| Literature DB >> 34206378 |
Maryam Pishgar1, Salah Fuad Issa2, Margaret Sietsema3, Preethi Pratap3, Houshang Darabi1.
Abstract
INTRODUCTION: The field of artificial intelligence (AI) is rapidly expanding, with many applications seen routinely in health care, industry, and education, and increasingly in workplaces. Although there is growing evidence of applications of AI in workplaces across all industries to simplify and/or automate tasks there is a limited understanding of the role that AI contributes in addressing occupational safety and health (OSH) concerns.Entities:
Keywords: artificial intelligence; future of work; machine learning algorithms; occupational safety and health; robotic devices; sensor devices; worker health and safety
Mesh:
Year: 2021 PMID: 34206378 PMCID: PMC8296875 DOI: 10.3390/ijerph18136705
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1The number of AI papers on ArXiv over time by subcategory from 2010 to 2019. The x-axis of the graph is the year of publication (collected from 2010 to 2019) and the y-axis is the number of the AI papers on ArXiv split by sub-categories of AI research. The data is provided by “2019 AI Index Reports by Stanford” [1].
Figure 2The number of publications demonstrating the use of AI in the OSH field from 1986 to 2019. The x-axis is the year of publication and the y-axis is the number of the AI papers published with an OSH application. All AI papers queried were individually reviewed to confirm the OSH application.
Figure 3Components of an AI system. Data from the environment is inputted into the AI agent through sensors. This data is transformed/analyzed by ML algorithms that then instruct actuators to conduct certain actions on the environment.
Type of ML techniques and the algorithms associated with each technique.
| Types of ML Techniques | List of Most Common Algorithms |
|---|---|
| Supervised ML | Support Vector Machine (SVM), Naive-Bayes, K-Nearest Neighbor, Decision Trees, Random Forests (RF), Linear Regression, Logistic Regression, DL |
| Unsupervised ML | K-Means, Hidden Markov Model (HMM), Principal Component Analysis, Gaussian Model Mixture (GMM), DL |
| Semi- Supervised ML | Self-Training, Co-Training, Generative methods, Mixture models, Semi-supervised SVM, Graph-based methods |
| Reinforcement ML | Q-Learning, Temporal Difference, Deep Adversarial Networks |
Evaluation Metrics.
| Evaluation Metrics | Formula |
|---|---|
| Recall or sensitivity |
|
| Precision |
|
| Specificity |
|
| Accuracy |
|
| F1-measure |
|
| ROC |
|
Figure 4The Risk Evolution, Detection, Evaluation, and Control of Accidents (REDECA) framework for AI OSH. Blue boxes are the different states a worker can find themselves in. R1 is the state when a worker has minimal to no risk of exposure. R2 indicates exposure to hazard and an increased risk of injury. R3 indicates a harmful work-related event occurred. Green boxes indicate technologies that can predict the probability of transitioning into the next states. White boxes are technologies that can detect transitions between the states. Orange boxes indicate the intervention strategies to keep the worker safe or reduce the impact of a work-related event.
Figure 5U.S. Bureau of Labor Statistics 2019 survey on the rate of fatal work injury by industry sector [39]. The x-axis is the fatal work injury rate and the y-axis is different industries.
REDECA components and shorthand notations used in industry Tables 4–8.
| Prob. R2 | Probability and time of entering R2 |
| Detect R1→R2 | Detect change between R1 and R2 |
| Int. R1→R2 | Intervention to keep worker from moving to R2 |
| Int. R2→R1 | Intervention send worker back to R1 |
| Prob. R3 | Probability and time of entering R3 |
| Detect R2→R3 | Detect change between R2 and R3 |
| Int. R2→R3 | Intervention to keep worker from moving to R3 |
| Prob. Rec. | Probability of reducing recovery time |
| Int. R3 | Intervention to minimize damage and recovery time |
Agricultural AI/OSH algorithm, sensor and actuator research organized by the REDECA framework. Major technologies described by each paper is mentioned and linked to the relevant papers [39,40,41,42,43,44,45,46,47,48,49,50,51,52,53,54,55,56,57,58,59,60,61,62,63,64,65,66,67,68,69,70,71,72,73,74,75,76,77,78,79,80,81,82,83,84,85,86,87,88,89,90,91,92,93,94,95,96,97,98]. Summary of each paper is found in Appendix A.
