亚洲аv天堂无码,久久aⅴ无码一区二区三区,96免费精品视频在线观看,国产2021精品视频免费播放,国产喷水在线观看,奇米影视久久777中文字幕 ,日韩在线免费,91spa国产无码

      Stanford researchers use machine learning to improve efficiency in environmental protection

      Source: Xinhua| 2019-04-09 14:45:06|Editor: mingmei
      Video PlayerClose

      SAN FRANCISCO, April 8 (Xinhua) -- Researchers with Stanford University are employing new artificial intelligence (AI) technology to improve the efficiency of environmental protection by accurately detecting and identifying sources of possible pollution from animal farms, a Stanford newsletter said Monday.

      Stanford law professor Daniel Ho and his PhD student Cassandra Handan-Nader have found a way for machine learning to efficiently locate industrial animal operations on farms in the United States and help regulators assess environmental risks on each facility, said the Stanford Report, a newsletter delivering news about the university community via email.

      The newsletter said the U.S. Environmental Protection Agency has regarded agriculture as the leading source of pollutants into the country's water supply system.

      A huge proportion of the pollution was believed to come from large-scale, concentrated animal feeding operations, known as CAFOs, said the Stanford Report.

      The scarcity of CAFOs information has in some cases made it virtually impossible for regulators to monitor potential facilities that discharge pollutants into U.S. waterways, according to the newsletter.

      "This information deficit stifles enforcement of the environmental laws of the United States," Ho said.

      In order to improve environmental protection, Ho and Handan-Nader, who were helped by a group of students in economics and computer science with data analysis, resorted to several open source tools to retrain an existing image-recognition model to look for large-scale animal facilities.

      The Stanford researchers used the data collected by two nonprofit groups and the enormous database of satellite images by the U.S. Department of Agriculture in an effort to detect poultry facilities in North Carolina.

      They found their algorithm could find 15 percent more poultry farms than through manual enumeration, said the newsletter.

      "The model detected 93 percent of all poultry CAFOs in the area and was 97 percent accurate in determining which ones appeared after the feed mill opened," the two Stanford researchers wrote in their paper published in the online journal Nature Sustainability on Monday.

      They believed their algorithm could map 95 percent of the existing large-scale animal farms with fewer than 10 percent of the resources spent on manual counting of those locations.

      TOP STORIES
      EDITOR’S CHOICE
      MOST VIEWED
      EXPLORE XINHUANET
      010020070750000000000000011100001379625001
      主站蜘蛛池模板: 国产熟女av一区二区三区四季| 神马不卡一区二区三级| 久草视频在线这里只有精品| 91麻豆国产香蕉久久精品| 国产成人自产拍免费视频| 亚洲国产一区二区精品在线观看| 欧美手机在线视频| 国产色无码专区在线观看| 午夜无码熟熟妇丰满人妻| 久久久亚洲欧洲日产国码是AV| 国产美女黄性色av网站| 亚洲一级免费毛片| L日韩欧美看国产日韩欧美| 日韩精品成人一区二区三区| 91久国产在线观看| 一本大道久久a久久综合| 色偷偷一区二区无码视频| 国产成人精品白浆久久69| 亚洲国产视频精品一区二区| 永久免费在线观看蜜桃视频 | 亚洲视频在线观看第一页| 亚洲国产欧美国产综合久久 | 一本久久精品久久综合桃色| 新安县| 亚洲区精选网址| 欧美日韩在线视频| 欧美熟妇另类久久久久久不卡| 新平| 成人免费无码视频在线网站| 日韩在线永久免费播放| 色翁荡息又大又硬又粗又视频图片| 沂南县| 嗯啊 不要 啊啊在线日韩a| 东京热人妻丝袜无码AV一二三区观 | 男人的天堂av网站| 午夜三级理论a三级| 女人高潮被爽到呻吟观看| 国产精品毛片无码久久| 国产精品鲁鲁鲁| 国产毛片A啊久久久久| 久久精品这里就是精品|