Prediction of Local scour around bridge pier using Soft Computing Techniques
Date
2019
Authors
B. M, Sreedhara
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Bridges play an essential role in the society since they enable quick access across a river or
any water body. Bridges facilitate transportation of goods and people and hence play a
leading role in the development of a province. The safety of the bridge is the important factor
with respect to scour failure which is the leading failure factor in river bridges. Scour is the
removal of sediment near or around the structure which is located in the flowing water. There
are different factors which affects scour mainly on the scour depth are flow depth, discharge,
velocity, sediment size, porosity, pier shape and size etc. There are two types of scour
conditions on which scour is classified and studied namely, clear water and live bed scour.
The scour is the complex phenomenon and there is no common or general simple method to
predict the scour depth around the bridge pier. There are several researchers who studied the
scour mechanism using laboratory experiments. In the present days the artificial intelligence
is the focal point for several researchers. Soft computing techniques, such as, Artificial
Neural Network (ANN), Support Vector Machine (SVM), Adaptive Neuro-Fuzzy Inference
System (ANFIS) and Particle Swarm Optimization (PSO) have been efficiently used for
modeling scour related problems.
The study used the data for developing the soft computing models, is obtained from a
physical model study on scour depth around bridge pier, carried out by Goswami Pankaj in
2013 in a 2-D wave flume. The input parameters, namely, sediment size (d50), velocity (U),
time (t) and sediment quantity (ppm) are used to predict the scour depth of different pier
shapes such as circular, rectangular, round nosed and sharp nosed pier for both clear water
and live bed scour condition. The complete original data is divided into training and testing.
In the study, the soft computing techniques such as ANN, SVM, ANFIS, PSO-SVM and
PSO-ANN are developed. The ANN model with feed-forward backpropagation network is
developed with different hidden neurons. The RBF, Linear and Polynomial kernel functions
are used in the SVM model. the ANFIS model is also developed with Trapezoidal, Gbell and
Triangular membership function. The evolutionary optimization technique, particle swarm
optimization is used to tune the SVM and ANN parameters to improve the efficiency of
models prediction.ii
The performance of individual and hybrid soft computing models are compared using
statistical parameters such as, Correlation Coefficient (CC), Normalized Root Mean Square
Error (NRMSE), Nash–Sutcliffe coefficient (NSE) and Normalized Mean Bias (NMB).
Scatter plots are used to evaluate the accuracies of the models and box plots were used to
analyze the spread or distribution of the data points estimated by the models. The validation
of the developed models is done using the experimental values. The validation results shows
that the proposed models are well correlated and in good agreement with experimental
results. The hybrid models displayed a better performance compared to individual models. It
is found that the hybrid PSO-SVM model is the best and efficient model in estimating the
scour depth effectively around bridge pier for both live bed and clear water scour condition
when compared to all the other models developed.
Description
Keywords
Department of Applied Mechanics and Hydraulics, Bridge pier, Scour depth, Pier shapes, ANN, SVM, ANFIS, PSO, Clear water scour, Live bed scour