Научная статья на тему 'An EOQ model with time-dependent increasing demand under JIT philosophy for a distributor/agent'

An EOQ model with time-dependent increasing demand under JIT philosophy for a distributor/agent Текст научной статьи по специальности «Математика»

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Аннотация научной статьи по математике, автор научной работы — Sana Shib Sankar

This article generalizes an EOQ model for a distributor/agent with Just-in-Time (JIT) philosophy. It is assumed that the demand of seasonal goods is an increasing function of time. The optimality condition of the associated objective function is derived analytically. Also, the model is illustrated with the numerical examples.

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Текст научной работы на тему «An EOQ model with time-dependent increasing demand under JIT philosophy for a distributor/agent»

Владикавказский математический журнал Апрель-июнь, 2006, Том 8, Выпуск 2

УДК 519.86

AN EOQ MODEL WITH TIME-DEPENDENT INCREASING DEMAND UNDER JIT PHILOSOPHY FOR A DISTRIBUTOR/AGENT1

Sana S. S.

This article generalizes an EOQ model for a distributor/agent with Just-in-Time (JIT) philosophy. It is assumed that the demand of seasonal goods is an increasing function of time. The optimality condition of the associated objective function is derived analytically. Also, the model is illustrated with the numerical examples.

1. Introduction

The classical EOQ formula, which is also known as the Wilson’s [1] Formula, was derived long ago under the assumption of constant demand. In the real market the demand rate of any product is always in a dynamic state. Demand of a product may vary with time or with price or instantaneous level of stock displayed in a retail shop. Much attention has so far been paid to inventory modeling with time-dependent demand. It started with the work of Silver and Meal [2] who developed a heuristic approach to determine EOQ in the general case of a deterministic time-varying demand pattern. Donaldson [3] came out with a full analytic solution of the inventory replenishment problem with a linear trend in demand over a finite time horizon. Silver [4] used the Silver-Meal heuristic [2] to obtain a simple operating schedule for the same problem which incurs only negligible cost penalties. Other notable works in this direction came from Ritichie [5-7], Kicks and Donaldson [8], Buchanan [9], Mitra et al. [10], Ritichie and Tsado [11], Goyal [12], Goyal et al. [13, 19], Deb and Chaudhuri [14], Murdeshwar [15], Dave [16], Goyal [17], Hariga [18, 25], Dave and Patel [20], Bahari-Kashani [21], Hong et al.[22], Chung and Ting [23], Goswami and Chaudhuri [24], Giri et al. [26],Teng [27], Jalan et al. [28], Chakrabarty et al. [29], Linn et al. [30], Jalan and Chaudhuri [31], Hariga and Benkherouf [32], Wee [33] and Khanra and Chaudhuri [34], etc. The researchers have so far considered three types of time-varying demands, namely, linear, quadratic, exponential.

Manufacturers procure raw material from suppliers and process them into finished goods and sale the finished goods to distributors/agents, then to retailer/customers. When an item moves through more than one stage before reaching the final customer/retailer, it forms a «multi-echelon» inventory system. A large amount of researches on multi-echelon inventory control has appeared in the literature during the last decades. Clark and Scarf [35] were the first to study the two-echelon inventory model. They proved the optimality of a base stock policy for the pure serial inventory system and developed an efficient decomposing method to complete the optimal base stock ordering policy. Sherbrooke [36] considered an ordering policy of two echelon model for ware-house and retailer. It is assumed that stock

© 2006 S. S. Sana

1AMS Subject Classification: 90B05.

outs at the retailers are completely backlogged. Axsater and Zhang [37] considered two-echelon inventory system with a central ware-house and a number of retailers. The retailers face an independent poisson demand. Chou [38] shew that an integrated two-stage inventory model for deteriorating items with cooperative strategy results in higher profits. Though above models are useful for real situation, their models are restricted to two stage inventory systems. Therefore, several researchers extended to more general multi-echelon systems. Van der Heijden et al. [39] developed stock allocation policies in general single item and N-echelon distribution systems, where it is allowed to hold stock at all levels in the network. The goal is to achieve differentiated target customer service levels. Diks and de Kok [40] determined a cost optimal replenishment policy for a divergent multi-echelon inventory system under periodic review order-up-to-policy. Iida [41] considered a dynamic multi-echelon inventory model with non-stationary demands. In this paper, an inventory model for multi-echelon considering with supplier/manufacturer, distributor/agent and retailer/customer has been studied.

