Construction Site Layout Planning Using a Simulation-Based Decision Support Tool
Abstract
:1. Introduction
2. Literature Review
3. Methodology
3.1. Layout Visualization Components
3.1.1. Site Element
- Size of the plane area, which is specified by the width (i.e., the length in the x direction) and the height (i.e., the length in the y direction);
- The boundary of the site, which is specified by the coordinates of the site boundary vertices.
3.1.2. Facility Element
- Name, which is a unique identification assigned to the facility for recognition in the simulation model;
- Size, which is determined by the width (i.e., the length in the x direction) denoted by W and the height (i.e., the length in the y direction) denoted by H, once the facility edges are parallel to the x and y axes;
- Location, which is determined by the x and y coordinates of the center of the facility;
- Orientation, which is determined by the angle that the facility is rotated about the x axis;
- Facility type, which can be either material-dependent or material-independent. This property identifies whether any material is to be placed in the facility. If so, it is material-dependent. Otherwise, it is material-independent. For the material-dependent facility, the following properties are considered:
- ○
- Capacity, which is identified as the maximum unit of materials that can be placed in the facility. For material-dependent facilities, capacity is an important parameter that can affect the productivity and project cost. For instance, materials cannot be unloaded in a facility in excess of its capacity, which entails waiting time for unloading tasks and resultant workflow interruption;
- ○
- Material type, which identifies the type of material that can be placed in the facility;
- ○
- Available material, which is used to account for the amount of each material type existing in the facility at any time as the simulation model is run. The initial amount of material (i.e., the amount available in the facility at the beginning of the simulation run) can also be defined as an input.
3.1.3. Material Element
3.1.4. Constraint Element
- Being inside the site boundaries, which entails that all facilities must be positioned inside the site boundary;
- Non-overlapping between facilities, which entails that no facility can overlap with another one.
3.2. Simulation Components
- By the location of the facilities, which affects the transportation distance/time between facilities;
- By the capacity of the material-dependent facilities, which can affect the workflow when materials are to be unloaded in the facility and sufficient space is not available in the facility.
3.2.1. Transportation Task Element
- Velocity (V), which determines the velocity of the means of transportation;
- Source facility, which determines the facility from which the transportation starts;
- Destination facility, which determines the facility at which the transportation ends;
- Resource, which determines the resource(s) or means of transportation deployed for executing the task if the user intends to model them;
- Method of distance measurement, which determines the method used for measuring the distance between the specified facilities. The user can select between two equations, perpendicular and Euclidean distance functions, which are calculated as Equations (1) and (2), respectively:
3.2.2. Loading/Unloading Task Element
- Type of task, i.e., either loading or unloading;
- Duration, which determines the duration of the task;
- Facility name, which determines the facility in which loading and unloading happen;
- Material type, which determines which types of material are loaded from or unloaded in the facility;
- Material quantity, which determines the quantity of materials loaded from or unloaded to the specified facility;
- Resource, which determines the resource, such as equipment, deployed for executing the task if the user intends to model it.
3.2.3. Programming Codes
4. Case Study
5. Results and Discussion
6. Verification and Validation
7. Conclusions
- Identifying the most efficient plan, including site layout, material delivery plans, and site logistics;
- Eliminating or minimizing wastes such as on-site transportation and movement, material storage, and waiting time for the material arrival;
- Reducing the project costs by reducing on-site logistics costs, material storage costs, and some potential delays.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Appendix A.1. Facility Element
Appendix A.2. Constraint Element
- To be considered inside the boundary, a given facility must satisfy each of the following conditions:
- ○
- No edge of the facility intersects with any edges of the boundaries;
- ○
- At least one point of the facility (e.g., its center or reference point) is inside the boundary.
- For facilities to be considered non-overlapping, each of the following conditions must be satisfied:
- ○
- No edge of the facility intersects with any edges of other facilities;
- ○
- At least one point of the facility (e.g., its center point) is not inside another facility.
- For inclusion/exclusion of a facility in/from Area A, each of the following conditions must be satisfied:
- ○
- No edge of the facility intersects with the edges of the area;
- ○
- At least one point of the facility (e.g., its center) is inside/outside the area.
