Modeling Profitability-Influencing Risk Factors for Construction Projects: A System Dynamics Approach
Abstract
:1. Introduction and Background
- (1)
- To explore PIRFs and the corresponding issues in construction projects;
- (2)
- To establish and assess causative interrelations and interdependencies between PIRFs through ST;
- (3)
- To evaluate the integrated impacts on PIRC through SD modeling and simulation.
2. Literature Review
2.1. Systems Thinking and Complexity
2.2. System Dynamics
3. Methodology
3.1. Desk Study Phase
Sr. No. | Profitability-Influencing Risk Categories (PIRC) | Significant Issues Faced in Construction Profitability | References |
---|---|---|---|
1 | Supply chain | Material supply disruptions | [50] |
Reduction in supply chain performance | [55] | ||
Delays in project delivery | [51] | ||
2 | Cash flow | Poor cost and financial controls | [56] |
Material cost rises and disturbs forecasted cash flow | [2] | ||
Slows down construction activities | [26] | ||
3 | Contingency | Project cost variation | [57] |
Improper utilization of contingencies | [47] | ||
Disturb construction planning | [58] | ||
4 | Project complexity | Obstacle increase complexity and reduces construction performance | [59] |
Contract issues | [14] | ||
Increase in expenses and decrease in profit | [12] |
3.2. Data Collection and Analysis Phase
3.3. Demographics of Survey Respondents
3.4. Systems Thinking and System Dynamics Modeling Phase
4. Results, Analyses, and Discussions
4.1. Impacts of Influencing Factors on Construction Profitability
4.2. Reinforcing Loop-R1 (Impacting Supply Chain-PIRC)
4.3. Reinforcing Loop-R2 (Impacting Cash Flow-PIRC)
4.4. Reinforcing Loop-R3 (Impacting Contingency-PIRC)
4.5. Reinforcing Loop-R4 (Impacting Project Complexity-PIRC)
4.6. Balancing Loop-B1 (Impacting Project Complexity-PIRC)
4.7. Balancing Loop-B2 (Impacting Project Complexity-PIRC)
4.8. Loop Analysis and Validation
4.9. System Dynamic Modeling and Simulations
4.10. Discussion on SD Simulation
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Sr. No. | Significant Causative Impacting Factors of Construction Profitability | References |
---|---|---|
1 | Additional work and rework due to faulty execution | [40] |
2 | Changes in specifications | [41] |
3 | Communication issues among stakeholders | [1] |
4 | The competitive bidding process causes competitive pressure | [42] |
5 | Contract issues in contract management | [12,43] |
6 | Complicated coordination and collaboration among contracting parties | [44] |
7 | Cost escalation | [26] |
8 | High degree of construction risk | [16] |
9 | Delays of activities on the critical path | [23] |
10 | Dependency on suppliers | [45] |
11 | Design errors and mistakes | [46] |
12 | Complication of contract attract different profitability levels | [47] |
13 | Ineffective control of the manpower and equipment resources | [48] |
14 | Inefficiency and ineffectiveness in activity duration and cost | [42] |
15 | Fluctuating exchange rate | [41] |
16 | Financial difficulties due to cash flow problems | [26] |
17 | Improper investigation of geotechnical and underground conditions | [26] |
18 | Inaccurate measurements and estimation | [42] |
19 | Inclement weather conditions | [41] |
20 | Incompetency of project team | [2] |
21 | Increase in project durations | [42] |
22 | Ineffective information sharing and use of information technology | [11] |
23 | Insufficient and poor technology | [49] |
24 | Fluctuating interest rate | [26] |
25 | Lack and shortage of funds and finances | [41] |
26 | Lack of material availability | [50] |
27 | Higher level of difficulty due to the degree of complexity | [47] |
28 | Material deliveries bottlenecks during supply | [41] |
29 | Material supply network risks | [49,51] |
30 | Payment issues (timely and delay payments) | [2,43] |
31 | Planning and schedule issues | [16] |
32 | Price fluctuations | [52] |
33 | Unsuitable resource delivery conditions during construction | [26] |
34 | The rising cost of materials due to market fluctuation | [42] |
35 | Rising inflation levels | [53] |
36 | Scope variations and scope changes | [2,43] |
37 | Poor site management and supervision | [47] |
38 | Interrupted supply chain process | [39] |
