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Transshipment problem

Transshipment problems form a subgroup of transportation problems, where transshipment is allowed. In transshipment, transportation may or must go through intermediate nodes, possibly changing modes of transport.

The Transshipment problem has its origins in medieval times[dubious ] when trading started to become a mass phenomenon. Obtaining the minimum-cost route had been the main priority. However, technological development slowly gave priority to minimum-duration transportation problems.

Overview edit

Transshipment or Transhipment is the shipment of goods or containers to an intermediate destination, and then from there to yet another destination. One possible reason is to change the means of transport during the journey (for example from ship transport to road transport), known as transloading. Another reason is to combine small shipments into a large shipment (consolidation), dividing the large shipment at the other end (deconsolidation). Transshipment usually takes place in transport hubs. Much international transshipment also takes place in designated customs areas, thus avoiding the need for customs checks or duties, otherwise a major hindrance for efficient transport.

Formulation of the problem edit

A few initial assumptions are required in order to formulate the transshipment problem completely:

  • The system consists of m origins and n destinations, with the following indexing respectively:  ,  
  • One uniform good exists which needs to be shipped
  • The required amount of good at the destinations equals the produced quantity available at the origins
  • Transportation simultaneously starts at the origins and is possible from any node to any other (also to an origin and from a destination)
  • Transportation costs are independent of the shipped amount
  • The transshipment problem is a unique Linear Programming Problem (LLP) in that it considers the assumption that all sources and sinks can both receive and distribute shipments at the same time (function in both directions)[1]

Notations edit

  •  : time of transportation from node r to node s
  •  : goods available at node i
  •  : demand for the good at node (m+j)
  •  : actual amount transported from node r to node s

Mathematical formulation of the problem edit

The goal is to minimize   subject to:

  •  ;  ,  
  •  ;  
  •  ;  
  •  

Solution edit

Since in most cases an explicit expression for the objective function does not exist, an alternative method is suggested by Rajeev and Satya. The method uses two consecutive phases to reveal the minimal durational route from the origins to the destinations. The first phase is willing to solve   time-minimizing problem, in each case using the remained   intermediate nodes as transshipment points. This also leads to the minimal-durational transportation between all sources and destinations. During the second phase a standard time-minimizing problem needs to be solved. The solution of the time-minimizing transshipment problem is the joint solution outcome of these two phases.

Phase 1 edit

Since costs are independent from the shipped amount, in each individual problem one can normalize the shipped quantity to 1. The problem now is simplified to an assignment problem from i to m+j. Let   be 1 if the edge between nodes r and s is used during the optimization, and 0 otherwise. Now the goal is to determine all   which minimize the objective function:

 ,

such that

  •  
  •  
  •  
  •  .

Corollary edit

  •   and   need to be excluded from the model; on the other hand, without the   constraint the optimal path would consist only of  -type loops which obviously can not be a feasible solution.
  • Instead of  ,   can be written, where M is an arbitrarily large positive number. With that modification the formulation above is reduced to the form of a standard assignment problem, possible to solve with the Hungarian method.

Phase 2 edit

During the second phase, a time minimization problem is solved with m origins and n destinations without transshipment. This phase differs in two main aspects from the original setup:

  • Transportation is only possible from an origin to a destination
  • Transportation time from i to m+j is the sum of durations coming from the optimal route calculated in Phase 1. Worthy to be denoted by   in order to separate it from the times introduced during the first stage.

In mathematical form edit

The goal is to find   which minimize

 ,
such that

  •  
  •  
  •  

This problem is easy to be solved with the method developed by Prakash. The set   needs to be partitioned into subgroups  , where each   contain the  -s with the same value. The sequence   is organized as   contains the largest valued  's   the second largest and so on. Furthermore,   positive priority factors are assigned to the subgroups  , with the following rule:

 

for all  . With this notation the goal is to find all   which minimize the goal function

 

such that

  •  
  •  
  •  
  •  

Extension edit

Some authors such as Das et al (1999) and Malakooti (2013) have considered multi-objective Transshipment problem.

