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首页> 外文期刊>PLoS One >A CLSTM and transfer learning based CFDAMA strategy in satellite communication networks
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A CLSTM and transfer learning based CFDAMA strategy in satellite communication networks

机译:卫星通信网络中的一种CLSTM和转移学习的CFDAMA策略

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摘要

With the development of the economy and technology, people’s requirement for communication is also increasing. Satellite communication networks have been paid more and more attention because of their broadband service capability and wide coverage. In this paper, we investigate the scheme of convolutional long short term memory (CLSTM) network and transfer learning (TL) based combined free/demand assignment multiple access (CFDAMA) scheme (CFDAMA-CLSTMTL), which is a new multiple access scheme in the satellite communication networks. Generally, there is a delay time T between sending a request from the user to the satellite and receiving a reply from the satellite. So far, the traditional multiple access schemes have not processed the data generated in this period. So, in order to transmit the data in time, we propose a new prediction method CLSTMTL, which can be used to predict the data generated in this period. We introduce the prediction method into the CFDAMA scheme so that it can reduce data accumulation by the way of sending the slots request which is the sum of slots requested by the user and the predicted slots generated in the delay time. A comparison with CFDAMA-PA and CFDAMA-PB is provided through simulation results, which gives the effect of the CFDAMA-CLSTMTL in a satellite communication network.
机译:随着经济技术的发展,人们对沟通的要求也在增加。由于其宽带服务能力和广泛的覆盖率,卫星通信网络已经越来越受到关注。在本文中,我们调查了卷积的长短期内存(CLSTM)网络和转移学习(TL)组合的自由/需求分配多址(CFDAMA)方案(CFDAMA-CLSTMTL)的方案,这是一种新的多访问方案卫星通信网络。通常,在向卫星向卫星发送来自用户并从卫星接收回复之间存在延迟时间t。到目前为止,传统的多个访问方案没有处理此期间生成的数据。因此,为了及时传输数据,我们提出了一种新的预测方法CLSTMTL,可用于预测在此期间生成的数据。我们将预测方法介绍到CFDAMA方案中,使得它可以通过发送槽请求的方式减少数据累积,这是用户所请求的时隙和在延迟时间中产生的预测时隙之和。通过仿真结果提供与CFDAMA-PA和CFDAMA-PB的比较,这在卫星通信网络中提供了CFDAMA-CLSTMTL的效果。

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