Title: Design
1Design Optimization in E-Supply Chains
- Doctoral Research
- Roshan Gaonkar
- Supervisor Prof N. Viswanadham
- The Logistics Institute Asia Pacific
2Agenda
- The Internet and E-Supply Chains.
- Assumptions, Motivation and Contributions.
- Mathematical Models for Planning in E-Supply
Chains - Basic LP model for Private Marketplaces.
- Realistic MILP model for Private Marketplaces
- QP and MILP model for Supply Chains with Public
Trading Exchange. - Future Work
3Fundamentals of E-Supply Chains
4Trends in E-Supply Chains
- Emergence of Electronic Marketplaces
- Private Marketplaces.
- Public Trading Exchanges.
- Virtual Organizations and Extended Supply Chains
- Information-based Supply Chain Managers.
- Alliances and Partnerships
- Outsourced Manufacturing and Logistics.
- Global Supply Chain Networks.
5Global Extended SC Networks
Source Analysis of Manufacturing Enterprises by
Prof. N. Viswanadham
6A Typical Scenario
Global
Partner selection based on customer location
7Extended Supply Chain Planning
- Global optimum in planning, using global
visibility.
8Motivation, Assumptions and Contributions
9Physical Significance
- Dynamic Manufacturing Networks
- Network of companies sharing same destiny.
- Information visibility between partners.
- Contract Manufacturing in the Electronics
Industry.
10Hi-Tech Manufacturing
- Dell private marketplace
- Receives orders from customers.
- Global Supply Chain.
- Manufacturing outsourced to contract
manufacturers and logistics outsourced to 3PLs. - Constant access to supply chain operational
information. - Manages supply chain through superior planning.
11Motivation
- To understand emerging business models in
E-Supply Chains. - Channel Masters.
- 4th Party Logistics.
- Contract Manufacturing.
- To develop planning tools for knowledge based
businesses Internet-enabled supply chains.
12Basic AssumptionsPrivate Marketplace
- Controlled by dominant channel master.
- Contract Manufacturers and Logistics Partners.
- High-level of trust exists between partners.
- Global Visibility in the Extended Supply Chain
- Schedules
- Capacities
- Costs
- Inventories
- Profit sharing between partners.
13Basic AssumptionsPublic Trading Exchange
- Market-maker builds environment of trust.
- Supply-demand information
- Quantity
- Cost
- Delivery Date
- Companies participate in multiple marketplaces
14Research Contributions
- Defined and formulated specific research problems
in Internet-enabled extended supply chain
networks. - Developed optimization models for systematic
management of on-line knowledge-based businesses.
15Research Contributions
- Develop a common framework to analyze various
supply chain strategies. - Make-to-Order, Make-to-Stock, New Product
Development etc. - Models for partner selection in supply chain
networks. - Contract Manufacturers.
- Strategic and Operational Level.
- Inclusion of logistics in supply chain planning.
- Fixed Schedules.
- Transshipment Hubs.
- Synchronization of Manufacturing and Logistics
16Classification of Models
17Mathematical Models for Planning in E-Supply
Chains
18A Basic LP Planning Model for Private Marketplaces
19Models deployed in the SC
20Basic AssumptionsPrivate Marketplace
- Controlled by dominant channel master.
- Contract Manufacturers and Logistics Partners.
- High-level of trust exists between partners.
- Global Visibility in the Extended Supply Chain
- Schedules
- Capacities
- Costs
- Inventories
- Profit sharing between partners.
21Model Formulation
- Activities
- Sub-Assembly Production
- Transport from Suppliers to Manufacturer
- Manufacturing/Assembly
- Transport from Manufacturer to Buyers
- Inventories
- Sub-Assembly inventory at Supplier
- Sub-Assembly inventory at Manufacturer
- Model inventory at Manufacturer
- Model inventory at Buyer
22Model Features
Supply Chain Information Shared Decisions to be Made
Available to promise Manufacturing Capacity for each Supplier. Fixed Schedules for Transportation Complex Product structure with multiple components, sub-assemblies, brands Inventory costs at multiple levels Transportation costs Production costs Determination of multiple plant schedules Determination of multi-period schedules Allocation of procurement quantities amongst multiple suppliers
Strategic level Partner selection and Operational
level Scheduling
23Notation
- Parameters
- D buyers demanded quantity
- P cost of production for manufacturer/supplier
or cost price to buyer - U unit transportation cost
- C production/manufacturing capacity
- T Transportation capacity
- Variables
- S supplies transported between two parties.
- I inventories at each time period
- Q quantity produced in each time period
- i index used to denote products
- j index used to denote suppliers
- k index used to denote assemblers
- l index used to denote models
- m index used to denote the buyers
- Subscripts
- I set of components.
- L set of finished models
- J set of suppliers.
