4.6 Article

Autonomic Management of a Building's Multi-HVAC System Start-Up

Journal

IEEE ACCESS
Volume 9, Issue -, Pages 70502-70515

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3078550

Keywords

HVAC; Buildings; Optimization; Energy consumption; Genetic algorithms; Fault detection; Task analysis; Energy management; heating; ventilation and air conditioning systems; autonomic computing; machine learning; multi-objective optimization; smart building

Funding

  1. European Union [754382]
  2. Smart Energy Campus of International Excellence
  3. Universidad de Alcala
  4. Universidad Rey Juan Carlos, Spain
  5. JCLM Project through the European Regional Development Fund (FEDER) [SBPLY/19/180501/000024]
  6. Spanish Ministry of Science and Innovation Project through the European Regional Development Fund (FEDER) [PID2019-109891RB-I00]

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This study introduces a novel approach to optimize building multi-HVAC systems from startup to steady state, focusing on smooth transition through machine learning techniques and multiobjective evolutionary algorithms. The system effectively reaches the setpoint and delivers operation to steady state smoothly.
Most studies about the control, automation, optimization and supervision of building HVAC systems concentrate on the steady-state regime, i.e., when the equipment is already working at its setpoints. The originality of the current work consists of proposing the optimization of building multi-HVAC systems from start-up until they reach the setpoint, making the transition to steady state-based strategies smooth. The proposed approach works on the transient regime of multi-HVAC systems optimizing contradictory objectives, such as the desired comfort and energy costs, based on the Autonomic Cycle of Data Analysis Tasks concept. In this case, the autonomic cycle is composed of two data analysis tasks: one for determining if the system is going towards the defined operational setpoint, and if that is not the case, another task for reconfiguring the operational mode of the multi-HVAC system to redirect it. The first task uses machine learning techniques to build detection and prediction models, and the second task defines a reconfiguration model using multiobjective evolutionary algorithms. This proposal is proven in a real case study that characterizes a particular multi-HVAC system and its operational setpoints. The performance obtained from the experiments in diverse situations is impressive since there is a high level of conformity for the multi-HVAC system to reach the setpoint and deliver the operation to the steady-state smoothly, avoiding overshooting and other non-desirable transitional effects.

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