Advanced Data Systems for Energy Consumption Optimization and Air Quality Control in Smart Public Buildings Using a Versatile Open Source Approach
Abstract
:1. Introduction
- the “field” level with the electronic interface for active data detection,
- the data monitoring levels accounting for results prediction,
- the adjusting final level, containing the procedures for energy efficiency enhancements.
2. Materials and Methods
2.1. Energy Monitoring Modular Architecture (EP Interface)
2.1.1. Perception Layer (EP Interface)
2.1.2. Network Layer (EP Interface)
2.1.3. Application Layer (EP Interface)
2.1.4. Cognition Layer (EP Interface)
- data pre-processing
- the data mining processing.
2.2. Air Monitoring System Modular Architecture (IAQ Interface)
2.2.1. Perception Layer (IAQ Interface)
2.2.2. Network Layer (IAQ Interface)
2.2.3. Application Layer (IAQ Interface)
2.3. Automatic Time-Series Decomposition and Dashboards
3. Results
3.1. Energy Monitoring and IAQ Dashboards
3.2. IAQ Parameter Monitoring
3.3. Data Mining to Understand Energy Consumption Behavior
3.3.1. SARIMA Forecasting Results
3.3.2. RNN/LSTM Results
4. Discussion
- thermal energy savings were of 233 kWh (62.2%);
- ventilation electrical energy savings were of 17.5 kWh (25.1%);
- lighting electrical savings were of 282.2 kWh (88.6%).
- 1-
- energy consumption interventions based on the use of electricity, avoiding energy waste and using energy either from renewables or from storage (thermal and electrical), and possibly choosing low-cost hours;
- 2-
- reengineering working spaces based on intelligent deactivation of electrical loads in empty rooms;
- 3-
- new definition of the rooms occupation based on either work activities or electric loads distribution;
- 4-
- engineering of new layouts by taking into account the “wellness” level provided by the IAQ module;
- 5-
- other interventions can be performed in real time by continuously analyzing building energy and IAQ dashboards.
- simultaneous energy and IAQ monitoring system are applied on the same building;
- a good error performance of the adopted algorithms (LSTM and SARIMA) can be useful for energy forecasting;
- low-cost and open source solutions are suitable for the hardware integration of different sensors and for the data processing software libraries;
- a method to design platform architectures, implementing standard communication protocols (such as MQTT), is available.
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
AC | Alternating Current |
ANN | Artificial Neural Network |
ARIMA | AutoRegressive Integrated Moving Average |
AVR | Alf and Vegard’s RISC |
BLE | Bluetooth Low Energy |
BLE-M-LR | Bluetooth Low Energy Mesh Long Range |
CF | Contamination Factor |
DM | Data Monitoring |
D-SySCOM | Data System Platform for Smart Communities |
EEPROM | Electrically Erasable Programmable Read-Only Memory |
EP | Electric Power |
EMS | Energy Management System |
GPS | Global Positioning Systems |
IAQ | Indoor Air Quality |
IEQ | Indoor Environmental Quality |
IoT | Internet of Things |
IDE | Integrated Development Environment |
IP | Internet Protocol |
IRED | Infrared Emitting Diode |
KPI | Key Performance Indicator |
LoRA | Long RAnge |
LoRaWAN | Long-Range Wide-Area Networks |
LSTM | Long Short-Term Memory |
MAE | Mean Absolute Error |
MCU | MicroController Unit |
MOS | Metal Oxide Semiconductor |
MQTT | Message Queuing Telemetry Transport |
MSE | Mean Square Error |
M2M | Machine to Machine |
PCB | Printed Circuit Board |
RMS | Root Mean Square |
RNN | Recurrent Neural Network |
SDK | Software Development Kit |
SQL | Structured Query Language |
TCP | Transmission Control Protocol |
VOC | Volatile Organic Compounds |
WMS | Wireless Sensors Network |
Appendix A
Appendix B
- BME680 is a low power consumption sensor unit that includes an environmental VOC, temperature, humidity and barometric sensors. The operating current consumption ranges from 5 to 25 mA. The sensor precision for temperature is ±1.0 °C, the humidity is ±3% r.H and atmospheric pressure of ±0.6 hPa. The BME680 sensor calculates the sum of VOCs in the surrounding air to provide qualitative air quality data. This sensor also incorporates a background auto-calibration feature in order to provide reliable IAQ qualitative data. The data is stored in Electrically Erasable Programmable Read-Only Memory (EEPROM), which is then used for baseline correction for subsequent readings. This process regards the recent measurement records to guarantee that IAQ index ~25 matches to typical good air and IAQ index ~250 states for typical polluted air. The sensor output resistance value varies according to VOCs concentrations, as the higher the concentration of reducing VOCs, the lower the resistance and vice versa. The IAQ qualitative range is from 0 to 500.
- Sharp GP2Y1010AU0F is a dust sensor with an optical sensing system. An infrared emitting diode (IRED) and a phototransistor are integrated into this device, detecting the reflected light of dust in air. In particular, the sensor can detect fine particles like those contained in cigarette smoke, with a capability for detecting them due to the pulse pattern of output voltage. The features of compact size and low current draw of 20 mA are particularly important for wireless embedded applications. The sensor outup is an analog voltage proportional to the measured dust density, with a sensitivity of 0.5 V per 0.1 mg/m3. The detecting range of the sensor is from 0 mg/m3 to 0.5 mg/m3.