| REDECA Components | AI Algorithms (ML) | Sensors | Actuators | Environment (Type of Hazard) |
|---|---|---|---|---|
| Prob. R2 | Linear Mixed Model: [ | Laser: [ | Robot: [ | Musculoskeletal Disorders: [ |
| Detect R1→R2 | LIDAR: [ | Robot: [ | Machinery: [ | |
| Int. R1→R2 | Linear Mixed Model: [ | Camera: [ | Robot: [ | Pesticide: [ |
| Int. R2→R1 | ||||
| Prob. R3 | Accelerometer: [ | Musculoskeletal Disorders: [ | ||
| Detect R2→R3 | ||||
| Int. R2→R3 | ||||
| Prob. Rec. | ||||
| Int. R3 |
Oil and Gas AI/OSH algorithm, sensor and actuator research organized by the REDECA framework. Major technologies described by each paper is mentioned and linked to the relevant papers [99,100,101,102,103,104,105,106,107,108,109,110,111,112,113,114,115,116,117,118,119,120,121,122,123,124,125,126,127,128,129,130,131,132,133]. Summary of each paper is found in Appendix B.
| REDECA Component | AI Algorithms (ML) | Sensors | Actuators | Environment (Type of Hazard) |
|---|---|---|---|---|
| Prob. R2 | SVM: [ | Temperature: [ | Pipeline Leakage: [ | |
| Detect R1→R2 | SVM: [ | Temperature: [ | Pipeline Leakage: [ | |
| Int. R1→R2 | Localization: [ | Temperature: [ | Robot: [ | Confined Space: [ |
| Int. R2→R1 | ||||
| Prob. R3 | ||||
| Detect R2→R3 | ||||
| Int. R2→R3 | ||||
| Prob. Rec. | ||||
| Int. R3 |
Mining AI/OSH algorithm, sensor and actuator research organized by the REDECA framework. Major technologies described by each paper is mentioned and linked to the relevant papers [134,135,136,137,138,139,140,141,142,143,144,145,146,147,148,149,150,151,152,153,154,155,156,157,158]. Summary of each paper is found in Appendix C.
| REDECA Component | AI Algorithms (ML) | Sensors | Actuators | Environment (Type of Hazard) |
|---|---|---|---|---|
| Prob. R2 | Robot: [ | General: [ | ||
| Detect R1→R2 | Motion: [ | Smartphone: [ | General: [ | |
| Int. R1→R2 | Motion: [ | IoT: [ | General: [ | |
| Int. R2→R1 | Accelerometer: [ | Smartphone: [ | General: [ | |
| Prob. R3 | Accelerometer: [ | Smartphone: [ | General: [ | |
| Detect R2→R3 | ||||
| Int. R2→R3 | ||||
| Prob. Rec. | ANN: [ | General: [ | ||
| Int. R3 |
Transportation AI/OSH algorithm, sensor and actuator research organized by the REDECA framework. Major technologies described by each paper is mentioned and linked to the relevant papers [159,160,161,162,163,164,165,166,167,168,169,170,171,172,173,174,175,176,177,178,179,180,181,182,183,184,185,186,187,188,189,190,191,192,193,194,195,196,197,198,199,200,201,202,203,204,205,206,207,208,209,210]. Summary of each paper is found in Appendix D.
| REDECA Component | AI Algorithms (ML) | Sensors | Actuators | Environment (Type of Hazard) |
|---|---|---|---|---|
| Prob. R2 | GMM: [ | Infrared: [ | Fatigue: [ | |
| Detect R1→R2 | SVM: [ | Infrared: [ | Alarm: [ | Fatigue: [ |
| Int. R1→R2 | CNN: [ | Camera: [ | Alarm: [ | Fatigue: [ |
| Int. R2→R1 | ||||
| Prob. R3 | SVM: [ | ECG: [ | Fatigue: [ | |
| Detect R2→R3 | ||||
| Int. R2→R3 | ||||
| Prob. Rec. | ||||
| Int. R3 |
Construction AI/OSH algorithm, sensor and actuator research organized by the REDECA framework. Major technologies described by each paper is mentioned and linked to the relevant papers [211,212,213,214,215,216,217,218,219,220,221,222,223,224,225,226,227,228,229,230,231,232,233,234,235,236,237,238,239,240,241,242,243,244,245,246,247,248,249,250,251,252,253,254,255,256]. Summary of each paper is found in Appendix E.
