Prediction of Interpreted Failure Loads of Rock-Socketed Piles in Mumbai Region using Hybrid Artificial Neural Networks with Genetic Algorithm

DOI : 10.17577/IJERTV6IS060196

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Prediction of Interpreted Failure Loads of Rock-Socketed Piles in Mumbai Region using Hybrid Artificial Neural Networks with Genetic Algorithm

Kulkarni R. U.,

Research Scholar, Department of Civil Engineering,

IIT Bombay Mumbai, India

Dewaikar D. M.,

Adjunct Professor, Department of Civil Engineering,

IIT Bombay Mumbai, India

Abstract The pile capacity can be estimated using empirical, semi-empirical, numerical, analytical or experimental methods. Nevertheless, the capacities thus derived, vary depending upon the underlying assumptions. The static pile load test is the most accepted method for determining the failure load. However, due to time and cost constraints, a limited number of pile load tests are conducted. In the present study, the rock-socketed pile capacity is estimated using a hybrid model of Artificial Neural Network with Genetic Algorithm. The pile load test dataset of 148 patterns collected from the various sites of Mumbai region is used. The results obtained using the proposed method show an excellent agreement with the interpreted failure loads estimated using Paikowsky and Tolosko method.

Keywords Pile Load Test; Interpreted Failure Load; Artificial Neural Network; Genetic Algorithm; rock-socketed pile

  1. INTRODUCTION

    Several methods are available to compute the pile capacity based on analytical (Serrano and Olalla, 2002), empirical (Rosenberg and Journeaux, 1976; Horvath and Kenney,1979; Kulhawy and Goodman, 1980; Williams and Pells, 1981; Kodikara and Johnston, 1994; Zhang and Einstein, 1998; Basarkar and Dewaikar. 2005; Vipulanandan et al., 2007; Kulkarni and Dewaikar, 2016b), semi-empirical (Reese and ONeill, 1989; Charles et al., 2001), numerical (Van der Veen, 1953; Hansen, 1963; De Beer, 1968; Chin, 1970; Davisson, 1972; Hirany and Kulhawy, 1988; Ahmad and Pise, 1997; De Court, 1999; Paikowsky and Tolosko, 1999) or experimental techniques (Rehnman and Broms, 1971; Benmokrane et al., 1994). Nevertheless, the capacities estimated using these methods would be different and hence, the static pile load test is perhaps the most accepted way of gauging the pile capacity.

    The capacity is determined from the pile load test response based on distinct plunge or using various interpretation methods available in the case of non-plunging pile responses. The choice of a proper method for interpretation of the failure load based on pile load test plays a significant role (Fellenius, 2015). Kulkarni and Dewaikar (2016a) analysed a dataset of 53 cases collected from various sites of Mumbai region. They have reported that, Paikowsky and Tolosko (1999) method is suitable for the estimation of interpreted failure load as it gives optimum factor of safety. Hence, the results obtained using the

    proposed methodology are compared with those obtained using Paikowsky and Tolosko (1999) method.

    However, owing to time and cost constraints, a limited number of pile load tests are conducted. Hence, need is felt to seek alternatives to estimate pile capacity. A hybrid model is proposed in the present analysis, using Artificial Neural Network (ANN) with the optimization tool of Genetic Algorithm (GA) to achieve this objective. Several researchers have reported pile capacity prediction using ANN and hybrid ANN techniques (Goh, 1994; Chan et al., 1995; Goh, 1995; Lee and Lee, 1995; Teh et al., 1997; Patil, 2000; Shahin et al., 2001; Basarkar, 2004; Goh et al., 2005; Maizir and Kassim, 2013; Benali et al., 2013 and Momeni et al., 2014). A detailed review of some of these methods is reported by Shahin (2016).

    As of now, ANN models developed for the prediction of interpreted failure loads of rock-socketed piles have employed intact rock properties. However, the rock-socketed piles are supported by the surrounding rock mass and it would be rational to consider the effect of discontinuities (Pells and Turner, 1980; Zhang, 2005 and Zhang, 2010). The present study is distinct from the previous work in which, an attempt is made to arrive at interpreted failure load based on the rock mechanics principles.