In fact, the implementation of the Japanese Just-in-Time (JIT) philosophy revealed many benefits from the reduction of lead-time such as lower investment in inventory, better product quality, less scrap and reduced storage space requirements [42]. The cost advantage is the facility size reduction that occurs in the inventory storage and production areas as a result of adopting a JIT system. Past and present research on JIT system has clearly documented the inevitable reduction in facility square feet. The reduction in facility square footage is caused by the elimination of the space required to store in coming inventory, work-in-process inventory, and finished-goods inventory. JIT experts such as Schonberger [42] and Wantuck [43] have long cited examples that prove that conversion to JIT will reduce space in plants and factories. Even fairly small plants have experienced the reduction of square feet when converting to JIT. Tristate Industries Inc., an Indiana-based manufacturer of industrial piping, applied JIT principles in their 3700 square feet operations and reported saving 25% of their operating space. Other examples of facility space reduction reported in literature included reports of reduction floor space by 30% [44], 40% [45], and even 50% or more[46]. Hay reported space reductions up to 80% [47].

2. The Nomenclature

F(t) — demand rate function at time t ^ 0;

u — duration between placing the order and receiving the order for the retailer/customer;

v(t) — receiving time (< u) at time t of the order for the distributor/agent;

w(t) — receiving time (> u) at time t of the order for the distributor/agent;

Sc — setup cost per cycle;

Ch — inventory holding cost per unit per unit of time;

Cs — shortages cost per unit per unit of time;

pi — probability of the order receiving time before u unit of time;

P2 — probability of the order receiving time after u unit of time;

T — the duration of the cycle.

3. The Model

The physical scenario (See Fig. 1) of the distributor/agent is such that,

i) in 1Bin, inventory holds to meet the demand of the retailer/customer,

ii) in 2Bin, buffer stock holds to meet the demand of the retailer/customer,

iii) duration between placing and receiving the order (i. e., lead-time) of distributor/agent from supplier/manufacturer is exactly u unit. In this case, the time gap between the placing of the order of the distributor/agent and retailer/customer is zero with the help of modern technology in telecommunication. Consequently the inventory becomes zero, i. e., it follows JIT philosophy.

The lead-time of the distributor/agent may be less than u (Case 1), greater than u (Case 2) or exactly u (Case 3).

Case 1: When lead-time v(t) < u.

Here v(t) follows the function:

v(t) = v(1 — e-at), v < u, a > 0

and the probability of such occurrences is pi, 0 ^ pi ^ 1. For increasing demand, the supplier/manufacturer becomes busy. So the lead-time gradually increases with time. Therefore, probable inventory cost of this case is

T

Inv = piCh J{u — v(t)}F(t) dt (1)

0

Case 2: When lead-time w(t) > u.

Here vj(t) follows the function

w(t) = w(1 — e-l3t), w > u, P > 0

and the probability of such situation is p2, 0 ^ p2 ^ 1. In this case, shortages occur at distributor/agent. Therefore, the probable shortage cost for buffer stock is

T

Shor = p2Cs J{vj(t) — u}F(t) dt (2)

0

Case 3: When lead-time u.

In this case, the inventory at distributor/agent is zero (i. e., JIT). The probability of such

3

situation occurs at probability p3, 0 ^ p3 ^ 1. In the whole system, ^ pi = 1 must be

i= 1

satisfied. Therefore, the probable average cost is

PAC (T) = T.[Sc + Inv + Shor] = T.[Sc + {(ChPi — CsP2)u — (Chpiv — CsP2w)}

. . (3)

—at ]

T T T

X

00

J F(t) dt + Chp1 v J e atF(t) dt — Csp2w J e ^F(t) dt]

Now the object is to minimize PAC(T) such that T > 0.

