男女羞羞视频在线观看,国产精品黄色免费,麻豆91在线视频,美女被羞羞免费软件下载,国产的一级片,亚洲熟色妇,天天操夜夜摸,一区二区三区在线电影
Global EditionASIA 中文雙語Fran?ais
China
Home / China / Innovation

Chinese researchers develop new algorithm to recognize coronal mass ejections

Xinhua | Updated: 2024-04-22 08:56
Share
Share - WeChat

BEIJING -- Chinese researchers have developed a new algorithm to automatically derive kinematic parameters of coronal mass ejections (CMEs) based on machine learning, according to a recent research article published in the Astrophysical Journal Supplement Series, highlighting the great significance of this algorithm in predicting catastrophic space weather.

CMEs are large scale masses of plasma thrown from the sun into interplanetary space and are considered the largest form of energy release in the solar system. They constitute the major source of severe space weather events, with the potential to cause enormous damage to humans and spacecraft in space.

It is becoming increasingly important to detect and track CMEs, since there are now more space activities and facilities, the study noted.

The study of the revolution of CMEs in solar corona and interplanetary space is a major topic in the field of space weather, and so too the positional relations between CMEs and Earth's orbit, according to Shen Fang, a researcher with the National Space Science Center of the Chinese Academy of Sciences.

Their method consisted of three steps -- recognition, tracking, and determination of parameters.

First, the researchers trained a neural network to judge whether there were CMEs observed in images. Next, they acquired binary-labeled CME regions. Finally, they tracked a CME's motion in time-series images and determined the CME's kinematic parameters such as velocity, angular width, and central position angle.

The algorithm can identify relatively weak CME signals and generate accurate morphology information concerning CMEs, said Shen. It is expected to assist with real-time CME warnings and predictions.

Top
BACK TO THE TOP
English
Copyright 1995 - . All rights reserved. The content (including but not limited to text, photo, multimedia information, etc) published in this site belongs to China Daily Information Co (CDIC). Without written authorization from CDIC, such content shall not be republished or used in any form. Note: Browsers with 1024*768 or higher resolution are suggested for this site.
License for publishing multimedia online 0108263

Registration Number: 130349
FOLLOW US
 
主站蜘蛛池模板: 华阴市| 长治市| 杨浦区| 兴安盟| 都匀市| 曲麻莱县| 大竹县| 双城市| 简阳市| 定远县| 鸡东县| 安顺市| 策勒县| 武隆县| 潞西市| 南投县| 积石山| 白银市| 称多县| 鸡泽县| 丰台区| 囊谦县| 锦州市| 得荣县| 舞钢市| 玛沁县| 广昌县| 甘洛县| 察雅县| 旬阳县| 西宁市| 桃园县| 天水市| 延安市| 扶绥县| 宣化县| 连平县| 类乌齐县| 景宁| 荣昌县| 甘德县| 福州市| 南通市| 台东市| 阿拉善右旗| 延长县| 庆元县| 突泉县| 汽车| 金沙县| 岳阳市| 吴忠市| 高淳县| 宜君县| 哈尔滨市| 新平| 平陆县| 崇义县| 延川县| 内黄县| 永兴县| 慈利县| 应城市| 长顺县| 元谋县| 英山县| 沂源县| 怀远县| 桦南县| 玛曲县| 凌源市| 龙泉市| 南郑县| 虹口区| 三穗县| 吉首市| 延川县| 平山县| 宁晋县| 灯塔市| 砀山县| 克拉玛依市|