Cost Estimation Model (Cem) for Residential Building using Artificial Neural Network

DOI : 10.17577/IJERTV5IS010431

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Cost Estimation Model (Cem) for Residential Building using Artificial Neural Network

Richa Yadav

Post Graduate Student, Civil Engineering Dept.,

Radharaman Engineering College, Vadodara

Vivekanada Vyas

Professor, Radharaman Engineering College,

Bhopal

Monica Vyas

Professor,

Oriental Institute of Science and Technology, Bhopal

Sanket Agrawal

Assistant Professor, Parul Institute of Technology,

Vadodara

Abstract The achievement of any project undertaking is defined by improved quantity and cost estimation technique that facilitates optimum utilization of resources. The objective of this study is to develop a cost estimation technique by using an artificial neural network (ANN) model that will be able to forecast the total structural cost of residential buildings by considering various parameters. In this study, data of last twenty three years has been collected from Schedule of rate book (SOR) and general studies. Eight input parameters, namely, cost of cement, sand, steel, aggregates, mason, skilled worker, non-skilled worker and the contractor per square feet construction were selected. The parameters were simulated in NEURO XL Version 2.1 for developing ANN architecture. The resulting ANN model reasonably predicted the total structural cost of building projects with correlation factor R-0.9960 and RSquared-0.9905 giving favorable training and testing phase outcomes.

Keywords Artificial Neural Network (ANN), Correlation Factor, Cost estimation, Model, Variables

  1. INTRODUCTION

    Cost is probably the first to be considered when it comes to construction projects. Accurate estimation of quantities and costs incurred in a construction project is a crucial factor in its achievement [1]. Because of the complexity of the construction industry and individuality of every project undertaking, several factors may affect the overall project cost. A number of objects, such as the structural, architectural, sanitary, electrical and air-conditioning system workings conclude the total cost of buildings. Olotuah, 2002, observed that building resources incur approximately 60% of the total cost of a residential building [2]. Meanwhile, the structural casing covers 25% of total construction cost in a multi-storey reinforced concrete residential building. Therefore, greatest worry must be exercised in the design of structural systems if a considerable reduction in cost is preferred. However, consistency and accuracy of available cost estimating techniques are matter of concerns presently. Thus, now there is a growing need to deal with the concerns by introducing a new and alternative approach for estimation of cost and to identify the factors responsible for variation of cost.

    Usually, the ordinary least squares regression approach is applied and the replica is selected based on the coefficient of determine, R2. However, because of high correlation among a great group of variables, this technique tends to generate regression coefficients estimators that will badly perform in the presence of multi-collinearity [3]. Furthermore, the variance of the usual least squares estimator become inflated, which results in the low prospect of the estimator being close to the correct value of the regression coefficient [4]. This can be rectified by determining uncorrelated variables to be included in the regression model. Lots of quantity and cost estimation models have been developed. Linear regression is a very useful statistical device for analyzing and predicting the input of a potential new item to the overall approximation. Several other methods have been applied for the cost estimation, such as, principle component study, case- based reasoning and ANN.

    Artificial neural networks can model complex non-linear relationships and approximate any assessable function. ANN is a powerful means to handle non-linear problems and subsequently map relations between complex input/output data and address uncertainties [5]. They are particularly helpful in problems where there is a complex relationship between an input and output. The main advantage ANN models have over physically based models is that they are data-driven and underlying contact using examples of the desired input output mapping [6].

    Ismaail EISawy et al (2011) tried to develop a parametric cost-estimating model fifty-two actual real-life cases of building projects, in Egypt, constructed during 2002-2009 and achieved an accuracy of 80% [7]. Jamshid Sodikov (2005) developed a more accurate estimation technique for highway projects in developing countries at the theoretical phase using artificial neural network [8]. H.Muarat et al (2004) in Turkey, used training and testing data from thirty projects of 48 storey reinforced concrete structure by neural network methodology, achieving an average cost estimation accuracy of 93% [9]. Emad Elbeltagi (2014) developed an ANN model to predict the cost of highway structure projects in Libya by considering various factors that influence the highway construction [10].