Theorem. There exists a global minimum of PAC(T) if

{F(T)/F'(f)} > (p2Cs{u—w(1—e-liT)}+piCh{v(1—e-aT)—u})/(p2C.swPe-l3T—piChvae-aT)

is satisfied.

< For optimum,

EATEl = - PAG (T) + T_[{{ChPi - CsP2)u - (ChPiV - CsP2 w)}F (T)

+ Chpive-aTF(T) - CsP2we-TF(T)] = 0.

Which gives

T T

d(T) = Sc + {(ChPi - CsP2)u - (ChPiv - CsP2w)} j F(t) dt + ChPiv j e-atF(t) dt

0 0

T

- CsP2W J e-f3tF(t) dt - T[{(ChPi - CsP2)u - (ChPiv - CsP2w)}F'(T)

0

+ ChPive-aTF'(T) - CsP2we-^TF'(T) - (ChPivae-aT - CsP2W^e-^T)F(T)] = 0. Now,

e'(T) = -T[{(ChPi - CsP2)u - (ChPiv - CsP2w)}F'(T) + ChPive-aTF'(T)

- CsP2we-?TF'(T) - (ChPivae-aT - CsP2wPe-T)F(T)]

using e(T) = 0, we have

dPAC(T) = - 1[{(ChPi - CsP2)u - (ChPiv - CsP2w)}F'(T) + ChPive-aTF'(T)

- CsP2we-?TF'(T) - (ChPivae-aT - CsP2wPe-T)F(T)].

If

{F(T)/F'(T) > (P2Cs{u-w(l-e-?T)}+PiCh{v(l-e-aT)-u})/(P2Csw^e-^T-PiChvae-aT),

then d PdTz(T^ > 0 and e'(T) < 0, i. e., e(T) is monotonic decreasing function of T > 0. Consequently, e(T) = 0 has a unique solution, if it exists. Therefore, PAC(T) has global minimum. >

4. Numerical Example

The following parameter values have been considered in appropriate units: Ch = 0.5, Cs = 1.5, Sc = 200, a = 0.25, ft = 0.5, u = 2.0, v = 1.0, w = 3.0. Then the following optimal solutions for particular demand functions are:

Example 1. F (t) = 500+5.0t+1.50t2, optimal solution is PAC * = 235^.996, T * = 2.05066.

Example 2. F (t) = 500 + 5.0t, optimal solution is PAC * = 235.181, T * = 2.08447.

Example 3. F (t) = 500, optimal solution is PAC * = 249.487, T * = 1.785348.

Example 4. F (t) = 500e5'0t, optimal solution is PAC * = 638.421, T * = 0.435047.

5. Conclusion

In this paper, I have presented a real case for a distributor/agent that supplies seasonal goods to a retailer/customer. At the starting of season, the demand of essential commodities increases in increase of time. The implementation of JIT philosophy reduces inventory cost. Also, the problem is generalized for general increasing demand function of time and illustrated with numerical examples. Hence the model is something new one than the existing literature.

Manufacturer/Supplier

A Path^ B Path% C Path

Distributor/ Agent 1

Path A: Order received at v(t) < u. Path B: Order received at w(t) > u. Path C: Order received exactly at u.

Customer /Retailer

Inventory Buffer-Stock

1BIN 2BIN

Fig. 1: Logistic Diagram of the Model

References

1. Wilson R. H. A scientific routine for stock control // Harvard Business Review.—1934.—V. 13.—P. 116128.

2. Silver E. A., Meal H. C. A simple modification of the EOQ for the case of a varying demand rate // Production and Inventory Management.—1969.—V. 10, № 4.—P. 52-65.

3. Donaldson W. A. Inventory replenishment policy for a linear trend in demand-an analytical solution // Operational Research Quarterly.—1977.—V. 28.—P. 663-670.

