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基于模糊逻辑识别云粒子相态的优化算法

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为准确且精细地识别云相态,提出一种基于模糊逻辑识别云相态的优化算法,基于不同云粒子特征参数对T函数系数进行了调整。考虑了回波反射率因子衰减和温度对云相态识别准确性的影响,利用毫米波云雷达订正后的回波反射率因子、径向速度、谱宽和微波辐射计探测的连续时空温度,作为优化后的模糊逻辑算法的输入参数。优化后的模糊逻辑算法在原有云粒子相态(冰晶、雪花、混合相态、液态云滴、毛毛雨和雨滴)识别的基础上,还可实现对过冷水和暖云滴的识别。利用该算法对2022年2月6日陕西省西安市一次降雪过程的云粒子相态进行识别,将近地面的云粒子相态结果与同址地面降水现象仪记录的降水粒子相态进行对比,二者探测的相态有较高的一致性,说明优化后的算法能准确且精细地识别云粒子相态。
Optimization Algorithm for Recognizing Phase States of Cloud Particles Based on Fuzzy Logic
Objective Phase state recognition of cloud particles is an important content in cloud physics research and also significant for inverting other cloud microphysical parameters.With the development of remote sensing detection technology,researchers have developed various recognition methods of cloud phase particles,such as decision tree recognition,classic statistical decision recognition,neural networks,clustering algorithms,and fuzzy logic algorithms.However,due to the complex characteristics of cloud particles,the radar information corresponding to different particles does not have absolute features,and there may be some overlap degree.Thus,recognition algorithms based on rigid threshold conditions are not well suitable for phase recognition and classification of cloud particles.Fortunately,the fuzzy logic recognition algorithm can improve this rigid threshold defect,but the accuracy of the T-function coefficients in fuzzy logic will directly determine the accuracy of the recognition results.To accurately and finely identify cloud phase states,we propose an optimization algorithm based on fuzzy logic to recognize the phase states of cloud particles.The optimized fuzzy logic algorithm can also recognize supercooled water and warm cloud droplets compared to the original fuzzy logic algorithm which can only recognize ice crystals,snow,mixed phases,liquid cloud droplets,drizzle,and raindrops.Methods Based on the induction and summary of a large number of aircraft and remote sensing instruments simultaneously observed data and comprehensive characteristic consideration of different cloud types,we adjust and optimize the T-function coefficients of fuzzy logic.A table of T-function coefficient parameters for different cloud phase particles is constructed as shown in Table 2.The corrected reflectivity factor,radial velocity,and spectral width detected by millimeter wave cloud radars with high spatiotemporal resolution,as well as the temperature detected by microwave radiometer,are adopted as input parameters for the optimized fuzzy logic algorithm.According to the phase recognition process of cloud particles shown in Fig.1,snow,ice,mixed phase,supercooled water,warm cloud droplets,drizzle,and rain in cloud particles can be identified.Results and Discussions The cloud particle phase of a snowfall observed on 6 February 2022 in Xi'an is inverted to verify the effectiveness and accuracy of the optimized algorithm.Additionally,we input the parameters(corrected reflectivity factor,radial velocity,spectral width,and temperature)that can characterize the features of cloud particles in Fig.3 into the optimized fuzzy logic algorithm,and obtain the phase recognition results of cloud particles shown in Fig.5.The cloud phase distribution in Fig.5(near the ground area,at a height of about 200 m)is highly consistent with the particle phase changes recorded by the ground precipitation phenomenon meter.Meanwhile,we also compare the recognition results of the optimized fuzzy logic algorithm(Fig.5)with the original fuzzy logic algorithm(Fig.4)and find that the optimized algorithm can identify supercooled water that cannot be recognized by the original algorithm,which is beneficial for explaining the particle phase transformation process and precipitation mechanism research in clouds.Conclusions We propose an optimized fuzzy logic algorithm by optimizing the asymmetric T-function coefficients and considering the effects of reflectivity factor attenuation and temperature on the accuracy of recognition results.The corrected reflectivity factor,radial velocity,spectral width,and spatiotemporal continuous temperature detected by the microwave radiometer are leveraged as input parameters for the optimized fuzzy logic algorithm.The optimized algorithm can accurately identify snow,ice,mixed phase,supercooled water,warm cloud droplets,drizzle,and rain particles in clouds,which would help study and invert cloud microscopic parameters.

atmospheric opticscloud particle phase recognitionfuzzy logic optimizationsupercooled watermillimeter wave cloud radar

袁云、狄慧鸽、高宇星、曹梅、华灯鑫

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西安理工大学机械与精密仪器工程学院,陕西西安 710048

西安市气象局,陕西西安 710016

大气光学 云粒子相态识别 模糊逻辑优化 过冷水 毫米波云雷达

国家自然科学基金重点项目国家自然科学基金国家重大科研仪器研制项目西安市科协青年人才托举计划项目西安理工大学博士创新基金

4213061241627807959202313017310-252072106

2024

光学学报
中国光学学会 中国科学院上海光学精密机械研究所

光学学报

CSTPCD北大核心
影响因子:1.931
ISSN:0253-2239
年,卷(期):2024.44(12)