Javascript must be enabled to continue!
AIRA: An IOT-Enabled Machine Learning System for Real-Time Stress Detection
View through CrossRef
Abstract —
We trained the system with a Random Forest classifier on the WESAD benchmark dataset. When we put it to the test, AIRA hit 95.2% accuracy at distinguishing stress from no-stress, and 88.3% for sorting into all three levels. We also ran it with real people wearing the devices for two weeks and got a mean accuracy of 90.4%, checked against ground-truth labels. The system is quick, too—on average, it reports stress in under 300 milliseconds, and even when 500 devices connect at once, it Stress is everywhere these days, and it’s not just an annoyance—it’s a real health problem. We know it’s linked to things like heart disease, trouble with the immune system, memory problems, and even mental illnesses. But here’s the thing: most people have no real way to monitor their stress as it happens, especially outside a hospital or doctor’s office.
That’s where our project, AIRA (Adaptive Intelligent Real-time Analysis), comes in. We built an end-to-end system that uses IoT and machine learning to keep tabs on stress in real time. It works by pulling data—heart rate, body temperature, and motion—from off-the-shelf smartwatches. This data gets sent up to the cloud, where our machine learning pipeline crunches the numbers and spits out stress levels, daily health insights, and even sends alerts to caregivers if needed.
AIRA sorts stress into three categories: Lowstill responds in less than two seconds.
In this paper, we walk through how AIRA is built, how the data gets processed, the machine learning approach, our results, and where we think this technology goes next. AIRA’s big promise is making stress monitoring practical and available for anyone—not just people in clinics or hospitals. It’s a real step forward in affective computing and preventive digital health.
Keywords: IoT wearable sensors, stress detection, machine learning, Random Forest, real-time monitoring, affective computing, physiological signals, smartwatch, heart rate variability, cloud inference, WESAD dataset, caregiver alert, daily health reports, stress classification.
Edtech Publishers (OPC) Private Limited
Title: AIRA: An IOT-Enabled Machine Learning System for Real-Time Stress Detection
Description:
Abstract —
We trained the system with a Random Forest classifier on the WESAD benchmark dataset.
When we put it to the test, AIRA hit 95.
2% accuracy at distinguishing stress from no-stress, and 88.
3% for sorting into all three levels.
We also ran it with real people wearing the devices for two weeks and got a mean accuracy of 90.
4%, checked against ground-truth labels.
The system is quick, too—on average, it reports stress in under 300 milliseconds, and even when 500 devices connect at once, it Stress is everywhere these days, and it’s not just an annoyance—it’s a real health problem.
We know it’s linked to things like heart disease, trouble with the immune system, memory problems, and even mental illnesses.
But here’s the thing: most people have no real way to monitor their stress as it happens, especially outside a hospital or doctor’s office.
That’s where our project, AIRA (Adaptive Intelligent Real-time Analysis), comes in.
We built an end-to-end system that uses IoT and machine learning to keep tabs on stress in real time.
It works by pulling data—heart rate, body temperature, and motion—from off-the-shelf smartwatches.
This data gets sent up to the cloud, where our machine learning pipeline crunches the numbers and spits out stress levels, daily health insights, and even sends alerts to caregivers if needed.
AIRA sorts stress into three categories: Lowstill responds in less than two seconds.
In this paper, we walk through how AIRA is built, how the data gets processed, the machine learning approach, our results, and where we think this technology goes next.
AIRA’s big promise is making stress monitoring practical and available for anyone—not just people in clinics or hospitals.
It’s a real step forward in affective computing and preventive digital health.
Keywords: IoT wearable sensors, stress detection, machine learning, Random Forest, real-time monitoring, affective computing, physiological signals, smartwatch, heart rate variability, cloud inference, WESAD dataset, caregiver alert, daily health reports, stress classification.
Related Results
Pelatihan Internet of Things (IoT) dalam peningkatan kompetensi siswa multimedia di SMK Perguruan Buddhi
Pelatihan Internet of Things (IoT) dalam peningkatan kompetensi siswa multimedia di SMK Perguruan Buddhi
Pelatihan Internet of Things (IoT) menjadi bagian penting dalam pengembangan kompetensi siswa jurusan multimedia di SMK Perguruan Buddhi. Era digital menuntut adanya pemahaman mend...
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
BACKGROUND
As of July 2020, a Web of Science search of “machine learning (ML)” nested within the search of “pharmacokinetics or pharmacodynamics” yielded over 100...
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
The pandemic Covid-19 currently demands teachers to be able to use technology in teaching and learning process. But in reality there are still many teachers who have not been able ...
INTEGRATION IOT AND BIM FOR TECHNOLOGY AND IOT ENVIRONMENT
INTEGRATION IOT AND BIM FOR TECHNOLOGY AND IOT ENVIRONMENT
Abstract: This research focuses on technology and integration tools for IoT environments, with an emphasis on three main aspects: the integration of Building Information Modeling (...
Machine Learning in IoT Security: Current Issues and Future Prospects
Machine Learning in IoT Security: Current Issues and Future Prospects
The Internet of Things (IoT) connects billions of intelligent devices that can communicate with each other without human intervention. With an estimated 50 billion devices by the e...
Clustering model for the first line of defense in IDS for IoT
Clustering model for the first line of defense in IDS for IoT
The Internet of Things (IoT) applications are prone to security attacks due to their distributed nature. Intrusion detection systems are the prominent security devices used to prot...
Multimodal data stream classification and prediction of e-learner’s emotional states
Multimodal data stream classification and prediction of e-learner’s emotional states
(English) Emotions and emotional intelligence are crucial for students' success both in traditional learning environments (face-to-face classroom), online education (or E-Learning/...
Modelling magma storage and transport in Aira Caldera and Sakurajima Volcano, Japan.
Modelling magma storage and transport in Aira Caldera and Sakurajima Volcano, Japan.
Sakurajima volcano, located on the rim of the Aira caldera in Japan, represents a major hazard for the heavily populated area of Kagoshima Bay. In recent decades, ground deformatio...