39 | Unexpected situations during project execution | [52] |
40 | Unstable market conditions (supply and demand, competition) | [12,43] |
Sr. No. | Description of Factor | Normalized Score | Cumulative Score | Rank |
---|---|---|---|---|
1 | Rising cost of material due to market fluctuation | 0.0662 | 0.0662 | 1 |
2 | Interrupted supply chain process | 0.0513 | 0.1175 | 2 |
3 | Ineffective control of the manpower and equipment resources | 0.0508 | 0.1683 | 3 |
4 | Payment issues (timely and delay payments) | 0.0483 | 0.2166 | 4 |
5 | Planning and schedule issues | 0.0432 | 0.2598 | 5 |
6 | Financial difficulties due to cash flow problems | 0.0407 | 0.3005 | 6 |
7 | Unexpected situations during project execution | 0.0407 | 0.3411 | 7 |
8 | Increase in project durations | 0.0431 | 0.3842 | 8 |
9 | Scope variations and scope changes | 0.0381 | 0.4223 | 9 |
10 | Inclement weather conditions | 0.0355 | 0.4578 | 10 |
11 | Ineffective information sharing and use of information technology | 0.0355 | 0.4933 | 11 |
12 | Price fluctuations | 0.0340 | 0.5273 | 12 |
13 | Unstable market conditions (supply and demand, competition) | 0.0330 | 0.5603 | 13 |
14 | Poor site management and supervision | 0.0309 | 0.5912 | 14 |
15 | Lack of material availability | 0.0309 | 0.6222 | 15 |
PIRCs in Construction | PIRFs | Weighted RII Score |
---|---|---|
Supply chain | Price fluctuations | 0.907 |
Market conditions | 0.814 | |
The rising cost of material | 0.810 | |
Interrupted supply chain process | 0.814 | |
Contingency | Financial difficulties due to cash flow problems | 0.810 |
Unexpected situations during project execution | 0.806 | |
Project complexity | 0.802 | |
Cash flow | Financial difficulties due to cash flow problems | 0.895 |
Payment delay | 0.887 | |
Project complexity | Project durations | 0.875 |
Inclement weather conditions | 0.867 | |
Planning and schedule issues | 0.842 | |
Ineffective resources management | 0.846 | |
Scope variations and scope changes | 0.834 | |
Lack of material availability | 0.822 | |
Poor site management and supervision | 0.818 | |
Ineffective information sharing and use of information technology | 0.846 |
Loop ID | PIRC | Loop Prioritization | |||||
---|---|---|---|---|---|---|---|
Cash Flow | Project Complexity | Supply Chain | Contingency | Speed of Influence | Strength of Influence | Nature of Influence | |
R1 | √ | Fast | Strong | Reinforcing | |||
R2 | √ | Fast | Strong | Reinforcing | |||
R3 | √ | Fast | Strong | Reinforcing | |||
R4 | √ | Fast | Strong | Reinforcing | |||
B1 | √ | Fast | Strong | Self-balancing | |||
B2 | √ | Slow | Strong | Self-balancing |
S/n | Price Fluctuations Input Values (%) | System Dynamic Integrated Impacts on Profitability-Influencing Risk Category (PIRC) | |||
---|---|---|---|---|---|
Supply Chain (%) | Cash Flow (%) | Contingency (%) | Project Complexity (%) | ||
1 | 10 | 1.42 | 7.42 | 1.73 | 5.23 |
2 | 25 | 3.55 | 18.55 | 4.30 | 13.06 |
3 | 50 | 7.11 | 37.09 | 8.61 | 26.13 |
4 | 75 | 10.66 | 55.64 | 12.91 | 39.20 |
5 | 100 extreme conditions | 14.21 | 74.18 | 17.22 | 52.26 |
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Jahan, S.; Khan, K.I.A.; Thaheem, M.J.; Ullah, F.; Alqurashi, M.; Alsulami, B.T. Modeling Profitability-Influencing Risk Factors for Construction Projects: A System Dynamics Approach. Buildings 2022, 12, 701. https://doi.org/10.3390/buildings12060701
Jahan S, Khan KIA, Thaheem MJ, Ullah F, Alqurashi M, Alsulami BT. Modeling Profitability-Influencing Risk Factors for Construction Projects: A System Dynamics Approach. Buildings. 2022; 12(6):701. https://doi.org/10.3390/buildings12060701
Chicago/Turabian StyleJahan, Shah, Khurram Iqbal Ahmad Khan, Muhammad Jamaluddin Thaheem, Fahim Ullah, Muwaffaq Alqurashi, and Badr T. Alsulami. 2022. "Modeling Profitability-Influencing Risk Factors for Construction Projects: A System Dynamics Approach" Buildings 12, no. 6: 701. https://doi.org/10.3390/buildings12060701
APA StyleJahan, S., Khan, K. I. A., Thaheem, M. J., Ullah, F., Alqurashi, M., & Alsulami, B. T. (2022). Modeling Profitability-Influencing Risk Factors for Construction Projects: A System Dynamics Approach. Buildings, 12(6), 701. https://doi.org/10.3390/buildings12060701