Transportation Problem in
Operations Research
By: [Your Name]
Learning Objectives
• • Understand Transportation Problem concept
• • Link theory with real business logistics
• • Formulate Transportation Problem
• • Learn solution methods
• • Derive managerial insights
Why Transportation Problem is
Important
• • Transportation = 30–60% of logistics cost
• • Impacts profitability & service level
• • Widely used in FMCG, E-commerce, Cement,
Retail
• • Helps managers minimize cost scientifically
What is Transportation Problem?
• • Special type of Linear Programming Problem
• • Multiple sources → Multiple destinations
• • Objective: Minimize transportation cost
• • Subject to supply & demand constraints
Transportation Problem Structure
• Sources supply goods to destinations
• Each route has a unit transportation cost
• Decision: How much to ship on each route
Types of Transportation Problem
• 1. Balanced Transportation Problem
• Total Supply = Total Demand
• 2. Unbalanced Transportation Problem
• Total Supply ≠ Total Demand
• → Use Dummy Source/Destination
Mathematical Formulation
• Decision Variable:
• xᵢ = units shipped from source i to destination
ⱼ
j
• Objective:
• Minimize Z = ΣΣ cᵢ xᵢ
ⱼ ⱼ
• Subject to:
• Supply & Demand constraints
Solution Approach
• Step 1: Find Initial Basic Feasible Solution
(IBFS)
• • North-West Corner Method
• • Least Cost Method
• • Vogel’s Approximation Method (VAM)
• Step 2: Optimality Test (MODI Method)
North-West Corner Method
• • Start from top-left cell
• • Allocate maximum possible quantity
• • Move right or downward
• ✔ Simple
• ✘ Ignores transportation cost
Vogel’s Approximation Method
(VAM)
• • Calculate penalty for each row & column
• • Penalty = difference of two lowest costs
• • Allocate where penalty is maximum
• ✔ Near-optimal solution
• ✔ Preferred in practice
Optimality Test – MODI Method
• • Calculate u and v values
• • Compute opportunity cost (Δᵢ )
ⱼ
• • If all Δᵢ ≥ 0 → Optimal solution
ⱼ
• Managerial meaning: No further cost
reduction possible
Real-Life Business Example
• A company supplies goods from plants to
markets
• Transportation Problem helps decide:
• • Which plant serves which market
• • How much quantity to transport
• • Minimum total logistics cost
Managerial Insights
• • Supports cost-based decisions
• • Improves supply chain efficiency
• • Helps in capacity & network planning
• • Valuable tool for MBA managers
Limitations
• • Assumes linear transportation cost
• • Assumes certainty in supply & demand
• • Does not include real-time disruptions
Extensions & Analytics View
• • Transshipment Problem
• • Multi-objective Transportation
• • Fuzzy Transportation Models
• • Solved using Excel Solver, LINGO, Python
Key Takeaways
• • Transportation Problem links math with
business
• • Enables scientific logistics decisions
• • Right quantity + Right route = Cost efficiency
Thank You
• Questions & Discussion
• Let us optimize logistics the smart way!

SC problem Transportation problem23.pptx

  • 1.
    Transportation Problem in OperationsResearch By: [Your Name]
  • 2.
    Learning Objectives • •Understand Transportation Problem concept • • Link theory with real business logistics • • Formulate Transportation Problem • • Learn solution methods • • Derive managerial insights
  • 3.
    Why Transportation Problemis Important • • Transportation = 30–60% of logistics cost • • Impacts profitability & service level • • Widely used in FMCG, E-commerce, Cement, Retail • • Helps managers minimize cost scientifically
  • 4.
    What is TransportationProblem? • • Special type of Linear Programming Problem • • Multiple sources → Multiple destinations • • Objective: Minimize transportation cost • • Subject to supply & demand constraints
  • 5.
    Transportation Problem Structure •Sources supply goods to destinations • Each route has a unit transportation cost • Decision: How much to ship on each route
  • 6.
    Types of TransportationProblem • 1. Balanced Transportation Problem • Total Supply = Total Demand • 2. Unbalanced Transportation Problem • Total Supply ≠ Total Demand • → Use Dummy Source/Destination
  • 7.
    Mathematical Formulation • DecisionVariable: • xᵢ = units shipped from source i to destination ⱼ j • Objective: • Minimize Z = ΣΣ cᵢ xᵢ ⱼ ⱼ • Subject to: • Supply & Demand constraints
  • 8.
    Solution Approach • Step1: Find Initial Basic Feasible Solution (IBFS) • • North-West Corner Method • • Least Cost Method • • Vogel’s Approximation Method (VAM) • Step 2: Optimality Test (MODI Method)
  • 9.
    North-West Corner Method •• Start from top-left cell • • Allocate maximum possible quantity • • Move right or downward • ✔ Simple • ✘ Ignores transportation cost
  • 10.
    Vogel’s Approximation Method (VAM) •• Calculate penalty for each row & column • • Penalty = difference of two lowest costs • • Allocate where penalty is maximum • ✔ Near-optimal solution • ✔ Preferred in practice
  • 11.
    Optimality Test –MODI Method • • Calculate u and v values • • Compute opportunity cost (Δᵢ ) ⱼ • • If all Δᵢ ≥ 0 → Optimal solution ⱼ • Managerial meaning: No further cost reduction possible
  • 12.
    Real-Life Business Example •A company supplies goods from plants to markets • Transportation Problem helps decide: • • Which plant serves which market • • How much quantity to transport • • Minimum total logistics cost
  • 13.
    Managerial Insights • •Supports cost-based decisions • • Improves supply chain efficiency • • Helps in capacity & network planning • • Valuable tool for MBA managers
  • 14.
    Limitations • • Assumeslinear transportation cost • • Assumes certainty in supply & demand • • Does not include real-time disruptions
  • 15.
    Extensions & AnalyticsView • • Transshipment Problem • • Multi-objective Transportation • • Fuzzy Transportation Models • • Solved using Excel Solver, LINGO, Python
  • 16.
    Key Takeaways • •Transportation Problem links math with business • • Enables scientific logistics decisions • • Right quantity + Right route = Cost efficiency
  • 17.
    Thank You • Questions& Discussion • Let us optimize logistics the smart way!