    A rock-socketed pile load test dataset of 148 cases is collected from various sites of Mumbai region. The dataset is analyzed and validated using the proposed hybrid model using supervised learning technique.

  2. GEOLOGY OF MUMBAI

    Deccan trap forms the major geologic formation of Mumbai region. Basalt is the predominant rock-type. Mumbai region comprises considerable amounts of evolved rock types such as Breccia, Rhyolite, Trachyte and Felsic and basic Tuff. The Deccan basaltic flow and associated pyroclastic and plutonic rocks evolved under the geologic formation of Mumbai region are classified under the Sahyadri Group (Sethna 1999). The rock type Basalt exists in two variations; compact and amygdaloidal basalt. The compact Basalts are always jointed and are never massive. On the other hand, amygdaloidal basalts are always unjointed.

    The lava flows in the major part of the Deccan Trap occur as nearly horizontal sheets, each flow is ranging in the thickness from about 10 m to 30 m. Some rocks are formed from magmatic gases that produce gas cavities. This sometimes chemically alters the basalts and the rendered, Hydrothermal Alterations (HTA) are poor in quality. Overview of the methods used for development of the proposed model

    The slope, S and intercept, X of Davissonss (1972) offset line are represented in Eqs. (3) and (4) or (5).

    S =L/EpAp

    Kyfor et al. (1992) recommend Eqs. (4) and (5) for D < 610 mm and D > 610 mm respectively

    3.8 D

    The hybrid method adopted for developing the proposed GA-based ANN model for the estimation of interpreted failure load are detailed below.

    1. Interpreted failure load

      Interpreted failure loads computed using the proposed hybrid model is compared with the interpreted failure loads estimated using Paikowsky and Tolosko (1999) method since it gave optimum Factor of Safety (FOS) as mentioned earlier. However, this method requires pile load test data.

      Nevertheless, in order to train the network using input parameters obtained from routine Geotechnical investigation, Kulkarni and Dewaikar (2016b) method is employed.

      The methods are described in this section.

      1. Paikowsky and Tolosko (1999) method using pile load test data

        Paikowsky and Tolosko (1999) method is derived based on following two assumptions.

        X=

        120

        X= 3.8 D

        30

        • The inverse of the slope of settlement ()/load (P) vs.

          yields the failure load (Chin, 1970).

          Fig. 2. A typical plot showing offset and slope of Davissons (1972) method

          The interpreted failure load, PMETH is expressed by Eq. (3).

        • The failure corresponds to the settlement at the point of intersection of Davisson offset line with the load- settlement curve (Davisson, 1972).

        Where,

        PMETH

        = -B

        B2 4AX

        2A

        In Fig. 1, the linear response generated from a typical plot of /P vs. is shown. This linear relationship is expressed by Eq. (1).

        a b

        B = aX+b-S and

        A = aS

      2. Kulkarni and Dewaikar (2016b) method using

        P

        Where,

        a = slope of the line

        Geotechnical Investigations data

        The following expression is employed for estimating the interpreted failure load, Qi (Kulkarni and Dewaikar, 2016b).

        b = intercept of the line

        Fig. 2 shows Davisson (1972) offset line represented by

        Where,

        Qi = Awfw+Asfs+Apqp

        Eq. (2) for a pile diameter, , pile length, L, pile cross- sectional area, Ap for a pile material with modulus of elasticity, Ep.

        =X + S P

        Aw = surface area of pile in the weathered stratum

        As = surface area of pile in the socket material fw = unit skin friction in the weathered stratum fs = unit skin friction in the socket material

        qp = unit pile tip resistance

        The chart prepared by Cole and Stroud (1977) is used for estimating fw. Eqs. (8) and (9) represent the expressions for estimating fs and qp (Kulkarni and Dewaikar, 2016b).

        s cm

        f = 0.2 0.5

        Fig. 1. A typical plot of Paikowsky and Tolosko (1999) method

        qp= 3

        0.5

        cm

        In Eqs. (8) and (9), the value of cm is estimated using the relationship as per the following expression (Zhang, 2010).

        cm 100.013RQD-1.34

        Where,

        yj = output at node j

        In this paper, the activation functions of log-sigmoid or

        c

        Where,

        hyperbolic tangent are used as transfer functions. The two main attributes of activation function are the existence of the threshold and setting upper and lower boundaries. Eqs. (13)

        cm = compressive strength of rock mass

        c = compressive strength of intact rock

        and (14) present the types of transfer functions adopted in the present study.