References edit

  1. ^ "Transshipment Problem and Its Variants: A Review". ResearchGate. Retrieved 2020-11-02.
  • R.J Aguilar, Systems Analysis and Design. Prentice Hall, Inc. Englewood Cliffs, New Jersey (1973) pp. 209–220
  • H. L. Bhatia, K. Swarup, M. C. Puri, Indian J. pure appl. Math. 8 (1977) 920-929
  • R. S. Gartinkel, M. R. Rao, Nav. Res. Log. Quart. 18 (1971) 465-472
  • G. Hadley, Linear Programming, Addison-Wesley Publishing Company, (1962) pp. 368–373
  • P. L. Hammer, Nav. Res. Log. Quart. 16 (1969) 345-357
  • P. L. Hammer, Nav. Res. Log. Quart. 18 (1971) 487-490
  • A.J.Hughes, D.E.Grawog, Linear Programming: An Emphasis On Decision Making, Addison-Wesley Publishing Company, pp. 300–312
  • H.W.Kuhn, Nav. Res. Log. Quart. 2 (1955) 83-97
  • A.Orden, Management Sci, 2 (1956) 276-285
  • S.Parkash, Proc. Indian Acad. Sci. (Math. Sci.) 91 (1982) 53-57
  • C.S. Ramakrishnan, OPSEARCH 14 (1977) 207-209
  • C.R.Seshan, V.G.Tikekar, Proc. Indian Acad. Sci. (Math. Sci.) 89 (1980) 101-102
  • J.K.Sharma, K.Swarup, Proc. Indian Acad. Sci. (Math. Sci.) 86 (1977) 513-518
  • W.Szwarc, Nav. Res. Log. Quart. 18 (1971) 473-485
  • Malakooti, B. (2013). Operations and Production Systems with Multiple Objectives. John Wiley & Sons.
  • Das, S. K., A. Goswami, and S. S. Alam. “Multiobjective Transportation Problem with Interval Cost, Source and Destination Parameters.” European Journal of Operational Research, Vol. 117, No. 1, 1999, pp. 100–112

