This paper introduces a physics-informed machine learning approach for pathloss prediction. This is achieved by including in the training phase simultaneously (i) physical dependencies between spatial loss field and (ii) measured pathloss values in the field. It is shown that the solution to a proposed learning problem improves generalization and prediction quality with a small number of neural network layers and parameters. The latter leads to fast inference times which are favorable for downstream tasks such as localization. Moreover, the physics-informed formulation allows training and prediction with small amount of training data which makes it appealing for a wide range of practical pathloss prediction scenarios.
翻译:本文介绍了一种了解物理的机器学习方法,用于病理损失预测,其实现途径是同时在培训阶段纳入(一)空间损失字段与(二)实地测得病理损失值之间的物理依赖性,并表明,解决拟议的学习问题的办法通过少量神经网络层和参数提高了一般化和预测质量,后者导致快速推导时间,有利于下游任务,例如定位;此外,根据物理了解的提法允许以少量培训数据进行培训和预测,从而吸引了广泛的实际病理损失预测情景。