4.7 Article

An XGBoost-Based predictive control strategy for HVAC systems in providing day-ahead demand response

Related references

Note: Only part of the references are listed.
Article Thermodynamics

Data-driven model predictive control for power demand management and fast demand response of commercial buildings using support vector regression

Rui Tang et al.

Summary: This study developed a data-driven model predictive control using support vector regression for fast demand response events in commercial buildings. By optimizing SVR hyperparameters and shortening the genetic algorithm search range, the proposed SVR-based MPC successfully achieved simultaneous control of power demand and indoor temperature. Compared with RC-based MPC, the SVR-based MPC reduced time/labor costs without sacrificing control performance in fast DR events.

BUILDING SIMULATION (2022)

Article Energy & Fuels

A machine learning-based control strategy for improved performance of HVAC systems in providing large capacity of frequency regulation service

Huilong Wang et al.

Summary: This study proposes a machine learning-based control strategy to improve the performance of HVAC systems in providing large capacity frequency regulation services, by simultaneously adjusting the chilled water outlet temperature setpoint and indoor temperature setpoint.

APPLIED ENERGY (2022)

Article Computer Science, Information Systems

Design of Supervisory Model Predictive Control for Building HVAC System With Consideration of Peak-Load Shaving and Thermal Comfort

Chanthawit Anuntasethakul et al.

Summary: This paper introduces a design of a supervisory model predictive controller for an HVAC system, aiming to minimize operating costs while considering load shaving and thermal comfort. Through a two-layer control design, the balance between optimal temperature setting and control objectives has been efficiently achieved.

IEEE ACCESS (2021)

Review Automation & Control Systems

All you need to know about model predictive control for buildings

Jan Drgona et al.

ANNUAL REVIEWS IN CONTROL (2020)

Review Construction & Building Technology

Measures to improve energy demand flexibility in buildings for demand response (DR): A review

Yongbao Chen et al.

ENERGY AND BUILDINGS (2018)

Article Construction & Building Technology

Experimental implementation of whole building MPC with zone based thermal comfort adjustments

Trent Hilliard et al.

BUILDING AND ENVIRONMENT (2017)

Article Construction & Building Technology

Development and validation of an effective and robust chiller sequence control strategy using data-driven models

Kui Shan et al.

AUTOMATION IN CONSTRUCTION (2016)

Article Construction & Building Technology

A new method for calculating the thermal effects of irregular internal mass in buildings under demand response

Weilin Li et al.

ENERGY AND BUILDINGS (2016)

Article Thermodynamics

Simulation and experimental demonstration of model predictive control in a building HVAC system

Pengfei Li et al.

SCIENCE AND TECHNOLOGY FOR THE BUILT ENVIRONMENT (2015)

Review Construction & Building Technology

Theory and applications of HVAC control systems - A review of model predictive control (MPC)

Abdul Afram et al.

BUILDING AND ENVIRONMENT (2014)

Article Automation & Control Systems

Application of economic MPC to the energy and demand minimization of a commercial building

Jingran Ma et al.

JOURNAL OF PROCESS CONTROL (2014)

Article Engineering, Chemical

Demand reduction in building energy systems based on economic model predictive control

Jingran Ma et al.

CHEMICAL ENGINEERING SCIENCE (2012)

Article Energy & Fuels

A roadmap towards intelligent net zero- and positive-energy buildings

D. Kolokotsa et al.

SOLAR ENERGY (2011)

Article Construction & Building Technology

Genetic-algorithm based approach to optimize building envelope design for residential buildings

Daniel Tuhus-Dubrow et al.

BUILDING AND ENVIRONMENT (2010)

Article Thermodynamics

Parameter estimation of internal thermal mass of building dynamic models using genetic algorithm

SW Wang et al.

ENERGY CONVERSION AND MANAGEMENT (2006)

Article Construction & Building Technology

Prediction of building's temperature using neural networks models

AE Ruano et al.

ENERGY AND BUILDINGS (2006)