Indoor Occupancy Sensing via Networked Nodes (2012–2022): A Review
Abstract
:1. Introduction
2. Comparison with Contemporary Review Articles
- The review’s primary objective is to guide a method selection process for occupancy sensing via a decision-making process that relies on quantifiable parameters called ADPs. A flowchart that illustrates the method selection process based on ADPs is presented in Figure 1.
- The review limits its focus by only considering methods employing networked sensor nodes and making it mandatory to use PIR technology in combination with other underlying sensing technologies. PIR was explicitly chosen to judge the algorithmic performance of occupancy sensing methods; these need to perform on a standard modality. PIR is the most frequently used occupancy sensing modality [14].
- The review comments on the conformity of reviewed articles to the claimed application areas based on the conformance criteria attached to ADPs which is detailed in Section 4.
3. Methodology
4. Occupancy Sensing Gaps and ADP Identification
5. Solutions to Application Mapping
- A solution can only be used in Energy and Space Utilization applications if and only if these are scalable, i.e., NDD is low. Energy and Space utilization is usually measured across an entire commercial or residential unit. Any solution with a relatively high NDD is essentially non-scalable due to additional infrastructure costs.
- Health and Safety and Security applications require high occupant tracking and detection accuracy. The solutions usually achieve this at the expense of high NDD. Even though such solutions have high accuracy (≥95%), these cannot be employed for HVAC Control, and Occupant Comfort and Energy and Space Utilization applications as scalability is infeasible.
- Although NN-based classification and regression techniques achieve relatively high accuracy, the network training input size is fixed. Thus, any missing sensor time-series data would need to be imputed for the model to be able to produce an inference. Moreover, the pre-requisite of collecting a dataset must be satisfied to deploy any NN.
- Sensors such as CO2 and VOC require almost 30 min to respond reliably to occupancy. Likes of PIR, temperature and light sensors can register occupancy several times a second. This disparity and the resulting advantage of high frequency sensors should be kept in mind while comparing the accuracies for various presented solutions.
- Sensors such as CO2 and VOC are sometimes placed at the ventilation ducts in some of the methods listed in Table 4. Under such scenarios, NDD tends to be very low for these sensors, thus presenting an advantage for using these sensors.
6. Accuracy and Suitability Analysis
- Statistical and deep learning ML methods
- Bayesian inference methods
- HMM-based methods
Comments on Solution Conformance to the Claimed Application Areas
7. Discussion and Future Trends
8. Conclusions
Author Contributions
Funding
Conflicts of Interest
Abbreviations
AI | Artificial Intelligence | ML | Machine Learning |
ADP | Application-desired Parameters | MTBF | Mean Time Before Failure |
AR | Autoregressive | NDD | Node Deployment Density |
ARM | Advanced RISC Machine | NEMA | National Electrical and Manufacturers Association |
ASHRAE | American Society of Heating, Refrigerating and Air-Conditioning Engineers | NN | Neural Networks |
AWT | Absolute Water Content | NFPA | National Fire Protection Association |
CEC | California Energy Commission | ODLL | On-device Lifelong Learning |
CPE | Customer Premise Equipment | PF | Particle Filter |
EM | Electromagnetic | PIR | Passive Infrared |
FFNN | Feed-Forward NN | QDA | Quadratic Discriminant Analysis |
FoV | Field-of-View | RF | Radiofrequency |
