Imperfect Multi-Stage Lean Manufacturing System with Rework under Fuzzy Demand
Abstract
:1. Introduction
2. Materials and Methods
2.1. Assumptions
- A single type of item is produced in an n-stage production system.
- Production runs are fairly consistent, i.e., system is assumed to be a lean manufacturing system where inventory behavior follows a similar trend in repetitive production cycles.
- Uncertain product demand is measured as a Triangular Fuzzy Number (TFN).
- Inline inspections provides effective results, determines the defective items immediately, and helps the managers to make immediate decisions over it. This model assumes that defective items are detected during the hundred percent inline inspection.
- In textile industries, defective items are generally reworked. This model assumes reworking of defective items at each production stage. The reworking process is considered as perfect and no item is scrapped.
- Defective rate is constant at each production stage, but it may vary from stage to stage.
- Setup time of each production stage is percent of the total time of that production stage.
- Transportation time and cost among the production stages is assumed to be negligible.
2.2. Model Formulation
3. Numerical Experiment and Results
3.1. Example 1
3.2. Example 2
3.3. Example 3
4. Discussion
- It is evident from the change in optimal cost function that the order processing cost () is the most sensitive factor than other parameters. One can observe that with each percentage increase in there exists almost similar amount of percentage increase in the system cost. For instance, regarding four-stage production system in Example 2, system cost increases by 24.17% by the increment of 25% in order of processing cost, and 48.34% increase in system cost is observed by a 50% rise in the order of processing cost.
- Next to the effect of order processing cost is the impact of production rate () on the system cost. It can be noted that the effect of production rate on the production system with higher number of stages is more than the system with a lower number of production stages. This illustrates the necessity of wisely adjusting production rate at each production stage to keep the system cost at its minimum value.
- An interesting observation from the sensitivity analysis of all the numerical examples reveal that the impact of setup cost () and the inventory holding cost () is same on the system cost for all the production systems with any number of stages. Thus, the decision makers have to make intelligent decision in putting efforts to reduce one of these costs first. Here arises the importance of lean philosophy, as Single Minute Exchange of Dyes (SMED) is the best possible solution for setup cost reduction. Therefore, managers should make efforts to apply SMED for setup cost reduction first, as it is much more beneficial than cutting down stock management equipment and inventory holding staff.
- Inspection cost () and defective proportion () bear trivial impact on the system cost that gradually varies as the system moves towards a higher number of stages.
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
Nomenclature
Indices | |
k | production stages (k = 1, 2, 3… (n − 1)) |
i | production stages (i = 1, 2, 3… n) |
Decision variable | |
