4.7 Article

Development and evaluation of data-driven controls for residential smart thermostats

Related references

Note: Only part of the references are listed.
Article Energy & Fuels

How much HVAC energy could be saved from the occupant-centric smart home thermostat: A nationwide simulation study

Zhihong Pang et al.

Summary: The study evaluated the energy savings potential of a smart thermostat through large-scale simulations, finding that setback control during unoccupied periods can achieve some energy savings. However, only a few cities showed high energy savings ratios. Implementing occupied standby temperature reset may increase HVAC system peak load, while the smart recovery feature can reduce temperature setpoint not met time and improve thermal comfort issues.

APPLIED ENERGY (2021)

Article Construction & Building Technology

Experimental demonstration of data predictive control for energy optimization and thermal comfort in buildings

Felix Buenning et al.

ENERGY AND BUILDINGS (2020)

Article Construction & Building Technology

Energy saving impact of occupancy-driven thermostat for residential buildings

Chenli Wang et al.

ENERGY AND BUILDINGS (2020)

Article Green & Sustainable Science & Technology

Evaluating the Adaptability of Reinforcement Learning Based HVAC Control for Residential Houses

Kuldeep Kurte et al.

SUSTAINABILITY (2020)

Review Energy & Fuels

Reinforcement learning for demand response: A review of algorithms and modeling techniques

Jose R. Vazquez-Canteli et al.

APPLIED ENERGY (2019)

Article Construction & Building Technology

Model-free control of thermostatically controlled loads connected to a district heating network

Bert J. Claessens et al.

ENERGY AND BUILDINGS (2018)

Article Construction & Building Technology

Predictive control of residential HVAC and its impact on the grid. Part I: simulation framework and models

C. D. Corbin et al.

JOURNAL OF BUILDING PERFORMANCE SIMULATION (2017)

Article Energy & Fuels

Experimental analysis of data-driven control for a building heating system

G. T. Costanzo et al.

SUSTAINABLE ENERGY GRIDS & NETWORKS (2016)

Article Construction & Building Technology

Field tests of an adaptive, model-predictive heating controller for residential buildings

David Lindeloef et al.

ENERGY AND BUILDINGS (2015)

Proceedings Paper Computer Science, Artificial Intelligence

Autonomous HVAC Control, A Reinforcement Learning Approach

Enda Barrett et al.

MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES, PT III (2015)

Article Thermodynamics

Comparison of Short-Term Weather Forecasting Models for Model Predictive Control

Anthony R. Florita et al.

HVAC&R RESEARCH (2009)