LI Hai, SHANG Jin-lei, SUN Ting-yi, et al. A BNT Hydrometeor Classification Algorithm for Dual-Polarization Radar[J]. Acta Electronica Sinica, 2021, 49(3): 619-624.
DOI:
LI Hai, SHANG Jin-lei, SUN Ting-yi, et al. A BNT Hydrometeor Classification Algorithm for Dual-Polarization Radar[J]. Acta Electronica Sinica, 2021, 49(3): 619-624. DOI: 10.12263/DZXB.20191217.
A BNT Hydrometeor Classification Algorithm for Dual-Polarization Radar
The over-reliance on expert experience and model preset errors in traditional precipitation particle classification algorithms are discussed. This paper proposes a dual-polarization hydrometeor classification (HC) method based on discrete attribute Bayesian NeTwork (BNT). Firstly
the value of polarization parameters obtained by the dual-polarization meteorological radar is discretized to generate a discretization standard
and the training data set is made according to the discretization standard. Then the training data set is used to learn the structure of the Bayesian network and the conditional probability table matching the structure of the Bayesian network. At last
additional information is added to calculate the prior probability of each precipitation particle class
and the Bayesian network classifier is composed of Bayesian network structure and conditional probability table. The trained Bayesian network classifier classifies the precipitation particles according to the maximum posterior probability criterion and compares the evaluation results with the fuzzy logic algorithm. Experiments show that this method can effectively distinguish different precipitation particles.