人工智能实时监测马德拉河上的原木:以吉劳水电站为例

Q2 Social Sciences
E. B. A. Peixoto, E. Chiarani, W. Farias, B. Polli, R. Penteado, C. Freitas, D. Silva, J. A. Centeno
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引用次数: 0

摘要

摘要Rondônia的Jirau和Santo Antônio水电站采用了一种方法,使用高范围摄像头和人工智能技术来应对洪水期间管理河流运输的原木的挑战。通过应用机器学习技术和神经网络,该系统自动监测原木的运输和积累。Python3以及OpenCV、PIL、Numpy和Pytorch等库被用于高效实现。该方法包括帧选择、原木和碎片分割、透视校正和原木计数。使用注释图像进行训练,检测过程包括颜色分割、噪声去除和形态学操作。计算的日志和碎片占用率结果存储在SQL数据库中,并显示在Power BI仪表板上。该系统旨在改善日志管理,确保发电和生态秩序得到保障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ARTIFICIAL INTELLIGENCE FOR REAL-TIME MONITORING OF LOGS ON THE MADEIRA RIVER: A CASE STUDY ON JIRAU HYDROELECTRIC PLANT
Abstract. The Jirau and Santo Antônio hydroelectric plants in Rondônia implemented a methodology using high-range cameras and artificial intelligence technology to address the challenge of managing logs transported by the river during floods. By applying machine learning techniques and neural networks, the system automatically monitors log transport and accumulation. Python 3, along with libraries like OpenCV, PIL, Numpy, and Pytorch, was utilized for efficient implementation. The methodology includes frame selection, log and debris segmentation, perspective correction, and log counting. Training was conducted using annotated images, and the detection process involved color segmentation, noise removal, and morphological operations. The calculated log and debris occupancy results were stored in a SQL database and presented on Power BI dashboards. The system aims to improve log management, ensuring power generation and ecological order are safeguarded.
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来源期刊
CiteScore
1.70
自引率
0.00%
发文量
949
审稿时长
16 weeks
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