Overview of Transportation Solution technique and Evaluation
Abstract
Transportation was regarded as one of many important components of the supply chain. It was related with time and the efficient movement of raw materials from source to manufacturing place and to customer order with the most efficiency. That was presented 2 parts: the first related to transportation solution such as route and time schedule management, vehicles groping etc. The second part involved to evaluate the efficiency of transportation which focused on data envelopment analysis (DEA) by indicated input, output and research result from the literature review and interesting suggestion in future studies.
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