transshipment, problem, this, article, needs, additional, citations, verification, please, help, improve, this, article, adding, citations, reliable, sources, unsourced, material, challenged, removed, find, sources, news, newspapers, books, scholar, jstor, jan. This article needs additional citations for verification Please help improve this article by adding citations to reliable sources Unsourced material may be challenged and removed Find sources Transshipment problem news newspapers books scholar JSTOR January 2021 Learn how and when to remove this message Transshipment problems form a subgroup of transportation problems where transshipment is allowed In transshipment transportation may or must go through intermediate nodes possibly changing modes of transport The Transshipment problem has its origins in medieval times dubious discuss when trading started to become a mass phenomenon Obtaining the minimum cost route had been the main priority However technological development slowly gave priority to minimum duration transportation problems Contents 1 Overview 2 Formulation of the problem 3 Notations 4 Mathematical formulation of the problem 5 Solution 5 1 Phase 1 5 1 1 Corollary 5 2 Phase 2 5 2 1 In mathematical form 6 Extension 7 ReferencesOverview editTransshipment or Transhipment is the shipment of goods or containers to an intermediate destination and then from there to yet another destination One possible reason is to change the means of transport during the journey for example from ship transport to road transport known as transloading Another reason is to combine small shipments into a large shipment consolidation dividing the large shipment at the other end deconsolidation Transshipment usually takes place in transport hubs Much international transshipment also takes place in designated customs areas thus avoiding the need for customs checks or duties otherwise a major hindrance for efficient transport Formulation of the problem editA few initial assumptions are required in order to formulate the transshipment problem completely The system consists of m origins and n destinations with the following indexing respectively i 1 m displaystyle i 1 ldots m nbsp j 1 n displaystyle j 1 ldots n nbsp One uniform good exists which needs to be shipped The required amount of good at the destinations equals the produced quantity available at the origins Transportation simultaneously starts at the origins and is possible from any node to any other also to an origin and from a destination Transportation costs are independent of the shipped amount The transshipment problem is a unique Linear Programming Problem LLP in that it considers the assumption that all sources and sinks can both receive and distribute shipments at the same time function in both directions 1 Notations editt r s displaystyle t r s nbsp time of transportation from node r to node s a i displaystyle a i nbsp goods available at node i b m j displaystyle b m j nbsp demand for the good at node m j x r s displaystyle x r s nbsp actual amount transported from node r to node sMathematical formulation of the problem editThe goal is to minimize i 1 m j 1 n t i j x i j displaystyle sum limits i 1 m sum limits j 1 n t i j x i j nbsp subject to x r s 0 displaystyle x r s geq 0 nbsp r 1 m displaystyle forall r 1 ldots m nbsp s 1 n displaystyle s 1 ldots n nbsp s 1 m n x i s r 1 m n x r i a i displaystyle sum s 1 m n x i s sum r 1 m n x r i a i nbsp i 1 m displaystyle forall i 1 ldots m nbsp r 1 m n x r m j s 1 m n x m j s b m j displaystyle sum r 1 m n x r m j sum s 1 m n x m j s b m j nbsp j 1 n displaystyle forall j 1 ldots n nbsp i 1 m a i j 1 n b m j displaystyle sum i 1 m a i sum j 1 n b m j nbsp Solution editSince in most cases an explicit expression for the objective function does not exist an alternative method is suggested by Rajeev and Satya The method uses two consecutive phases to reveal the minimal durational route from the origins to the destinations The first phase is willing to solve n m displaystyle n cdot m nbsp time minimizing problem in each case using the remained n m 2 displaystyle n m 2 nbsp intermediate nodes as transshipment points This also leads to the minimal durational transportation between all sources and destinations During the second phase a standard time minimizing problem needs to be solved The solution of the time minimizing transshipment problem is the joint solution outcome of these two phases Phase 1 edit Since costs are independent from the shipped amount in each individual problem one can normalize the shipped quantity to 1 The problem now is simplified to an assignment problem from i to m j Let x r s 1 displaystyle x r s 1 nbsp be 1 if the edge between nodes r and s is used during the optimization and 0 otherwise Now the goal is to determine all x r s displaystyle x r s nbsp which minimize the