摘要:This research article discusses the problems having flexible demand,
supply and cost in range referred as interval data based transportation problems and
these cannot be solved directly using available methods. The uncertainty associated
with these types of problems motivates authors to tackle it by converting interval to
fuzzy numbers. This confront of conversion has been achieved by proposing a
dichotomic fuzzification approach followed by a unique triangular incenter ranking
approach to optimize interval data based transportation problems. A comparison
with existing methods is made with the help of numerical illustrations. The algorithm
proposed is found prompt in terms of the number of iteration involved and problem
formation. This method is practical to handle the transportation problems not having
a single valued data, but data in form of a range.