研究目的
Reviewing statistical calibration strategies for carbonaceous aerosol quantification in US measurement networks using FT-IR spectroscopy.
研究成果
FT-IR spectroscopy with statistical calibration can accurately predict TOR-equivalent OC and EC concentrations, providing a cost-effective alternative for aerosol monitoring. The review outlines a comprehensive framework for model building, evaluation, and maintenance, emphasizing the importance of sample selection, spectral processing, and error anticipation. Future work should focus on improving model interpretability, handling compositional changes, and expanding to other substances.
研究不足
The calibration models are specific to the chemical composition and sampling protocols of the networks studied, limiting generalizability. Challenges include handling scattering contributions, extrapolation to new samples with different compositions, and the operational definition of TOR EC. The need for collocated measurements for calibration may restrict application where such data are unavailable.
1:Experimental Design and Method Selection:
The study uses a data-driven approach with partial least squares (PLS) regression to build calibration models for FT-IR spectra using collocated ambient measurements of organic carbon (OC) and elemental carbon (EC) from thermal-optical reflectance (TOR). The methodology involves spectral processing (e.g., baseline correction, derivative methods), variable selection, and model evaluation through cross-validation and test sets.
2:Sample Selection and Data Sources:
Samples are collected from the IMPROVE network (7 sites in 2011, 794 samples) and the Chemical Speciation Network (CSN, 10 sites in 2013, 1035 samples), with additional data from 2013 IMPROVE samples for operational evaluation. PTFE filters are used for FT-IR analysis, and quartz filters for TOR measurements.
3:List of Experimental Equipment and Materials:
FT-IR spectroscopy instruments (Tensor 27 or Tensor II, Bruker Optics), PTFE filters (Pall Corp. or Whatman/MTL), quartz filters for TOR, custom-built sample chambers, liquid nitrogen-cooled detectors.
4:Experimental Procedures and Operational Workflow:
Samples are analyzed without pretreatment in transmission mode, with spectra acquired and absorbance calculated using empty chamber references. Daily and weekly quality control checks are performed, including duplicate spectra and stability monitoring. Calibration models are built and evaluated using PLS regression with various spectral preprocessing techniques.
5:Data Analysis Methods:
Data analysis includes PLS regression for model building, cross-validation for parameter selection, and metrics such as root-mean-square error (RMSE), bias, and coefficient of determination (R2) for evaluation. Outlier detection and model interpretation are conducted using methods like Mahalanobis distance and variable importance in projection (VIP).
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