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Handling complete short-term data logging failure in smart buildings: Machine learning based forecasting pipelines with sliding-window training scheme

Demetrios N. Papadopoulos, Farzad Dadras Javan, Behzad Najafi, Alireza Haghighat Mamaghani, Fabio Rinaldi

2023Energy and Buildings13 citationsDOIOpen Access PDF

Abstract

This paper implements a machine learning(ML)-based procedure for constructing the missing sensor(s) data in a net zero energy building in case of complete failure in data recording (for up to one hour). In the first scenario, missing temperature data is re-created using the sensor's ex-ante data, the HVAC system's status flag, and the ambient conditions. In the second scenario, the temperature data (until failure occurred) from two close-by spaces are also utilized as inputs. For each scenario, ML-based pipelines' performance is first assessed by considering different prediction horizons using a benchmark algorithm. Next, each pipeline's most promising features and the most suitable algorithm are identified. Using the obtained optimal pipeline, a sliding window-based training scheme is implemented, and the size of the training window is optimized. It is shown that feature selection, algorithm optimization procedures, and the sliding window-based training scheme notably improve the forecasting performance. The proposed methodology can be deployed as a tool in intervals with total data logging failure, providing data to ML-based controllers in smart buildings and avoiding disruptions in the building management system.

Topics & Concepts

Training (meteorology)Term (time)Sliding window protocolPipeline transportScheme (mathematics)Window (computing)LoggingComputer scienceEngineeringArtificial intelligenceMeteorologyMechanical engineeringMathematicsPhysicsQuantum mechanicsMathematical analysisOperating systemEcologyBiologyEnergy Load and Power ForecastingAir Quality Monitoring and ForecastingSmart Grid Energy Management
Handling complete short-term data logging failure in smart buildings: Machine learning based forecasting pipelines with sliding-window training scheme | Litcius