Sionna RT: Differentiable Ray Tracing for Radio Propagation Modeling

2023 IEEE Globecom Workshops (GC Wkshps)(2023)

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摘要
Sionna is a GPU-accelerated open-source library for link-level simulations based on TensorFlow. Its latest release (v0.14) integrates a differentiable ray tracer (RT) for the simulation of radio wave propagation. This unique feature allows for the computation of gradients of the channel impulse response and other related quantities with respect to many system and environment parameters, such as material properties, antenna patterns, array geometries, as well as transmitter and receiver orientations and positions. In this paper, we outline the key components of Sionna RT and showcase example applications such as learning radio materials and optimizing transmitter orientations by gradient descent. While classic ray tracing is a crucial tool for 6G research topics like reconfigurable intelligent surfaces, integrated sensing and communications, as well as user localization, differentiable ray tracing is a key enabler for many novel and exciting research directions, for example, digital twins.
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关键词
Radio Propagation,Ray Tracing,Differentiable Ray Tracing,Material Properties,Gradient Descent,TensorFlow,Antenna Pattern,Digital Twin,Reconfigurable Intelligent Surface,Array Geometry,Dielectric Constant,Imaging Methods,Learning Materials,Antenna Array,Propagation Path,Orthogonal Frequency Division Multiplexing,Objects In The Scene,OpenStreetMap,Specular Reflection,Jupyter Notebook,Channel Frequency Response,Mapping Coverage,Scene Regions,Signal-to-interference-plus-noise Ratio
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