Cache Point Selection and Transmissions Reduction using LSTM Neural Network
Subject Areas : Wireless NetworkMalihe Bahekmat 1 , Mohammad Hossein Yaghmaee Moghaddam 2
1 - Mashhad Computer Engineering Department Ferdowsi University of Mashhad Mashhad, Iran
2 -
Keywords: Reliability, Selection of Cache Points, Middle caching, Wireless Sensor Networks,
Abstract :
Reliability of data transmission in wireless sensor networks (WSN) is very important in the case of high lost packet rate due to link problems or buffer congestion. In this regard, mechanisms such as middle cache points and congestion control can improve the performance of the reliability of transmission protocols when the packet is lost. On the other hand, the issue of energy consumption in this type of networks has become an important parameter in their reliability. In this paper, considering the energy constraints in the sensor nodes and the direct relationship between energy consumption and the number of transmissions made by the nodes, the system tries to reduce the number of transmissions needed to send a packet from source to destination as much as possible by optimal selection of the cache points and packet caching. In order to select the best cache points, the information extracted from the network behavior analysis by deep learning algorithm has been used. In the training phase, long-short term memory (LSTM) capabilities as an example of recurrent neural network (RNN) deep learning networks to learn network conditions. The results show that the proposed method works better in examining the evaluation criteria of transmission costs, end-to-end delays, cache use and throughput.
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