HMM | Hidden Markov Model | RH | Relative Humidity |
HVAC | Heating Ventilation and Air-Conditioning | SLEEPIR | Synchronized Low Energy Electronically chopped PIR |
IHMM | Inhomogeneous HMM | SoC | System-on-a-Chip |
IBC | International Building Code | SVM | Support Vector Machine |
IECC | International Energy Conservation Code | TVOC | Total VOC |
IR | Infrared | VOC | Volatile Organic Compounds |
IoT | Internet of things | WEKA | Waikato Environment for Knowledge Analysis |
KNN | K-Nearest Neighbor | ||
LDA | Linear Discriminant Analysis | ||
MCU | Microcontroller Unit |
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Reference | Review Study Title | Study Gaps |
---|---|---|
[15] | Review on occupancy detection and prediction in building simulation |
|
[10] | A comprehensive review of approaches to building occupancy detection |
|
[16] | Deep and transfer learning for building occupancy detection |
|
[17] | Occupancy detection systems for indoor environments: A survey of approaches and methods |
|
[18] | Occupancy detection in non-residential buildings: A survey and novel privacy preserved occupancy monitoring solution |
|
[19] | Occupancy detection and localization strategies for demand modulated appliance control in Internet of Things (IoT) enabled home energy management system |
|
[2] | Sensor impacts on building and HVAC controls: A critical review for building energy performance |
|
[8] | Indoor human occupancy detection using Machine Learningclassification algorithms and their comparison |
|
[20] | Fit-for-purpose: Measuring occupancy to support commercial buildingoperations: A review |
|
References | Application Area | Gaps |
---|---|---|
[5,12,20,21,22,23,24,25] | HVAC Control and Occupant Comfort |
|
[12,20,21,22,25,26,27,28,29,30,31] | Health and Safety |
|
[23,25,26,32,33,34] | Energy and Space Utilization |
|
[35,36,37,38,39,40] | Security |
|
Application Area | ADPs |
---|---|
HVAC Control and Occupant Comfort | Accuracy requirement (ASHRAE): ≥90% Info requirement: Historical/expected occupancy info Execution platforms: Enterprise core appliances, Datacenters, IoT and Edge AI devices Min sensor obs rate (ASHRAE): ≤30 min Max sensor failure rate: No quantification found. Still a research gap [2] Feasible Detection Area (ASHRAE): Office (≤250 ft2), storage (≥50 ft2 and ≤1000 ft2) Feasible Detection Area (CEC): Office (≤250 ft2), multipurpose rooms (≤1000 ft2), indoor spaces (≤300 ft2) Feasible Detection Area (IECC): Indoor spaces (≤300 ft2) |
Health and Safety | Accuracy requirement (IBC, NFPA): ≥95% Info requirement: Historical/expected occupancy info Execution platforms: IoT, Edge AI devices Min sensor obs rate: ≤1 min (dictated by sensor limitations) Max sensor failure rate (IBC, NFPA): 0.01% Feasible Detection Area (CEC): Lightening control not permitted for shutoff control in healthcare facilities or Egress lightening where power consumption ≤0.1 W/ft2 |
Energy and Space Utilization | Accuracy requirement (ASHRAE, IECC): ≥90% Info requirement: Contiguous indoor spaces need to be monitored to enable tracking applications. No historical or expected occupancy data needed. Execution platforms: Enterprise core appliances, Datacenters, IoT, Edge AI devices Min sensor obs rate:Hourly Max sensor failure rate: No quantification found. Still a research gap [2] Feasible Detection Area (CEC): Indoor spaces (≤300 ft2), storage rooms (≥50 ft2 and ≤1000 ft2), office space (≤250 ft2). |
Security | Accuracy requirement (IBC): ≥95% Info requirement: Moderate NDD to enable tracking applications. Execution Platforms: IoT, Edge AI devices Min sensor obs rate: ≤1 min (dictated by sensor limitations) Max sensor failure rate (IBC): 0.01% Feasible Detection Area (CEC): Indoor spaces (≤300 ft2), storage rooms (≥50 ft2 and ≤1000 ft2), office space (≤250 ft2). |