        • Log-sigmoid

    2. Artificial Neural Network

      ANN is a type of machine learning technique which finds applications for non-linear input-output relationships. In this,

      f(Ij) =

      1

      1 exp(I j )

      the nervous system is simulated to seek solutions to problems in terms of supervised, unsupervised or reinforced learning. It comprises mainly two components: neurons and connection weights (Zurada, 1992).

      1. Processing element

        A neuron is necessarily the processing element. The normalized value of the input neurons are multiplied with the synaptic weights and bias is added to this product (Maizir and Kassim, 2013). In Fig. 3, a pictorial representation of a typical neuron is shown.

        Fig. 3. A typical neuron

      2. Adder Function

        An adder function is operated as the matrix multiplication between the input neurons and synaptic weights. A bias is added to this product so that, it is transferred from the origin. Eq. (11) represents these two operations.

        • Hyperbolic tangent

        f(Ij) = tanh(Ij)

        4) Network Topology

        Feed Forward Network (FFN) is employed in the present study. The structure (topology) of the network consists three main components: input neurons, neurons in the hidden layer and output neuron (Beltratti et al., 1996). The parameters and their numbers to be chosen as input depend on the problem definition. The input neurons do not process any signals and perform the operation of passing information to the hidden layer. The neurons in the hidden layers receive the signals from input layer and process them through the adder and the activation functions and pass it to the output layer. The neurons in the output layer also process the signals through adder and activation functions.

        The network receives the inputs which are multiplied by the connection weights. The bias is added to the product. The output is generated by passing the adder function through transfer function of log sigmoidal which produces a layer of hidden neurons. These are again multiplied by the connection weights and the product is added to the threshold value. The signal received from the hidden neurons is then operated by the transfer function, hyperbolic tangent, to produce the output. Here the FFN ends. The final output is compared with target for n patterns and the difference between the two values represents error, E estimated as:

        E = ym – yp

        Where,

        ym = normalised predicted output

        n

        Where,

        Ij = wji xi +j

        i1

        yp = normalised target output

        This error is optimized (minimised) using GA.

        Ij =activation level at node j

        wji = synaptic weights at node j and input i xi = normalised input at node i

        j =bias at node j

        3) Transfer (activation) function

        j

        An activation (squashing or transfer) function is operated in order to squash the amplitude of the output neuron. The transfer function, f (Ij) performs the operation of introducing nonlinearity. Eq. (12) shows the output of the neuron derived by performing transfer function operation on adder function.

    3. Genetic Algorithm (GA)

    GA is a powerful technique developed by Holland (1975) based on the concept of survival of the fittest. GA are a subset of Evolutionary Algorithms which are a subset of Guided random search techniques. GA has the capability of converging to the global optima (Mitchell, 1996). It basically has five stages namely, generation of the initial population, evaluation of fitness function, selection, cross-over and mutation. Large population is chosen so that, it is not trapped into a local minimum. The fitness (objective) function sets the criterion for processing combinations of the individuals to generate fitter solutions. The selection criterion sets for the acceptance of qualified individuals and their off-springs. The

    yj =

    f I

    crossover stage marks the combination of genes of the parents to form off-springs by altering the values of genes. In

    mutation stage, the values of genes are flipped from 1 to 0 or vice-versa in order to safeguard the useful genes that may be lost in selection and/or cross-over stage. The termination criterion for this algorithm is reached either when the objective function is satisfied or at the end of pre-defined number of generations. In this study, the synaptic weights are optimized using commercially available GA software, SolveXL Version: 1.0.5.2. The SolveXL is a tool which works as Add-in to Excel Worksheet.

