[go: up one dir, main page]

Skip to content

Discrete-event simulation of inventories in Python via SimPy

License

Notifications You must be signed in to change notification settings

wamuir/simpy-stockout

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

6 Commits
 
 
 
 
 
 
 
 

Repository files navigation

simpy-stockout

About

This is a replication, in Python, of the discrete event simulation given by Law and Kelton (2000) for a single-product inventory system (s,S), previously written in FORTRAN (p. 66) and in C (p. 73).

Note that Law and Kelton run a single replication, as does this Python replication, and thus the output will differ some between the simulations due, for instance, to the use of different random number streams.

Results given in Law and Kelton (2000)

Inventory Policy Average total cost Average ordering cost Average holding cost Average shortage cost
( 20, 40) 126.61 99.26 9.25 18.10
( 20, 60) 122.74 90.52 17.39 14.83
( 20, 80) 123.86 87.36 26.24 10.26
( 20,100) 125.32 81.37 36.00 7.95
( 40, 60) 126.37 98.43 25.99 1.95
( 40, 80) 125.46 88.40 35.92 1.14
( 40,100) 132.34 84.62 46.42 1.30
( 60, 80) 150.02 105.69 44.02 0.31
( 60,100) 143.20 89.05 53.91 0.24

Results from replication in Python (using SimPy DES library)

Inventory Policy Average total cost Average ordering cost Average holding cost Average shortage cost
( 20, 40) 126.87 97.36 8.61 20.90
( 20, 60) 124.72 92.13 15.87 16.71
( 20, 80) 128.44 90.36 24.19 13.89
( 20,100) 126.37 81.82 37.24 7.31
( 40, 60) 125.92 99.18 25.16 1.57
( 40, 80) 120.65 85.70 34.55 0.39
( 40,100) 131.16 85.11 45.76 0.29
( 60, 80) 138.88 92.85 45.96 0.07
( 60,100) 145.83 88.98 56.85 0.00

About

Discrete-event simulation of inventories in Python via SimPy

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages