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受下游引水影响的流量简测模型
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作者 王中华 《南水北调与水利科技》 CAS CSCD 1997年第1期40-43,共4页
本文以绵右渠地都站多线多点法实测流量资料为依据,从模拟垂线流速分布着手,揭示了下游电站引水对测流断面垂线流速的影响,进而得出符合《水文测验规范》要求的流量简测模型。
关键词 绵右渠 垂线流速分布 发电状态 简测模型
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RS-SVM forecasting model and power supply-demand forecast 被引量:4
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作者 杨淑霞 曹原 +1 位作者 刘达 黄陈锋 《Journal of Central South University》 SCIE EI CAS 2011年第6期2074-2079,共6页
A support vector machine (SVM) forecasting model based on rough set (RS) data preprocess was proposed by combining the rough set attribute reduction and the support vector machine regression algorithm, because there a... A support vector machine (SVM) forecasting model based on rough set (RS) data preprocess was proposed by combining the rough set attribute reduction and the support vector machine regression algorithm, because there are strong complementarities between two models. Firstly, the rough set was used to reduce the condition attributes, then to eliminate the attributes that were redundant for the forecast, Secondly, it adopted the minimum condition attributes obtained by reduction and the corresponding original data to re-form a new training sample, which only kept the important attributes affecting the forecast accuracy. Finally, it studied and trained the SVM with the training samples after reduction, inputted the test samples re-formed by the minimum condition attributes and the corresponding original data, and then got the mapping relationship model between condition attributes and forecast variables after testing it. This model was used to forecast the power supply and demand. The results show that the average absolute error rate of power consumption of the whole society and yearly maximum load are 14.21% and 13.23%, respectively, which indicates that the RS-SVM forecast model has a higher degree of accuracy. 展开更多
关键词 rough set (RS) support vector machine (SVM) power supply and demand FORECAST
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