Lei Wang, Zijie Chen, Hailin Zou, Dongsheng Huang, Yuanyuan Pan, Chak-Fong Cheang, Jianqing Li
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引用次数: 0
Abstract
ABSTRACTProlonged heat exposure may cause various physiological responses to outdoor workers. This will result in economic and productivity losses for a company and also may affect the sustainable development speed of cities. To avoid the above adverse effects, an alerting system is designed for outdoor workers to prevent them from overtime working in high-temperature scenarios. In the system, multiple sensors embedded micro-electromechanical system (MEMS) wearable device is used for real-time working status data collection, and a hybrid deep learning model is adopted to recognise the working status of outdoor workers. This hybrid model, called C-LSTM, combines the advantages of convolutional neural networks (CNN) and long short-term memory networks (LSTM) to extract useful spatial and temporal features of working status efficiently. Experimental results show that the performance on the inference time and accuracy of the C-LSTM model is better than that of conventional ones. The working status recognition accuracy of the C-LSTM model reaches 97.91%, and the inference time of the model reduces to less than 51 ms. In addition, the C-LSTM model has the best stability. The designed system can not only be used in outdoor high-temperature environment but also applied to medical and industrial scenarios, which further extends the application fields.KEYWORDS: Working statussensordeep learningsustainable smart city AcknowledgmentsThis research was funded in part by the Science and Technology Development Fund, Macao SAR under Grant No. 0047/2021/A, and in part by the National Social Science Fund of China under Grant No. 20BMZ053. We are also grateful for providing data by Shenzhen Topevery Technology Co., Ltd., Guangdong, China.Disclosure statementNo potential conflict of interest was reported by the author(s).Additional informationFundingThis work was supported by the Science and Technology Development Fund, Macao SAR under Grant [No. 0047/2021/A]; The National Social Science Fund of China under Grant [No. 20BMZ053].
期刊介绍:
Nondestructive Testing and Evaluation publishes the results of research and development in the underlying theory, novel techniques and applications of nondestructive testing and evaluation in the form of letters, original papers and review articles.
Articles concerning both the investigation of physical processes and the development of mechanical processes and techniques are welcomed. Studies of conventional techniques, including radiography, ultrasound, eddy currents, magnetic properties and magnetic particle inspection, thermal imaging and dye penetrant, will be considered in addition to more advanced approaches using, for example, lasers, squid magnetometers, interferometers, synchrotron and neutron beams and Compton scattering.
Work on the development of conventional and novel transducers is particularly welcomed. In addition, articles are invited on general aspects of nondestructive testing and evaluation in education, training, validation and links with engineering.