Solution | Data Filtering and Fusion Techniques | Input Data Streams | Detection Measure | NDD | Spatial/Temporal Resolution and Average Accuracy | Author Claimed Application Areas |
---|---|---|---|---|---|---|
[31] | Bayesian Occupancy Model | PIR sensor nodes | Bayesian Inference based on Prior Probability computed over historical data and Sensor Model output | Multiple Zones, 60 s, 71% | Energy and Space Utilization | |
[32] | SVM, LDA, QDA, RF-based ML algorithms | PIR, Light, Temperature, Sound, CO2 | ML Inference | Single Zone, 30 s, 98.4% | Health and Safety, Security, HVAC Control and Occupant Comfort | |
[33] | Decision Tree | PIR, Sound, Power use, CO2 | ML Inference | Single Zone, 60 s, 97.9% | Health and Safety, Security, HVAC Control and Occupant Comfort | |
[35] | RBF-based Neural Network | PIR, Humidity, Light, Sound, Temperature, CO2 | ML Inference | Multiple Zones, 60 s, 87.62% | Energy and Space Utilization | |
[34] | Statistical Feature-based FFNN | PIR, Temperature, Sound, CO2 | ML Inference | 27 sensor nodes in an open-plan office space with max 8 occupants | Multiple Zones, 5 min, 75% | Energy and Space Utilization |
[5] | Particle Filter-based Estimator | SLEEPIR, PIR, Temperature | Threshold placed on presence probability | Zone-level, 60 s, 96.2% | HVAC Control and Occupant Comfort, Energy and Space Utilization | |
[36] | AR HMM | PIR, Temperature, Reed switches, Airspeed, CO2 | Expectation Maximization algorithm applied to find the local optimal solution for AR HMM | 19 sensor nodes in a lab with max 10 occupants | Multiple Zones, 20 s, 84% | Energy and Space Utilization |
[41] | Multinomial Logistic Regression | PIR, Power usage, Temperature, Humidity, Light, Door sensors, CO2 | Predicted probability of the occupants being active, inactive or away | Multiple Zones, 60 s, 94.9% | HVAC Control and Occupant Comfort | |
[37] | RF, Decision Tree, KNN, SVM | PIR, Temperature | ML Inference | Multiple Zones variable time, 99% | Energy and Space Utilization | |
[7] | FFNN | PIR, Humidity, Light, Pressure, Temperature, CO2, TVOC, Sound, Door and Window sensor | ML Inference | Multiple Zones, 60 s, 94.3% | HVAC Control and Occupant Comfort, Energy and Space Utilization | |
[38] | Trajectory Analysis of Indoor Climate Sensor data | PIR, Temp, CO2, VOC, RH, AWT, Sound | 2-min and 5-min trends of sensor data are analyzed to determine occupancy probability | Single Zone, 5 min, 77.8% | HVAC Control and Occupant Comfort | |
[39] | Gaussian Distribution Model | PIR | Gaussian distribution used to fit the occupancy profiles. An accumulative function of Gaussian distributions for all sensors is used to predict occupancy | Multiple Zones, 60 min, 85% | Energy and Space Utilization | |
[40] | Multi-sensor Aggregation | PIR | Aggregation of PIR triggers over 5 min duration | Multiple Zones, 5 min, 87.5% | HVAC Control and Occupant Comfort, Energy and Space Utilization | |
[42] | Inhomogeneous HMM | PIR | Posterior probability evaluated via Maximum a posteriori and Viterbi Algorithm | Single Zone, 60 s, 99% | HVAC Control and Occupant Comfort, Energy and Space Utilization |
Solution | ADPs |
---|---|
[31] | Accuracy: 71.0% Information requirement: Prior probabilities for Bayesian model were calculated using four weeks of historical data. Execution Platforms: Samsung SmartThings Hub Sensor observation rate: 60 s Sensor Failure rate: High MTBF as per datasheet for ZMOTION® ZEPIR0AA PIR sensor Detection Area: |
[32] | Accuracy: 98.4% Information requirement: Labeled dataset for ML Execution Platforms: ARM based Beaglebone SoC Sensor observation rate: 30 s Sensor Failure rate: Unspecified PIR sensor Detection Area: |