    The motive of this work is to explore the ANN technique and predict the total structural cost of buildings and to determine the factors which affect the cost of buildings. Hence a cost estimation model (CEM) has been developed using artificial neural networks, particularly multi-layer feed forward neural networks. The back propagation knowledge algorithm is used to instruct the network by iteratively processing a set of training sample and compare the network's prediction with the real. The variation in the estimation is propagated to the input for adjusting the coefficients. To accomplish this goal, structural cost data from past twenty three years from 1993 to 2015 were collected and were used simulated in ANN SOFTWARE.

  2. METHODOLOGY

    In this study a frame work has been developed for estimating the variation & construction cost for residential building. All the models where developed using data of input variables like cost of cement, sand, steel, aggregate, mason, skilled, non-skilled, Formwork, Brick work etc (Table 1). Also the rates of material that is input variables has been taken from Schedule of rate book of last 20 years. Pentium 4 class P.C. with window XP operating system is used to run NEURO XL Version 2.1 Artificial Neural Network software. For all the models, total data set is divided into training set (68%), validation set (16%), and test set (16%).

    Table 1 Input parameters for ANN model.

    Year

    Cement (Rs/bag)

    Sand (Rs/ft3)

    Steel (Rs/kg)

    Aggregate (Rs/ft3)

    Mason (Rs/day)

    Skilled Labor (Rs/day)

    1993

    80

    2

    6

    2

    110

    50

    1994

    90

    2

    7

    2

    120

    55

    1995

    100

    3

    9

    2

    125

    60

    1996

    110

    4

    10

    3

    130

    65

    1997

    120

    5

    12

    3

    135

    65

    1998

    125

    5

    13

    4

    70

    1999

    130

    6

    15

    4

    145

    75

    2000

    135

    7

    17

    5

    150

    75

    2001

    135

    9

    17

    5

    155

    80

    2002

    140

    12

    18

    6

    155

    90

    2003

    145

    15

    19

    6

    160

    95

    2004

    145

    18

    20

    7

    165

    95

    2005

    150

    19

    21

    7

    170

    105

    2006

    155

    20

    22

    8

    175

    100

    2007

    160

    22

    23

    8

    180

    120

    2008

    178

    23

    25

    9

    200

    120

    2009

    190

    24

    28

    10

    220

    150

    2010

    200

    25

    30

    12

    250

    200

    2011

    200

    25

    33

    16

    300

    250

    2012

    225

    30

    38

    18

    350

    250

    2013

    260

    40

    40

    20

    400

    300

    2014

    260

    40

    48

    40

    425

    340

    2015

    290

    60

    34

    23

    450

    360

    Selection of parsimonious ANN structure was accomplished by first fixing the number of hidden layers and then choosing the number of nodes in each of these layers. For larger networks, computational costs are high and might overfit the training data with too many nodes. The presentation of one- hidden layer ANN is found to be better than two hidden layers ANN [11]. Nodes in the hidden layers, are very important for characteristic extraction from the patterns of input time series, they normally have a very small weight changes and learn very slowly [12, 13]. Here single

    hidden layer is used to generate feed-forward entirely- connected neural network (multi-layer perceptron). For both hidden and output layer hyperbolic tangent activation function is employed. This function has a sigmoid curve and is calculated by using the following formula as in equation 1.1

    F(x) = (ex – e-x) / (ex + e-x) —————- (Eq. 1.1)

    The selected output range is [-1 to 1]. Sum-of-Square is the error function used to rate the quality of the neural network. Training is stopped when the number of iteration become 500. As iteration is a single complete presentation of the training set to the neural network. This is the simplest and the most commonly used condition to stop training. When a neural network begins to over-train (i.e. to memorize data instead of generalizing and encoding data relationships), the validation errors increase while training errors might still reduce in that case, one has to retrain and restore best network. When the training is completed the testing operation was performed. The performance of each network model was then evaluated by computing the mean absolute error for each model.

  3. RESULTS AND DISCUSSION

    The table 1.2 shows the actual and forecasted structural cost obtained through the ANN model. The output obtained from ANN model also includes Absolute and Relative errors in prediction. From the error percentage it is clear that maximum error is 8.58%, for year 2008, which is less than 10%. Hence the result indicates good estimation values with prediction above 90%.

