Hybrid Channel Modeling and Environment Reconstruction for Terahertz Monostatic Sensing
THz ISAC aims to integrate novel functionalities, such as positioning and environmental sensing, into communication systems. Accurate channel modeling is crucial for the design and performance evaluation of future ISAC systems. In this paper, a THz measurement campaign for monostatic sensing is pres...
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Zusammenfassung: | THz ISAC aims to integrate novel functionalities, such as positioning and
environmental sensing, into communication systems. Accurate channel modeling is
crucial for the design and performance evaluation of future ISAC systems. In
this paper, a THz measurement campaign for monostatic sensing is presented.
VNA-based channel measurements are conducted in a laboratory scenario, where
the transmitter and receiver are positioned together to mimic monostatic
sensing. The centering frequency and measured bandwidth for these measurements
are 300 GHz and 20 GHz, respectively. A DSS scheme is employed to capture
spatial sensing channel profiles. Measurements are conducted across 28
transceiver locations arranged along an 'L'-shaped route. Then, an element-wise
SAGE algorithm is used to estimate the MPC parameters, i.e., amplitude and
delay. Specular and diffuse reflections are analyzed based on geometric
principles and the estimated MPC parameters, where the effects from the
radiation pattern are observed. A geometry-based MPC trajectory tracking
algorithm is then proposed to classify the MPCs and de-embed the effects of the
radiation pattern. Following this algorithm, a hybrid channel model is proposed
based on the de-embedded MPC parameters. In this hybrid channel model for
monostatic sensing, the MPCs are categorized into target-related and
environment-related components. The target-related components are utilized for
target detection and identification, while the environment-related ones focus
on geometrical scenario reconstruction. A demonstration of geometrical
environment reconstruction, along with an analysis of reflection loss for
target identification, is subsequently presented. This work offers valuable
insights into THz monostatic sensing channel modeling and the design of future
THz ISAC systems. |
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DOI: | 10.48550/arxiv.2411.07683 |