The Impact of Uncertainty Factors on the Decision-Making Process of Logistics Management
Abstract
:1. Introduction
2. Literature Review
3. Analysis of the Correlation between Variable Factors and Decisions in Logistics Management
3.1. Methodology
3.2. Analysis and Result
- (D2) Slow down the logistic process in anticipation of problems;
- (D7) Increase resource consumption to keep up the pace of the logistics process;
- (D10) Reduce the pace of the logistics process and increase resource consumption;
- (D11) Increase the pace of the logistics process and reduce resource consumption.
- (D1) Stopping the logistics process and starting after the problems have ended;
- (D2) Slowing down the logistic process in anticipation of problems;
- (D3) Absorbing the occurring changes and reacting in accordance with the change of pace and direction in real time;
- (D4) Not reacting—running a logistics process;
- (D7) Increasing resource consumption to keep up the pace of the logistics process;
- (D10) Reducing the pace of the logistics process and increasing resource consumption;
- (D11) Increasing the pace of the logistics process and reducing resource consumption;
- (D12) Reducing the pace of the logistics process and reducing resource consumption.
- (D1) Stop the logistics process and start after the problems have ended;
- (D10) Reduce the pace of the logistics process and increase resource consumption;
- (D11) Increase the pace of the logistics process and reduce resource consumption.
- (D1) Stop the logistics process and start after the problems have ended;
- (D3) Absorb the occurring changes and react in accordance with the change of pace and direction in real time;
- (D4) Do not react—run a logistics process;
- (D7) Increase resource consumption to keep up the pace of the logistics process;
- (D11) Increase the pace of the logistics process and reduce resource consumption;
- (D12) Reduce the pace of the logistics process and reduce resource consumption.
4. Discussion
5. Conclusions
Funding
Conflicts of Interest
References
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Factor | Participation in the Sample | Confidence Interval |
---|---|---|
External factors of unknown origin, the occurrence of which was unpredictable | 57.21% | |
Internal factors of unknown origin, the occurrence of which was unpredictable | 17.45% | |
External factors of unknown origin, the occurrence of which was partially predictable | 16.32% | |
Internal factors of unknown origin, the occurrence of which was partially predictable | 9.02% |
No. | Factors Shaping the Conditions of Uncertainty | Designation |
---|---|---|
1. | External factors of unknown origin, the occurrence of which was unpredictable | F1 |
2. | Internal factors of unknown origin, the occurrence of which was unpredictable | F2 |
3. | External factors of unknown origin, the occurrence of which was partially predictable | F3 |
4. | Internal factors of unknown origin, the occurrence of which was partially predictable | F4 |
No. | Decision | Designation |
---|---|---|
1. | Stop the logistics process and start after the problems have ended | D1 |
2. | Slow down the logistic process in anticipation of problems | D2 |
3. | Absorb the occurring changes and react in accordance with the change of pace and direction in real time | D3 |
4. | Do not react—run a logistics process | D4 |
5. | Run a logistics process in a completely hermetic way (not requiring a change) | D5 |
6. | Respond ex-post (after the occurrence of effects), eliminate the effects | D6 |
7. | Increase resource consumption to keep up the pace of the logistics process | D7 |
8. | Reduce resource consumption to keep up the pace of the logistics process | D8 |
9. | Increase the pace of the logistics process and increase resource consumption | D9 |
10. | Reduce the pace of the logistics process and increase resource consumption | D10 |
11. | Increase the pace of the logistics process and reduce resource consumption | D11 |
12. | Reduce the pace of the logistics process and reduce resource consumption | D12 |
Factors Shaping the Conditions of Uncertainty | Decision in the Field of Logistics Management | Correlation Coefficient | Strength of Correlation |
---|---|---|---|
F1 | D1 | 0.7463 | very high |
D2 | 0.6301 | high | |
D3 | 0.6562 | high | |
D4 | 0.5014 | high | |
D5 | 0.6236 | high | |
D6 | 0.6441 | high | |
D7 | 0.7349 | very high | |
D8 | 0.5361 | high | |
D9 | 0.5504 | high | |
D10 | 0.8112 | very high | |
D11 | 0.7281 | very high | |
D12 | 0.6107 | high | |
F2 | D1 | 0.6538 | high |
D2 | 0.6101 | high | |
D3 | 0.5018 | high | |
D4 | 0.5352 | high | |
D5 | 0.4522 | average | |
D6 | 0.4537 | average | |
D7 | 0.6145 | high | |
D8 | 0.3872 | average | |
D9 | 0.3539 | average | |
D10 | 0.6544 | high | |
D11 | 0.6642 | high | |
D12 | 0.6301 | high | |
F3 | D1 | 0.5101 | high |
D2 | 0.3781 | average | |
D3 | 0.3289 | average | |
D4 | 0.3818 | average | |
D5 | 0.3294 | average | |
D6 | 0.334 | average | |
D7 | 0.4741 | average | |
D8 | 0.2498 | weak | |
D9 | 0.2564 | weak | |
D10 | 0.569 | high | |
D11 | 0.5103 | high | |
D12 | 0.3747 | average | |
F4 | D1 | 0.6627 | high |
D2 | 0.5191 | high | |
D3 | 0.506 | high | |
D4 | 0.5498 | high | |
D5 | 0.4601 | average | |
D6 | 0.4612 | average | |
D7 | 0.6397 | high | |
D8 | 0.3785 | average | |
D9 | 0.3897 | average | |
D10 | 0.3852 | average | |
D11 | 0.6637 | high | |
D12 | 0.6504 | high |
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Marzantowicz, Ł. The Impact of Uncertainty Factors on the Decision-Making Process of Logistics Management. Processes 2020, 8, 512. https://doi.org/10.3390/pr8050512
Marzantowicz Ł. The Impact of Uncertainty Factors on the Decision-Making Process of Logistics Management. Processes. 2020; 8(5):512. https://doi.org/10.3390/pr8050512
Chicago/Turabian StyleMarzantowicz, Łukasz. 2020. "The Impact of Uncertainty Factors on the Decision-Making Process of Logistics Management" Processes 8, no. 5: 512. https://doi.org/10.3390/pr8050512
APA StyleMarzantowicz, Ł. (2020). The Impact of Uncertainty Factors on the Decision-Making Process of Logistics Management. Processes, 8(5), 512. https://doi.org/10.3390/pr8050512