Literature DB >> 29876486

Data exploration on factors that influences construction cost and time performance on construction project sites.

Lekan M Amusan1, Adedeji Afolabi1, Raphael Ojelabi1, Ignatius Omuh1, Hilary I Okagbue2.   

Abstract

This data article explores the factors that contribute to maintaining steady cost projection on construction projects. The data was obtained using structured questionnaire designed in Likert scale. The responses were solicited from category of construction practitioners. Simple random sampling was employed in the distribution of the questionnaires to the respondents. Data samples were analysed using severity index, ranking and simple percentages. The analysis of the data brought to fore some important data on factors that causes cost overrun, they include: contractor's inexperience, inadequate planning, inflation, incessant variation order, and change in project design. They are critical to causing cost overrun, while project complexity, shortening of project period and fraudulent practices are found to be responsible. The data fall within the percentages of possible consequences of cost overrun when compared with those available in scientific literature. The data can provide insights on how to mitigate the risks of project deviation from initial cost and as-built project.

Entities:  

Keywords:  Construction; Cost overrun; Likert scale; Questionnaire; Severity index; Statistics; Survey

Year:  2018        PMID: 29876486      PMCID: PMC5988424          DOI: 10.1016/j.dib.2018.02.035

Source DB:  PubMed          Journal:  Data Brief        ISSN: 2352-3409


Specifications Table Value of the data The data is useful in research that involves studying cost performance of construction projects. Data presented is useful in studying cost overrun that would help client and professional in project cost planning. The data could be used in development of cost and time models. The data is valuable to construction project professionals and could be used in policy formulation. The data could be used as basis of comparison with that of other countries in terms of project management.

Data

The data was obtained using structured questionnaire designed in Likert scale. The responses were solicited from category of 70 construction practitioners using survey sampling methodology. The data retrieved from the 70 practitioners are presented as follows: data of professional affiliation of respondents is presented in Table 1, data on years of experience (Table 2), data on economic sector where they belonged (Table 3), data on procurement methods used by the respondents (Table 4) and time data on period of cost overrun experienced by them in executing construction projects (Table 5).
Table 1

Data profession of respondents.

Professional cadre of respondentsFrequencyPercentage
Architect2029.9
Builders1522.4
Engineers1522.39
Quantity Surveyor1014.9
Estate Surveyor1010.45
Total70100
Table 2

Data on respondents’ years of experience.

Years of experienceFrequencyPercentage
Above 10yrs3042.8
225-10yrs2028.6
1–5yrs1724.3
Missing data34.3
Total70100
Table 3

Data on economic sector of the respondents.

Economy SectorFrequencyPercentage
Private sector4767.1
Public sector2028.6
Missing data34.3
Total70100
Table 4

Data of procurement methods used by the respondents.

Procurement methodsFrequencyPercentage
Traditional method34.3
Project management68.5
Direct labor1014.3
Design and build2028.6
Labor only contract2840.0
Missing data34.3
Total70100
Table 5

Data on period of cost overrun experienced on projects.

No of YearsFrequencyPercentage
Above 2Yrs00.00
1–2 years22.9
6months-1year2130.0
Below 6months3955.7
Missing data811.4
Total70100
Data profession of respondents. Data on respondents’ years of experience. Data on economic sector of the respondents. Data of procurement methods used by the respondents. Data on period of cost overrun experienced on projects. Furthermore, severity index was used to obtain the ranks of cost-overrun determinants presented in Table 6. The data on impact of cost and time on project performance is shown in Table 7. The cost and time overrun survey information data on residential building projects are shown in Table 8 while the data is in agreement with those available in scientific literature as regards to the consequence of cost overrun.
Table 6

Data on determinants of cost overrun on construction projects.

Cost-overrun determinantsC.R. {5}R {4}J.R {3}IRR {2}V.R {1}S.I %R.K
Contractors Project inexperience4222300091.601
Inadequate planning451570091.342
Inflation422050091.003
Incessant variation order441661090.704
Change in project design431770090.704
Project complexity422032090.406
Shortening of contract period441490090.406
Fraudulent practices421870090.406
Unstable economy4225100089.559
Inaccurate estimate4015120088.4410
Overdesign401863088.4010
Project site location352551188.0512
Delay from employer3916111087.7613
Force Majeure3025111085.1016
Material Price fluctuations3018190083.3014
Site conflicts3020123283.0015
Poor workmanship3017200083.0016
Inadequate financial provision2917200182.117
Contractors inefficiency3020106182.0918
Unsteady material supply3015202081.8019
Unpredictable weather condition3017171080.9019
Breach of local regulation2522118179.1020
Lack of executive capacity by employer710200058.2021

C.R= Completely relevant, J=Just relevant, IRR= Irrelevant, VR= Very Relevant, R.I= Relevant Index.

R.K= Ranking

Table 7

Data of impacts of time and cost on project performance.

