The paper deals with the numerical prediction of the mechanical response of asphalt concretes for road pavements, using Artificial Neural Networks (ANN). The mixes considered in the study have been prepared with a diabase aggregate skeleton and two different type of bitumen, namely a conventional bituminous binder and a polymer modified one. The asphalt concretes were produced both in a road materials laboratory and in an asphalt concrete production plant. The mechanical behaviour of the mixes was investigated in terms of Marshall Stability, Flow, Quotient and moreover by the Stiffness Modulus. The artificial neural networks used for the numerical analysis of the experimental data, of the feed-forward type, resulted characterized by one hid...
In this study, the effect of seven industrial waste materials as mineral fillers in asphalt mixtures...
This paper presents a study about a Machine Learning approach for modeling the stiffness of differen...
In this study a novel procedure is presented for an efficient development of predictive models of ro...
The paper deals with the numerical prediction of the mechanical response of asphalt concretes for ro...
The current paper deals with the numerical prediction of the mechanical response of Asphalt Concrete...
5siIn general terms, an artificial neural network is a distributed processor that consists of elemen...
This paper presents a method for estimating the creep compliance parameter used to characterize the ...
particular neural network is often applied to the development of statistical models for intrinsicall...
The testing procedure in order to determine the precise mechanical testing results in Marshall desig...
Modulus of elasticity (MOE) is one of the main factors that affect the deformation characteristics a...
Abstract. The Marshall Stability of asphalt concrete is one of the most important parameters in mix ...
particular neural network is often applied to the development of statistical models for intrinsicall...
3siThe present paper discusses the analysis and modeling of laboratory data regarding the mechanical...
The difference between hot-mix asphalt (HMA) containing recycled asphalt shingles (RAS) and virgin H...
This study was conducted to develop two types of artificial neural network (ANN) model to predict th...
In this study, the effect of seven industrial waste materials as mineral fillers in asphalt mixtures...
This paper presents a study about a Machine Learning approach for modeling the stiffness of differen...
In this study a novel procedure is presented for an efficient development of predictive models of ro...
The paper deals with the numerical prediction of the mechanical response of asphalt concretes for ro...
The current paper deals with the numerical prediction of the mechanical response of Asphalt Concrete...
5siIn general terms, an artificial neural network is a distributed processor that consists of elemen...
This paper presents a method for estimating the creep compliance parameter used to characterize the ...
particular neural network is often applied to the development of statistical models for intrinsicall...
The testing procedure in order to determine the precise mechanical testing results in Marshall desig...
Modulus of elasticity (MOE) is one of the main factors that affect the deformation characteristics a...
Abstract. The Marshall Stability of asphalt concrete is one of the most important parameters in mix ...
particular neural network is often applied to the development of statistical models for intrinsicall...
3siThe present paper discusses the analysis and modeling of laboratory data regarding the mechanical...
The difference between hot-mix asphalt (HMA) containing recycled asphalt shingles (RAS) and virgin H...
This study was conducted to develop two types of artificial neural network (ANN) model to predict th...
In this study, the effect of seven industrial waste materials as mineral fillers in asphalt mixtures...
This paper presents a study about a Machine Learning approach for modeling the stiffness of differen...
In this study a novel procedure is presented for an efficient development of predictive models of ro...