objective function T i m j r 1 m n s 1 m n t r s x r s displaystyle T i m j sum r 1 m n sum s 1 m n t r s cdot x r s nbsp such that s 1 m n x r s 1 displaystyle sum s 1 m n x r s 1 nbsp r 1 m n x r s 1 displaystyle sum r 1 m n x r s 1 nbsp x m j i 1 displaystyle x m j i 1 nbsp x r s 0 1 displaystyle x r s 0 1 nbsp Corollary edit x r r 1 displaystyle x r r 1 nbsp and x m j i 1 displaystyle x m j i 1 nbsp need to be excluded from the model on the other hand without the x m j i 1 displaystyle x m j i 1 nbsp constraint the optimal path would consist only of x r r displaystyle x r r nbsp type loops which obviously can not be a feasible solution Instead of x m j i 1 displaystyle x m j i 1 nbsp t m j i M displaystyle t m j i M nbsp can be written where M is an arbitrarily large positive number With that modification the formulation above is reduced to the form of a standard assignment problem possible to solve with the Hungarian method Phase 2 edit During the second phase a time minimization problem is solved with m origins and n destinations without transshipment This phase differs in two main aspects from the original setup Transportation is only possible from an origin to a destination Transportation time from i to m j is the sum of durations coming from the optimal route calculated in Phase 1 Worthy to be denoted by t i m j displaystyle t i m j nbsp in order to separate it from the times introduced during the first stage In mathematical form edit The goal is to find x i m j 0 displaystyle x i m j geq 0 nbsp which minimizez m a x t i m j x i m j gt 0 i 1 m j 1 n displaystyle z max left t i m j x i m j gt 0 i 1 ldots m j 1 ldots n right nbsp such that i 1 m x i m j a i displaystyle sum i 1 m x i m j a i nbsp j 1 n x i m j b m j displaystyle sum j 1 n x i m j b m j nbsp i 1 m a i j 1 n b m j displaystyle sum i 1 m a i sum j 1 n b m j nbsp This problem is easy to be solved with the method developed by Prakash The set t i m j i 1 m j 1 n displaystyle left t i m j i 1 ldots m j 1 ldots n right nbsp needs to be partitioned into subgroups L k k 1 q displaystyle L k k 1 ldots q nbsp where each L k displaystyle L k nbsp contain the t i m j displaystyle t i m j nbsp s with the same value The sequence L k displaystyle L k nbsp is organized as L 1 displaystyle L 1 nbsp contains the largest valued t i m j displaystyle t i m j nbsp s L 2 displaystyle L 2 nbsp the second largest and so on Furthermore M k displaystyle M k nbsp positive priority factors are assigned to the subgroups L k x i m j displaystyle sum L k x i m j nbsp with the following rule a M k b M k 1 v e i f a lt 0 v e i f a gt 0 displaystyle alpha M k beta M k 1 left begin array cc ve amp if alpha lt 0 ve amp if alpha gt 0 end array right nbsp for all b displaystyle beta nbsp With this notation the goal is to find all x i m j displaystyle x i m j nbsp which minimize the goal functionz 1 k 1 q M k L k x i m j displaystyle z 1 sum k 1 q M k sum L k x i m j nbsp such that i 1 m x i m j a i displaystyle sum i 1 m x i m j a i nbsp j 1 n x i m j b m j displaystyle sum j 1 n x i m j b m j nbsp i 1 m a i j 1 n b m j displaystyle sum i 1 m a i sum j 1 n b m j nbsp a M k b M k 1 v e i f a lt 0 v e i f a gt 0 displaystyle alpha M k beta M k 1 left begin array cc ve amp if alpha lt 0 ve amp if alpha gt 0 end array right nbsp Extension editSome authors such as Das et al 1999 and Malakooti 2013 have considered multi objective Transshipment problem References edit Transshipment Problem and Its Variants A Review ResearchGate Retrieved 2020 11 02 R J Aguilar Systems Analysis and Design Prentice Hall Inc Englewood Cliffs New Jersey 1973 pp 209 220 H L Bhatia K Swarup M C Puri Indian J pure appl Math 8 1977 920 929 R S Gartinkel M R Rao Nav Res Log Quart 18 1971 465 472 G Hadley Linear Programming Addison Wesley Publishing Company 1962 pp 368 373 P L Hammer Nav Res Log Quart 16 1969 345 357 P L Hammer Nav Res Log Quart 18 1971 487 490 A J Hughes D E Grawog Linear Programming An Emphasis On Decision Making Addison Wesley Publishing Company pp 300 312 H W Kuhn Nav Res Log Quart 2 1955 83 97 A Orden Management Sci 2 1956 276 285 S Parkash Proc Indian Acad Sci Math Sci 91 1982 53 57 C S Ramakrishnan OPSEARCH 14 1977 207 209 C R Seshan V G Tikekar Proc Indian Acad Sci Math Sci 89 1980 101 102 J K Sharma K Swarup Proc Indian Acad Sci Math Sci 86 1977 513 518 W Szwarc Nav Res Log Quart 18 1971 473 485 Malakooti B 2013 Operations and Production Systems with Multiple Objectives John Wiley amp Sons Das S K A Goswami and S S Alam Multiobjective Transportation Problem with Interval Cost Source and Destination Parameters European Journal of Operational Research Vol 117 No 1 1999 pp 100 112 Retrieved from https en wikipedia org w index php title Transshipment problem amp oldid 1125522498, wikipedia, wiki, book, books, library,

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