http://hdl.handle.net/1765/1620
series: EI 9948-/A

A dynamic lot-sizing model with demand time windows


Research Paper
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One of the basic assumptions of the classical dynamic lot-sizing model is that the aggregate demand of a given period must be satisfied in that period. Under this assumption, if backlogging is not allowed then the demand of a given period cannot be delivered earlier or later than the period. If backlogging is allowed, the demand of a given period cannot be delivered earlier than the period, but can be delivered later at the expense of a backordering cost. Like most mathematical models, the classical dynamic lot-sizing model is a simplified paraphrase of what might actually happen in real life. In most real life applications, the customer offers a grace period - we call it a demand time window - during which a particular demand can be satisfied with no penalty. That is, in association with each demand, the customer specifies an earliest and a latest delivery time. The time interval characterized by the earliest and latest delivery dates of a demand represents the corresponding time window. This paper studies the dynamic lot-sizing problem with demand time windows and provides polynomial time algorithms for computing its solution. If shortages are not allowed, the complexity of the proposed algorithm is of the order T square. When backlogging is allowed, the complexity of the proposed algorithm is of the order T cube.



Keywords


Automatically Extracted Terms
  • period
  • demand
  • replenishment
  • replenishment periods
  • problem
  • window
  • demand time windows
  • algorithm
  • model
  • lot-sizing
  • lot-sizing model
  • inventory
  • demand time window
  • period t
  • backordering
  • research
  • li ≤ t
  • complexity
  • 1 ≤
  • value