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Hybrid neural-phenomenological sub-models and its application to Earth-space path signal attenuation prediction

机译:混合神经现象学子模型及其在地空路径信号衰减预测中的应用

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Neural models may be very precise but, being numerical, provide only limited contribution to the understanding of the phenomenological process, contrary to phenomenological models. In this paper we use neural techniques to evaluate and to provide information on the sub-models that composes a phenomenological model. We also show how some hybrid neural-phenomenological sub-models may be used to maximally preserve the phenomenological information while providing numerical precision. The problem of radio wave degradation by rain is critical for the design of reliable Earth-satellite communication links operating above 10 GHz. Phenomenological models available in the literature are complex and show poor accuracy, and so are good candidates for the proposed technique. The use of this technique in the UIT-R model presented very interesting results.
机译:神经模型可能非常精确,但是数值,仅对对现象学过程的理解提供有限的贡献,与现象学模型相反。在本文中,我们使用神经技术来评估并提供有关组成现象学模型的子模型的信息。我们还展示了一些混合神经现象学子模型可以用于在提供数值精度的同时最大地保持现象学信息。通过雨降级的无线电波劣化的问题对于在10GHz以上工作的可靠地球卫星通信链路设计至关重要。文献中可用的现象学模型很复杂并表现出较差的准确性,所以提出的技术是良好的候选者。在UIT-R模型中使用这种技术呈现了非常有趣的结果。

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