A Zero-Waste Multi-Criteria Decision-Support Model for the Iron and Steel Industry in Developing Countries: A Case Study
Abstract
:1. Introduction
2. Materials and Methods
2.1. The i-ZEWATA Model and Methodology
2.1.1. Step 1: Determining the Status Quo of Industrial Waste Management
2.1.2. Step 2a and b: Industrial Waste Management System and Valorization Components Prioritization
Method: AHP
- Identifying criteria and sub-criteria for AHP input from the VSM outcome;
- Weighing criteria;
- Comparing criteria at the same level;
- Completing the pairwise comparison matrix;
- Checking consistencies;
- Calculating local priorities;
- Synthesizing the waste management system components; and
- Constructing a decision matrix and interpreting the results.
- The decision-support problem, namely determining waste management system components, was broken down and structured as a hierarchy. The input information was obtained from the completed VSM method analysis. The lower levels were set as the intangible and or tangible criteria, and sub-criteria derived from the VSM contributed to achieving the primary goal. All defined criteria and weights were simulated in the form of a (where n is the number of the weights) comparing the criteria and weights with each other (Equations (2) and (3)).
- 2.
- The weights of the criteria were obtained.
- 3.
- Calculating the consistency index (CI).
- 4.
- Finding the weight vector for each pairwise comparison matrix
- 5.
- By using the priorities of the bottom-level criteria and alternatives, the decision matrix was developed.
- 6.
- The AHP method (weighted sum model) was used to aggregate the alternative priorities and criteria’ priorities.
2.1.3. Step 3a: Development of a ZW Multi-Criteria Decision-Support Model
- Developing alternative priorities for each criterion Step 2a and 2b;
- Comparing alternatives for each bottom level criterion;
- Completing the pairwise comparison matrix;
- Checking the consistency;
- Calculating the alternative priorities for each bottom-level criterion; and
- Compiling the decision matrix.
2.1.4. Step 3b: Development of a ZW Multi-Criteria Decision-Support Model
- Identifying elements and clusters from the decision matrix in AHP;
- Identifying relationships;
- Identifying elements influencing the pairwise comparisons;
- Identifying clusters influencing pairwise comparisons;
- Compiling the relationship matrix;
- Compiling the unweighted supermatrix;
- Developing the cluster supermatrix;
- Developing the weighted supermatrix;
- Normalizing the supermatrix;
- Limiting the supermatrix and priorities;
- Interpreting and developing the ZW model.
- where , = 1, …, G and I, j = 1, …, N:
- = 0 indicates that the element has no influence on the element , and in the graphical model, there is not an edge between and .
- = 1 indicates that the element has some influence on the element , and in the graphical model, there is an arc from to .
- = 0 indicate that any element of cluster has influence on any element of cluster .
- = 1 indicate that some element of cluster has influence on some (at least one) elements of cluster .
- = 1 indicated that the element I, which belongs to cluster is the unique element of cluster which influences element j, which belongs to cluster (Equation (12))
- = 0, indicated that any element of cluster influences any element of cluster .
- is the weighted influence of element I, which belongs to cluster on element j, which belongs to .
- The un-weighted supermatrix or initial supermatrix contained all the eigenvectors that were derived from the pairwise comparison matrices of the model;
- The weighted stochastic supermatrix was obtained by multiplying the values in un-weighted supermatrix by each cluster’s weight. The priority level assigned to each cluster was considered;
- The limit weighted final supermatrix was obtained where the supermatrix was raised to a limiting power to obtain and converge a stable set of weights that represented the final priority vector.
3. Case Study Results and Discussion
3.1. Step 1: Baseline Assessment and Industrial ZW—Value Stream Waste Flow Mapping
3.2. Step 2a: Iron and Steel Waste Management System Component Prioritization (Database iZEWATA 0203)
3.3. Step 2b: Iron and Steel Waste Valorization System Component Prioritization (Database iZEWATA 0203)
3.4. Step 3: Iron and Steel ZW Management Model Development (Database iZEWATA 0203)
4. A ZW Multi-Criteria Decision-Making Model for the Iron and Steel Industry
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Subprocess Performance Actual Measurements (Monthly) | Containers (Cn) | Handling (Internal) | Transportation (External) | Treatment (External) | ||||
---|---|---|---|---|---|---|---|---|
Service Efficiency | # (Cn)/W (waste in bins) | 60 Cn/110 tons | Person-h/W | 880/110 tons | # (trucks)/W (waste transported) | 5/110 | W (recycled)/W (sum)(sum) | 349 tons/872 tons |
0.55 Cn available/ton of generated general waste | 8 person-hours required to manage one ton of generated general waste | 0.05 trucks available/ton of general waste generated | 0.4 tons are recycled for every ton of general waste generated | |||||
