Scientia Silvae Sinicae ›› 2026, Vol. 62 ›› Issue (2): 111-125.doi: 10.11707/j.1001-7488.LYKX20240779
• Research papers • Previous Articles
Huiqi Zhong1,2,Jingyu Chai1,Kailiang Wang1,3,Jianhua Teng4,Wenyu Bi5,Anni Wang1,6,Ping Lin1,3,*(
)
Received:2024-12-18
Revised:2025-11-05
Online:2026-02-25
Published:2026-03-04
Contact:
Ping Lin
E-mail:linping80@126.com
CLC Number:
Huiqi Zhong,Jingyu Chai,Kailiang Wang,Jianhua Teng,Wenyu Bi,Anni Wang,Ping Lin. Construction of Near Infrared Spectroscopy Prediction Models Based on CARS-PLSR for Determining Oil Content and Fatty Acid Composition of Camellia oleifera Kernel[J]. Scientia Silvae Sinicae, 2026, 62(2): 111-125.
Fig.1
Probability density histogram of oil content and fatty acid composition content in Camellia oleifera population P<0.05, the sample data does not follow a normal distribution. P>0.05, the sample data follows a normal distribution. The closer the w value is to 1, the closer the sample data is to a normal distribution."
Table 1
Distribution of oil content and fatty acid content in the calibration and prediction sample sets"
| 项目Item | RS法划分样本集 Partitioning sample sets with RS | SPXY算法划分样本集 Partitioning sample sets with SPXY | ||||
| 校准集Calibration set | 预测集Prediction set | 校准集Calibration set | 预测集Prediction set | |||
| 样本数量 Sample number | 160 | 40 | 160 | 40 | ||
| 油脂含量 Oil content (OC)/ [g·(100 g)?1] | 最小值Minimum | 16.01 | 16.32~19.56 | 16.01~16.32 | 16.01~20.11 | |
| 最大值Maximum | 51.96~55.22 | 50.33~55.22 | 55.22 | 51.90~53.68 | ||
| 平均值Mean | 38.64~39.23 | 37.37~39.74 | 38.15~39.16 | 37.65~41.68 | ||
| 标准差Standard deviation | 8.59~9.16 | 7.35~9.80 | 8.80~9.22 | 6.97~8.96 | ||
| 棕榈酸 Palmitic acid (C16:0) (%) | 最小值Minimum | 7.09 | 7.59~8.34 | 7.09 | 7.59~8.39 | |
| 最大值Maximum | 11.30~11.40 | 10.60~11.40 | 11.40 | 10.60~11.20 | ||
| 平均值Mean | 9.41~9.46 | 9.34~9.54 | 9.42~9.48 | 9.26~9.50 | ||
| 标准差Standard deviation | 0.86~0.90 | 0.56~0.77 | 0.88~0.90 | 0.57~0.69 | ||
| 棕榈烯酸 Palmitoleic acid (C16:1) (%) | 最小值Minimum | 0.05 | 0.06~0.90 | 0.06 | 0.06~0.09 | |
| 最大值Maximum | 0.31 | 0.18~0.23 | 0.32 | 0.20 | ||
| 平均值Mean | 0.14 | 0.13~0.14 | 0.13~0.14 | 0.12~0.13 | ||
| 标准差Standard deviation | 0.04~0.05 | 0.02~0.04 | 0.04~0.05 | 0.02~0.03 | ||
| 硬脂酸 Stearic acid (C18:0) (%) | 最小值Minimum | 0.89 | 1.14~1.34 | 0.89 | 1.14~1.23 | |
| 最大值Maximum | 2.73 | 2.14~2.30 | 2.73 | 2.14~2.29 | ||
| 平均值Mean | 1.73~1.76 | 1.64~1.75 | 1.73~1.74 | 1.68~1.76 | ||
| 标准差Standard deviation | 0.31~0.32 | 0.21~0.27 | 0.31~0.32 | 0.21~0.27 | ||
| 油酸 Oleic acid (C18:1) (%) | 最小值Minimum | 69.10, 69.30 | 69.10~73.50 | 69.10 | 69.30~73.30 | |
| 最大值Maximum | 84.60 | 82.50~84.10 | 84.60 | 82.30~82.60 | ||
| 平均值Mean | 77.29~77.52 | 77.34~78.27 | 77.35~77.49 | 77.46~78.05 | ||
