Content area
Calorific value and moisture content are the key indices to evaluate Caragana pellet fuel’s quality and combustion characteristics. Calorific value is the key index to measure the energy released by energy plants during combustion, which determines energy utilization efficiency. But at present, the determination of solid fuel is still carried out in the laboratory by oxygen bomb calorimetry. This has seriously hindered the ability of large-scale, rapid detection of fuel particles in industrial production lines. In response to this technical challenge, this study proposes using hyperspectral imaging technology combined with various chemometric methods to establish quantitative models for determining moisture content and calorific value in Caragana korshinskii fuel. A hyperspectral imaging system was used to capture the spectral data in the 935–1720 nm range of 152 samples from multiple regions in Inner Mongolia Autonomous Region. For water content and calorific value, three quantitative detection models, partial least squares regression (PLSR), random forest regression (RFR), and extreme learning machine (ELM), respectively, were established, and Monte Carlo cross-validation (MCCV) was chosen to remove outliers from the raw spectral data to improve the model accuracy. Four preprocessing methods were used to preprocess the spectral data, with standard normal variate (SNV) preprocessing performing best on the quantitative moisture content detection model and Savitzky–Golay (SG) preprocessing performing best on the calorific value detection method. Meanwhile, to improve the prediction accuracy of the model to reduce the redundant wavelength data, we chose four feature extraction methods, competitive adaptive reweighted sampling (CARS), successive pojections algorithm (SPA), genetic algorithm (GA), iteratively retains informative variables (IRIV), and combined the three models to build a quantitative detection model for the characteristic wavelengths of moisture content and calorific value of Caragana korshinskii fuel. Finally, a comprehensive comparison of the modeling effectiveness of all methods was carried out, and the SNV-IRIV-PLSR modeling combination was the best for water content prediction, with its prediction set determination coefficient
Details
Mean square errors;
Software;
Calorific value;
Wavelet transforms;
Solid fuels;
Algorithms;
Adaptive sampling;
Modelling;
Regression analysis;
Biomass energy;
Least squares method;
Moisture content;
Machine learning;
Energy utilization;
Industrial production;
Water content;
Accuracy;
Quality assessment;
Calorimetry;
Preprocessing;
Genetic algorithms;
Predictions;
Production lines;
Bomb calorimetry;
Quality control;
Carbon;
Neural networks;
Wavelengths;
Hyperspectral imaging;
Caragana korshinskii;
Caragana
; Li Nanding 2 ; Wan Huimeng 2 ; Ma, Yanhua 1 1 Faculty of Mechanical and Electrical Engineering, Inner Mongolia Agricultural University, Hohhot 010020, China; [email protected] (H.L.); [email protected] (J.Z.); [email protected] (N.L.); [email protected] (H.W.); [email protected] (Y.M.), Inner Mongolia Engineering Research Center of Intelligent Equipment for the Entire Process of Forage and Feed Production, Hohhot 010018, China
2 Faculty of Mechanical and Electrical Engineering, Inner Mongolia Agricultural University, Hohhot 010020, China; [email protected] (H.L.); [email protected] (J.Z.); [email protected] (N.L.); [email protected] (H.W.); [email protected] (Y.M.)