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Browsing Civil and Environmental Engineering by Publisher 
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    Browsing Civil and Environmental Engineering by Publisher "Springer London"

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        A design reuse technology to increase productivity through automated corporate memory system 

        Gunduz M.; Yetisir T. ( Springer London , 2018 , Article)
        Increasing competitiveness in engineering industry pressurizes companies to improve productivity of every single element in processes. As a result of this pressure, increasing productivity of design staff and design systems ...
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        Revealing the hidden features in traffic prediction via entity embedding 

        Wang, Bo; Shaaban, Khaled; Kim, Inhi ( Springer London , 2019 , Article)
        Models based on neural networks (NN) have been used widely and successfully in traffic prediction resulting in improved accuracy and efficiency in traffic flow, speed, passenger flow, and delay. Input data include continuous ...

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