EffectsR.A.IRank
Time overrun0.7961
Tied-up Capital0.7722
Loss of investment0.7563
Materials are effectively put to use0.7284
High tendency for the occurrence of dispute between the clients and contractors.0.7245
Project abandonment.0.7046
Excessive increase on the entire project cost.0.6567
Client's dis-satisfaction0.6408
Profit loss.0.6329
Consultant dissatisfaction0.6329
Payment delay0.62811
Good completion time0.61612
Maximized project profit0.60013
Reduced building component quality.0.57614
High level of material wastage0.52815

R.A.I= Relative Agreement Index

Table 8

Data of cost and time overrun survey information on residential building projects.

Assessment StatementsArchitectBuilderStructuralQuantity surveyor
I have been involved in a building project before30%40%10%10%
I have experienced extension in project delivery time20%50%17%13%
Length Of Extension
 1–6 months0.89(i)0.87(i)0.85(ii)0.86(i)
 6–12 months0.84(vi)0.86(ii)0.86(i)0.83(ii)
 12–18months0.85(v)0.85(iii)0.82(iv)0.82(iii)
 18–24 months0.87(iii)0.85(iii)0.84(iii)0.81(iv)
 More than 24 months0.86(iv)0.83(iv)0.78(v)0.82(iii)
I have experienced cost overrun in a building project











Percentage Of Increase
 0–15%0.78(vi)0.65(vi)0.66(vi)0.65(vi)
 15–30%0.79(v)0.76(iv)0.73(v)0.72(v)
 30–45%0.80(iv)0.85(ii)0.85(ii)0.89(i)
 45–60%0.82(ii)0.89(i)0.87(i)0.88(ii)
 60–80%0.81(iii)0.71(v)0.78(iii)0.75(iv)
 80% and above0.83(i)0.75(iii)0.76(iv)0.79(iii)
Data on determinants of cost overrun on construction projects. C.R= Completely relevant, J=Just relevant, IRR= Irrelevant, VR= Very Relevant, R.I= Relevant Index. R.K= Ranking Data of impacts of time and cost on project performance. R.A.I= Relative Agreement Index Data of cost and time overrun survey information on residential building projects.

Experimental design, materials and methods

Data collection

Simple random sampling was used in the data collection through carefully structured questionnaire. A population size of seventy (70) was selected, and a total sample size of 59 respondents was used in this study, with questionnaire distributed to construction professionals. Variables pertaining to the above listed targets were identified and incorporated into questionnaires as the primary source of data. Some similar methods and contributions can be seen in [1], [2], [3], [4], [5], [6], [7], [8].

Data analysis

The data was collated and analysed, using mean item score ranking, percentages and the use of descriptive statistics. Cost overrun determinants were ranked in percentages using the severity index. The five-scale in the questionnaire forms the response variables which are mapped with the 23 cost overrun determinants to obtain the severity index. The five-scale response variables are listed with the assigned ranks: completely relevant (CR) is ranked 4, relevant is ranked 3, just relevant is ranked 2 and irrelevant is ranked 1. The summary is shown in Table 6. Relative agreement index (RAI) is used to obtain the rank of 15 variables that determine the impact of cost and time on project performance. This is presented in Table 7. The construction practitioners’ experiences on project cost overrun and duration were ranked distinctly and shown in Table 8. This enables for quick comparison and decision making. The data composition is in agreement with those available in scientific literature as regards to the consequence of cost overrun. This is summarized in Table 9. The selected works relevant and similar can be found in [9], [10], [11], [12], [13], [14], [15], [16], [17], [18], [19], [20], [21].
Table 9

Data of consequences of cost overrun.

Effects of Cost overrun.Percentage
Tying down of clients capital80%
Company/firms liability to insolvency50%
Liability of companies or firms to bad debt or bankruptcy70%
Under-utilization of manpower resources55%
Tendency for an increase project cost resulting from payments for idle and unproductive time arising out of contractors claims.93%
Tendency for an increase project cost resulting from payments for idle and unproductive time90%
Projects abandonment60%
Under-utilization of plants and equipment93%
Data of consequences of cost overrun.
Subject areaBuilding Construction
More specific subject areaConstruction Management
Type of dataTable, text file.
How data was acquiredField survey
Data formatRaw, filtered and analyzed data
Experimental factorsSimple percentages and severity index were used as analytical tool of the generated data. SPSS (Statistical Packages for Social Science Students) was used in determining the nature, strength and pattern of relationships among the cost determinants and variables. The factors were ranked in order of their degree of severity.
Experimental featuresThe key method used in data collection structured questionnaire designed in Likert scale, the questionnaire was designed in such a way that it helps to collate basic information from the respondents. A population size of seventy (70) was selected, and a total sample size of 59 respondents was used in data generation, with questionnaire distributed to construction professionals. Variables pertaining to the above listed targets were identified and incorporated into questionnaires as the primary source of data. The data was collated and analysed, using mean item score ranking, percentages and descriptive statistics.
Data source locationCovenant University, Ota, Nigeria
Data accessibilityThe article is in public repository http://eprints.covenantuniversity.edu.ng/
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