A Multi-Criteria Assessment of Manufacturing Cell Performance Using the AHP Method
Abstract
:1. Introduction and Problem Description
2. Literature Background
3. Methodological Framework
3.1. Indicators Used as Criteria to Assess Alternative CM Designs
3.1.1. Production Line Balancing Rate
- tj stands for standard work time of the j-th job elements;
- n represents the number of the work elements;
- m represents the number of total lines in the production system;
- Ti represents the work time in the production line(s) (PL(s));
- max(Ti) represents the biggest line operating time.
3.1.2. Operational Complexity Indicators
- Process Complexity Indicator
- pijk stands for the probability that part j is processed due to operation k by individual machine i according to scheduling order;
- O is the number of operations according to parts production;
- P is the number of parts produced in the manufacturing process;
- M is the number of all machines of all types in the manufacturing process.
- Balanced Complexity Indicator
- MCIi(max) represents the first N-max complexity values;
- MCIi(min) represents the first N-min complexity values;
- N represents the number of max and min machine complexity values.
3.1.3. Makespan Indicators
3.2. Description of AHP Method
4. A Practical Example
4.1. Description of Manufacturing Cell Designs Alternatives
4.2. Application of the Performance Indicators on Cell Designs
4.3. Assessment of Manufacturing Cell Designs Using AHP Method
5. Conclusions
- According to both complexity indicators, the three-cell solutions are less complex than the two-cell solutions. The lower complexity of the three-cell designs against the two-cell designs can be comprehended in a way that the scheduling of cell designs with a higher number of cells is less complicated than in the case with a smaller number of cells. This statement comes from the fact the probability that parts are produced on given machines is higher than in the case of the CM design with a smaller number of cells;
- Based on the makespan results, the three-cell solutions better satisfied the minimization of the total time needed to finish all the jobs than the two-cell solutions;
- From the viewpoint of the PLB indicator, the two-cell solutions offer better balancing of machines than the three-cell solutions.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
Notations
PLB | Production line balancing rate, in % |
PCI | Process complexity indicator, in bits |
BCI | Balanced complexity indicator, in bits |
tj | Standard work time of the j-th job elements |
n | Number of the work elements |
m | Number of total lines in production system |
Ti | Work time in the production line(s) (PL(s)) |
max(Ti) | Biggest line operating time |
pijk | Probability that part j is processed due to operation k by individual machine i according to scheduling order |
O | Number of operations according to parts production |
P | Number of parts produced in manufacturing process |
M | Number of all machines of all types in manufacturing process |
MCIi(max) | First N-max complexity values |
MCIi(min) | First N-min complexity values |
N | Number of max and min machine complexity values |
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Cell Designs | Makespan (min) | OPF Makespan (min) | PCI (bits) | BCI (bits) | PLB (%) |
---|---|---|---|---|---|
1 | 5926 | 3610 | 47.8 | 2.1 | 92.4 * |
2 | 5014 | 3108 | 50.7 | 2.24 | 78.7 |
3 | 5049 | 3079 | 53.9 | 2.45 | 78.2 |
4 | 5438 | 3194 | 44.8 * | 1.62 * | 85.6 |
5 | 4650 * | 2927 * | 47.1 | 2.14 | 50.7 |
Scale | Numerical Rating | Explanation |
---|---|---|
Equal importance | 1 | Two alternatives contribute equally to the objective (0% difference) |
Moderate importance | 3 | One alternative is slightly favored over another (no more than 25% difference) |
Strong importance | 5 | One alternative is strongly favored over another (25–50% difference) |
Very strong importance | 7 | One alternative is very strongly favored over another (50–75% difference) |
Absolute importance | 9 | One alternative is absolutely favored over another (more than 75% difference) |
Intermediate values | 2, 4, 6, 8 | When compromise is needed between two alternatives |
Cell Designs | PCI | BCI | Makespan | OPF Makespan | PLB |
---|---|---|---|---|---|
1 | 0.15877167 | 0.175165699 | 0.029623447 | 0.027892418 | 0.476996214 |
2 | 0.072721123 | 0.085558568 | 0.221688177 | 0.148542569 | 0.148542569 |
3 | 0.029623447 | 0.03317987 | 0.15877167 | 0.245125107 | 0.101443692 |
4 | 0.517195582 | 0.580746424 | 0.072721123 | 0.101443692 | 0.245125107 |
5 | 0.221688177 | 0.125349438 | 0.517195582 | 0.476996214 | 0.027892418 |
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Soltysova, Z.; Modrak, V.; Nazarejova, J. A Multi-Criteria Assessment of Manufacturing Cell Performance Using the AHP Method. Appl. Sci. 2022, 12, 854. https://doi.org/10.3390/app12020854
Soltysova Z, Modrak V, Nazarejova J. A Multi-Criteria Assessment of Manufacturing Cell Performance Using the AHP Method. Applied Sciences. 2022; 12(2):854. https://doi.org/10.3390/app12020854
Chicago/Turabian StyleSoltysova, Zuzana, Vladimir Modrak, and Julia Nazarejova. 2022. "A Multi-Criteria Assessment of Manufacturing Cell Performance Using the AHP Method" Applied Sciences 12, no. 2: 854. https://doi.org/10.3390/app12020854
APA StyleSoltysova, Z., Modrak, V., & Nazarejova, J. (2022). A Multi-Criteria Assessment of Manufacturing Cell Performance Using the AHP Method. Applied Sciences, 12(2), 854. https://doi.org/10.3390/app12020854