私密直播全婐app免费大渔直播,国产av成人无码免费视频,男女同房做爰全过程高潮,国产精品自产拍在线观看

相關鏈接
聯系方式
  • 通信地址:天津市西青區賓水西道399號天津工業大學化學與化工學院化學工程與工藝系6D518
  • 郵編:300387
  • 電話:022-83955663
  • 傳真:022-83955663
  • Email:bianxihui@163.com
當前位置:> 首頁 > 論文著作 > 正文
A boosting extreme learning machine for nearinfrared spectral quantitative analysis of diesel fuel and edible blend oil samples
作者:Xihui Bian*, Caixia Zhang, Xiaoyao Tan, Michal Dymek, Yugao Guo, Ligang Lin, Bowen Cheng, Xiaoyu
關鍵字:Extreme learning machine, Ensemble modeling, Boosting, Complex samples, Near-infrared spectroscopy
論文來源:期刊
具體來源:Analytical Methods, 2017, 9, 2983-2989
發表時間:2017年
Extreme learning machine (ELM) has drawn increasing attention due to its characteristics of simple structure, high learning speed and excellent performance. However, a single ELM tends to low predictive accuracy and instability in dealing with quantitative analysis of complex samples. To further improve the predictive accuracy and stability of ELM, a new quantitative model, called boosting ELM is proposed. In the approach, a large number of ELM sub-models are sequentially built by selecting a certain number of samples from the original training set according to the distribution of the sampling weights, and then their predictions aggregate by weighted median. Activation function and the hidden nodes number of ELM sub-model are determined simultaneously by the ratio of mean value and standard deviation of correlation coefficients (MSR). The performance of the proposed method is tested with diesel fuel and blended edible oil samples. Compared with partial least squares (PLS) and ELM, the results demonstrate that boosting ELM is an efficient ensemble model and has obvious superiorities in predictive accuracy and stability. Therefore, the proposed method may be an alternative for near-infrared (NIR) spectral quantitative analysis of complex samples
主站蜘蛛池模板: 晋中市| 乐亭县| 敦煌市| 周至县| 襄樊市| 广西| 通化县| 湖南省| 临桂县| 潞西市| 阜康市| 静乐县| 敖汉旗| 鄱阳县| 双牌县| 德江县| 德钦县| 内乡县| 威海市| 永修县| 浙江省| 山阴县| 琼中| 西青区| 嘉峪关市| 青龙| 顺平县| 定结县| 佛冈县| 华坪县| 潮安县| 肃宁县| 镇巴县| 临邑县| 富宁县| 福清市| 巴楚县| 芦山县| 天台县| 镇巴县| 榆树市|