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大数据及机器学习技术在水资源智能监测与环境传感技术中的应用
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作者 孔令兮 郑倩 《水上安全》 2024年第19期62-64,共3页
本文旨在探讨基于大数据和机器学习技术的水资源智能监测方法,以及环境传感技术在勘测中的应用。研究首先概述了水资源监测与环境传感技术的发展现状,随后介绍了如何利用大数据处理和分析技术提升水资源监测的效率和精度。其次,文章详... 本文旨在探讨基于大数据和机器学习技术的水资源智能监测方法,以及环境传感技术在勘测中的应用。研究首先概述了水资源监测与环境传感技术的发展现状,随后介绍了如何利用大数据处理和分析技术提升水资源监测的效率和精度。其次,文章详细阐述了机器学习算法在水资源智能监测中的应用,并通过案例分析验证了相关技术的实际效果。研究最后总结了现有技术的优势和挑战,并对未来的研究方向进行了展望。 展开更多
关键词 大数据 机器学习 水资源监测 环境传感技术 智能监测
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全数字三端式湿度传感器
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《电工技术》 2002年第4期9-9,共1页
北京委息通环境测控技术中心卫华传感工程开发部与北京大学密切合作,制成全数字三端式 MEMS 湿度传感器。该传感器体积小、精度高、互换性好、使用寿命长。
关键词 全数字三端式湿度 互换性 使用寿命 北京委息通环境测控技术中心卫华工程开发部 北京大学
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Environmental impact prediction using remote sensing images
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作者 Pezhman ROUDGARMI Masoud MONAVARI +2 位作者 Jahangir FEGHHI Jafar NOURI Nematollah KHORASANI 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2008年第3期381-390,共10页
Environmental impact prediction is an important step in many environmental studies. A wide variety of methods have been developed in this concern. During this study, remote sensing images were used for environmental i... Environmental impact prediction is an important step in many environmental studies. A wide variety of methods have been developed in this concern. During this study, remote sensing images were used for environmental impact prediction in Ro-batkarim area, Iran, during the years of 2005~2007. It was assumed that environmental impact could be predicted using time series satellite imageries. Natural vegetation cover was chosen as a main environmental element and a case study. Environmental impacts of the regional development on natural vegetation of the area were investigated considering the changes occurred on the extent of natural vegetation cover and the amount of biomass. Vegetation data, land use and land cover classes (as activity factors) within several years were prepared using satellite images. The amount of biomass was measured by Soil-adjusted Vegetation Index (SAVI) and Normalized Difference Vegetation Index (NDVI) based on satellite images. The resulted biomass estimates were tested by the paired samples t-test method. No significant difference was observed between the average biomass of estimated and control samples at the 5% significance level. Finally, regression models were used for the environmental impacts prediction. All obtained regression models for prediction of impacts on natural vegetation cover show values over 0.9 for both correlation coefficient and R-squared. According to the resulted methodology, the prediction models of projects and plans impacts can also be developed for other environmental elements which may be derived using time series remote sensing images. 展开更多
关键词 Environmental impact Remote sensing PREDICTION VEGETATION BIOMASS
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