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人体经络电脑诊断系统的研究 被引量:2
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作者 陈益洲 冯家冰 +4 位作者 吴侃 吴天福 范永永 赵宪民 陈益玲 《计算技术与自动化》 1997年第2期55-58,共4页
本文对人体经络电脑诊断系统进行了研究.提出了采用电脑和自制恒压力测量笔采集人体经络井穴等效电阻数据的方法。在系统软件设计中.采用了序列算法,与恒压力测量笔有机配合,成功地实现了经穴信息的准确采集;建立了病经筛选算法,... 本文对人体经络电脑诊断系统进行了研究.提出了采用电脑和自制恒压力测量笔采集人体经络井穴等效电阻数据的方法。在系统软件设计中.采用了序列算法,与恒压力测量笔有机配合,成功地实现了经穴信息的准确采集;建立了病经筛选算法,研制并绘出了经络信息相关图及经络病变信息表,二者能直观地反应出经络虚实概况.该系统适用于经穴诊断、体格普查、针炙临床、经络研究及中医示范教学. 展开更多
关键词 经络井穴 经络相关图 病变信息表 经络诊断 微机
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Digital Soil Mapping Using Artificial Neural Networks and Terrain-Related Attributes 被引量:3
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作者 Mohsen BAGHERI BODAGHABADI José Antonio MARTINEZ-CASASNOVAS +4 位作者 Mohammad Hasan SALEHI Jahangard MOHAMMADI Isa ESFANDIARPOOR BORUJENI Norair TOOMANIAN Amir GANDOMKAR 《Pedosphere》 SCIE CAS CSCD 2015年第4期580-591,共12页
Detailed soil surveys involve costly and time-consuming work and require expert knowledge. Since soil surveys provide information to meet a wide range of needs, new methods are necessary to map soils quickly and accur... Detailed soil surveys involve costly and time-consuming work and require expert knowledge. Since soil surveys provide information to meet a wide range of needs, new methods are necessary to map soils quickly and accurately. In this study, multilayer perceptron artificial neural networks(ANNs) were developed to map soil units using digital elevation model(DEM) attributes. Several optimal ANNs were produced based on a number of input data and hidden units. The approach used test and validation areas to calculate the accuracy of interpolated and extrapolated data. The results showed that the system and level of soil classification employed had a direct effect on the accuracy of the results. At the lowest level, smaller errors were observed with the World Reference Base(WRB)classification criteria than the Soil Taxonomy(ST) system, but more soil classes could be predicted when using ST(7 soils in the case of ST vs. 5 with WRB). Training errors were below 11% for all the ANN models applied, while the test error(interpolation error) and validation error(extrapolation error) were as high as 50% and 70%, respectively. As expected, soil prediction using a higher level of classification presented a better overall level of accuracy. To obtain better predictions, in addition to DEM attributes, data related to landforms and/or lithology as soil-forming factors, should be used as ANN input data. 展开更多
关键词 digital elevation model attributes multilayer perceptron soil classification soil-forming factors soil survey
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