Data-driven adaptive building thermal controller tuning with constraints: A primal-dual contextual Bayesian optimization approach
We study the problem of tuning the parameters of a room temperature controller to minimize its energy consumption, subject to the constraint that the daily cumulative thermal discomfort of the occupants is below a given threshold. We formulate it as an online constrained black -box optimization problem where, on each day, we observe some relevant environmental context and adaptively select the controller parameters. In this paper, we propose to use a data -driven Primal -Dual Contextual Bayesian Optimization (PDCBO) approach to solve this problem.
WOS:001154992100001
2024-01-09
358
122493
REVIEWED
EPFL
Funder | Grant Number |
Swiss National Science Foundation, Switzerland under NCCR Automation | 51NF40_180545 |
Swiss Data Science Center, Switzerland | C20-13 |