TL;DR
This paper introduces a hybrid modeling approach combining first-principles and machine learning methods to reduce the performance gap in building energy forecasting, improving accuracy and interpretability while reducing modeling effort.
Contribution
The paper proposes a novel hybrid-model framework with a Level-of-Information concept, effectively integrating domain knowledge and data-driven methods for building energy prediction.
Findings
Significant accuracy improvement over traditional methods
Enhanced interpretability of energy forecasts
Reduced modeling workload and computational resources
Abstract
The performance gap between predicted and actual energy consumption in the building domain remains an unsolved problem in practice. The gap exists differently in both current mainstream methods: the first-principles model and the machine learning (ML) model. Inspired by the concept of time-series decomposition to identify different uncertainties, we proposed a hybrid-model approach by combining both methods to minimize this gap: 1. Use the first-principles method as an encoding tool to convert the building static features and predictable patterns in time-series simulation results; 2. The ML method combines the results as extra inputs with historical records simultaneously, trains the model to capture the implicit performance difference, and aligns to calibrate the output. To extend this approach in practice, a new concept in the modeling process: Level-of-Information (LOI), is…
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