Cost Efficiency (Unit of Cost expressed in USD) | Cn /W (waste in bins) | 11,905/110 tons | C (Person)/W | 14,881/110 tons | C (transport+ disposal)/W (waste transported) | 15,739/110 tons | C (treatment − disposal & transport)/W (sum) | 15,739/110 tons |
Costs USD 108 to maintain Cn/ton of general waste | USD 135 as labor costs to manage one ton of general waste generated | To transport and treat one ton of general waste, the cost is USD 143 | ||||||
Overall Effectiveness (Unit of Cost expressed in USD) | Cn /P | 11,905/57,219 tons | C (Person − h)/P | 14,881/57,219 | C (trucks)/W (waste transported) | 15,739/110 tons | C (treatment)/P | 15,739/57,219 |
Costs USD 0.21 to maintain Cn/ton of produced crude steel | The labor costs are USD 0.26 per ton of crude steel produced | USD 143 as treatment and transport costs/ton of generated general waste | Costs of USD 0.28/ton of crude steel to transport and treat one ton of general waste |
Subprocess Performance Actual Measurements Per Month | Disposal Facilities (On-Site) | Handling (Internal) | Treatment (Internal) | |||
---|---|---|---|---|---|---|
Service Efficiency | # (disposal facilities)/W (waste generated) | 46 facilities /125,839 tons | Person-h/W | 720/125,839 | W (recycled)/W (sum) (sum) | 27,439 tons/125,839 tons |
0.0004 on-site facilities available/per ton of process waste generated | For each ton of waste generated, 0.006 person-hours are available to deal with such waste | For each one ton of waste generated, 0.22 tons of waste is recycled or reused | ||||
Cost Efficiency (Unit of Cost expressed in USD) | C (disposal facilities)/W (waste generated) | 77,958/125,839 tons | C (person)/W | 14,881/125,839 tons | C (treatment − disposal & transport)/W (sum) | 77,958/125,839 tons |
Costs USD 0.62/ton to manage process waste | Costs USD 0.12 (as labor costs)/ton of process waste | Costs USD 0.62/ton to manage process waste | ||||
Overall Effectiveness (Unit of Cost expressed in USD) | C (disposal facilities)/P | 77,958/57,219 tons | C (person − h)/P | 14,881/57,219 | C (treatment)/P | 77,958/57,219 |
Costs USD 1.36/ton of crude steel produced to manage and dispose of waste | Costs USD 0.26 (as labor costs)/ton of crude steel produced | Costs USD 1.36/ton of crude steel produced to manage, treat, and dispose of waste |
Criteria | Weights | Priority |
---|---|---|
Company Culture | 0.20503 | 1 |
Cost of Iron and Steel Waste | 0.08832 | 7 |
Environmental Externalities | 0.09703 | 6 |
Plant Divisions | 0.03755 | 8 |
Regulatory | 0.17846 | 2 |
Iron and Steel Waste Data System | 0.15698 | 3 |
Iron and Steel Waste Infrastructure | 0.1086 | 5 |
Iron and Steel Waste Streams | 0.12803 | 4 |
Criteria | Weights | Priority |
---|---|---|
Contaminant Management | 0.17227 | 2 |
Management Practices | 0.26178 | 1 |
Disposal and Treatment Methods | 0.05726 | 7 |
Regulatory Framework | 0.13370 | 5 |
Site Remediation | 0.07941 | 6 |
Sustainability and Circular Economy Practices | 0.14013 | 4 |
Waste Treatment Cost | 0.15545 | 3 |
Environmental Indicators | Waste Cost | Waste Management | Company Culture | Operator Safety | Compliance |
---|---|---|---|---|---|
Total water consumption (ton/unit) | General waste management (USD/ton) | Waste diverted from landfill (ton) | Waste training (n staff/total staff) | Injury rate (injuries/unit) | Compliance with site regulations (%) |
The ratio of use of waste material vs. virgin and non-waste as input materials (% or ton) | Process waste management (USD/ton) | Waste internalized (ton) | Community and internal complaints (number) | ||
Waste internalized (ton) | Labour cost (USD/unit) | Waste externalized (ton) | CEO waste system interaction or initiatives (number/total CIWM initiatives on facility-level) | ||
Waste discharged (ton) | Waste treatment cost (USD/ton) | General waste generation (ton) | |||
Green House Gas emissions (ton CO2 eq/ton) | Waste exchange income (USD/ton and total USD income received) | Process waste generation (ton) | |||
Dust levels (mg/m3) | Waste internalization and externalization costs (USD/ton) | Waste recycled (ton) | |||
Soil remediation (m3) | Legal compliance and penalty costs (USD) | Waste Facility Airspace remaining (m3) | |||
Total waste disposed to landfill (on and off-site intons) | |||||
Bioremediation (ton or m3) | Waste discharge charges (USD/m3) | Total amount of waste valorized (ton) |
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Schoeman, Y.; Oberholster, P.; Somerset, V. A Zero-Waste Multi-Criteria Decision-Support Model for the Iron and Steel Industry in Developing Countries: A Case Study. Sustainability 2021, 13, 2832. https://doi.org/10.3390/su13052832
Schoeman Y, Oberholster P, Somerset V. A Zero-Waste Multi-Criteria Decision-Support Model for the Iron and Steel Industry in Developing Countries: A Case Study. Sustainability. 2021; 13(5):2832. https://doi.org/10.3390/su13052832
Chicago/Turabian StyleSchoeman, Yolandi, Paul Oberholster, and Vernon Somerset. 2021. "A Zero-Waste Multi-Criteria Decision-Support Model for the Iron and Steel Industry in Developing Countries: A Case Study" Sustainability 13, no. 5: 2832. https://doi.org/10.3390/su13052832
APA StyleSchoeman, Y., Oberholster, P., & Somerset, V. (2021). A Zero-Waste Multi-Criteria Decision-Support Model for the Iron and Steel Industry in Developing Countries: A Case Study. Sustainability, 13(5), 2832. https://doi.org/10.3390/su13052832