Abstract

Energy consumption in the residential sector is 25% of all the sectors. The advent of smart appliances and intelligent sensors have increased the realization of home energy management systems. Acquiring balance between energy consumption and user comfort is in the spotlight when the performance of the smart home is evaluated. Appliances of heating, ventilation and air conditioning constitute up to 64% of energy consumption in residential buildings. A number of research works have shown that fuzzy logic system integrated with other techniques is used with the main objective of energy consumption minimization. However, user comfort is often sacrificed in these techniques. In this paper, we have proposed a Fuzzy Inference System (FIS) that uses humidity as an additional input parameter in order to maintain the thermostat set-points according to user comfort. Additionally, we have used indoor room temperature variation as a feedback to proposed FIS in order to get the better energy consumption. As the number of rules increase, the task of defining them in FIS becomes time consuming and eventually increases the chance of manual errors. We have also proposed the automatic rule base generation using the combinatorial method. The proposed techniques are evaluated using Mamdani FIS and Sugeno FIS. The proposed method provides a flexible and energy efficient decision-making system that maintains the user thermal comfort with the help of intelligent sensors. The proposed FIS system requires less memory and low processing power along with the use of sensors, making it possible to be used in the IoT operating system e.g., RIOT. Simulation results validate that the proposed technique reduces energy consumption by 28%.

Highlights

  • During recent decades, concerns over managing energy consumption are rising significantly.Among all the energy consuming economic sectors, namely industrial, transportation, residential and commercial, the residential sector is the third highest energy consumer [1]

  • In order to investigate the effect of adding feedback loop in the Fuzzy Inference System (FIS), a 2 kW heater is considered for a small room, whereas impact of adding a humidity parameter is observed using the 10 kW HVAC in a residential building

  • The effect of adding a feedback loop in the FIS for energy consumption minimization is discussed

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Summary

Introduction

Concerns over managing energy consumption are rising significantly. Among all the energy consuming economic sectors, namely industrial, transportation, residential and commercial, the residential sector is the third highest energy consumer [1]. The residential sector is responsible for approximately 21% and 17% of total energy consumption in U.S.A., and Canada, respectively [2]. As the total population of the world is increasing swiftly, electricity demand is estimated to increase by 24% by 2035 [3]. Among all the residential appliances, Heating, Ventilation and. Air Conditioning (HVAC) is the main component for user comfort and target for energy consumption. Sensors 2018, 18, 2802 minimization as these appliances constitute the major part of residential energy consumption [4]. HVAC appliances are the main electrical loads observed during peak hours [5]

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