| 标准差Standard deviation | 3.32~3.48 | 2.42~3.31 | 3.41~3.50 | 2.44~2.95 | ||
| 亚油酸 Linoleic acid (C18:2) (%) | 最小值Minimum | 4.71, 5.65 | 4.71~6.80 | 4.71 | 5.65~6.63 | |
| 最大值Maximum | 18.10 | 15.10~16.90 | 18.10 | 13.80~18.00 | ||
| 平均值Mean | 10.12~10.40 | 9.84~10.99 | 10.30~10.52 | 9.36~10.26 | ||
| 标准差Standard deviation | 2.73~2.96 | 2.08~2.90 | 2.84~2.94 | 2.00~2.58 | ||
| 亚麻酸 Linolenic acid (C18:3) (%) | 最小值Minimum | 0.13 | 0.20~0.22 | 0.13 | 0.21~0.23 | |
| 最大值Maximum | 0.92 | 0.55~0.70 | 0.92 | 0.43~0.67 | ||
| 平均值Mean | 0.37~0.38 | 0.33~0.37 | 0.37~0.38 | 0.31~0.35 | ||
| 标准差Standard deviation | 0.13~0.14 | 0.07~0.17 | 0.13~0.14 | 0.05~0.11 | ||
| 顺-11-二十碳烯酸 Cis-11-eicosenoic acid (C20:1) (%) | 最小值Minimum | 0.43, 0.43 | 0.43~0.47 | 0.43 | 0.44~0.47 | |
| 最大值Maximum | 0.83 | 0.62~0.70 | 0.83 | 0.636~0.70 | ||
| 平均值Mean | 0.54~0.55 | 0.52~0.55 | 0.54~0.55 | 0.53~0.54 | ||
| 标准差Standard deviation | 0.06~0.07 | 0.05~0.06 | 0.06~0.07 | 0.04~0.06 | ||
Table 2
Relevant parameters of the prediction models for seed kernel oil content after different preprocessing"
| 样本集划分方法 Partitioning sample sets method | 预处理方法 Preprocessing method | 波长选择 数量 Number of wavelengths selected | 潜变量 数量 Number of latent variables | 相对分析 误差Relative percent deviation (RPD) | 校准集 Calibration set | 校准集交叉验证 Cross validation | 预测集 Prediction set | |||||
| RMSEc/ [g·(100 g)?1] | RMSEcv/ [g·(100 g)?1] | RMSEp/ [g·(100 g)?1] | ||||||||||
| 随机抽样法 Random sampling (RS) | RAW | 16 | 12 | 4.014 1 | 0.884 4 | 2.958 8 | 0.853 0 | 3.336 6 | 0.937 0 | 2.283 9 | ||
| SG | 23 | 12 | 3.884 6 | 0.878 2 | 3.037 7 | 0.848 7 | 3.385 7 | 0.934 8 | 2.377 6 | |||
| FD | 28 | 15 | 3.549 0 | 0.904 8 | 2.779 0 | 0.876 2 | 3.169 8 | 0.918 8 | 2.259 6 | |||
| SD | 17 | 13 | 4.117 2 | 0.900 0 | 2.766 4 | 0.877 9 | 3.057 0 | 0.953 1 | 2.211 4 | |||
| SNV | 14 | 13 | 5.205 5 | 0.910 1 | 2.579 9 | 0.890 5 | 2.847 1 | 0.965 1 | 1.854 8 | |||
| SNV+SG | 31 | 14 | 4.698 3 | 0.908 7 | 2.723 1 | 0.884 6 | 3.060 5 | 0.953 6 | 1.703 2 | |||
| SNV+FD | 34 | 15 | 4.914 1 | 0.919 0 | 2.478 7 | 0.892 7 | 2.852 5 | 0.959 3 | 1.856 2 | |||
| SNV+SD | 19 | 14 | 5.009 5 | 0.917 5 | 2.460 4 | 0.892 1 | 2.814 3 | 0.959 4 | 1.955 9 | |||
| CR | 22 | 11 | 3.227 4 | 0.892 9 | 2.989 4 | 0.849 5 | 3.543 1 | 0.902 4 | 2.276 2 | |||
| CR+SG | 16 | 10 | 3.610 1 | 0.875 8 | 3.175 2 | 0.850 0 | 3.488 6 | 0.924 0 | 2.184 5 | |||
| 光谱?理化值共生距离 算法Sample set partitioning based on joint X-Y distance (SPXY) | RAW | 18 | 12 | 2.696 4 | 0.914 2 | 2.693 9 | 0.894 7 | 2.984 7 | 0.859 3 | 2.621 8 | ||
| SG | 16 | 15 | 2.493 6 | 0.895 7 | 2.969 2 | 0.869 5 | 3.321 5 | 0.839 0 | 2.806 2 | |||
| FD | 21 | 11 | 2.637 5 | 0.894 0 | 2.940 7 | 0.868 7 | 3.272 6 | 0.865 6 | 2.950 8 | |||
