Temperature and Humidity Data Evaluation of Tight Sportswear during Motion Based on Intelligent Modeling
Résumé
A neural network structure of Long Short Term Memory (LSTM) is proposed which could be used to predict the temperature
and humidity of other key parts from the temperature and humidity data of some parts of the human body when wearing tight
sportswear, so as to realize the temperature and humidity data prediction of all key points of the human body. The temperature
and humidity of different people wearing tights were collected by DHT sensors. The experimental results show that the LSTM
neural network structure proposed has higher prediction accuracy than other algorithms, and the model evaluates the feasibility of
temperature and humidity data of tights in a state of motion, which facilitates the study of dynamic thermal and humid comfort and
reduces the time cost of analyzing the temperature and humidity distribution and changing the law during human movement. It will
effectively promote the study of temperature and humidity changes when people wear sports tights, provide theoretical reference
for the study of human skin temperature in the field of sports medicine, and provide practical guidance for the application of human
skin temperature changes in sports clothing production, diagnosis and prevention of sports injuries.
Keywords
Motion state, Tight sportswear, Temperature and humidity, Prediction model
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