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Determination of corn protein content using near-infrared spectroscopy combined with A-CARS-PLS

Xiaohong Wu, Shupeng Zeng, Haijun Fu, Bin Wu, Haoxiang Zhou, Chunxia Dai

2023Food Chemistry X44 citationsDOIOpen Access PDF

Abstract

In order to quickly and accurately determine the protein content of corn, a new characteristic wavelength selection algorithm called anchor competitive adaptive reweighted sampling (A-CARS) was proposed in this paper. This method first lets Monte Carlo synergy interval PLS (MC-siPLS) to select the sub-intervals where the characteristic variables exist and then uses CARS to screen the variables further. A-CARS-PLS was compared with 6 methods, including 3 feature variable selection methods (GA-PLS, random frog PLS, and CARS-PLS) and 2 interval partial least squares methods (siPLS and MWPLS). The results showed that A-CARS-PLS was significantly better than other methods with the results: RMSECV = 0.0336, R2c = 0.9951 in the calibration set; RMSEP = 0.0688, R2p = 0.9820 in the prediction set. Furthermore, A-CARS reduced the original 700-dimensional variable to 23 variables. The results showed that A-CARS-PLS was better than some wavelength selection methods, and it has great application potential in the non-destructive detection of protein content in corn.

Topics & Concepts

Partial least squares regressionFeature selectionCalibrationContent (measure theory)Near-infrared spectroscopyVariable eliminationMonte Carlo methodSet (abstract data type)Selection (genetic algorithm)Interval (graph theory)Artificial intelligenceMathematicsPattern recognition (psychology)ChemistryStatisticsComputer sciencePhysicsProgramming languageCombinatoricsMathematical analysisQuantum mechanicsInferenceSpectroscopy and Chemometric AnalysesWater Quality Monitoring and AnalysisAdvanced Chemical Sensor Technologies
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