Publication

DIET Controller: Dynamic Indoor Environment using Deep Reinforcement Learning

Arnab Chatterjee
2023
EPFL thesis
Abstract

Heating, Ventilation, and Air Conditioning (HVAC) Systems utilize much energy, accounting for 40% of total building energy use. The temperatures in buildings are commonly held within narrow limits, leading to higher energy use. Measurements from office buildings in Switzerland illustrated that the air temperature was relatively steady for most of the hours; it was higher than that prescribed by building standards in Switzerland. Thus, designing energy-efficient building thermal control policies to reduce HVAC energy use while maintaining a dynamic indoor environment is essential. Also, studies suggest that such an environment may be healthier for the human body. However, it is challenging to implement such a control policy, considering the energy efficiency of the HVAC System, dynamic indoor environment, and thermal acceptability requirements. Optimizing the dynamic and stochastic energy demand using conventional control techniques is tricky. The challenge becomes even more complicated when the provisions concerning the dynamic indoor environment and thermal acceptability of occupants are introduced. A Reinforcement Learning (RL)-based framework is proposed to tackle this complexity for energy optimization and healthy thermal environment control in buildings. A novel deep RL algorithm with experience replay, called deep deterministic policy gradient (DDPG), has performed excellently in many continuous control tasks. In building controls, temperature, humidity, and airspeed, which are the predominant control variables, are all continuous. Therefore, DDPG is very suitable for addressing the problem in this scenario. The goal is to create an intelligent thermostat that can accurately control the indoor temperature based on data recorded from the indoor environment and the human body. To this objective, a prediction model for the energy expenditure in the human body from other more easily measurable physiological and environmental parameters has been developed. The prediction models leveraged the long short-term memory (LSTM) networks. The results show that the models developed provide a good level of prediction accuracy during both low and medium-intensity activities, with the MAPE mostly lying in the range of 5-20%. Harnessing the above algorithms, DIET Controller, modeled in python, was initially introduced in a simulation environment with energy plus using the functional mockup unit (FMU) interface. Co-simulation results show that the DIET Controller can reduce the HVAC energy use by about 40% compared to the conventional rule-based controller and facilitate the creation of a dynamic environment. Subsequently, the DIET Controller was tested in real operation with the ICE climate chamber. The experimental setup consisted of a single zone, which was set up with multiple environmental sensors gathering real-time data for the DIET Controller input. The experiments were usually conducted over 24 hours with thermal dummies simulating the heat gains from occupants. Integrating the DRL-based control framework with the existing HVAC system was quite challenging, which the BACnet protocol facilitated. Results showed that in real operation, the DIET Controller could reduce energy use by 28-64% compared to a rule-based control. Additionally, DIET Controller created a dynamic indoor environment for 96% of occupied hours. The results provide evidence that DIET Controller can be an effective method for controlling systems in real-world operation.

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Related concepts (40)
Heating, ventilation, and air conditioning
Heating, ventilation, and air conditioning (HVAC) is the use of various technologies to control the temperature, humidity, and purity of the air in an enclosed space. Its goal is to provide thermal comfort and acceptable indoor air quality. HVAC system design is a subdiscipline of mechanical engineering, based on the principles of thermodynamics, fluid mechanics, and heat transfer. "Refrigeration" is sometimes added to the field's abbreviation as HVAC&R or HVACR, or "ventilation" is dropped, as in HACR (as in the designation of HACR-rated circuit breakers).
Reinforcement learning
Reinforcement learning (RL) is an area of machine learning concerned with how intelligent agents ought to take actions in an environment in order to maximize the notion of cumulative reward. Reinforcement learning is one of three basic machine learning paradigms, alongside supervised learning and unsupervised learning. Reinforcement learning differs from supervised learning in not needing labelled input/output pairs to be presented, and in not needing sub-optimal actions to be explicitly corrected.
Efficient energy use
Efficient energy use, sometimes simply called energy efficiency, is the process of reducing the amount of energy required to provide products and services. For example, insulating a building allows it to use less heating and cooling energy to achieve and maintain a thermal comfort. Installing light-emitting diode bulbs, fluorescent lighting, or natural skylight windows reduces the amount of energy required to attain the same level of illumination compared to using traditional incandescent light bulbs.
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