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    Global evaluation of WBGT and SET indices for outdoor environments using thermal imaging and artificial neural networks

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    Date
    2020
    Author
    Mahgoub, Ahmed Osama
    Gowid, Samer
    Ghani, Saud
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    Abstract
    The health and well-being of occupants of outdoor environments are largely affected by thermal stress, and therefore a global assessment is essential. Wet-bulb globe-temperature (WBGT) is used as a heat stress indicator and standard effective temperature (SET) is used as a thermal comfort index for assessment of thermal comfort in indoor and outdoor environments. These indices are usually evaluated point-wise which could be sufficient for relatively small spaces, but not suitable for large outdoor environments. This research proposes using a system combining climate sensors readings and thermal imaging to globally evaluate WBGT and SET values for outdoor environments. The algorithm derives air temperature from surface temperature values obtained using a thermal imaging camera. The obtained results were validated using readings of available sensors. Point-wise validation showed that the proposed methodology yielded results with a maximum average error of 11.4% compared to the average of point-wise local measurement for the WBGT, and an error of 8.5% for the SET. To minimize the error, an error reduction model based on artificial neural networks has been implemented. The error was further reduced to a maximum average error of 1.76% and 1.25% for WBGT and SET respectively.
    DOI/handle
    http://dx.doi.org/10.1016/j.scs.2020.102182
    http://hdl.handle.net/10576/53015
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    • Mechanical & Industrial Engineering [‎1461‎ items ]

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