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Data-driven HVAC Control Using Symbolic Regression: Design and Implementation

Yuki Ozawa, Dafang Zhao, Daichi Watari, Ittetsu Taniguchi, Toshihiro Suzuki, Yoshiyuki Shimoda, Takao Onoye

Abstract

The large amount of data collected in buildings makes energy management smarter and more energy efficient. This study proposes a design and implementation methodology of data-driven heating, ventilation, and air conditioning (HVAC) control. Building thermodynamics is modeled using a symbolic regression model (SRM) built from the collected data. Additionally, an HVAC system model is also developed with a data-driven approach. A model predictive control (MPC) based HVAC scheduling is formulated with the developed models to minimize energy consumption and peak power demand and maximize thermal comfort. The performance of the proposed framework is demonstrated in the workspace in the actual campus building. The HVAC system using the proposed framework reduces the peak power by 16.1\% compared to the widely used thermostat controller.

Data-driven HVAC Control Using Symbolic Regression: Design and Implementation

Abstract

The large amount of data collected in buildings makes energy management smarter and more energy efficient. This study proposes a design and implementation methodology of data-driven heating, ventilation, and air conditioning (HVAC) control. Building thermodynamics is modeled using a symbolic regression model (SRM) built from the collected data. Additionally, an HVAC system model is also developed with a data-driven approach. A model predictive control (MPC) based HVAC scheduling is formulated with the developed models to minimize energy consumption and peak power demand and maximize thermal comfort. The performance of the proposed framework is demonstrated in the workspace in the actual campus building. The HVAC system using the proposed framework reduces the peak power by 16.1\% compared to the widely used thermostat controller.
Paper Structure (8 sections, 2 equations, 6 figures, 2 tables)

This paper contains 8 sections, 2 equations, 6 figures, 2 tables.

Figures (6)

  • Figure 1: Overview of HVAC control framework.
  • Figure 2: Symbolic regression.
  • Figure 3: Piecewise linear functions for HVAC model.
  • Figure 4: Experimental results: temperature variation.
  • Figure 5: Experimental results: power consumption.
  • ...and 1 more figures