In this paper, fuzzy differential equations are approached in a different prospective via the newly introduced Average Extension Principle (AEP). We prove some concrete results on the existence and uniqueness of the solutions obtained by making use of AEP. We provide some illustrative examples to compare the solutions obtained by AEP and previous techniques.
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