Intelligent data flow management in optical transport networks
DOI: 10.31673/2412-4338.2019.030416
Abstract
Currently, telecommunication operators have many technical challenges because users need more telecommunication resources for their applications with high quality. Even in this case, telecommunication operators try to get profit based on their networks. That’s why the task for improving the efficiency of using telecommunication resources is important. In our article, we suggest to use Optical Label Switching technology as technology of link level which allows to use optical, time, and energy resources in efficient way. Algorithm of traffic aggregation in an edge node of OLS network is presented. This algorithm predicts the size of transport block based on the intensity of income traffic for different part of day with using an artificial intelligence tool. This feature allows to reduce the amount of service data, and improve efficiency of using optical resources. This algorithm is used on the SDN controller which collects data from every node for increasing the accuracy of our algorithm.
Keywords: optical transport network, all-optical switch, artificial intelligence, balancing of traffic.
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