Power transmission wire wind damage early warning method and terminal based on deep learning
The invention discloses a transmission line wind damage early warning method and a terminal based on deep learning, and the method comprises the following steps: starting a camera to collect an imageif the current wind power level exceeds a first threshold value; performing instance segmentation and...
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Format | Patent |
Language | Chinese English |
Published |
07.02.2020
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Abstract | The invention discloses a transmission line wind damage early warning method and a terminal based on deep learning, and the method comprises the following steps: starting a camera to collect an imageif the current wind power level exceeds a first threshold value; performing instance segmentation and comparison on the acquired image and a pre-stored safe distance image through a deep learning model, and determining the offset amplitude of the power transmission wire and the ratio of the distance between every two phase sequence wires A, B and C to the safe distance; and if the deviation amplitude is not smaller than a second threshold value or any distance ratio is not larger than a third threshold value, sending out an early warning prompt. According to the power transmission wire wind damage early warning method and the terminal based on deep learning, wind damage early warning of the power transmission wire can be achieved, and losses are reduced.
本发明公开了一种基于深度学习的输电导线风害预警方法及终端,该方法包括以下步骤:若当前风力级别超过第一阈值,启动摄像头采集 |
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AbstractList | The invention discloses a transmission line wind damage early warning method and a terminal based on deep learning, and the method comprises the following steps: starting a camera to collect an imageif the current wind power level exceeds a first threshold value; performing instance segmentation and comparison on the acquired image and a pre-stored safe distance image through a deep learning model, and determining the offset amplitude of the power transmission wire and the ratio of the distance between every two phase sequence wires A, B and C to the safe distance; and if the deviation amplitude is not smaller than a second threshold value or any distance ratio is not larger than a third threshold value, sending out an early warning prompt. According to the power transmission wire wind damage early warning method and the terminal based on deep learning, wind damage early warning of the power transmission wire can be achieved, and losses are reduced.
本发明公开了一种基于深度学习的输电导线风害预警方法及终端,该方法包括以下步骤:若当前风力级别超过第一阈值,启动摄像头采集 |
Author | LIU SHITAO CAI BING GUO FEI HE NINGHUI MA WEI LI MEI LI GUIYING ZHANG ZHENYU MAI XIAOQING CHEN PENG JIA LU QIN FAXIAN WU MINRONG ZHAN GUOHONG ZHANG LIJUAN ZHANG LIZHONG WANG WEI WANG LIANG WAN PENG SHI YUANYUAN SHA WEIGUO GONG FANKUI WANG BO XU WEIJIA |
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DocumentTitleAlternate | 一种基于深度学习的输电导线风害预警方法及终端 |
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Snippet | The invention discloses a transmission line wind damage early warning method and a terminal based on deep learning, and the method comprises the following... |
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Title | Power transmission wire wind damage early warning method and terminal based on deep learning |
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