TY - GEN
T1 - Design of data collection and analysis method for a pleasant and safe user experience of personal mobility device
AU - Eio, Sebastian
AU - Kuo, Jo Yu
AU - Chen, Chun Hsien
AU - Zheng, Pai
N1 - Publisher Copyright:
© 2019 The authors and IOS Press.
PY - 2019/10/7
Y1 - 2019/10/7
N2 - In recent years, the idea of personal mobility devices (PMD) has gained prominence globally for different contexts, for diverse types and extent of uses. The advantages of owning a PMD allows users to cover the short distance in between stops where they have access to long distance transportation, establishing a full end to end transport system for many. The rise in usage of PMDs also came along the rise in accidents. One of the reasons that could result in this phenomenon is the lack of calibration of PMD towards how users use it. Currently, most user experience (UX) methodologies are based on subjective questionnaires rather than by objective quantitative data. While there exists a few that studies wheelchair and electronic bicycles, UX concerning this specific device is a field not many studies have delved into. Therefore, in this project, we seek to propose a data-driven model to explore electronic scooter user’s riding profile based on psychophysiological data such as galvanic skin response (GSR) and kinematics data such as the speed and acceleration. Upon retrieving the stress status of the user when he or she is riding, the dataset undergoes a data analysis pipeline that cleans, process and analyse data with Random Forest machine learning algorithms. With the ability to create customised profiles, the model can be adopted to serve the needs of PMD sharing service stakeholders or PMD design companies to ensure good user experience for their customers in the future.
AB - In recent years, the idea of personal mobility devices (PMD) has gained prominence globally for different contexts, for diverse types and extent of uses. The advantages of owning a PMD allows users to cover the short distance in between stops where they have access to long distance transportation, establishing a full end to end transport system for many. The rise in usage of PMDs also came along the rise in accidents. One of the reasons that could result in this phenomenon is the lack of calibration of PMD towards how users use it. Currently, most user experience (UX) methodologies are based on subjective questionnaires rather than by objective quantitative data. While there exists a few that studies wheelchair and electronic bicycles, UX concerning this specific device is a field not many studies have delved into. Therefore, in this project, we seek to propose a data-driven model to explore electronic scooter user’s riding profile based on psychophysiological data such as galvanic skin response (GSR) and kinematics data such as the speed and acceleration. Upon retrieving the stress status of the user when he or she is riding, the dataset undergoes a data analysis pipeline that cleans, process and analyse data with Random Forest machine learning algorithms. With the ability to create customised profiles, the model can be adopted to serve the needs of PMD sharing service stakeholders or PMD design companies to ensure good user experience for their customers in the future.
UR - https://www.scopus.com/pages/publications/85082537269
UR - https://www.scopus.com/pages/publications/85082537269#tab=citedBy
U2 - 10.3233/ATDE190127
DO - 10.3233/ATDE190127
M3 - Conference contribution
AN - SCOPUS:85082537269
T3 - Advances in Transdisciplinary Engineering
SP - 224
EP - 233
BT - Transdisciplinary Engineering for Complex Socio-technical Systems - Proceedings of the 26th ISTE International Conference on Transdisciplinary Engineering
A2 - Hiekata, Kazuo
A2 - Moser, `Brian
A2 - Moser, Brian
A2 - Inoue, Masato
A2 - Stjepandic, Josip
A2 - Wognum, Nel
PB - IOS Press BV
T2 - 26th ISTE International Conference on Transdisciplinary Engineering, TE 2019
Y2 - 30 July 2019 through 1 August 2019
ER -