Submitted:
12 September 2025
Posted:
16 September 2025
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Abstract
Keywords:
1. Introduction
1.1. Background
1.2. Related Works
1.3. Motivation and Contributions
- We propose a prior information extraction method by leveraging LoS and echo sensing. In this method, the LoS sensing technology is employed to acquire the prominent LoS characteristics in UAV communication scenarios. Furthermore, based on echo sensing signals, this method incorporates radar signal processing technology to extract channel prior information. By integrating both LoS and echo sensing, we derive enhanced prior information to assist and refine CE.
- Based on the extracted LoS and echo sensing prior information, we propose a LoS and echo sensing-aided CE method for CA-enabled UAV-assisted OFDM systems. This method utilizes the sensed LoS component as a reference for setting detection threshold in CE, while incorporating echo-based sensing information to suppress noise and interference from false paths. By jointly leveraging LoS and echo sensing, an adaptive threshold for detecting transmission paths is designed, which is beneficial for enhancing CE accuracy.
- By leveraging the LoS path characteristics, we propose a path sharing-based channel reconstruction scheme. In this scheme, the PCC assists in reconstructing the channels of SCCs. This scheme exploits the shared transmission paths between the PCC and SCCs by utilizing Doppler-domain information to aid the reconstruction of the LoS path for SCCs. Furthermore, this reconstruction scheme is extended to NLoS paths, forming a three-stage channel reconstruction framework for SCCs. Consequently, the pilot overhead required for CE of SCCs is effectively reduced, thereby increasing the overall data transmission rate of CA systems.
1.4. Outline and Notation
2. System Model
2.1. CA-OFDM Communication Model
2.2. Echo Sensing Model
3. LoS and Echo Sensing-aided CE
3.1. Sensing Information Extraction
3.1.1. LoS Sensing
3.1.2. Echo Sensing Information Extraction
3.2. CE Enhancement for PCC
3.2.1. Sensing-based Prior Information Derivation
3.2.2. Sensing-aided CE for PCC
3.3. Sensing and Path-Sharing-aided Channel Reconstruction for SCCs
3.3.1. LoS path-based Reconstruction
3.3.2. NLoS path-based Reconstruction
3.3.3. Iterative Channel Reconstruction and Enhancement for SCCs
4. Simulation Results and Analysis
4.1. Parameter Settings
- LS: Classic least squares with linear interpolation;
- DFT_based: LS with DFT enhancement;
- OMP_based: Classic CS-based CE scheme;
- LoS_based: LoS sensing-based CE enhancement scheme in [16];
- LS_DD: LS enhancement with sensing-aided scheme in DD domain in [31];
- Path_gains_based: Path gain-based CE enhancement scheme in [32];
- Prop_PCC: Proposed CE enhancement scheme for PCC;
- Prop_SCC: Proposed channel reconstruction scheme for SCC;
- Prop_iter: Proposed iterative Channel Reconstruction and Enhancement for SCC;
4.2. Computational Complexity Analysis
4.3. Effectiveness Analysis
4.4. Robustness Analysis
4.4.1. Robustness Against Velocity v
4.4.2. Robustness Against Path-number Difference
4.4.3. Robustness Against Carrier Frequency of SCC
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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