Abstract
Here we establish that equivalent single-axle loads values can be estimated using artificial neural networks without the complex design equality of American Association of State Highway and Transportation Officials (AASHTO). More importantly, we find that the neural network model gives the coefficients to be able to obtain the actual load values using the AASHTO design values. Thus, those design traffic values that might result in deterioration can be better calculated using the neural networks model than with the AASHTO design equation. The artificial neural network method is used for this purpose. The existing AASHTO flexible pavement design equation does not currently predict the pavement performance of the strategic highway research program (Long Term Pavement Performance studies) test sections very accurately, and typically over-estimates the number of equivalent single axle loads needed to cause a measured loss of the present serviceability index. Here we aimed to demonstrate that the proposed neural network model can more accurately represent the loads values data, compared against the performance of the AASHTO formula. It is concluded that the neural network may be an appropriate tool for the development of databased-nonparametric models of pavement performance.
Highlights
The Association of State Highway Officials (AASHO) road test was probably the most significant piece of pavement research performed in the 20th century
The results show highly significant (P,0.0001) inputs on the outputs as the delta-present serviceability index (PSI), MR, and the structural number (SN) values according to the statistical significance (P, 2 tail) analysis, as seen before in the sensitivity analysis
In this paper, databased mathematical-neural network models of long-term pavement performance studies have been obtained by re-evaluating the AASHO road-test data
Summary
The AASHO road test was probably the most significant piece of pavement research performed in the 20th century. The AASHO road test, possibly the largest and most successful controlled civil engineering experiment ever undertaken, was conducted about 50 years ago. The results of the study are still widely used across the world Significant results from this road test still govern pavement design worldwide, including in areas such as: (a) equivalent single-axle loads (ESALs); (b) the serviceability– performance concept; (c) effects of layer thickness and strength; and (d) effectiveness of dowels and joint spacing. AASHO road test changed the way that pavement research is conduct by illustrating the power of factorial experiments, highquality data, and statistical analysis [2]
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