通过在各种安装环境中集成多厂商传感器,准确和早期地检测局部大雨

K. Hiroi, Yoshihito Seto, F. Matsumoto, Yuzo Taenaka, H. Ochiai, H. Ando, H. Yokoyama, Masaya Nakayama, H. Sunahara
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引用次数: 5

摘要

在本研究中,我们侧重于利用多传感器对局地暴雨(LHR)进行准确和早期的预报。传统的传感器,如雨量计和雷达,在积雨云覆盖传感器之前无法探测到LHR。相比之下,地面气象监测网(SMMNs)可以准确测量传感器附近的降雨量,从而比传统传感器更早地检测到LHR。通过在大城市周围均匀地放置传感器,SMMN在预测LHR方面应该是有用的。然而,由于大多数传感器被放置在不同的安装环境中,它们的原始传感器数据可能会根据周围环境(即高度和天空视图因素)而显着不同。因此,我们提出了一种SMMN的校准方案,该方案在不同的安装环境中使用了许多传感器,并实现了一种新的LHR预测系统,该系统可以产生准确和早期的LHR预测。实验证明,该系统比传统方案提前30分钟准确预测LHR。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accurate and early detection of Localized Heavy Rain by integrating multivendor sensors in various installation environments
In this study, we focus on the accurate and early prediction of Localized Heavy Rain (LHR) using multiple sensors. Traditional sensors, such as rain gauges and radar, cannot detect LHR until cumulonimbus clouds cover the sensors. In contrast, Surface Meteorological Monitoring Networks (SMMNs) can accurately measure rainfall in the vicinity of the sensors, thereby detecting LHR earlier than traditional sensors. By evenly placing the sensors around a large city, a SMMN should be useful in predicting LHR. However, since most sensors are placed in a different installation environment, their raw sensor data may significantly differ depending on their surrounding environment (i.e., altitude and sky view factor). Therefore, we propose a calibration scheme for a SMMN that utilizes many sensors in various installation environments and implement a novel LHR prediction system that produces accurate and early LHR predictions. Our system proved to accurately predict LHR 30 minutes earlier than traditional schemes.
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