- For inclusion/exclusion of a facility in/from Area A, each of the following conditions must be satisfied:
- ○
- No edge of the facility intersects with any edges of the area;
- ○
- At least one point of the facility (e.g., its center point) is inside/outside the area.
- Minimum or maximum distance (Dmin/max) between two points of Facility #j and #k using the Euclidean method:
- Minimum or maximum distance from the edges of Facility #j to Facilit #k:
- ○
- For the minimum distance, an imaginary area, the center and orientation of which are the same as those of Facility #j and the dimensions of which are Wj + 2 × Dmin and Hj + 2 × Dmin, is assumed, and Facility #k should be excluded from this area, where Wj and Hj are the width and height of Facility #j;
- ○
- For the maximum distance, an imaginary area, the center and orientation of which are the same as those of Facility #j and the dimensions of which are Wj + 2 × Dmax and Hj + 2 × Dmax, is assumed, and Facility #k should be included in this area.
Appendix A.3. Programming Codes
Property Name | Definition of the Property |
---|---|
Angle | Rotation angle of the facility |
CenterLocation.X | X coordinate of the center of the facility |
CenterLocation.Y | Y coordinate of the center of the facility |
ElementSize.Width | The length of the facility along the x axis when the rotation is 0° |
ElementSize.Height | The length of the facility along the y axis when the rotation is 0° |
Visual Basic: Materials (0).AvailableMaterial C#: Materials (0).AvailableMaterial | The available material units for a specific material listed as the first material in the facility at the current time. For the second and third and so on, 0 is replaced by 1, 2, and so on, respectively |
Visual Basic: Materials (0).InitialMaterial C#: Materials (0).InitialMaterial | The initial available material units for a specific material listed as the first material in the facility at beginning of the model. For the second and third and so on, 0 is replaced by 1, 2, and so on, respectively |
Visual Basic: Materials (0).MaterialCapacity C#: Materials (0).MaterialCapacity | The capacity of the facility for a specific material listed as the first material in the facility. For the second and third and so on, 0 is replaced by 1, 2, and so on, respectively. |
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Input | Value |
---|---|
Forklift velocity | Triangular a (3000, 3500, 4000) (m/h) |
Loading 1 ton of material from storage using forklift | Uniform b (0.08, 0.12) h |
Unloading 1 ton of material in the offloading area by forklift | Uniform (0.05, 0.1) h |
Loading 1 ton of material from the offloading area using crane | Uniform (0.08, 0.15) h |
Erection of 1 ton of Material 1 using crane | Triangular (0.3, 0.4, 0.45) h |
Erection of 1 ton of Material 2 using crane | Triangular (0.15, 0.2, 0.25) h |
Worker travel velocity | Uniform (2000, 2500) (m/h) |
Construction operation costs | $1930/h |
Mobilization, maintenance, and demobilization of the storage with size of 30 m × 10 m | $8000 |
Mobilization, maintenance, and demobilization of storage facility with dimensions of 15 m × 10 m | $4000 |
Transportation cost of materials to off-site storage | $500 per material delivery |
Rent cost of off-site storage | $30 per ton of material per day |
Working hours excluding the lunch break | 8 h per day |
Facility | Facility Type | Facility Size (Capacity) a | |
---|---|---|---|
Layout #1 | Layout #2 | ||
Structure | N/A | 10 m × 12 m | 10 m × 12 m |
Crane | N/A | 8 m × 8 m | 8 m × 8 m |
Offloading Area | Material-dependent | 5 m × 10 m (1 ton) | 5 m × 10 m (1 ton) |
Office | N/A | 20 m × 8 m | 20 m × 8 m |
Tool Room | N/A | 10 m × 7 m | 10 m × 7 m |
Parking | N/A | 20 m × 10 m | 20 m ×10 m |
Storage of Material 1 | Material-dependent | 15 m × 10 m (20 tons) | 30 m × 10 m (40 tons) |
Storage of Material 2 | Material-dependent | 30 m × 10 m (40 tons) | 15 m × 10 m (20 tons) |
Constraint Description | Defined Constraints |
---|---|
Parking must be close to the site entrance | Including parking in the parking area |
Parking must be close to the security gate | Maximum distance between centers of parking and security gate less than 20 m |
No facilities must block the road | Excluding all facilities from the road area |
Office must be close to parking | Maximum distance between centers of office and parking less than 30 m |
Cranes must have access to the offloading area | Maximum distance between center of crane and farthest point of the offloading area must be less than 20 m |