| REDECA Component | AI Algorithms (ML) | Sensors | Actuators | Environment (Type of Hazard) |
|---|---|---|---|---|
| Prob. R2 | SVM: [ | Pressure: [ | Fall: [ | |
| Detect R1→R2 | ANN: [ | Accelerometer: [ | General Safety: [ | |
| Int. R1→R2 | BIM: [ | General Safety: [ | ||
| Int. R2→R1 | KNN: [ | Audio: [ | General Safety: [ | |
| Prob. R3 | ANN: [ | Accelerometer: [ | Fall: [ | |
| Detect R2→R3 | ANN: [ | Accelerometer: [ | Fall: [ | |
| Int. R2→R3 | ||||
| Prob. Rec. | ||||
| Int. R3 | KNN: [ | Audio: [ | General Safety: [ |
Figure 62020 revenue from wearable sensors, the graph is provided by the market research report ‘Wearable Sensors 2021–2031’ IDTeachEx [239]. Copyright © 2021 IDTechEx Research. Some rights reserved.
Reports of AI Applications in the Agricultural Industry.
| Study | AI Applications | Tasks | OSH Relevance or Outcome | |
|---|---|---|---|---|
| Sensor/ | Algorithm/Technology | |||
| [ | Robotics | NA | Introduction of robotics for land preparation | Reducing the manual work, Prevention of musculoskeletal disorders (MSDs) which is caused over time by repetitive works |
| [ | Robotics | NA | Melon detection autonomous | Reducing the manual work while detecting the melon faster |
| [ | LiDAR sensors | NA | Tracking robot position from the workers | Reducing possible injuries of the workers due to the HRI |
| [ | Robot sprayer | NA | Semiautomatic teleoperation of HRI system | Reducing possible injuries due to the HRI, Reducing the manual work, Preventing diseases due to the exposure to the toxic pesticides |
| [ | HRI | NA | Detection of fatigue, workload, and awareness for the human operator | Preventing possible injuries due to fatigue and over workload |
| [ | Agricultural robot sprayer | NA | Situation awareness for operator and robot | Reducing possible injuries due to the HRI, Reducing the manual work, Preventing diseases due to the exposure to the toxic pesticides |
| [ | NA | DL, simulation | Simulate steering a tractor with almost the same accuracy as the manual steering by analyzing EMG | Reducing manual work, preventing MSDs due to the repetitive steering |
| [ | Triaxial sensors | NA | Monitoring the level of exposure of the workers to vibration and repetitive activities. | Prevention of MSDs which is caused over time by repetitive works |
Reports of AI Applications in the Oil and Gas Industry.