  3. PROPOSED HYBRID MODEL

The proposed model is developed using FFN. The input parameters are chosen based on the analyses of data for Mumbai region (Kulkarni and Dewaikar, 2016a and Kulkarni and Dewaikar, 2016b). Their analyses recommend PMETH. The synaptic weights and bias are initialized in the first step. In the present study, the topology comprises one input layer, one hidden layer and one output layer. Each layer has neurons or nodes. The error estimated using FFN is minimised using GA.

A. Selection of input and output parameters

The input and output parameters are selected based on the discussion of interpreted failure load given earlier.

As per Eq. (6), PMETH is proportional to X and S and is represented as,

PMETH

Using the previously defined expression for the slope, S, of Davissons offset line,

PMETH

Or,

PMETH

Expanding Eq. (7),

N = normalised value

U = actual value of an input/output parameter

Umin = minimum value from the range of input/output parameter

Umax = maximum value from the range of input/output parameter

  1. Data Division

    Based on statistical significance, the data is divided and 54% of the patterns are considered for training of the network and 46% for testing for each pile diameter.

  2. Topology of FFN

    To develop this network, FFN is used comprising one input layer with nine neurons, one hidden layer with three to thirteen neurons and one output layer with one neuron. The bias is added to the neurons in hidden layers and output layer. In Fig. 4, a typical topology of 9-9-1 adopted in the present study is shown.

    Qi = D2q

    4 p

    • DLs fs

    • DLw fw

    Substituting Eqs. (8) and (9), the above equation becomes,

    Fig. 4. Topology 9-9-1 adopted in the present study

    Or,

    Qi = D2 (3 4

    s

    cm

    0.5 ) DL (0.2

    w w

    cm

    0.5 ) DL f

  3. Optimization by GA

The learning of the hybrid network ANN with GA is based on the optimization of synaptic weights and bias. The output is

L L compared with the target and the error is estimated. Further,

Qi D, cm , s , w , fw

back propagation to minimise the error is attempted using GA.

D D The objective function is aimed to be minimized by

Thus, the design variables are, D, cm, Ls/D, Lw/D, fw, X, L/D and Ep. In addition to these, modulus, Ems of elasticity of rock mass in socket is included in the present study to give due weightage to rock-mass properties. The interpreted failure load, Pi predicted by proposed hybrid model is the output parameter.

B. Data Normalization

The input/output parameters are normalized using the following expression.

U U

optimization of synaptic weights and bias using GA.

Iterations are performed for the population size of 50 to

200. A smaller population size leads the solution to converge to local minima. In Table 1, the GA parameters adopted in the present study are shown. A decision variable contributes to a gene in GA. A chromosome is formed when all the genes are attached together. The gene type is adopted as Real bounded in SolveXL. The upper and lower bounds of the synaptic weights and bias are varied in the range of -1 to 1, -10 to 10 and -100 to 100 during various trials.

Where,

min

Umax Umin

The interpreted failure load, Pi is estimated by de- normalizing the output produced by the proposed model. Pi is compared with PMETH and the RMSE value is estimated. The performance of the proposed model is discussed later in this paper.

  1. The objective function : RMSE

    The RMSE is calculated using the following expression for n number of patterns.

    1. NETWORK PERFORMANCE

      This section presents a comparison of Pi with PMETH for various trials. The generations, the population size and the range are varied to optimize the synaptic weights and bias are varied during various trials. The generations analyzed during these combinations are 50, 100, 150, 200, 500 and 1000. The

      population size is varied at 20, 50, 75, 100 and 200.

      TABLE II. RANGE OF INPUT PARAMETERS CONSIDERED FOR THE STUDY

      1

      RMSE

      n

      n

      i1

      ( y

      • yp

      )2

      Input Parameters

      Maximum

      Minimum

      Average

      Ls/D

      10.0

      0.5

      3.8

      Lw/D

      12.0

      0.0

      3.4

      L/D

      36.4

      6.6

      16.7

      cm (MPa)

      27.4

      0.4

      4.4

      Ep (MPa)

      33541.0

      1750.0

      26756.2

      Em (MPa)

      2662.2

      364.8

      1183.1

      D (m)

      1.2

      0.3

      0.8

      X (m)

      0.044

      0.0063

      0.015

      fw (MPa)

      0.3

      0.1

      0.2

      m

      In the training process, the network adjusts its weights on the basis of the patterns presented for learning, and finds a set of weights that produce input-output mapping with the least RMSE.

