Abstract:
This thesis presents the study of a multichoice multiobjective transportation problem (MCMOTP) 
when at least one of the objectives has multichoice coefficient and multiple aspiration levels to 
achieve, and the parameters of supply and demand are random variables that are not 
predetermined. The random variables are assumed to follow logistic distribution, and the demand 
and supply constraints are converted from a probabilistic case to a deterministic one using a 
logistic distribution. A transformation method using binary variables is used to reduce the 
MCMOTP into a multiobjective transportation problem (MOTP) and selecting one aspiration 
level for each objective from multiple levels. To find the compromise optimal solution for all 
objectives simultaneously, we apply goal programming approach. The main focus of the proposed 
approach is to minimize the all objectives simultaneously and to obtain the solution nearly close 
to the aspiration level of objective. The reduced problem is solved with goal programming. Finally, 
a mathematical model has been formulated by utilizing LINGO 19 software, and the optimal 
solution of the proposed model is obtained. Finally, a numerical example is presented to 
demonstrate the effectiveness and usefulness of the specified proposed mathematical programming 
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