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 selective ensemble preprocessing strategy for near-infrared spectral quantitative analysis of complex samples
作者:Xihui Bian*, Kaiyi Wang , Erxuan Tan, Pengyao Diwu , Fei Zhang, Yugao Guo
關鍵字:Preprocessing method; Ensemble; Full factorial design; Multivariate calibration; Near-infrared spectroscopy; Partial least squares
論文來源:期刊
具體來源:Chemometrics and Intelligent Laboratory Systems, 2020, 10.1016/j.chemolab.2019.103916
發表時間:2020年

Preprocessing of raw near-infrared (NIR) spectra is typically required prior to multivariate calibration since the measured spectra of complex samples are often subject to overwhelming background, light scattering, varying noises and other unexpected factors. Various preprocessing methods have been developed aimed at removing or reducing the interference of these effects. However, it is usually difficult to determine the best preprocessing method for a given data. Instead of selecting the best one, a selective ensemble preprocessing strategy is proposed for NIR spectral quantitative analysis. Firstly, numerous preprocessing methods and their combinations are obtained by full factorial design in order of baseline correction, scattering correction, smoothing and scaling. Then partial least squares (PLS) model is built for each preprocessing method. The models which have better predictions than PLS are selected and their predictions are averaged as the final prediction. The performance of the proposed method was tested with corn, blood and edible blend oil samples. Results demonstrate that the selective ensemble preprocessing method can give comparative or even better results than the traditional selected best preprocessing method. Therefore, in the framework of selective ensemble preprocessing, more accurate calibration can be obtained without searching the best preprocessing method.

主站蜘蛛池模板: 安图县| 奉新县| 资中县| 咸阳市| 蓝山县| 白城市| 民县| 尼玛县| 太仓市| 尖扎县| 广州市| 富平县| 运城市| 颍上县| 息烽县| 清水河县| 德保县| 米林县| 柳林县| 如皋市| 根河市| 明水县| 庆元县| 古田县| 兴化市| 上犹县| 南京市| 萍乡市| 大宁县| 唐海县| 衡东县| 怀宁县| 铁力市| 铁岭县| 巴彦淖尔市| 衡水市| 克拉玛依市| 雅安市| 岳阳县| 曲阳县| 沙洋县|