- K set of Manufacturers
- M set of Buyers
24Objective
- Maximise Profit
- Profit Revenue (Cost of Production Cost of
Transportation Cost of Inventory)
25Constraints
- Capacity Constraints
- Production Capacity
- Transportation Capacity
26Constraints
- Inventory Flow Constraints
- Tracking of inventory level at each time period
- Consumption and addition to inventory
27Constraints
- Availability of Raw Materials
28Experiments
- Dynamic Supply Chain Network Configuration for
different orders. - Quantifying the Impact of Information Sharing.
- Make-to-Order
- Make-to-Stock (modeled by inventory holding)
29Data
30Dynamic SC ConfigurationPartner Selection
31Quantifying the Impact of Information Sharing
- No information sharing
- Need to rely on forecasting.
- Need to keep safety stock.
- Make-to-stock.
- Information sharing
- Synchronization of activities.
- JIT manufacturing and delivery.
- No inventory.
- Make-to-order.
32Constraints modeling MTS
- Stock level constraints
- Enough components to meet same production level
as last n periods. - Enough finished goods to meet same demand as last
n periods.
33The Value of Sharing Info
34Impact on the Capacity of the Network
- Minimal warehousing requirements for
make-to-order SC. - Bull-whip effect.
Profit Increase of 380 at a cost increase of
only 12
35A Realistic MILP Planning Model for Private
Marketplaces
36Additional Features
- Fixed costs
- Production
- Transportation
- Can be used to model international trade tariffs.
- Transportation Lead-times
- Air Sea
- Transshipment Hubs and Merge-in-Transit
- Customer Service Levels
37Additional Notation
- d index to denote transportation mode (1
Air 2 Sea). - D Set of Transportation modes.
- h index to denote transshipment hub.
- H Set of Transshipment hubs.
- g index to denote shipment package.
- G Set of shipment packages.
- Parameters
- TFC Fixed cost of Transportation.
- PFC Fixed cost of Production.
- TL Transportation lead-time.
- CSL Customer Service Level.
- LSC Cost of Lost Sale.
- BD Buyer Demand.
- Variables
- S Supplies received at the destination.
- BS Qty sold to Buyer.
38Objective Maximize Profit
Production
Transportation
Fixed Costs
39Capacity Constraints
- Capacity Constraints with Fixed Costs
- Production Capacity
- Transportation Capacity
40Transportation Constraints
41Customer Service Level
42Transshipment Hub
- Model scenario where suppliers may be preferred
for procurement, if they are already supplying
other components. - Model merge-in-transit and cross-docking centers.
- In-coming inventory, Packaging and Outgoing
inventory
43Transshipment Hub Constraints
44Computational Complexity
- Production planning problems with fixed cost are
NP hard. - Using Branch and Bound
- Network flow problems with fixed cost do not
converge fast enough. - Hence, need to develop tighter formulations.
45Tighter Formulation
46Experiments
- Dynamic Supply Chain Network Configuration for
different orders. - Effect of Transshipment Hubs.
- Analysis of Supply Chain Costs.
- Managing Multiple Generations of Products.
47Dynamic SC Network Configuration
48Dynamic SC Network Configuration
49Dynamic SC Network Configuration
50Dynamic SC Network Configuration
- Selection of partners based on location of buyer.
- Total landed cost of fulfilling the order.
- Logistics congestion can result in underutilized
manufacturing plants. - Synchronization of manufacturing with the
logistics schedules. - In combined planning manage trade-off
- In savings from joint procurement against the
need to procure from more expensive suppliers.
51Transshipment Hubs
52Transshipment Hubs
- Existing suppliers are preferred for procurement
of other sub-assemblies. - Sub-assembly suppliers down to 3 from 4, Contract
manufacturers down to 2 from 3. - Results in supplier rationalization.
53Analysis of Supply Chain Costs
54Analysis of Supply Chain Costs
- Decreasing demand and Seasonal-up
- More expensive suppliers and transportation to
meet large demands early on. - Ascending demand and Seasonal-down
- Inventory costs are higher because of need to
store goods to meet late demand.
55Managing Multiple Generations of Products
56Managing Multiple Generations of Products
57Managing Multiple Generations of Products
- Time-to-market vs. Product Introduction cost.
- Trade-off between savings from joint procurement
for two different generations and expenses for
procurement from expensive suppliers.
58QP and MILP model for SC with Public Trading
Exchange
59Models deployed in the SC
60Models for PTX
- Quadratic Programming
- Dynamic Pricing based on Supply Demand.
- Chooses qty and price in both marketplaces.
- Mixed Integer Linear Programming
- Combinatorial auction.
- Chooses winning bids in both marketplaces.
