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某污水源热泵系统工程设计及应用分析 被引量:1
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作者 刘江涛 《工程质量》 2012年第5期59-62,共4页
为解决阳泉市某污水源热泵空调工程的技术难题和投资控制,对该工程的取水量、取水方案、污水源热泵系统集成等进行了设计计算和分析,而后将污水源热泵系统与常规系统进行了经济性比较、节能性比较和环境影响评价。项目设计空间节省量大... 为解决阳泉市某污水源热泵空调工程的技术难题和投资控制,对该工程的取水量、取水方案、污水源热泵系统集成等进行了设计计算和分析,而后将污水源热泵系统与常规系统进行了经济性比较、节能性比较和环境影响评价。项目设计空间节省量大,构思新颖,技术含量高,和周围环境相得益彰。 展开更多
关键词 污水源热泵 一体化污水源热泵机组 污水取水 节能性比较
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The first all-season sample set for mapping global land cover with Landsat-8 data 被引量:25
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作者 Congcong Li Peng Gong +18 位作者 Jie Wang Zhiliang Zhu Gregory S. Biging Cui Yuan Tengyun Hu Haiying Zhang Qi Wang Xuecao Li Xiaoxuan Liu Yidi Xu Jing Guo Caixia Liu Kwame O. Hackman Meinan Zhang Yuqi Cheng Le Yu Jun Yang Huabing Huang Nicholas Clinton 《Science Bulletin》 SCIE EI CAS CSCD 2017年第7期508-515,共8页
We report the world's first all-season training and validation sample sets for global land cover classification with Landsat-8 data.Prior to this,such samples were only available at a single date primarily from th... We report the world's first all-season training and validation sample sets for global land cover classification with Landsat-8 data.Prior to this,such samples were only available at a single date primarily from the growing season.It is unknown how much limitation such a single-date sample has to mapping global land cover in other seasons of the year.To answer this question,we selected available Landsat-8 images from four seasons and collected training and validation samples from them.We compared the performances of training samples in different seasons using Random Forest algorithm.We found that the use of training samples from any individual season would result in the best overall classification accuracy when validated by samples in the same season.The global overall accuracy from combined best seasonal results was 67.2% when classifying the 11 Level-1 classes in the Finer Resolution Observation and Monitoring of Global Land Cover(FROM-GLC) classification system.The use of training samples from all seasons(named all-season training sample set hereafter) produced an overall accuracy of 67.0%.We also tested classification within 10° latitude 60° longitude zones using all-season training subsample within each zone and obtained an overall accuracy of 70.2%.This indicates that properly grouped subsamples in space can help improve classification accuracies.All the results in this study seem to suggest that it is possible to use an all-season training sample set to reach global optimality with universal applicability in classifying images acquired at any time of a year for global land cover mapping. 展开更多
关键词 Training sample VALIDATION Latitudinal zones Anytime ANYWHERE
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