A real-time predictive postural control system with temperature feedback

Abstract Balanced posture is essential in sports training, rehabilitation therapy, and robotic control. The application of biofeedback technology has significantly improved postural stability, particularly in individuals with sensory disorders. In practical applications, thermal biofeedback is regar...

Full description

Saved in:
Bibliographic Details
Main Authors: Yaoyu Duan, Huimin Jiao, Dangxiao Wang, Xingwei Guo
Format: Article
Language:English
Published: Nature Portfolio 2025-07-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-025-11334-x
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849237819265908736
author Yaoyu Duan
Huimin Jiao
Dangxiao Wang
Xingwei Guo
author_facet Yaoyu Duan
Huimin Jiao
Dangxiao Wang
Xingwei Guo
author_sort Yaoyu Duan
collection DOAJ
description Abstract Balanced posture is essential in sports training, rehabilitation therapy, and robotic control. The application of biofeedback technology has significantly improved postural stability, particularly in individuals with sensory disorders. In practical applications, thermal biofeedback is regarded as an optimal method for enhancing posture control. However, conventional systems frequently encounter challenges with slow temperature adjustments, resulting in delayed responses. Thus, enhancing the responsiveness of these temperature control mechanisms is critical for achieving better real-time performance. In this study, we designed a system incorporating smart sensors to support balance correction and postural stability. The designed system employs inertial sensors to measure body tilt angles and a wearable temperature control module for biofeedback. Moreover, we proposed a mathematical method to improve the real-time biofeedback with thermal tactile feedback, specifically targeting the issue of poor real-time temperature regulation. An Long Short-Term Memory (LSTM) neural network with a sliding window method is incorporated to predict the posture patterns of the next state. In order to optimize the bidirectional LSTM training process, cross-validation is utilized to assess model performance. This predictive strategy accelerates thermal perception and facilitates immediate balance restoration. Experiments were conducted to evaluate the system’s reliability and effectiveness in balance correction. Compared to the typical thermal feedback and angle change, the results demonstrate that the LSTM network accurately predicts posture changes based on angular and acceleration data, enabling more timely temperature adjustments and significantly enhancing balance ability, as validated through Romberg standing tilt test evaluations.
format Article
id doaj-art-08dfad0a139d4bb6bfb1aa29d76073ac
institution Kabale University
issn 2045-2322
language English
publishDate 2025-07-01
publisher Nature Portfolio
record_format Article
series Scientific Reports
spelling doaj-art-08dfad0a139d4bb6bfb1aa29d76073ac2025-08-20T04:01:51ZengNature PortfolioScientific Reports2045-23222025-07-0115111110.1038/s41598-025-11334-xA real-time predictive postural control system with temperature feedbackYaoyu Duan0Huimin Jiao1Dangxiao Wang2Xingwei Guo3Department of Mechanical and Electrical Engineering, Beijing Institute of Graphic CommunicationDepartment of Mechanical and Electrical Engineering, Beijing Institute of Graphic CommunicationState Key Laboratory of Virtual Reality Technology and Systems, Beihang UniversitySchool of Sport Engineering, Beijing Sport UniversityAbstract Balanced posture is essential in sports training, rehabilitation therapy, and robotic control. The application of biofeedback technology has significantly improved postural stability, particularly in individuals with sensory disorders. In practical applications, thermal biofeedback is regarded as an optimal method for enhancing posture control. However, conventional systems frequently encounter challenges with slow temperature adjustments, resulting in delayed responses. Thus, enhancing the responsiveness of these temperature control mechanisms is critical for achieving better real-time performance. In this study, we designed a system incorporating smart sensors to support balance correction and postural stability. The designed system employs inertial sensors to measure body tilt angles and a wearable temperature control module for biofeedback. Moreover, we proposed a mathematical method to improve the real-time biofeedback with thermal tactile feedback, specifically targeting the issue of poor real-time temperature regulation. An Long Short-Term Memory (LSTM) neural network with a sliding window method is incorporated to predict the posture patterns of the next state. In order to optimize the bidirectional LSTM training process, cross-validation is utilized to assess model performance. This predictive strategy accelerates thermal perception and facilitates immediate balance restoration. Experiments were conducted to evaluate the system’s reliability and effectiveness in balance correction. Compared to the typical thermal feedback and angle change, the results demonstrate that the LSTM network accurately predicts posture changes based on angular and acceleration data, enabling more timely temperature adjustments and significantly enhancing balance ability, as validated through Romberg standing tilt test evaluations.https://doi.org/10.1038/s41598-025-11334-x
spellingShingle Yaoyu Duan
Huimin Jiao
Dangxiao Wang
Xingwei Guo
A real-time predictive postural control system with temperature feedback
Scientific Reports
title A real-time predictive postural control system with temperature feedback
title_full A real-time predictive postural control system with temperature feedback
title_fullStr A real-time predictive postural control system with temperature feedback
title_full_unstemmed A real-time predictive postural control system with temperature feedback
title_short A real-time predictive postural control system with temperature feedback
title_sort real time predictive postural control system with temperature feedback
url https://doi.org/10.1038/s41598-025-11334-x
work_keys_str_mv AT yaoyuduan arealtimepredictiveposturalcontrolsystemwithtemperaturefeedback
AT huiminjiao arealtimepredictiveposturalcontrolsystemwithtemperaturefeedback
AT dangxiaowang arealtimepredictiveposturalcontrolsystemwithtemperaturefeedback
AT xingweiguo arealtimepredictiveposturalcontrolsystemwithtemperaturefeedback
AT yaoyuduan realtimepredictiveposturalcontrolsystemwithtemperaturefeedback
AT huiminjiao realtimepredictiveposturalcontrolsystemwithtemperaturefeedback
AT dangxiaowang realtimepredictiveposturalcontrolsystemwithtemperaturefeedback
AT xingweiguo realtimepredictiveposturalcontrolsystemwithtemperaturefeedback