4. Silver E. A. A simple inventory replenishment decision rule for a linear trend in demand // Journal of Operational Research Society.—1979.—V. 30.—P. 71-75.

5. Ritchie E. Practical inventory replenishment policies for a linear trend in demand followed by a period of steady demand // Journal of Operational Research Society.—1980.—V. 31.—P. 605-613.

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6. Ritchie E. The EOQ for linear increasing demand: a simple optimal solution // Journal of Operational Research Society.—1984.—V. 35.—P. 949-952.

7. Ritchie E. Stock replenishment quantities for unbounded linear increasing demand: an interesting consequence of the optimal policy // Journal of Operational Research Society.—1985.—V. 36.P. 737-739.

8. Kicks P., Donaldson W. A. Joint price and lot-size determination when supplier offers incremental quantity discounts // Journal of Operational Research Society.—1988.—V. 39.—P. 725-732.

9. Buchanan J. T. Alternative solution methods for the inventory replenishment problem under increasing demand // Journal of Operational Research Society.—1980.—V. 31—P. 615-620.

10. Mitra A., Fox J. F., Jessejr. R. R. A note on determining order quantities with a linear trend in demand // Journal of Operational Research Society.—1984.—V. 35—P. 141-144.

11. Ritchie E., Tsado A. Penalties of using EOQ: a comparison of lot sizing rules for linearly increasing demand // Production and Inventory Management.—1986.—V. 27, № 3.—P. 65-79.

12. Goyal S. K. On improving replenishment policies for linear trend in demand // Engineering Costs and Production Economics.—1986.—V. 10.—P. 73-76.

13. Goyal S. K., Kusy M., Soni R. A note on the economic order intervals for an item with linear trend in demand // Engineering Costs and Production Economics.—1986.—V. 10.—P. 253-255.

14. Deb M., Chaudhuri K. S. A note on the heuristic for replenishment of trended inventories considering shortages // Journal of Operational Research Society.—1987.—V. 38.—P. 459-463.

15. Murdeshwar T. M. Inventory replenishment policies for linearly increasing demand considering shortages // Journal of Operational Research Society.—1986.—V. 39.—P. 687-692.

16. Dave U. On a heuristic inventory replenishment rule for items with a linearly increasing demand incorporating shortages // Journal of Operational Research Society.—V. 40.—P. 827-830.

17. Goyal S. K. A heuristic for replenishment of trended inventories considering shortages // Journal of Operational Research Society.—1988.—V. 39.—P. 885-887.

18. Hariga M. Optimal EOQ models for deteriorating items with time varying demand // Journal of Operational Research Society.—1996.—V. 47.—P. 1228-1246.

19. Goyal S. K., Marin D., Nebebe F. The finite horizon trended inventory replenishment problem with shortages // Journal of Operational Research Society.—1992.—V. 43.—P. 1173-1178.

20. Dave U., Patel L. K. (T, Si) policy inventory model for deteriorating items with time proportional demand // Journal of Operational Research Society.—1981.—V. 32.—P. 137-138.

21. Bahari-Kashani H. Replenishment schedule for deteriorating items with time-proportional demand // Journal of Operational Research Society.—1989.—V. 40.—P. 75-81.

22. Hong J. D., Sandrapaty R. R., Hayya J. C. On production policies for a linearly increasing demand and

finite, uniform production rate // Computers in Industrial Engineering.—1990.—V. 18, № 2.—P. 119-127.

23. Chung K. J., Ting P. S. A heuristic for replenishment of deteriorating items with a linear trend in

demand // Journal of Operational Research Society.—1993.—V. 44, № 12.—P. 1235-1241.

24. Goswami A., Chaudhuri K. S. An EOQ model for deteriorating items with a linear trend in

demand // Journal of Operational Research Society.—1991.—V. 42, № 12.—P. 1105-1110.

25. Hariga M. An EOQ model for deteriorating items with shortages and time-varying demand // Journal of Operational Research Society.—1995.—V. 46.—P. 398-404.

