Abstract

Ultraviolet rays are closely related with human health and, recently, optimum exposure to the UV rays has been recommended, with growing importance being placed on correct UV information. However, many countries provide UV information services at a local level, which makes it impossible for individuals to acquire user-based, accurate UV information unless individuals operate UV measurement devices with expertise on the relevant field for interpretation of the measurement results. There is a limit in measuring ultraviolet rays’ information by the users at their respective locations. Research about how to utilize mobile devices such as smartphones to overcome such limitation is also lacking. This paper proposes a mobile deep learning system that calculates UVI based on the illuminance values at the user’s location obtained with mobile devices’ help. The proposed method analyzed the correlation between illuminance and UVI based on the natural light DB collected through the actual measurements, and the deep learning model’s data set was extracted. After the selection of the input variables to calculate the correct UVI, the deep learning model based on the TensorFlow set with the optimum number of layers and number of nodes was designed and implemented, and learning was executed via the data set. After the data set was converted to the mobile deep learning model to operate under the mobile environment, the converted data were loaded on the mobile device. The proposed method enabled providing UV information at the user’s location through a mobile device on which the illuminance sensors were loaded even in the environment without UVI measuring equipment. The comparison of the experiment results with the reference device (spectrometer) proved that the proposed method could provide UV information with an accuracy of 90–95% in the summers, as well as in winters.

Highlights

  • Ultraviolet rays (100–380 nm), which have a wavelength band shorter than visible light as part of sunlight, reach the ground surface and greatly affect human health [1]

  • After the selection of the input variables to calculate the correct UVI, the deep learning model based on the TensorFlow set with the optimum number of layers and number of nodes was designed and implemented, and learning was executed via the data set

  • After the data set was converted to the mobile deep learning model to operate under the mobile environment, the converted data were loaded on the mobile device

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Summary

Introduction

Ultraviolet rays (100–380 nm), which have a wavelength band shorter than visible light as part of sunlight, reach the ground surface and greatly affect human health [1]. Feister et al introduced a method based on the regression equation that calculated the UV information with the element values such as illuminance of solar light and solar zenith angle [16] It could not be sufficiently validated for servicing the UVI and expected amount of vitamin D synthesis because the experiment was performed under the limited conditions of specific dates or climate conditions. UV information using the illuminance sensors in the mobile device and deep learning technology even without UV measuring equipment was proposed It aimed to validate the UVI calculation performance of the proposed method by the comparison experiment with those of spectral radiometer and by calculating and comparing the expected amount of vitamin D synthesis drawn by the equation to confirm the potential provision of UV information to improve the user’s health

Mobile Deep Learning System
Natural
Mobile DNN Model for Calculation of the Illuminance-Based UV Information
Construction
Experimental
Performance Evaluation
Findings
Conclusions
Full Text
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