蜜臀av性久久久久|国产免费久久精品99|国产99久久久久久免费|成人精品一区二区三区在线|日韩精品一区二区av在线|国产亚洲欧美在线观看四区|色噜噜综合亚洲av中文无码|99久久久国产精品免费播放器

Stanford AI-powered research locates nearly all solar panels across U.S.

Source: Xinhua| 2018-12-21 07:31:01|Editor: Xiaoxia
Video PlayerClose

SAN FRANCISCO, Dec. 20 (Xinhua) -- Scientists from U.S. Stanford University can easily locate almost every solar panel installed across the United States by resorting to a deep-learning-powered tool that sorts more than 1 billion satellite images, a new study shows.

The Stanford scientists worked out a deep learning system called DeepSolar, which mapped about 1.7 million visible solar panels by analyzing more than 1 billion high-resolution satellite images with a machine learning algorithm and identified nearly every solar power installation in the contiguous 48 states.

The research team trained the machine learning DeepSolar program to find solar panel installations, whether they are large solar farms or individual rooftop facilities, by providing it with about 370,000 images, each covering about 100 feet (about 30.4 meters) by 100 feet.

DeepSolar learned to identify features of the solar panels such as color, texture and size without being taught by humans.

By using this new approach, the researchers were able to analyze the billion satellite images to find solar installations -- a workload that would have taken existing technology years to complete, but was done within one month with the help of DeepSolar.

"We can use recent advances in machine learning to know where all these assets are, which has been a huge question, and generate insights about where the grid is going and how we can help get it to a more beneficial place," said Ram Rajagopal, associate professor of civil and environmental engineering at Stanford.

The results of the research, which was published Wednesday in the science journal Joule, can help governments decide on renewable energy strategies, track the distribution of install solar panels or plan for optimal economic development in a given community.

"We are making this public so that others find solar deployment patterns, and build economic and behavioral models," said Arun Majumdar, a professor of mechanical engineering at Stanford who is also a co-supervisor of the project.

TOP STORIES
EDITOR’S CHOICE
MOST VIEWED
EXPLORE XINHUANET
010020070750000000000000011100001376883991
安阳县| 固阳县| 罗源县| 余庆县| 越西县| 依兰县| 出国| 水城县| 抚远县| 炉霍县| 平谷区| 长治县| 石柱| 拜城县| 砚山县| 仁怀市| 福安市| 镇坪县| 乡城县| 福泉市| 兰溪市| 丰都县| 二连浩特市| 赣榆县| 逊克县| 海宁市| 兖州市| 分宜县| 卫辉市| 晋中市| 隆德县| 乐清市| 西昌市| 新乐市| 福贡县| 调兵山市| 衡山县| 新巴尔虎右旗| 谷城县| 桐城市| 渑池县|