26. Giri B. C., Goswami A., Chaudhuri K. S. An EOQ model for deteriorating items with time varying demand and costs // Journal of Operational Research Society.—1996.—V. 47.—P. 1398-1405.

27. Teng J. T. A deterministic inventory replenishment model with a linear trend in demand // Operations Research Letters.—1996.—V. 19.—P. 33-41.

28. Jalan A. K., Giri R. R., Chaudhuri K. S. EOQ model for items with weibull distribution deterioration, shortages and trended demand // International Journal of Systems Science.—1996.—V. 27, № 9.—P. 851855.

29. Chakrabarty T., Giri B. C., Chaudhuri K. S. An EOQ model for items with weibull distribution deterioration, shortages and trended demand: an extension of Philip’s model // Computer & Operations Research.—1998.—V. 25, № 7/8.—P. 649-657.

30. Linn C., Tan B., Lee W. C. An EOQ model for deteriorating items with time-varying demand and shortages // International Journal of Systems Science.—2000.—V. 31, № 3.—P. 391-400.

31. Jalan A. K., Chaudhuri K. S. Structural properties of an inventory system with deterioration and trended demand // International Journal of Systems Science.—1999.—V. 30, № 6.—P. 627-633.

32. Hariga M. A., Benkherouf L. Optimal and heuristic inventory replenishment of deteriorating items with exponential time-varying demand // Journal of Operational Research Society.—1994.—V. 79.—P. 123137.

33. Wee H. M. A deterministic lot-size inventory model for deteriorating items with shortages and a declining market // Computers & Operations Research.—1995.—V. 22, № 3.—P. 345-356.

34. Khanra S., Chaudhuri K. S. A note on an order-level inventory model for a deteriorating item with time-dependent quadratic demand // Computers & Operations Research.—2003.—V. 30.—P. 1901-1916.

35. Clark A. J., Scarf H. Optimal policies for a multi-echelon inventory problem // Management Science.— 1960.—V. 6.—P. 475-490.

36. Sherbrokke C. C. Metric: A multi-echelon technique for recoverable item control // Operations Research.—1968.—V. 16.—P. 122-141.

37. Axsater S., Zhang W. F. A joint replenishment policy for multi-echelon inventory control // International Journal of Production Economics.—1999.—V. 59.—P. 243-250.

38. Chou T. H. Integrated two-stage inventory model for deteriorating items, Master’s Thesis, Chung Yuan Chirstian University, Taiwan, ROC.

39. Van der Heijden, Diks E. B., de Kok A. G. Stock allocation in general multi-echelon distribution systems with (R, S) order-up-to-policies // International Journal of Production Economics.—1997.— V. 49.—P. 157-174.

40. Diks E. B., de Kok A. G. Optimal control of a divergent multi-echelon inventory system // European Journal of Operational Research.—1998.—V. 11.—P. 75-97.

41. Iida T. The infinite horizon non-stationary stochastic multi-echelon inventory problem and near-myopic policies // European Journal of Operational Research.—2001.—V. 134.—P. 525-539.

42. Schonberger R. J. Japanese Manufacturing Techniques.—New York: The free Press 1982.

43. Wantuck K. A. Just in Time for America, The Forum, Milwaukee, WI, 1989.

44. Voss C. A. International Trends in Manufacturing Technology: JIT Manufacture.—Springer, 1990.

45. Stasey R., McNair C. J. Crossroads: A JIT success story, Dow Jones-Irwin, Homewood, IL, 1990.

46. Jones D. J. JIT & the EOQ model: odd couples no more.—New York: Manufacturing Basics, Wiley, 1988.—P. 54-57.

47. Hay E. J. The JIT breakthrough: implementing the new manufacturing basics.—New York: Wiley, 1988.

Received by the editors October 30, 2004-Shib Sankar Sana, Ph. D.

Department of Mathematics, Bhangar Mahavidyalaya University of Calcutta , Vill+P.O.+P.S-Bhangar, 24PGS(South), West Bengal,India.

E-mail: [email protected]

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