      TABLE I. SUMMARY OF PARAMETERS ADOPTED IN THE SIMULATION MODEL

      Parameter

      Trails performed for

      Recommendations

      Problem Type

      Single/Multiple

      objectives

      Single Objective

      Population Size

      50,100,200

      100

      Algorithm

      Generational, Generational Elitist,

      Steady State, NSGA II

      Generational Elitist

      Cross-over

      Simple one Point,

      Simple Multi-point, Uniform Random

      Simple Multi-point

      Cross-over Rate

      0.95

      Mutator

      Simple, Simple by

      Gene

      Simple by Gene

      Mutation Rate

      0.05

      Mutation

      probability

      0.25

      Chromosome Gene type

      Integer Bounded, Real Bounded, Gray Integer Bounded, Gray Real

      Bounded

      Real Bounded

      Chromosome Range

      -1 to 1

      -10 to 10

      -100 to 100

      -1 to 1

      Objective function

      Minimise Root Mean Square Error

      Constraints

      Simulation

      Number of

      Generations

      50, 100, 500, 1000

      500

  2. Validation

The optimised synaptic weights and bias obtained from the trained network are multiplied with a chosen set of 67 patterns and the network is tested for the prediction of target. The RMSE of the network at the testing stage and the coefficient of determination, R2 value obtained by comparison between Pi and PMETH measure the performance of the proposed network.

IV. DATASET

The pile load test is conducted in Mumbai region in accordance with IS:2911, Part IV, (1985, Reaff. 2010). The database of 148 patterns is collected from Basarkar (2004) and from various pile testing agencies namely, M/S Composites Combine Technocrats Pvt. Ltd., M/S STUP, M/S MMRDA, M/S Stephon, M/S SAFE and M/S Marina Pile Foundation. Table 2 provides the range of parameters considered in the study.

  1. Number of neurons

    The topologies of 9-3-1, 9-5-1, 9-7-1, 9-9-1 and 9-11-1 are analyzed. In Table 3, the performances of these topologies are presented. The values of RMSE are varying in the range, 0.01 to 0.0096. It is seen that these values drop till the number of neurons is 5; after which the value shows an increase for 11 number of neurons in the hidden layer. This analysis is for chromosome limit set as -5 to 5. The patterns are analyzed for population size of 100 individuals and 100 generations.

    TABLE III. SUMMARY OF VARIATION OF NEURONS

    Model

    Topology

    RMSE

    R2

    ANN3

    9-3-1

    0.01

    0.84

    ANN5

    9-5-1

    0.0093

    0.86

    ANN7

    9-7-1

    0.01

    0.84

    ANN9

    9-9-1

    0.0096

    0.85

    ANN11

    9-11-1

    0.0096

    0.85

    Fig. 5 shows the variation of RMSE values with the number of neurons in hidden layer for population size of 200 individuals. Fig. 5 shows the variation of RMSE values with the number of neurons in hidden layer.

    Fig. 5. Variation of RMSE with the number of neurons in hidden layer

    Fig. 6 shows the variation of R2 value with the number of neurons. The value of R2 increases up to 5 neurons beyond which a decrease is observed. This indicates the suitability of the model 9-5-1.

    Fig. 6. Variation of R2 with number of neurons in hidden layer

  2. Chromosome gene range

    Table 4 shows the variation of chromosome gene range for the model 9-5-1. It is seen that the values of RMSE and R2 decreases to 0.01 and 0.84 respectively for chromosome gene range of -10 to 10. The patterns are analyzed for population size of 100 individuals and 100 generations.

    TABLEIV. VARIATION OF CHROMOSOME SETTING

    Model

    Chromosome settings

    RMSE

    R2

    ANN9-B1

    -1 to +1

    0.0107

    0.82

    ANN9-B2

    -2 to +2

    0.0106

    0.82

    ANN9-B5

    -5 to +5

    0.011

    0.83

    ANN9-B8

    -8 to +8

    0.013

    0.76

    ANN9-B10

    -10 to +10

    0.01

    0.84

  3. Population

    Table 5 presents the variation of RMSE and R2 values for various trials of population sizes. It is seen that; the model is optimum with RMSE and R2 values of 0.0097 and 0.84 respectively for population size of 200 individuals.