Q | lot size (items) |
Parameters | |
number of production stages | |
production rate for production stage (items per unit time) | |
production rate for production stage (items per unit time, where ) | |
demand rate (fuzzy, and fulfilled at production stage) | |
defective proportion at production stage | |
defective proportion at production stage | |
cycle time of production stage (years) | |
cycle time of production stage (years) | |
time between production runs (total cycle time of -stages, years) | |
setup cost of production stage ($/setup) | |
inventory holding cost of finished items ($/item/year) | |
order processing cost at production stage ($/item/stage) | |
inspection cost at production stage ($/item/stage) | |
percentage setup time per stage | |
average inventory of finished items in the system | |
total cost of the production system ($ per unit time) |
Abbreviations
EOQ | Economic order quantity |
EPQ | Economic production quantity |
TFN | Triangular fuzzy number |
FMF | Fuzzy membership function |
SMED | Single minute exchange of dyes |
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Production Stages | Example 1 | Example 2 | Example 3 | |||
---|---|---|---|---|---|---|
Q* (items) | TC* ($) | Q* (items) | TC* ($) | Q* (items) | TC* ($) | |
Single-stage | 1664.93 | 159,552 | 1984.44 | 552,648 | 557.94 | 1,236,016 |
Two-stage | 2346.56 | 252,080 | 2795.5 | 905,477 | 786.79 | 2,051,893 |
Three-stage | 2867.7 | 316,070 | 3414.82 | 1,160,906 | 961.72 | 2,652,656 |
Four-stage | 3306.35 | 364,808 | 3935.67 | 1,360,773 | 1108.92 | 3,127,405 |
Five-stage | 3692.53 | 404,441 | 4393.98 | 1,525,950 | 1238.47 | 3,522,058 |
Parameters | Change (%) | Percentage Change in TC(Q)* | ||||
---|---|---|---|---|---|---|
Single-Stage Process | Two-Stage Process | Three-Stage Process | Four-Stage Process | Five-Stage Process | ||
−50 | −0.73 | −17.09 | −24.92 | −29.53 | −32.57 | |
−25 | −0.23 | −6.41 | −9.94 | −12.24 | −13.85 | |
+25 | +0.13 | +4.27 | +7.09 | +9.13 | +10.67 | |
+50 | +0.21 | +7.33 | +12.40 | +16.20 | +19.15 | |
−50 | −1.11 | −0.80 | −0.65 | −0.57 | −0.51 | |
−25 | −0.51 | −0.36 | −0.30 | −0.26 | −0.23 | |
+25 | +0.45 | +0.32 | +0.26 | +0.23 | +0.21 | |
+50 | +0.85 | +0.61 | +0.50 | +0.44 | +0.39 | |
−50 | −47.79 | −48.32 | −48.56 | −48.70 | −48.80 | |
−25 | −23.89 | −24.16 | −24.28 | −24.35 | −24.40 | |
+25 | +23.89 | +24.16 | +24.28 | +24.35 | +24.40 | |
+50 | +47.79 | +48.32 | +48.56 | +48.70 | +48.80 | |
−50 | −0.32 | −0.32 | −0.32 | −0.32 | −0.33 | |
−25 | −0.16 | −0.16 | −0.16 | −0.16 | −0.16 | |
+25 | +0.16 | +0.16 | +0.16 | +0.16 | +0.16 | |
+50 | +0.32 | +0.32 | +0.32 | +0.32 | +0.33 | |
−50 | −1.11 | −0.80 | −0.65 | −0.57 | −0.51 | |
−25 | −0.51 | −0.36 | −0.30 | −0.26 | −0.23 | |
+25 | +0.45 | +0.32 | +0.26 | +0.23 | +0.21 | |
+50 | +0.85 | +0.61 | +0.50 | +0.44 | +0.39 | |
−50 | −0.47 | −0.38 | −0.32 | −0.28 | −0.25 | |
−25 | −0.24 | −0.19 | −0.16 | −0.14 | −0.12 | |
+25 | +0.24 | +0.19 | +0.16 | +0.14 | +0.12 | |
+50 | +0.47 | +0.38 | +0.32 | +0.28 | +0.25 |
Parameters | Change (%) | Percentage Change in TC(Q)* | ||||
---|---|---|---|---|---|---|
Single-Stage Process | Two-Stage Process | Three-Stage Process | Four-Stage Process | Five-Stage Process | ||
−50 | −0.17 | −15.12 | −22.75 | −27.42 | −30.57 | |
−25 | −0.05 | −5.61 | −8.95 | −11.20 | −12.81 | |
