1. Introduction
Several factors influence indoor environmental quality (IEQ) and occupant comfort. The current indoor environmental evaluation, also known as indoor air quality (IAQ) and thermal comfort (TC), are the two components required for occupant comfort [
1]. The TC environment provides a relatively low temperature for the internal building area and does not consume much energy. Therefore, Zeiler et al. present that building energy consumption has become more reasonable and controllable, and operations now account for almost 40% of worldwide energy usage [
2]. With the growing electricity bills and limited operational budgets, it is becoming more crucial than ever for homeowners and companies to save money on energy. The most important aspect of any energy optimization is a thorough understanding of how a structure and its components utilize and waste energy. Nilsson et al. also explain that the built environment’s energy usage is dominated by office buildings, which account for 40% of the total consumption. For general civil or commercial construction, various appliances account for a large amount of the energy budget (up to 50%) [
3]. The air conditioning system provides ventilation and heating and has become the most energy-intensive appliance for households and buildings, as shown in
Table 1. In general, power consumption is determined by the frequency with which the devices are used. According to
Table 1, electronic appliances, air conditioners, irons, rice cookers, washing machines, and water heaters are required to be used at different times throughout the day.
Buildings with improved insulated walls, airtight construction, and high-efficiency windows significantly influence the internal climate [
5]. As seen by the increased dedication to zero-energy buildings [
6], the value of buildings in promoting energy conservation is becoming more generally recognized. In Central Europe [
7], studies about passive house and zero-energy building standards aim to reduce the object’s thermal loss to the point where the heating system uses the least amount of energy possible. The measurement for the quantity of energy used for heating should not exceed 15 kWh/m
2, and the total primary energy demand for the object should not exceed 120 kWh/m
2. As another method, renovating an outdated air conditioner (AC) is one approach to drastically reduce building energy use. Furthermore, maintaining the use and time operation of this device necessitates a constant monitoring system of the indoor temperature and how the occupants feel comfortable to minimize its energy consumption.
In today’s building automation, achieving the standard comfort quality for the indoor environment requires a more complex real-time comfort measurement. Some studies regarding thermal comfort were conducted to monitor the indoor thermal environment. Berardi et al. built a monitoring system that manually adjusts the parameters such as temperature, luminosity, and relative humidity for energy saving [
8]. The results revealed various orientations and internal gains were taken to reduce the overlapping energy of using latent thermal energy system storage capacity in indoor buildings in Canada. Silveira et al. developed a wireless sensor network using 802.15.4/802.11 gateway to sense the temperature within a building [
9]. This study demonstrated that the wireless sensor network signal quality and maximum communication range were tested as well as the sensor node battery lifespan predictions. In ref. [
10], a sensor node system based on IEEE 1451 standard was applied in smart comfort sensing to provide energy efficiency; hence, monitoring becomes more viable for green buildings. The sensor’s accuracy was calibrated and guaranteed with the used standard, and accurate measurement results were achieved after the signal processing circuit. A smartphone android-based sensing system for temperature and humidity monitoring was introduced in [
11]. The user can communicate with the sensing device through a smartphone. Furthermore, 24 h battery testing revealed that it used less than 0.54 watts to operate, attaining the low-cost goal. Another study developed occupant-behavior-based thermal comfort to obtain the data and adjust the thermal comfort for the building [
12]. In this case, the occupant utilized radiant-based HVAC for thermal comfort quality, and dedicated indoor air systems for air quality were frequently found in building surveys where satisfaction with IEQ is high. Darji et al. improved temperature and humidity monitoring using Internet of Things (IoT)-based sensors with cloud data storage [
13]. This sensor is cost-effective and offers automatic humidity with temperature reading and control. It also sends data to a secure server to monitor or control the system’s temperature and humidity. Scislo et al. introduced repeated measurements at variable temperatures in the Variable Air Volume (VAV) and the gateway usage to determine the average measured values of the sensors, thereby preprocessing the raw data. If the measuring system is activated (for example, when the temperature reaches a specific level or an occupant enters the apartment), the gateway’s algorithm can recognize such occurrences and begin recording and transferring data [
14]. The parameters to quantify comfort quality, such as the level of clothing, activities, and mean radiant temperature from ISO7730 standards, was considered in the study [
15]. In ref. [
16], a sensor unit system was designed as a standalone wireless sensor to sense temperature and humidity. Their data can be sent over a low-energy Bluetooth transmitter and be received by the receiver node. The recorded data can be seen using portable monitoring devices, such as a Personal Computer. The importance of the indoor effect of the temperature is introduced in ref. [
17]. The supply air temperature on thermal comfort in a room or ceiling heating and mixing or displacement ventilation was also presented. When the supply air temperature ranges from 15 °C to 19 °C, the ventilation distribution, velocity, as well as global temperature in the occupied zone were measured. The results can be used to recommend the use of a hybrid system (radiant heating and mechanical ventilation system) for residential and commercial buildings.
The capability of the sensor node and thermal comfort monitoring method was improved over time as presented in some studies above. However, the development of the sensor nodes for indoor thermal comfort monitoring should consider its power consumption aspect and compact design in a single board system. The goals are to achieve long-time operation with a built-in power source system to work autonomously and be easily set up within infinite space for indoor monitoring applications.
This paper introduces the development of a sensor node that can monitor indoor air quality data such as temperature and humidity and send the data logging results using an IoT protocol to the cloud for thermal comfort monitoring and analysis purposes. The sensor node includes a low-power mode and compact size features. The developed device is a preliminary design with a semi-autonomous feature that utilizes built-in rechargeable power storage as the main power source. It was designed with a low-power system mode feature to reduce the energy consumption, compact design, and utilized with an IoT system for real-time and continuous indoor climate as well as thermal comfort monitoring applications. The usage of IoT systems to store the sensing data also reduces overall system power consumption that cannot be achieved if the developed sensor node uses a commercial data logger. Moreover, the user can access the monitoring data everywhere and anytime. Considering the features above, the developed sensor node will be possible to integrate with a micro energy harvester. The harvester module can harvest energy sources from the indoor environment (light from the lamp, heat from devices, airflow from AC or electric fan, etc.) and become the power source for the autonomous sensor node in further development.
4. Conclusions
A smart wireless climate sensor node prototype for indoor temperature and relative humidity monitoring application was implemented in this study. With a compact size in a single board which only consumes a total energy capacity required of 0.693 mWh per cycle of data measurement (initialization, data acquired, data transmitted, and power mode) in 14.65 s, the device is suitable for low-power and long-term indoor thermal comfort assessment purposes. Moreover, the highest energy required is 0.26 mWh, which is 38.01% of the node’s total consumption observed during the low-power mode with a time interval 10 s. The results of measurement performance indicated that the device had an accuracy of −0.05 °C and 0.08% for temperature and RH measurement, respectively. In addition, it was able to monitor indoor thermal comfort in a temperature average of 25–30 °C and humidity average of 30–40% during a 4 day field experiment. The acquired data were successfully transmitted to the cloud over the IoT system, while the trends were displayed and recorded in the monitoring terminal dashboard for further analysis. From the power requirement perspective, the 10 F supercapacitor can provide energy to the sensor node for 180 s. However, the power storage can still extend its lifetime by either increasing the storage capacity or harvesting energy from the indoor environment. Therefore, with a low power consumption feature, the developed wireless climate sensor node has the potential to integrate with an indoor energy harvesting system (micro-scale energy) toward a fully autonomous active sensor node for a long operating time.