    TABLE V. VARIATION OF POPULATION

    Model

    Population

    RMSE

    R2

    ANN9-C20

    20

    0.011

    0.801

    ANN9-C50

    50

    0.011

    0.8

    ANN9-C75

    75

    0.0099

    0.83

    ANN9-C100

    100

    0.0093

    0.83

    ANN9-C200

    200

    0.0097

    0.84

  4. Generation

    Table 6 presents the variation of generations at 50, 100, 150, 200 and 250. It is seen that, RMSE value is least (0.0094) for 250 generations and the corresponding R2 is maximum (0.86). Hence, the optimum number of generations is taken as

    250. These analyses are for 9-5-1 for population size of 100 individuals and chromosome setting of -10 to 10.

    TABLE VI. VARIATION OF GENERATIONS

    Model

    Generations

    RMSE

    R2

    ANN9-D50

    50

    0.014

    0.77

    ANN9-D100

    100

    0.01

    0.83

    ANN9-D150

    150

    0.0098

    0.84

    ANN9-D200

    200

    0.0095

    0.85

    ANN9-D500

    250

    0.0094

    0.86

    Based on these analyses, a model, A5B10C200D1000, with topology 9-5-1, population size of 200, 1000 generations and chromosome setting of -10 to 10 was developed. In Fig. 7, a good agreement is seen between Pi and PMETH (RMSE = 0.0077) at training stage. The patterns where a large scatter is obtained beyond acceptable range are considered as bias cases.

    Fig. 7. Comparison of PMETH with Pi at training stage for model A5B10C200D1000

    Fig. 8 shows a close match of Pi with PMETH at the recall stage. This is indicated by R2 value of 0.8.

    Fig. 8. Comparison of PMETH with Pi at recall stage for model A5B10C200D1000

  5. Sensitivity Analysis

The sensitivity analysis is performed to determine the influence of input parameters on the output. In the present study, the cosine amplitude method (Yang and Zang, 1997) is used. The following expression is used for the kth pattern to determine the most influential input parameters.

n

(xij * y jk )

Sij = k 1

  1. Beltratti, A., Margarita, S. Terna, P. (1996). Neural networks for economic and financial modelling., International Thomas Computer Press, UK

  2. Benali, A. Nechnech, A. Bouzid, D. A. (2013). Principal Component

x y

n n Analysis and Neural Networks for Predictingthe Pile Capacity using

2 2

ik jk

k 1 k 1

The value of Sij indicates the significance of the input parameter. If the value is zero, no relationship exists between input and output parameters and on the other hand, if the value is close to 1, a strong relationship is seen. Fig. 9 shows that, the parameters D and the factor X from Paikowsky and Tolosko (1999) method have a strong influence on the output based on output predicted by model A5B10C200D1000. The parameter Lw/D shows least influence on the output.

Fig. 9. Sensitivity Analysis based on predicted output by model ANN9-B10

Note: 1 = Ls /D; 2 = Lw /D; 3 = L/D, 4 = cm; 5 =Ep; 6 =Ems; 7 =D; 8 =X; 9 =fw

  1. CONCLUSIONS

This study proposes a hybrid ANN model employing optimization tools of GA for the prediction of interpreted failure load of rock-socketed piles in Mumbai region. The dataset of 148 pile load tests is used for the analysis. Based on the results, the topology of 9-5-1 is recommended. The data division is conducted using 54% of the data for training and 46% of the data for recall stage. The model is optimum for the chromosome gene range of -10 to +10 for the optimization of synaptic weights and bias. It is observed that the model A5B10C200D1000 gives the optimum RMSE value of 0.0077 and the value of R2 is 0.9 for training stage thus indicating a reliable performance of the proposed model. The sensitivity analysis shows that, L/D, Lw/D are least influential and D, Ems, Ep, X, cm, fw are contributing to PMETH to a large extent.

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