- MQ Sensors are metal oxide semiconductor (MOS)-type gas sensors, also known as chemiresistors. Their detection is based upon the change in resistance of the sensing material when the gas comes into contact with the material. They have high sensitivity for different gasses like ammonia, NOx, alcohols, aromatic compounds and smoke. The conductivity of the sensor increases with the concentration of pollutant gas. The sensitive material of MQ sensors is SnO2, which has lower conductivity in clean air. When the target combustible gas exists, conductivity of the sensor increases proportionally to gas concentration. The sensor module voltage is 5 V. The resistance variation in the sensor module is converted into proportional voltage variation by the use of external load resistance.
- BH1750FVI is a photodiode-based analog ambient light intensity sensor integrated into a circuit with a two wires serial bus interface. BH1750FVI has high resolution when measuring light in a range between 1 and 65535 lx.
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Performance Metric | SARIMA | RNN | LSTM |
---|---|---|---|
MAE | 0.075166 | 0.080148 | 0.067111 |
MSE | 0.018464 | 0.019442 | 0.018558 |
RMS | 0.141396 | 0.139434 | 0.136226 |
Feature | Proposed Technologies | Commercial Technologies |
---|---|---|
Mechanical stability of the electronic modules | The mechanical stability can be achieved after an accurate design of the package containing electronic components and printed circuit board (PCB) connections. | The mechanical stability is guaranteed by the industrialized package tasted during the industrialization process. |
Communication stability | Both accurate design and maintenance are necessary to ensure communication stability. | Commercial solutions normally provide a sure communication stability. |
Time forecasting (setting parameters) | It is possible to set each parameter of the forecasting algorithm. | Typically, commercial solutions do not implement forecasting algorithms. |
Sensor setting | The proposed solution allows us to optimize important parameters (such as sampling time), and transmission protocol. | The setting is a function of the availability of the third-party company providing the software. |
Integrability | The solutions are fully integrable with standard protocols, and the modules are designed to integrate in the same framework as other low-cost sensors detecting other indoor parameters. The use of a possible software development kit (SDK) and of the open source software, allow favoring the integration of the hardware and the software. | The modules are typically integrable with other ones of the same company. |
Cost | The low cost is fundamental to implementing modules when many rooms have to be controlled. | The cost of the components may limit the implementation (especially for big buildings). |
Data availability | The availability of raw data allows to estimate different KPI also considering a large number of variables/parameters (as for complex KPI [1]). | Data are typically available on third party databases, and cannot be easily used to calculate other KPI which can be referred to in the particular case study. |
Research Topics and references | Applicability of the Proposed Technology to the Research Topic | Advantages of the Proposed Technology Matching with the Research Topic |
---|---|---|
Energy Management Systems (EMS) [24,25,26,27] | EMS monitoring heavy loading, fault conditions, energy consumption (considering environment parameters),battery charging, and estimating problems in electric power systems. | Easy implementation for each type of monitoring system, integrating versatile synoptic panels controlling parameters (open source platforms adaptable for the specific environment or system to control and able to estimate other non-standard parameters). |
Energy Forecasting [28,29,30,31,32,33,34,35,36] | Methods such as artificial neural network (ANN), SARIMA and LSTM for load, active and reactive power forecasting. | Possibility to integrate for cloud or local forecasting calculus different algorithms by using the same software platform. |
Smart metering network [37] | Long RAnge (LoRA) technology for residential electricity metering networks. | Compatibility with LoRA protocol constructing a LoRA IoT network (by means of a specific access control layer). |
Wireless Sensors Network (WSN) [38,39,40] | WSN implementing long-range wide-area networks (LoRaWAN), bluetooth low-energy mesh long-Range (BLE-M-LR), and data aggregation technologies. | Possibility to also structure the complex WSN, adopting a low-cost Arduino-based technology managing different wireless nodes (simply constituted by a microcontroller unit, a radio frequency transmitter, and a battery) structured in different architectures. |
Electronic Integrated Chips [41,42,43] | Integration in boards of Bluetooth Low Energy (BLE), and in general of low-cost systems-on-chip solutions, allocating resources efficiently. | Presence in the market of sensor technologies compatible with different Arduino-based boards, ensuring a full integration for embedded BLE or Global Positioning System (GPS). |
Indoor air quality [44] | Indoor air quality (IAQ) monitoring technology. | Possibility to integrate IAQ with EMS by considering the same backend system. |
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Starace, G.; Tiwari, A.; Colangelo, G.; Massaro, A. Advanced Data Systems for Energy Consumption Optimization and Air Quality Control in Smart Public Buildings Using a Versatile Open Source Approach. Electronics 2022, 11, 3904. https://doi.org/10.3390/electronics11233904
Starace G, Tiwari A, Colangelo G, Massaro A. Advanced Data Systems for Energy Consumption Optimization and Air Quality Control in Smart Public Buildings Using a Versatile Open Source Approach. Electronics. 2022; 11(23):3904. https://doi.org/10.3390/electronics11233904
Chicago/Turabian StyleStarace, Giuseppe, Amber Tiwari, Gianpiero Colangelo, and Alessandro Massaro. 2022. "Advanced Data Systems for Energy Consumption Optimization and Air Quality Control in Smart Public Buildings Using a Versatile Open Source Approach" Electronics 11, no. 23: 3904. https://doi.org/10.3390/electronics11233904
APA StyleStarace, G., Tiwari, A., Colangelo, G., & Massaro, A. (2022). Advanced Data Systems for Energy Consumption Optimization and Air Quality Control in Smart Public Buildings Using a Versatile Open Source Approach. Electronics, 11(23), 3904. https://doi.org/10.3390/electronics11233904