| Study | AI Applications | Tasks | OSH Relevance or Outcome | |
|---|---|---|---|---|
| Sensor/ | Algorithm/Technology | |||
| [ | Temperature and gas sensors | WSN technology using At mega 2560 controller | Oil well monitoring and control | Prevention of the workers from exposure to high-pressure line and equipment, extreme temperature environment, hazardous chemical, explosion, and fires |
| [ | NA | ZigBee technology | Remote Monitoring and Control of the pipelines | Prevention of the workers from exposure to hazardous chemical, explosion, and fires |
| [ | Gas safety system for oil drilling sites | WSN technology | Monitoring the oil drilling sites | Prevention of the workers from exposure to ergonomic related injuries such as lifting heavy items, bending, working in awkward postures, and repetitive tasks |
| [ | Pressure, Temperature, Acoustic, Vibration sensors | Simulation-based on MATLAB and C++ | An efficient oil and gas pipeline monitoring systems | Prevention of the workers from exposure to extreme temperature, high-pressure line and equipment, and ergonomic related injuries due to the repetitive exposure to vibrations |
| [ | Flow sensors | WSN technology and game theoretic approach | Pipeline monitoring | Prevention of the workers from exposure to high-pressure line and equipment, hazardous chemical, explosion and fires |
| [ | Pressure and temperature sensors | Simulation-based Microcontroller, Zigbee | Monitoring of oil and gas pipelines | Prevention of the workers from exposure to high-pressure line and equipment, hazardous chemical, extreme temperature environment, explosion, and fires |
| [ | Pressure, Temperature, sensors | WSN technology | Monitoring of oil and gas pipelines | Prevention of the workers from exposure to high-pressure line and equipment, hazardous chemical, extreme temperature environment, explosion, and fires |
| [ | Pressure transducers | SVM, KNN, GMM algorithms | Leakage detection and size estimation | Prevention of the workers from exposure to high-pressure line and equipment, hazardous chemical, extreme temperature environment, explosion, and fires |
| [ | Ultrasonic transducers, flow sensors, Transit-Time Ultrasonic Flow Meter(TTUF), Doppler Ultrasonic Flowmeter(DUF) | WSN technology | Detection of leaking in long pipelines | Prevention of the workers from exposure to hazardous chemical, explosion, and fires |
| [ | Pressure transducers | SVM, KNN, and GMM algorithms | Leakage detection | Prevention of the workers from exposure to high-pressure line and equipment, hazardous chemical, explosion, and fires |
| [ | Magnetic induction-based, pressure and Acoustic sensors | WSN technology | Monitoring underground pipeline | Prevention of the workers from exposure to the high-pressure line and equipment, and hearing injuries |
| [ | Pressure, Temperature, Acoustic sensors | WSN technology | Monitoring Underwater pipelines | Prevention of the workers from exposure to extreme temperature, high-pressure line and equipment, and hearing injuries |
| [ | NA | graded network, GPRS, Anko-TC series, OMNet++ | Remote monitoring terrestrial petroleum pipeline cathodic protection system | Prevention of the workers from exposure to hazardous chemical, explosion, and fires |
| [ | Acoustic sensor | SVM, Wavelet Transform technology | Hierarchical leak detection and localization method in natural gas pipeline monitoring | Prevention of the workers from hearing injuries |
| [ | Pressure, Temperature, Acoustic, Vibration sensors | WSN technology | Autonomously monitor and detect any defects in the different downstream operations | Prevention of the workers from exposure to extreme temperature, high-pressure line and equipment, and ergonomic related injuries due to the repetitive exposure to vibrations |
| [ | Sensor nodes on the machine, Vibration, and stator current | WSN technology | Autonomously monitor and detect any defects in the operations | Prevention of the workers from ergonomic related injuries due to the repetitive exposure to vibrations |
| [ | Propane sensors | WSN technology, Localization algorithms | A gas leak detection and localization with a detection rate of 91% | Prevention of the workers from exposure to hazardous chemical, explosion, and fires |
| [ | Pressure, Temperature, Acoustic flow rate sensors | WSN technology | Using pipeline monitoring system to detect and localized leakage and blockage in oilfield pipelines | Prevention of the workers from exposure to extreme temperature, high-pressure line and equipment, and hearing injuries |
| [ | Gas, wind, temperature, and humidity sensors | WSN technology | features from environmental sensors such as wind speed used to develop a real-time and large area wireless monitoring system for gas leakage | Prevention of the workers from exposure to high-pressure line and equipment, hazardous chemical, explosion and fires, extreme temperature and humidity environments |
| [ | NA | IoT | Data collection | Prevention of the workers from exposure to extreme environments, fall sites |
| [ | Different sensors in wearable watches, smart helmets, and smart glasses | IoT | Used by oil field engineers in offshore fields for real-time assistance, safety, and communication with the control room for navigation and enhanced collaboration | Prevention of the workers from exposure to extreme temperature, high-pressure line, and equipment, hazardous chemical, explosion and fires, vehicle accidents, falls, working the confined space, and ergonomic related injuries such lifting heavy items, bending, working in awkward postures |
| [ | Sensor-based Pipeline Autonomous Monitoring and Maintenance System (SPAMMS) | WSN technology | Active and corrective monitoring and maintenance of the pipelines | Preventing the workers from exposure to hazardous chemical, explosion, and fires |
