The International Arab Journal of Information Technology (IAJIT)

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Using Deep Learning for Profitable Concrete Forecasting Methods

In contemporary construction practices, the precision in forecasting the efficacy of concrete infrastructures plays a pivotal role in ensuring both economical viability and structural robustness. Classical methodologies often falter in encapsulating the myriad variables that intricately govern concrete performance, underscoring the exigency for progressive predictive apparatuses. This manuscript endeavors to fill this lacuna by harnessing a diverse spectrum of computational algorithms, namely Linear Regression, Gated Recurrent Units (GRU), Long Short-Term Memory (LSTM), and WaveNet, and subjecting them to scrupulous evaluation across multifarious metrics to discern their inherent capabilities and constraints. Of paramount significance, WaveNet manifested commendable prowess, registering an R^2 coefficient of 0.884 and an Root Mean Square Error (RMSE) of 23.22. Complementing the technical assessment, this study infuses an economic perspective, elucidating a cogent cost-efficiency rationale advocating the ubiquitous integration of these avant-garde predictive modalities within the construction milieu. Our interdisciplinary stratagem forges a novel conduit for synergetic research, intertwining the realms of civil engineering, computational analytics, and fiscal studies. The empirical results accentuate that machine learning paradigms not only augment predictive precision but also bolster economic viability, heralding them as indispensable instruments in the avant-garde toolkit of construction administration.

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