61Basic AssumptionsPublic Trading Exchange
- Manufacturers participate in Multiple PTX
- Participants share supply and demand information
during negotiations. - More information ascertained with each round of
negotiations. - Information
- Supply-Demand Curves or Qty-Price Bids
- Delivery Date
62Quadratic Programming Model
63Features of the Model
- Dynamic Pricing responsive to market
- Selection of Partners
- Selection of Optimal Price
- Selection of Optimal Quantity
- Synchronization of Manufacturing and Logistics
Schedules.
64Supply-Demand Curves
65Notation
- Parameters
- A Slope of supply/demand curve
- B Intercept of supply/demand curve
- C Maximum availability of components
- CM Production capacity.
- T Transportation capacity
- CI Inventory capacity
- SL Service Level
- B Buyers demanded quantity.
- P cost of production
- LT Transportation lead-time
- Variables
- S supplies transported between two parties.
- I inventories at each time period
- M Qty produced by manufacturer
- O Qty of components procured
- i index used to denote comp.
- j index used to denote suppliers
- k index used to denote assemblers
- l index used to denote models
- m index used to denote the buyers
- Subscripts
- I set of components.
- L set of finished models
- J set of suppliers.
- K set of Manufacturers
- M set of Buyers
66Objective
- Maximize Profit
- Profit Revenue (Cost of Procurement Cost
of Production Cost of Transportation
Cost of Inventory)
67Constraints
Marketplace Capacity
Component Supplier Inventory
68Constraints
69Constraints
- Finished Models Marketplace
70Constraints
- Logistics Marketplace
- Warehousing
71Constraints
- Logistics Marketplace
- Transportation
Transport Capacity
72Experiment
73Solution
- Determines optimal quantities and corresponding
prices. - The solution of the model also provides schedules
for manufacturing and logistics. - QP provides integrated strategic-level dynamic
pricing and partner selection tool and low level
operational scheduling tool.
74MILP Model
75Combinatorial Auctions
- Sellers quote prices for bundles of components.
- Buyers place bids on bundles of finished models.
- All bids provide
- Qty - q1,q2,q3,q4,q5
- Due Date - 0,0,0,0,1,0,0,0,0
- Price - 123.
- Manufacturer needs to choose optimal seller bids
and accept optimal buyer bids.
76Features of the Model
- Combinatorial Auctions in Multiple PTX.
- Selection of Partners.
- Selection of Optimal Bids.
- Production Scheduling.
77Notation
- Parameters
- SQ Qty being sold of components
- SD Date on which bid will deliver
- SP Quoted selling price of component
- BQ Qty demanded of models
- BD Date on which bid needs to be fulfilled
- BP Quoted buying price of models
- R Units of components required for 1 unit of
the model - T Production lead-time
- P Production cost
- W Inventory holding cost
- Variables
- S Accept bid
- I inventories at each time period
- M Qty produced by manufacturer
- i index used to denote comp.
- j index used to denote suppliers
- l index used to denote models
- m index used to denote buyers
- n index used to denote bids
- Subscripts
- I set of components.
- L set of finished models
- J set of suppliers.
- N set of bids
- M set of buyers
78Objective
- Maximize Profit
- Profit Revenue (Cost of Procurement Cost
of Production Cost of Inventory)
79Constraints
80Future Experiments
- To study impact of dumping on supply chain.
- To study impact of sudden shortages on the supply
chain.
81Future Work
82Future work
- To develop a multi-layer adaptive control for
supply chain planning - Based on SC performance can plan to buy or sell
additional capacity - To develop risk management models for SC
83Academic Papers
84Journal Papers
- Journal Paper
- N. Viswanadham and Roshan Gaonkar, Internet-based
Collaborative Scheduling in Global Contract
Manufacturing Networks, Submitted to the IEEE
Transactions on Mechatronics. - Journal Paper in Revision
- N. Viswanadham and Roshan Gaonkar, Partner
Selection and Synchronized Planning in Dynamic
Manufacturing Networks, Submitted to the IEEE
Transactions on Robotics and Automation.
85Conference Papers
- Conference Papers
- N. Viswanadham, Roshan S. Gaonkar and
V.Subramanian, Optimal configuration and partner
selection in dynamic manufacturing networks,
Proceedings of the IEEE International
Conference on Robotics and Automation, Seoul, May
2001, pp 854-859. - Roshan S. Gaonkar and N. Viswanadham,
Collaborative scheduling model for supply hub
management, Third AEGEAN International conference
on Analysis and Modelling of Manufacturing
Systems, Tinos Island, Greece, May 16-20, 2001. - Roshan S. Gaonkar and N. Viswanadham, Systematic
Design of Electronic Marketplaces, Proceedings of
the Total Enterprise Solutions Conference,
Singapore, June 2001. - N. Viswanadham and Roshan S. Gaonkar, Foundations
of E-supply chains, Int. Conf. on Port and
Maritime R D and Technology, Singapore, Oct
29-31, 2001.