共 3 条
Deep Learning-Assisted Transmit Antenna Classifiers for Fully Generalized Spatial Modulation: Online Efficiency Replaces Offline Complexity
被引:2
|作者:
Jadhav, Hindavi Kishor
[1
]
Kumaravelu, Vinoth Babu
[1
]
机构:
[1] Vellore Inst Technol, Sch Elect Engn, Dept Commun Engn, Vellore 632014, Tamil Nadu, India
来源:
APPLIED SCIENCES-BASEL
|
2023年
/
13卷
/
08期
关键词:
deep learning;
euclidean distance-based antenna selection (EDAS);
feed-forward neural network (FNN);
fully generalized spatial modulation (FGSM);
support vector machine (SVM);
transmit antenna selection (TAS);
SELECTION;
D O I:
10.3390/app13085134
中图分类号:
O6 [化学];
学科分类号:
0703 ;
摘要:
In this work, deep learning (DL)-based transmit antenna selection (TAS) strategies are employed to enhance the average bit error rate (ABER) and energy efficiency (EE) performance of a spectrally efficient fully generalized spatial modulation (FGSM) scheme. The Euclidean distance-based antenna selection (EDAS), a frequently employed TAS technique, has a high search complexity but offers optimal ABER performance. To address TAS with minimal complexity, we present DL-based approaches that reframe the traditional TAS problem as a classification learning problem. To reduce the energy consumption and latency of the system, we presented three DL architectures in this study, namely a feed-forward neural network (FNN), a recurrent neural network (RNN), and a 1D convolutional neural network (CNN). The proposed system can efficiently process and make predictions based on the new data with minimal latency, as DL-based modeling is a one-time procedure. In addition, the performance of the proposed DL strategies is compared to two other popular machine learning methods: support vector machine (SVM) and K-nearest neighbor (KNN). While comparing DL architectures with SVM on the same dataset, it is seen that the proposed FNN architecture offers a similar to 3.15% accuracy boost. The proposed FNN architecture achieves an improved signal-to-noise ratio (SNR) gain of similar to 2.2 dB over FGSM without TAS (FGSM-WTAS). All proposed DL techniques outperform FGSM-WTAS.
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页数:18
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