1 / 35

Kathryn E. Stecke Xuying Zhao University of Texas at Dallas

Production and Transportation Integration for a Make-to-Order Manufacturing Company with a Commit-to-Delivery Business Mode. Kathryn E. Stecke Xuying Zhao University of Texas at Dallas Texas A&M Monday, Feb 27, 2006. Outline . Problem and motivation Literature review

iago
Download Presentation

Kathryn E. Stecke Xuying Zhao University of Texas at Dallas

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Production and Transportation Integration for aMake-to-Order Manufacturing Company with aCommit-to-Delivery Business Mode Kathryn E. Stecke Xuying Zhao University of Texas at Dallas Texas A&M Monday, Feb 27, 2006

  2. Outline • Problem and motivation • Literature review • Problem settings • Analysis when partial delivery is allowed • Analysis when partial delivery is not allowed • Extensions • Conclusions

  3. Ship and Delivery Dates • Ship date: the date when a manufacturing company gives products to a logistics company to deliver to a customer. • Delivery date: the date when the logistics company delivers products to a customer.

  4. Two Business Modes • Commit-to-ship • the manufacturing company commits a ship date for an order. • Customerspre-specify a shipping mode, e.g., overnight shipping. • Commit-to-delivery • the manufacturing company commits a delivery date for an order. • The ship mode can be decided dynamically by the company.

  5. Commit-to-ship at Dell

  6. Profit increase opportunity in Dell • Dell ships 95% of customer orders within eight hours. • Based on this fact, Dell could increase profit by adopting commit-to-delivery. For example: • Customers pay $450 for a computer and $160 for overnight shipping. • Dell gets $450 in commit-to-ship. • Dell promises a 5-days-later ship date. The logistics company gets $160. • Dell gets $510 in commit-to-delivery. • Dell could ship the order within eight hours by adjusting the production schedule. Then a slow ship mode can be adopted. The logistics company gets $100. Dell gets $450+$60. • Profit increases over 10%.

  7. Problem Description • Production schedule is important when adopting a commit-to-delivery mode. • A good production schedule saves shipping costs. • A bad production schedule incurs expediting costs. • How to schedule production for accepted orders so that • All orders meet their delivery due dates. • The total shipping cost is reduced as much as possible.

  8. Literature Review Our research is related to two literature streams: 1. Production scheduling • Pinedo (2000), … 2. Integration between transportation and production • Bhatnagar, Chandra, and Goyal (1993),Thomas and Griffin (1996), and Sarmiento and Nagi (1999), Chen and Vairaktarakis (2005)

  9. Production Environment • Finished products are assembled from partly-finished products and customized components. • Differences among orders exist in different models/types of components. • Switching production from one order to another order rarely incurs any extra production costs.

  10. Production Schedule Setting • We specify the production schedule for n new, just arrived orders with delivery due dates. • A manufacturer can wait for customer orders to accumulate as long as its master production schedule is notempty. • The schedule for the n new orders will be added to the end of the current master production schedule.

  11. Transportation Setting • Outsourced to a third party logistics company, e.g., FedEx • The logistics company comes to collect products at the end of each day.

  12. Shipping Cost Setting

  13. Shipping Cost Setting • The shipping cost is a general function of shipping time and the quantityof computers shipped. • From the table in the previous slide, shipping cost is convex decreasing in shipping time. • From the table in the previous slide, shipping cost is linearly increasing with shipping weight. • Since all computers’ weights are similar, shipping cost is linearly increasing with the quantity of computers shipped.

  14. Problem Settings Summary • Orders • There are n orders to be scheduled for production; • Each order Oihas a production due date di and requires quantity Qi. • Production • The production planning horizon is m days • Daily production capacity is c products • Single machine or a paced assembly line • Transportation • Outsourced to a third party logistics company, e.g., FedEx • The logistics company comes to collect products at the end of each day.

  15. Table of Notation

  16. r1=1 O1 Process Timeline d1 r1=0 Production Planning Horizon O1 … 2 m 3 1 0 t1=1 t1=2 Ship cost for one order i: G(ri, Qi), convex decreasing with ri and linearly increasing with Qi

  17. Feasibility Condition where denotes a set of orders having a production due date on or before production day j in the planning horizon.

  18. When Partial Delivery is Allowed Quantity produced in day j for order i MIP-PD: Ship date is the same as the production date Order i is produced before its due date Daily production capacity constraint

  19. When Partial Delivery is Allowed • MIP-PD • Totally unimodular • ILOG CPLEX • Algorithm • Nonpreemptive Earliest Due Date Schedule (NEDD) : orders are sorted according to earliest due date first and processed nonpreemptively and continuously without idle time. Production Planning Horizon … O1 O2 O3 O4 O5 … 0 1 2 m 3 d1=1 d2=d3=2 d4= d5=3

  20. When Partial Delivery is Not Allowed Yij=1 means that the last product in order i is produced in day j. MIP-NPD: The ship date is the last product’s production date.

  21. When Partial Delivery is Not Allowed

  22. When Partial Delivery is Not Allowed Cj: number of products which are produced in day j but shipped in day j+1 or later. C1=150 C2=160 Production Planning Horizon … O1 O2 O3 … (100) (150) (90) (160) (100) 2 m 1 0 (100) (150+90)

  23. When Partial Delivery is Not Allowed • Algorithm NPD: try to reduce each Cj as much as possible. • Get an initial feasible schedule by NEDD. • Start reducing Cm-1 by producing smaller orders first. • Reduce each Cj the same way. • The algorithm stops when C1 is reduced. Cm-1 O5 O1 O2 O3 O4 Cm-1 O5 O3 O1 O2 O4 Day m Day m-1

  24. Algorithm Performance When n=5 and m=5

  25. Algorithm Performance When n=8 and m=8

  26. Performance of Lower Bounds When n=5 and m=5

  27. Performance of Lower Bounds When n=8 and m=8

  28. Algorithm Performance When n=500 and m=15

  29. Extensions • Considering customer locations in the shipping cost function • Considering quantity discounts in the shipping cost function

  30. Shipping Cost Varies with Customer Locations

  31. Considering Customer Locations in Models • When partial delivery is allowed. • When partial delivery is not allowed

  32. Considering Quantity Discounts • Some 3PL companies offer quantity discounts when multiple items are sent in a batch. • When partial delivery is allowed, there exists a tradeoff. • We propose another MIP to consider this tradeoff … O1 … (150) (150) 2 m 1 0 (0) (300) (150) (150)

  33. Conclusions • We analyzed a production and transportation integration problem for make-to-order industries. • When partial delivery is allowed, NEDD provides the optimal production schedule. • Mixed integer programming model: MIP-PD • Totally unimodular • ILOG CPLEX • When partial delivery is not allowed, an effective and efficient heuristic algorithm is provided. • Mixed integer programming model: MIP-NPD • Heuristic algorithm NPD

  34. Thank You!

More Related