    Table 2 Output parameters obtained through ANN model.

    Year

    Contractor (Rs/ft2)

    Forecast

    Abs. Error

    Rel. Error

    Estimate

    1993

    290

    312.40957

    22.409572

    7.73%

    Good

    1994

    320

    325.48742

    5.4874173

    1.71%

    Good

    1995

    350

    355.31718

    5.3171772

    1.52%

    Good

    1996

    370

    378.10013

    8.1001263

    2.19%

    Good

    1997

    400

    409.25739

    9.2573891

    2.31%

    Good

    1998

    425

    425.69218

    0.6921805

    0.16%

    Good

    1999

    450

    460.90113

    10.90113

    2.42%

    Good

    2000

    475

    490.3637

    15.363698

    3.23%

    Good

    2001

    500

    500.56361

    0.5636101

    0.11%

    Good

    2002

    525

    550.93636

    25.936358

    4.94%

    Good

    2003

    550

    591.69713

    41.697126

    7.58%

    Good

    2004

    600

    614.38795

    14.387947

    2.40%

    Good

    2005

    650

    655.11369

    5.1136869

    0.79%

    Good

    2006

    700

    668.14794

    -31.85206

    4.55%

    Good

    2007

    750

    735.36585

    -14.63415

    1.95%

    Good

    2008

    850

    777.0985

    -72.9015

    8.58%

    Good

    2009

    900

    881.23432

    -18.76568

    2.09%

    Good

    2010

    1000

    980.20803

    -19.79197

    1.98%

    Good

    2011

    1070

    1028.7587

    -41.24135

    3.85%

    Good

    2012

    1100

    1102.7111

    2.7111141

    0.25%

    Good

    2013

    1200

    1238.3095

    38.309463

    3.19%

    Good

    2014

    1300

    1314.485

    14.485034

    1.11%

    Good

    2015

    1400

    1303.8944

    -96.1053

    6.86%

    Good

    The results were then plotted on the scatter graph between actual and forecasted values of last 23 years. The forecasted values generated through the ANN model were found to have very high correlation coefficient. The estimated correlation coefficient and R-squared coefficient for the results obtained were 0.9960 and 0.9905 respectively as shown in Fig. 1.

    Fig. 1 The scatter graph between actual and forecasted values.

    The Table 3 shows the summary of the co-relation factor between actual and predicted structural cost. The average Absolute Error (AE) obtained for Training Set and Test Set were 21.436 and 27.183 respectively. The predictions for each year from 1993 to 2015 indicated Good Forecasts for both Training (100%) and Test Set (100%), where the Tolerance level was 10% for Training Set.

    Table 3 Summary of the results.

    Training Set Test Set

    No of Rows

    19

    4

    Average AE

    21.436

    27.183

    Average MSE

    932.1315

    1477.6754

    Tolerance

    10%

    30%

    No of Good forecasts

    19 (100%)

    4 (100%)

    No of Bad forecasts

    0 (0%)

    0 (0%)

  4. CONCLUSION

The motive of this work was to explore the ANN technique and predict the total structural cost of buildings and to determine the factors which affect the cost of buildings. The developed cost estimation model (CEM) with back propagation knowledge algorithm was used to instruct the network by iteratively processing a set of training sample and compare the network's prediction with the real. The generated model fairly forecasted the structural cost, where the correlation coefficient and R-squared coefficient were found to be 0.9960 and 0.9905 respectively. The average absolute error of training set 21.43 and that of test set was 27.18, with the error varying from 8.58% (maximum) to 0.11% (minimum), indicating good error deviation during training. The accurate conversion of practical field data into real time data can bring major change in the construction industry by forecasting the cost of any project. Artificial neural networks can model complex non-linear relationships and approximate any assessable function. The advance prediction of overall residential building cost can help the user in decisive planning. This model can also be used in future by various stakeholders, to study variation in the project cost, if the cost of various important resources like steel, cement, labor, etc. is changed.

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