Title of article :
Extensions of simple eyeballing dynamic lot sizing heuristics
Author/Authors :
Gin Hor Chan، نويسنده , , Eng Ung Choo، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 1998
Pages :
11
From page :
487
To page :
497
Abstract :
A simple class of eyeballing heuristic algorithms is presented for determining the shortages and stock levels of a single product with known demands over a finite future periods. These eyeballing heuristics are derived from the simple-minded answers to the direct and practical questions on the acceptability of the size of each shortage and inventory level. Its implementation is extremely simple and only requires simple eyeballing comparisons of pairs of numbers representing the demands and some critical cut-off values. For more flexibility in coping with uncertainty, each critical cut-off value is estimated by an interval of lower and upper cut-off values. Simulation experiments are conducted and the results show that despite their extreme simplicity, these eyeballing heuristics have satisfactory performances compared with other heuristics. Furthermore, this simple-minded approach may be extended to continuous time demands where heuristic solutions can be obtained by using simple graphical approximation. A simple class of eyeballing heuristic algorithms for discrete dynamic lot size problems is presented with rolling horizon in which the forecast window is updated after each order cycle. These eyeballing heuristics are derived from the most direct and practical questions on inventory costs, and only require simple eyeballing comparisons of pairs of numbers representing the demands and some critical cut-off values. For more flexibility in coping with uncertainty, each critical cut-off value is estimated by an interval of lower and upper cut-off values. Simulation experiments are conducted and the results show that despite their extreme simplicity, these extensions of eyeballing heuristics have satisfactory performances compared with other heuristics. Furthermore, this simple-minded approach can be extended to the case of continuous time demands where heuristic solutions can be obtained by using simple graphical approximation.
Journal title :
Computers and Operations Research
Serial Year :
1998
Journal title :
Computers and Operations Research
Record number :
926943
Link To Document :
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