| [ | Pressure, temperature, acoustic, vibration sensors | Radio-frequency identification (RFID | Detect anomalous events such as pipeline leakage detection | Prevention of the workers from exposure to extreme temperature, high-pressure line and equipment, and ergonomic related injuries due to the repetitive exposure to vibrations |
| [ | Autonomous SystemsWireless Sensor Networks | WSN technology | Digitization of oil fieldsreal-time optimization of drilling operationsthe use of nanotechnologyto aid gauging, reservoir modeling, and diagnostics | Prevention of the workers from exposure to extreme environments, vehicle accidents, falls, working the confined space, ergonomically related injuries such lifting heavy items, bending, working in awkward postures |
| [ | Smart robots | AVA classification as an unsupervised ML algorithm | Exploration of oil and gas autonomously | Prevention of the workers from exposure to extreme environments falls |
| [ | NA | RF and Landsat 8 OLI imagery algorithms | Map land oil spills | Prevention of the workers from exposure to hazardous chemical, explosion, and fires |
| [ | Pressure, Temperature, Acoustic, Vibration sensors | LS-SVM machine learning algorithm, acoustic wave method | Detect leak levels on a gas pipeline | Prevention of the workers from exposure to high-pressure line and equipment, extreme temperature environment, hazardous chemical, explosion, and fires |
| [ | Autonomous robot | NA | Inspection of pipeline and other equipment | Prevention of the workers from exposure to extreme environments, vehicle accidents, falls, working the confined space, ergonomic related injuries such as lifting heavy items, bending, working in awkward postures |
Reports of AI Applications in the Mining Industry.
| Study | AI Applications | Tasks | OSH Relevance or Outcome | |
|---|---|---|---|---|
| Sensor/ | Algorithm/Technology | |||
| [ | NA | Decision tree, RF, NN | Predicting mining accident and days away from work | Preventing from accidents in the mining industry by predicting it |
| [ | GPS | NA | Monitoring locations and movements | Preventing from fall injury by measuring the gait stability, estimating the fall risk, preventing from entering the workers to the hazardous environments by identifying the location of a workers and warning |
| [ | Motion and speed sensors, Communication sensors | NA | Monitor the movement of the workers in remote locations and communicate with them | Preventing from a fall injury, ensuring the safety of the workers by staying connected and communicating with them while they are in the mine |
| [ | Environmental sensors | NA | Collecting data from surrounding of the workers | Preventing the workers from harmful bacteria due to high level of humidity, high temperature, hearing damage, and toxic gases in the mine |
| [ | Toxic gases sensors | NA | Monitoring the level of the toxic gases | Protection of the workers from exposure to the toxic and inflammable gases and prevention of fire explosion in the mine for their safety |
| [ | Acoustic sensors, and wearable dust sensors | NA | Monitoring the noise level and monitoring the level of exposure to crystalline silica | Preventing hearing damage and hearing loss of the workers due to the high level of noise in the mine and prevention of respiratory diseases due to the exposure to crystalline silica over time |
| [ | IoT and smart robots | NA | Monitoring the real-time information of the mine and mineworkers | Exploring inaccessible areas underground which hazardous situations occur with unpredictable risks that are too severe for human activity |
| [ | Smart Helmet Clip wearable sensor | NA | Monitoring the surrounding of the workers to identify the presence of the dangerous gasses | Prevention of the exposure of the workers from toxic and inflammable gases, fire, and explosion in the mine for the safety of the workers |
| [ | Angel helmet | NA | Monitoring location and positioning of the workers | Preventing from fall injury by measuring the gait stability, estimating the fall risk, preventing from entering the workers to the hazardous environments by identifying the location of a workers and warning |
| [ | Safety helmet with CH4 and CO gas sensors | NA | Monitoring the level of the CH4 and CO gases | Protection of the workers from exposure to the CH4 and CO which are toxic and inflammable in the mine for their safety |
| [ | Helmet-Cam | NA | Monitoring the concentration of silica dust | Prevention of respiratory diseases due to the exposure to crystalline silica over time |
| [ | Smart devices combining a safety vest, eyewear, helmet, and watch | NA | Monitoring the health and safety of workers in different aspects and monitoring activity of the workers to prevent fall injury | Preventing the workers from head and body injuries through wearing smart eyewear, safety vest, and helmet, preventing the workers from high temperature, hearing damage, and toxic gases in the mine through the smartwatch, and preventing from fall injury of the worker at the mine |
| [ | Smartwatch | NA | Monitoring the motion and health of the workers | Preventing from fall injury by measuring the gait stability, estimating the fall risk, preventing from entering the workers to the hazardous environments by identifying the location of a workers and warning |
| [ | Smartwatch | NA | Distinguishing the normal from the abnormal posture of the workers | Prevention of the fall injures and reducing risks for MSDs which is caused over time by repeating the abnormal posture of the workers in the mine |
Reports of AI Applications in the Transportation Industry.
