The Design and Engineering of a Fall and Near-Fall Detection Electronic Textile

Author:

Rahemtulla Zahra1ORCID,Turner Alexander2,Oliveira Carlos1,Kaner Jake1ORCID,Dias Tilak1ORCID,Hughes-Riley Theodore1ORCID

Affiliation:

1. Nottingham School of Art & Design, Nottingham Trent University, Bonington Building, Dryden Street, Nottingham NG1 4GG, UK

2. School of Computer Science, University of Nottingham, Jubilee Campus, Wollaton Road, Nottingham NG8 1BB, UK

Abstract

Falls can be detrimental to the quality of life of older people, and therefore the ability to detect falls is beneficial, especially if the person is living alone and has injured themselves. In addition, detecting near falls (when a person is imbalanced or stumbles) has the potential to prevent a fall from occurring. This work focused on the design and engineering of a wearable electronic textile device to monitor falls and near-falls and used a machine learning algorithm to assist in the interpretation of the data. A key driver behind the study was to create a comfortable device that people would be willing to wear. A pair of over-socks incorporating a single motion sensing electronic yarn each were designed. The over-socks were used in a trial involving 13 participants. The participants performed three types of activities of daily living (ADLs), three types of falls onto a crash mat, and one type of near-fall. The trail data was visually analyzed for patterns, and a machine learning algorithm was used to classify the data. The developed over-socks combined with the use of a bidirectional long short-term memory (Bi-LSTM) network have been shown to be able to differentiate between three different ADLs and three different falls with an accuracy of 85.7%, ADLs and falls with an accuracy of 99.4%, and ADLs, falls, and stumbles (near-falls) with an accuracy of 94.2%. In addition, results showed that the motion sensing E-yarn only needs to be present in one over-sock.

Funder

Engineering and Physical Sciences Research Council

Publisher

MDPI AG

Subject

General Materials Science

Reference22 articles.

1. (2021, February 03). Age UK Later Life in the United Kingdom. Available online: https://www.ageuk.org.uk/globalassets/age-uk/documents/reports-and-publications/later_life_uk_factsheet.pdf.

2. Risk factors for falls among older adults: A review of the literature;Ambrose;Maturitas,2013

3. Detection of Near Falls Using Wearable Devices: A Systematic Review;Pang;J. Geriatr. Phys. Ther.,2019

4. Near falls predict substantial falls in older adults: A prospective cohort study;Nagai;Geriatr. Gerontol. Int.,2016

5. Research of Fall Detection and Fall Prevention Technologies: A Systematic Review;Ren;IEEE Access,2019

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