Crane 1 must have access to the structure | Maximum distance between centers of crane and farthest point of the structure must be less than 20 m |
All facilities except for the offloading area and structure must be out of the cranes’ zone | Minimum distance between the center of the cranes and the closest point of all facilities except for the offloading area and structure must be greater than 20 m |
Layout | Layout Costs ($) | Operation Cost ($) | Off-Site Storage Cost for Material 1 ($) | Off-Site Storage Cost for Material 2 ($) | Total Costs ($) |
---|---|---|---|---|---|
Layout (a) | 12,000 | 101,924 | 3789 | 3495 | 121,208 |
Layout (b) | 12,000 | 99,753 | 0 | 7126 | 118,879 |
Scenario | Layout Costs ($) | Operation Cost ($) | Off-Site Storage Cost for Material 1 ($) | Off-Site Storage Cost for Material 2 ($) | Total Costs ($) |
---|---|---|---|---|---|
Base scenario | 12,000 | 99,753 | 0 | 7126 | 118,879 |
Modified scenario (postponing Material 2 delivery for one day) | 12,000 | 100,851 | 0 | 3386 | 116,237 |
Test Description | Purpose | Summary of the Test Process |
---|---|---|
Dynamic testing, in which the computer program is executed under different conditions and the obtained values are used to determine if the computer program and its implementations are correct | Validation of the constraint element | Using the visualization feature of the tool, satisfaction of the hard constraints in the site layout component was tested for different conditions, and the results were verified as expected. |
Comparison to other models, in which the results of the model being validated are compared to the results of other models | Validation of the simulation component | The developed simulation model was tested by comparing its results to the results of the model created using GPT. The results obtained from two models were found to be identical. |
Traces, in which the behaviour of different types of specific entities in the model are traced through the model to determine if the model’s logic is correct | The test is performed using a trace window of the simulation tool, which can print different information such as the time and duration of the loading/unloading and transportation tasks. This information was analyzed and compared to the results from hand calculation of the model to verify if the logic of the model is correct. | |
Extreme condition tests, in which the model structure and output are tested to be plausible for any extreme and unlikely combination of levels of factors in the system | The model is tested for extreme conditions such as having zero capacity for storage, or having no material delivery in the simulation model. The simulation outputs were found to be plausible for these values of inputs, as they result in zero progress. | |
Parameter variability—sensitivity analysis, in which changing the values of the input of a model should have the same effect in the model as in the real system | This test was performed by changing different variables such as material delivery and probability of material delivery delay in the simulation model, as presented in the case study. These impacts on project cost, and the trend of changes in the model, were found to be as expected in the real system. | |
Operational graphics, in which values of various performance measures are shown graphically as the model runs through time | This test was undertaken using graphs produced in the simulation model for the available material in the storages. The combination of this test with the test comparing the results with those of GPT was used to verify the outputs of the model. |
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RazaviAlavi, S.; AbouRizk, S. Construction Site Layout Planning Using a Simulation-Based Decision Support Tool. Logistics 2021, 5, 65. https://doi.org/10.3390/logistics5040065
RazaviAlavi S, AbouRizk S. Construction Site Layout Planning Using a Simulation-Based Decision Support Tool. Logistics. 2021; 5(4):65. https://doi.org/10.3390/logistics5040065
Chicago/Turabian StyleRazaviAlavi, SeyedReza, and Simaan AbouRizk. 2021. "Construction Site Layout Planning Using a Simulation-Based Decision Support Tool" Logistics 5, no. 4: 65. https://doi.org/10.3390/logistics5040065
APA StyleRazaviAlavi, S., & AbouRizk, S. (2021). Construction Site Layout Planning Using a Simulation-Based Decision Support Tool. Logistics, 5(4), 65. https://doi.org/10.3390/logistics5040065