| Study | AI Application | Task | |
|---|---|---|---|
| Sensor/ | Algorithm/Technology | ||
| [ | non-invasive sensors embedded in steering wheels | SVM | Fatigue detection through analyzing ECG features |
| [ | PPG sensor on the steering wheel | SVM | Fatigue detection through analyzing PPG features |
| [ | Computer vision Sensors on the forehead | SVM | Fatigue detection by analyzing the EoG features |
| [ | EEG sensors | Bayesian neural network | Assessment of mental workload, detection of fatigue and drowsiness by analyzing |
| [ | sEMG | Power in band | Fatigue detection by analyzing the sEMG features |
| [ | ECG, EEG, EoG | Digital signal processing | Fatigue detection by analyzing the ECG, EEG, EoG features |
| [ | Computer vision | Various ML models | Fatigue detection by analyzing the mouth, eye, head movements, and facial expressions as features |
| [ | Computer vision | Various ML models | Fatigue detection by analyzing the face tracking method |
| [ | Computer vision | SVM | Fatigue detection by analyzing the mouth movement features |
| [ | Computer vision | DL | Fatigue detection by analyzing the mouth movement features |
| [ | Computer vision | RF | Detecting fatigue through analyzing steering wheel angles |
| [ | Computer vision | Binary decision classifier | Detection of fatigue through analyzing the steering wheel angles as features |
| [ | Driving simulator | GMM and the Helly model | Fatigue detection by analyzing vehicle velocity, brake pedal, accelerator pedal, and distance from car in-front as features |
| [ | Multiple onboard sensors | Linear discriminant | Fatigue detection through analyzing both driver characteristics and vehicle characteristics |
| [ | Computer vision, vehicle movement sensors | two-stage data fusion framework | Fatigue detection by analyzing driver and vehicle characteristics |
| [ | Computer vision, vehicle movement sensors | ANN | Fatigue detection by analyzing the physiological and behavioral features of the driver |
| [ | Computer vision, vehicle movement sensors | M-SVM | Fatigue detection by analyzing the combinations of biological, and vehicular features |
OSH relevance or outcome in all cases is ‘preventing accident due to fatigue’.
Reports of AI Applications in Wearable Devices in Construction.
| Study | AI Application | |
|---|---|---|
| Sensor/Robot | Algorithm/Technology | |
| [ | Accelerometer | Comparator system |
| [ | Accelerometer | High level fuzzy, Petri net, GMM |
| [ | Accelerometer | SVM |
| [ | Accelerometer | Decision tree |
| [ | Accelerometer, gyroscope | k-NN |
| [ | Accelerometer, gyroscope, barometric altimeter | Decision tree |
| [ | Accelerometer, barometric pressure, Gyroscope | Decision tree |
| [ | Accelerometer, cardio tachometer | Decision tree |
| [ | Electromyography | Decision tree |
| [ | Smartphone | Decision tree |
| [ | Vibration | SVM |
| [ | Vibration, microphone | Naïve Bayes |
| [ | Special Piezo pressure transducer | Pattern matching |
| [ | Special Piezo pressure transducer | Decision tree |
| [ | Special Piezo pressure transducer | HMM |
OSH relevance or outcome in all cases is ‘detection and prevention of fall’. Tasks in all cases are ‘Detecting fall through ML algorithm by analyzing the data which collected through sensors’.