network that combines deep learning and physics-based models to improve building energy consumption forecasting, especially when historical data are limited or unavailable.
Contribution
It introduces a novel neural network architecture integrating physics-based insights with memory mechanisms to enhance energy modeling accuracy in data-scarce scenarios.
Findings
Effective in forecasting energy consumption with limited or missing data
Accurate predictions for newly constructed buildings and dynamic environments
Mathematically validated components ensuring reliable performance
Abstract
Accurate energy consumption forecasting is essential for efficient resource management and sustainability in the building sector. Deep learning models are highly successful but struggle with limited historical data and become unusable when historical data are unavailable, such as in newly constructed buildings. On the other hand, physics-based models, such as EnergyPlus, simulate energy consumption without relying on historical data but require extensive building parameter specifications and considerable time to model a building. This paper introduces a Physics-Guided Memory Network (PgMN), a neural network that integrates predictions from deep learning and physics-based models to address their limitations. PgMN comprises a Parallel Projection Layers to process incomplete inputs, a Memory Unit to account for persistent biases, and a Memory Experience Module to optimally extend forecasts…
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