Abstract

Occupant comfort management is an important feature of a smart home, which requires achieving a high occupant comfort level as well as minimum energy consumption. Based on a large amount of data, learning models enable us to predict factors of a mathematical model for deriving the optimal result without expensive experiments. Comfort management supports high-level comfort to the occupant in the individual indoor environment, using the optimal power consumption to run home appliances. In this paper, we propose occupant comfort management based on energy optimization, using an environment prediction model. The proposed energy optimization model provides optimal power consumption based on the proposed objective function, which requires temperature and comfort index data as the input parameters. For the input requirement, temperature prediction model and humidity prediction model are presented based on a recurrent neural network with a pre-collected dataset, including indoor and outdoor temperature and humidity sensing data. Using the predicted temperature and humidity data, the comfort index model derives the predicted mean vote value to be used in the energy optimization model with the predicted temperature data. The experimental results present an 8.43% reduction of the optimized power consumption compared to the actual power consumption using mean absolute percentage error to calculate. Moreover, the emulation of an indoor environment using optimal energy consumption presents as approximately similar to the actual data.

Highlights

  • In modern life, various electronic appliances provide convenience and improve people’s living quality in a way that is based on the consumption of electronic energy

  • We propose a scheme of imposed energy optimization for supporting the high-level comfort to the user in the individual indoor environment using optimal power consumption

  • The prediction model forecasts the indoor environment for the user using the individual historical dataset, including indoor and outdoor data, which is collected by the Oak Ridge National Laboratory (ORNL) to be published online [22]

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Summary

Introduction

Various electronic appliances provide convenience and improve people’s living quality in a way that is based on the consumption of electronic energy. According to the United Nations, the population of urban centers will increase from today’s 55% to 68% in 2050, including most people in developing countries [4] This growth is leading to increasing energy consumption by the operation of electronic appliances in the buildings. For supporting a comfortable environment, the intelligent control system requires parameters, including various indoor and outdoor environmental sensing data with user preferences, to build the model. The prediction model forecasts the indoor environment for the user using the individual historical dataset, including indoor and outdoor data, which is collected by the Oak Ridge National Laboratory (ORNL) to be published online [22].

Related Works
Proposed Occupant Comfort Management Methodology
Findings
Energy Consumption Optimization Model
Full Text
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