+25 | +0.03 | +3.70 | +6.28 | +8.20 | +9.69 | |
+50 | +0.05 | +6.33 | +10.94 | +14.48 | +17.28 | |
−50 | −0.32 | −0.23 | −0.19 | −0.16 | −0.15 | |
−25 | −0.15 | −0.10 | −0.09 | −0.07 | −0.07 | |
+25 | +0.13 | +0.09 | +0.08 | +0.07 | +0.06 | |
+50 | +0.25 | +0.18 | +0.14 | +0.12 | +0.11 | |
−50 | −48.08 | −48.23 | −48.30 | −48.34 | −48.37 | |
−25 | −24.04 | −24.12 | −24.15 | −24.17 | −24.18 | |
+25 | +24.04 | +24.12 | +24.15 | +24.17 | +24.18 | |
+50 | +48.08 | +48.23 | +48.30 | +48.34 | +48.37 | |
−50 | −1.37 | −1.38 | −1.38 | −1.38 | −1.38 | |
−25 | −0.69 | −0.69 | −0.69 | −0.69 | −0.69 | |
+25 | +0.69 | +0.69 | +0.69 | +0.69 | +0.69 | |
+50 | +1.37 | +1.38 | +1.38 | +1.38 | +1.38 | |
−50 | −0.32 | −0.23 | −0.19 | −0.16 | −0.15 | |
−25 | −0.15 | −0.10 | −0.09 | −0.07 | −0.07 | |
+25 | +0.13 | +0.09 | +0.08 | +0.07 | +0.06 | |
+50 | +0.25 | +0.18 | +0.14 | +0.12 | +0.11 | |
−50 | −0.49 | −0.40 | −0.35 | −0.31 | −0.27 | |
−25 | −0.24 | −0.20 | −0.17 | −0.15 | −0.14 | |
+25 | +0.24 | +0.20 | +0.17 | +0.15 | +0.14 | |
+50 | +0.49 | +0.40 | +0.35 | +0.30 | +0.27 |
Parameters | Change (%) | Percentage Change in TC(Q)* | ||||
---|---|---|---|---|---|---|
Single-Stage Process | Two-Stage Process | Three-Stage Process | Four-Stage Process | Five-Stage Process | ||
−50 | −0.10 | −14.38 | −21.92 | −26.61 | −29.80 | |
−25 | −0.03 | −5.31 | −8.57 | −10.79 | −12.41 | |
+25 | +0.02 | +3.48 | +5.97 | +7.84 | +9.31 | |
+50 | +0.03 | +5.95 | +10.37 | +13.80 | +16.55 | |
−50 | −0.21 | −0.15 | −0.12 | −0.10 | −0.09 | |
−25 | −0.09 | −0.07 | −0.05 | −0.05 | −0.04 | |
+25 | +0.08 | +0.06 | +0.05 | +0.04 | +0.04 | |
+50 | +0.16 | +0.11 | +0.09 | +0.08 | +0.07 | |
−50 | −49.40 | −49.50 | −49.55 | −49.58 | −49.59 | |
−25 | −24.70 | −24.75 | −24.77 | −24.79 | −24.80 | |
+25 | +24.70 | +24.75 | +24.77 | +24.79 | +24.80 | |
+50 | +49.40 | +49.50 | +49.55 | +49.58 | +49.59 | |
−50 | −0.25 | −0.25 | −0.25 | −0.25 | −0.25 | |
−25 | −0.12 | −0.12 | −0.12 | −0.12 | −0.12 | |
+25 | +0.12 | +0.12 | +0.12 | +0.12 | +0.12 | |
+50 | +0.25 | +0.25 | +0.25 | +0.25 | +0.25 | |
−50 | −0.21 | −0.15 | −0.12 | −0.10 | −0.09 | |
−25 | −0.09 | −0.07 | −0.05 | −0.05 | −0.04 | |
+25 | +0.08 | +0.06 | +0.05 | +0.04 | +0.04 | |
+50 | +0.16 | +0.11 | +0.09 | +0.08 | +0.07 | |
−50 | −0.49 | −0.41 | −0.35 | −0.31 | −0.28 | |
−25 | −0.25 | −0.20 | −0.18 | −0.16 | −0.14 | |
+25 | +0.25 | +0.20 | +0.18 | +0.16 | +0.14 | |
+50 | +0.49 | +0.41 | +0.35 | +0.31 | +0.28 |
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Tayyab, M.; Sarkar, B.; Yahya, B.N. Imperfect Multi-Stage Lean Manufacturing System with Rework under Fuzzy Demand. Mathematics 2019, 7, 13. https://doi.org/10.3390/math7010013
Tayyab M, Sarkar B, Yahya BN. Imperfect Multi-Stage Lean Manufacturing System with Rework under Fuzzy Demand. Mathematics. 2019; 7(1):13. https://doi.org/10.3390/math7010013
Chicago/Turabian StyleTayyab, Muhammad, Biswajit Sarkar, and Bernardo Nugroho Yahya. 2019. "Imperfect Multi-Stage Lean Manufacturing System with Rework under Fuzzy Demand" Mathematics 7, no. 1: 13. https://doi.org/10.3390/math7010013
APA StyleTayyab, M., Sarkar, B., & Yahya, B. N. (2019). Imperfect Multi-Stage Lean Manufacturing System with Rework under Fuzzy Demand. Mathematics, 7(1), 13. https://doi.org/10.3390/math7010013