Tropical cyclone intensity objective determination method based on satellite cloud chart and RVM

A technology of satellite cloud images and tropical cyclones, which is applied in the field of image processing technology and meteorological forecasting, and can solve problems affecting the accuracy and scope of application, error, and TC intensity of intensity determination, etc.

Active Publication Date: 2017-10-03
ZHEJIANG NORMAL UNIVERSITY
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Problems solved by technology

However, there is still room for improvement in three aspects of this type of method. First, the analysis area of ​​existing methods is fixed as the kernel area with a fixed radius around the center of the TC, but the scale of the kernel area of ​​different TCs varies. The size of the kernel will inevitably affect the accuracy and scope of application of the fixed strength
Second, the strength determination technology uses linear regression for modeling, and generally speaking, there is a complex nonlinear relationship between TC stren...

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  • Tropical cyclone intensity objective determination method based on satellite cloud chart and RVM
  • Tropical cyclone intensity objective determination method based on satellite cloud chart and RVM
  • Tropical cyclone intensity objective determination method based on satellite cloud chart and RVM

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Embodiment Construction

[0069] The present invention uses 132 TCs scanned by the FY-2 satellite from 2005 to 2014, including tropical storms, severe tropical storms, typhoons, strong typhoons and super typhoons. Since the yearbook data is at intervals of 3 hours or 6 hours, 2744 infrared 1-channel cloud images and 2744 water vapor channel cloud images at the same time were obtained after selection. The present invention provides a method for objectively determining the strength of TC based on satellite cloud images and RVM, including two aspects: taking the TC center as a reference point and each point as a reference point in turn, such as figure 1 with figure 2 Perform the following steps in sequence as shown. figure 1 Steps performed:

[0070] Step 1. Based on the Laplacian pyramid image fusion algorithm, the infrared 1 channel cloud image and the water vapor channel cloud image in the satellite cloud image are fused to obtain a fused cloud image;

[0071] Step 2 Use the yearbook data provide...

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Abstract

The invention provides a tropical cyclone intensity objective determination method based on a satellite cloud chart and an RVM. The method is used for constructing a tropical cyclone (TC) intensity objective determination model based on the satellite cloud chart and the RVM (relevance vector machine). The method mainly comprises the following two aspects: 1) carrying out fusion on infrared and water vapor channel cloud charts by utilizing a Laplacian pyramid algorithm, constructing a deviation angle-gradient co-occurrence matrix with the TC center as a reference point, constructing characteristic factors closely related to TC intensity by utilizing a plurality of statistical parameters in the co-occurrence matrix and information of TC kernel scale and center latitude and the like, and establishing the TC intensity objective determination model by utilizing the RVM; and 2) based on the fused satellite cloud chart, and with each point as the reference point in sequence, constructing a deviation angle-gradient co-occurrence matrix and calculating a minimum value, a median value and a mean value of a co-occurrence matrix statistical parameter array. The method constructs the characteristic factors closely related to TC intensity by utilizing the plurality of statistical parameters of the co-occurrence matrix parameter array and information of TC kernel scale and center latitude and the like, and establishes the TC intensity objective determination model by utilizing the RVM.

Description

technical field [0001] The invention belongs to the field of image processing technology and meteorological prediction. Specifically, it involves an objective method for determining the intensity of tropical cyclones based on satellite cloud images and Relevance Vector Machine (RVM) for the purpose of improving the accuracy of determining the intensity of tropical cyclones. Background technique [0002] Tropical Cyclone (TC) is a common disaster among many natural disasters that harm China. Its activities are accompanied by strong winds, heavy rains and storm surges, and even cause natural geological disasters such as landslides and mud-rock flows. Accurate forecasting of TC's intensity and path is crucial to preventing and mitigating its impact. [0003] In recent years, the development of various observation methods and numerical forecasting techniques at home and abroad has promoted the continuous improvement of the level of TC path forecasting, but the forecasting abili...

Claims

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Application Information

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IPC IPC(8): G06T5/50G06T7/45G06T7/60
CPCG06T5/50G06T7/45G06T7/60G06T2207/20016G06T2207/10032G06T2207/20221G06T2207/30192Y02A90/10
Inventor 张长江戴李杰
Owner ZHEJIANG NORMAL UNIVERSITY
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