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Evaluating Machine Learning Models for HVAC Demand Response: The Impact of Prediction Accuracy on Model Predictive Control Performance

Huilong Wang, Daran Mai, Qian Li, Zhikun Ding

2024Buildings21 citationsDOIOpen Access PDF

Abstract

Heating, ventilation, and air-conditioning systems (HVAC) have significant potential to support demand response programs within power grids. Model Predictive Control (MPC) is an effective technique for utilizing the flexibility of HVAC systems to achieve this support. In this study, to identify a proper prediction model in the MPC controller, four machine learning models (i.e., SVM, ANN, XGBoost, LightGBM) are compared in terms of prediction accuracy, prediction time, and training time. The impact of model prediction accuracy on the performance of MPC for HVAC demand response is also systematically studied. The research is carried out using a co-simulation test platform integrating TRNSYS and Python. Results show that the XGBoost model achieves the highest prediction accuracy. LightGBM model’s accuracy is marginally lower but requires significantly less time for both prediction and training. In this research, the proposed control strategy decreases the economic cost by 21.61% compared to the baseline case under traditional control, with the weighted indoor temperature rising by only 0.10 K. The result also suggests that it is worth exploring advanced prediction models to increase prediction accuracy, even within the high prediction accuracy range. Furthermore, implementing MPC control for demand response remains beneficial even when the model prediction accuracy is relatively low.

Topics & Concepts

HVACDemand responseTRNSYSModel predictive controlPredictive modellingFlexibility (engineering)Computer scienceSupport vector machinePython (programming language)Machine learningArtificial intelligenceAir conditioningEngineeringControl (management)StatisticsMechanical engineeringEnergy (signal processing)MathematicsElectricityOperating systemElectrical engineeringBuilding Energy and Comfort OptimizationSmart Grid Energy ManagementRefrigeration and Air Conditioning Technologies
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