Estimating Construction Material Indices with ARIMA and Optimized NARNETs
Özet
Construction Industry operates relying on various key economic
indicators. One of these indicators is material prices. On the other hand, cost
is a key concern in all operations of the construction industry. In the uncertain
conditions, reliable cost forecasts become an important source of information.
Material cost is one of the key components of the overall cost of construction.
In addition, cost overrun is a common problem in the construction industry,
where nine out of ten construction projects face cost overrun. In order to carry
out a successful cost management strategy and prevent cost overruns, it is
very important to find reliable methods for the estimation of construction
material prices. Material prices have a time dependent nature. In order to
increase the foreseeability of the costs of construction materials, this study
focuses on estimation of construction material indices through time series
analysis. Two different types of analysis are implemented for estimation of the
future values of construction material indices. The first method implemented
was Autoregressive Integrated Moving Average (ARIMA), which is known
to be successful in estimation of time series having a linear nature. The
second method implemented was Non-Linear Autoregressive Neural Network
(NARNET) which is known to be successful in modeling and estimating of
series with non-linear components. The results have shown that depending on
the nature of the series, both these methods can successfully and accurately
estimate the future values of the indices. In addition, we found out that
Optimal NARNET architectures which provide better accuracy in estimation
of the series can be identified/discovered as result of grid search on NARNET
hyperparameters.
Cilt
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1Bağlantı
https://hdl.handle.net/11363/4239Koleksiyonlar
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