Araştırma Makalesi

Enhancing OFDM Channel Estimation Accuracy with CNN-LSTM Hybrid Architectures

Cilt: 22 Sayı: 1 30 Mart 2026
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Enhancing OFDM Channel Estimation Accuracy with CNN-LSTM Hybrid Architectures

Öz

Accurate channel estimation remains a fundamental challenge for next-generation orthogonal frequency-division multiplexing (OFDM) systems, especially in environments with high mobility, sparse pilot allocation, and time-varying multipath fading. Traditional pilot-based methods, such as Least Squares (LS) and Minimum Mean Square Error (MMSE), are easy to implement but suffer from noise sensitivity, high computational costs, and a reliance on prior channel statistics. Recently, deep learning techniques have shown promising results; yet many do not fully capture the joint spatial and temporal characteristics of wireless channels or overlook realistic pilot-grid structures. This study introduces a pilot-grid-aware hybrid deep learning model that integrates Convolutional Neural Networks (CNNs) for spatial feature extraction with Long Short-Term Memory (LSTM) networks for temporal sequence modeling. The model is trained using the Root Mean Square Propagation (RMSprop) optimizer, selected for its robustness in adapting learning rates and effectively capturing dependencies across both spatial and temporal dimensions. Benchmark evaluations against conventional estimators and theoretical limits under different modulation formats demonstrate that the proposed model consistently achieves a lower estimation error and bit error rate across a wide range of signal-to-noise ratios. The results confirm that the hybrid architecture provides a scalable and reliable solution for future wireless systems including sixth-generation (6G) networks, vehicular communications, and satellite applications where both adaptability and robustness are essential.

Anahtar Kelimeler

Kaynakça

  1. [1]. Guan, P, Wu, D, Tian, T, Zhou, J, Zhang, X, Gu, L. 2017. 5G Field Trials: OFDM-Based Waveforms and Mixed Numerologies. IEEE Journal on Selected Areas in Communications, 35(6): 1234-1243. (https://doi.org/10.1109/JSAC.2017.2687718)
  2. [2]. Baştürk, I. 2007. Iterative Channel Estimation Techniques for Multiple Input Multiple Output Orthogonal Frequency Division Multiplexing Systems. Master Thesis, Izmir Institute of Technology, Izmir, Türkiye. Available: (http://hdl.handle.net/11147/3637)
  3. [3]. Zhao, J, Liu, C, Liao, J, Wang, D. 2024. Deep learning in wireless communications for physical layer. Physical Communication, 67: 102503. (https://doi.org/10.1016/j.phycom.2024.102503)
  4. [4]. Ye, H, Li, GY, Juang, BH. 2018. Power of Deep Learning for Channel Estimation and Signal Detection in OFDM Systems. IEEE Wireless Communications Letters, 7(1): 114-117. (https://doi.org/10.1109/LWC.2017.2757490)
  5. [5]. Wang, S, Yao, R, Tsiftsis, TA, Miridakis, NI, Qi, N. 2020. Signal Detection in Uplink Time-Varying OFDM Systems Using RNN with Bidirectional LSTM. IEEE Wireless Communications Letters, 9(11): 1947-1951. (https://doi.org/10.1109/LWC.2020.3009170)
  6. [6]. Zhao, Z, Vuran, MC, Guo, F, Scott, SD. 2018. Deep-waveform: A learned OFDM receiver based on deep complex-valued convolutional networks. arXiv preprint. (https://arxiv.org/abs/1810.07181)
  7. [7]. Roozitalab, T, Bahramgiri, H, Farhang, M, Javadyfar, A. 2022. Deep learning-based channel estimation in OFDM systems for time-varying Rayleigh fading channels. Journal of Communication Engineering, 11(1): 1-20.
  8. [8]. A. Siriwanitpong, K. Sanada, H. Hatano, K. Mori and P. Boonsrimuang. 2025. Deep Learning-Based Channel Estimation With 1D CNN for OFDM Systems Under High-Speed Railway Environments. IEEE Access, vol. 13, pp. 13128-13142. (https://doi.org/10.1109/ACCESS.2025.3531009)

Ayrıntılar

Birincil Dil

İngilizce

Konular

Elektrik Mühendisliği (Diğer)

Bölüm

Araştırma Makalesi

Yayımlanma Tarihi

30 Mart 2026

Gönderilme Tarihi

29 Ağustos 2025

Kabul Tarihi

7 Aralık 2025

Yayımlandığı Sayı

Yıl 2026 Cilt: 22 Sayı: 1

Kaynak Göster

APA
Massalay, S. J., Baştürk, İ., & Koçyiğit, Y. (2026). Enhancing OFDM Channel Estimation Accuracy with CNN-LSTM Hybrid Architectures. Celal Bayar University Journal of Science, 22(1), 86-94. https://doi.org/10.18466/cbayarfbe.1773106
AMA
1.Massalay SJ, Baştürk İ, Koçyiğit Y. Enhancing OFDM Channel Estimation Accuracy with CNN-LSTM Hybrid Architectures. Celal Bayar University Journal of Science. 2026;22(1):86-94. doi:10.18466/cbayarfbe.1773106
Chicago
Massalay, Sekou J., İlhan Baştürk, ve Yücel Koçyiğit. 2026. “Enhancing OFDM Channel Estimation Accuracy with CNN-LSTM Hybrid Architectures”. Celal Bayar University Journal of Science 22 (1): 86-94. https://doi.org/10.18466/cbayarfbe.1773106.
EndNote
Massalay SJ, Baştürk İ, Koçyiğit Y (01 Mart 2026) Enhancing OFDM Channel Estimation Accuracy with CNN-LSTM Hybrid Architectures. Celal Bayar University Journal of Science 22 1 86–94.
IEEE
[1]S. J. Massalay, İ. Baştürk, ve Y. Koçyiğit, “Enhancing OFDM Channel Estimation Accuracy with CNN-LSTM Hybrid Architectures”, Celal Bayar University Journal of Science, c. 22, sy 1, ss. 86–94, Mar. 2026, doi: 10.18466/cbayarfbe.1773106.
ISNAD
Massalay, Sekou J. - Baştürk, İlhan - Koçyiğit, Yücel. “Enhancing OFDM Channel Estimation Accuracy with CNN-LSTM Hybrid Architectures”. Celal Bayar University Journal of Science 22/1 (01 Mart 2026): 86-94. https://doi.org/10.18466/cbayarfbe.1773106.
JAMA
1.Massalay SJ, Baştürk İ, Koçyiğit Y. Enhancing OFDM Channel Estimation Accuracy with CNN-LSTM Hybrid Architectures. Celal Bayar University Journal of Science. 2026;22:86–94.
MLA
Massalay, Sekou J., vd. “Enhancing OFDM Channel Estimation Accuracy with CNN-LSTM Hybrid Architectures”. Celal Bayar University Journal of Science, c. 22, sy 1, Mart 2026, ss. 86-94, doi:10.18466/cbayarfbe.1773106.
Vancouver
1.Sekou J. Massalay, İlhan Baştürk, Yücel Koçyiğit. Enhancing OFDM Channel Estimation Accuracy with CNN-LSTM Hybrid Architectures. Celal Bayar University Journal of Science. 01 Mart 2026;22(1):86-94. doi:10.18466/cbayarfbe.1773106