[33] | Accuracy: 97.9% Information requirement: Labeled dataset for ML Execution Platforms: PC/Server Sensor observation rate: 60 s Sensor Failure rate: PIR Sensor MTBF unknown (Phidgets 1111 IR Motion Sensor) Detection Area: |
[35] | Accuracy: 87.6% Information requirement: Labeled dataset for ML Execution Platforms: Arduino Black Widow single-board MCU, MATLAB on PC/Server Sensor observation rate: 60 s Sensor Failure rate: Unspecified PIR sensor Detection Area: |
[34] | Accuracy: 75.0% Information requirement: Labeled dataset for ML Execution Platforms: HOBO U series event loggers, MATLAB and WEKA on PC/Server Sensor observation rate: 5 min Failure rate: Unspecified PIR sensor Detection Area: < |
[5] | Accuracy: 96.2% Information requirement: Sensor data for correlation evaluation, Labeled dataset for ML Execution Platforms: Onboard SoC (EFR32BG13, Silicon Labs) onboard nodes, Edge AI (Raspberry Pi 4) Sensor observation rate: 60 s Sensor Failure rate: >10,000 h (Panasonic® EKMB1391111K) Detection Area: |
[36] | Accuracy: 84.0% Information requirement: time-series data correlations need to be evaluated pre-deployment. Execution Platforms: wireless measurement nodes, PC/Server Sensor observation rate: 20 s Failure rate: Unspecified PIR sensor Detection Area: < |
[41] | Accuracy: 94.9% Information requirement: Labeled dataset for ML Execution Platforms: BACnet ™ for sensor connectivity, R on Workstation Sensor observation rate: 60 s Failure rate: Unspecified PIR sensor Detection Area: |
[37] | Accuracy: 99.0% Information requirement: Domain knowledge, Labeled dataset for ML Execution Platforms: NI Compact DAQ, scikit-learn on ARM based Beaglebone Black SoC Sensor observation rate: Variable Failure rate: Unspecified PIR sensor Detection Area: |
[7] | Accuracy: 94.3% Information requirement: Labeled dataset for ML Execution Platforms: Arduino Uno, ARM based Kerlink® IoT Wirnet 868 Station Sensor observation rate: 60 s Failure rate: >10000 h (Panasonic® PaPIRs EKMB) Detection Area: |
[38] | Accuracy: 77.8% Information requirement: Some method parameters and thresholds are set empirically for each sensor node. Execution Platforms: Arduino Mega, PC/Server Sensor observation rate: 5 min Failure rate: High MTBF as per datasheet (RE 200 B) Detection Area: |
[39] | Accuracy: 85% Information requirement: Historical sensor data required for past twenty-four days. Execution Platforms: PC/Server Sensor observation rate: 60 min Failure rate: High MTBF as per datasheet (HPC005 infrared people counter) Detection Area: |
[40] | Accuracy: 87.5% Information requirement: No historical data required. Execution Platforms: SmartThings cloud platform, IoT devices Sensor observation rate: 5 min Failure rate: High MTBF as per datasheet (T3L-SS014, IM6001-MTP01, STS-IRM-25) Detection Area: |
[42] | Accuracy: 99% Information requirement: Prior ground-truth and historical sensor data required for parameter training. Execution Platforms: MATLAB 2016a, Pycharm Sensor observation rate: 60 s Failure rate: High MTBF as per datasheet (AMG8853) Detection Area: |
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Emad-Ud-Din, M.; Wang, Y. Indoor Occupancy Sensing via Networked Nodes (2012–2022): A Review. Future Internet 2023, 15, 116. https://doi.org/10.3390/fi15030116
Emad-Ud-Din M, Wang Y. Indoor Occupancy Sensing via Networked Nodes (2012–2022): A Review. Future Internet. 2023; 15(3):116. https://doi.org/10.3390/fi15030116
Chicago/Turabian StyleEmad-Ud-Din, Muhammad, and Ya Wang. 2023. "Indoor Occupancy Sensing via Networked Nodes (2012–2022): A Review" Future Internet 15, no. 3: 116. https://doi.org/10.3390/fi15030116
APA StyleEmad-Ud-Din, M., & Wang, Y. (2023). Indoor Occupancy Sensing via Networked Nodes (2012–2022): A Review. Future Internet, 15(3), 116. https://doi.org/10.3390/fi15030116