| SD | 21 | 14 | 3.359 6 | 0.912 2 | 2.679 4 | 0.883 0 | 3.092 0 | 0.915 9 | 2.338 7 | |||
| SNV | 12 | 12 | 2.920 2 | 0.910 6 | 2.740 1 | 0.894 3 | 2.978 9 | 0.882 3 | 2.467 0 | |||
| SNV+SG | 16 | 15 | 3.092 4 | 0.922 9 | 2.553 4 | 0.906 6 | 2.808 8 | 0.893 0 | 2.253 8 | |||
| SNV+FD | 25 | 15 | 3.417 0 | 0.924 1 | 2.416 2 | 0.902 0 | 2.745 2 | 0.916 8 | 2.622 4 | |||
| SNV+SD | 19 | 12 | 3.432 5 | 0.925 8 | 2.429 4 | 0.904 6 | 2.755 5 | 0.913 5 | 2.268 2 | |||
| CR | 16 | 11 | 2.208 5 | 0.907 6 | 2.777 5 | 0.889 3 | 3.039 9 | 0.801 1 | 3.322 0 | |||
| CR+SG | 16 | 8 | 2.192 2 | 0.897 4 | 2.929 6 | 0.878 6 | 3.187 4 | 0.802 8 | 3.326 9 | |||
Table 3
Relevant parameters of near-infrared prediction models for fatty acid content (sample sets divided with RS method)"
| 脂肪酸 Fatty acid | 预处理方法 Preprocessing method | 波长选择 数量 Number of wavelengths selected | 潜变量数量 Number of latent variables | 相对分析 误差Relative percent deviation (RPD) | 校准集 Calibration set | 校准集交叉 验证Cross validation | 预测集 Prediction set | |||||
| RMSEc (%) | RMSEcv (%) | RMSEp (%) | ||||||||||
| 棕榈酸 Palmitic acid (C16:0) | SD | 31 | 14 | 1.408 6 | 0.485 8 | 0.616 8 | 0.711 3 | 0.545 3 | 0.543 9 | |||
| 棕榈烯酸 Palmitoleic acid (C16:1) | SNV | 20 | 8 | 1.493 5 | 0.377 5 | 0.034 7 | 0.233 5 | 0.038 5 | 0.605 8 | 0.022 1 | ||
| 硬脂酸 Stearic acid (C18:0) | SD | 14 | 11 | 1.648 9 | 0.408 7 | 0.237 8 | 0.307 5 | 0.257 3 | 0.631 7 | 0.164 2 | ||
| 油酸 Oleic acid (C18:1) | SD | 25 | 12 | 1.939 4 | 0.556 1 | 2.207 4 | 0.429 0 | 2.503 3 | 0.738 5 | 1.707 1 | ||
| 亚油酸 Linoleic acid (C18:2) | SNV | 29 | 14 | 2.116 4 | 0.530 7 | 1.866 8 | 0.356 8 | 2.185 4 | 0.775 4 | 1.370 2 | ||
| 亚麻酸 Linolenic acid (C18:3) | CR | 20 | 13 | 2.338 1 | 0.622 0 | 0.083 5 | 0.508 2 | 0.095 2 | 0.831 6 | 0.049 2 | ||
| 顺-11-二十碳烯酸 Cis-11-eicosenoic acid (C20:1) | SD | 16 | 13 | 1.683 1 | 0.489 3 | 0.046 5 | 0.374 5 | 0.051 5 | 0.644 0 | 0.034 7 | ||
Table 4
Relevant parameters of near-infrared prediction models for fatty acid content (sample sets divided with SPXY)"
| 脂肪酸 Fatty acid | 预处理方法 Preprocessing method | 波长选择 数量 Number of wavelengths selected | 潜变量数量 Number of latent variables | 相对分析 误差Relative percent deviation (RPD) | 校准集 Calibration set | 校准集交叉 验证Cross validation | 预测集 Prediction set | |||||
| RMSEc (%) | RMSEcv (%) | RMSEp (%) | ||||||||||
| 棕榈酸 Palmitic acid (C16:0) | SD | 28 | 15 | 1.254 2 | 0.467 5 | 0.642 0 | 0.265 1 | 0.754 3 | 0.358 0 | 0.507 8 | ||
| 棕榈烯酸 Palmitoleic acid (C16:1) | FD | 14 | 11 | 1.242 0 | 0.340 4 | 0.036 2 | 0.248 1 | 0.038 6 | 0.413 5 | 0.023 5 | ||
| 硬脂酸 Stearic acid (C18:0) | SD | 16 | 13 | 1.265 8 | 0.471 6 | 0.228 7 | 0.362 0 | 0.251 3 | 0.374 4 | 0.188 8 | ||
| 油酸 Oleic acid (C18:1) | SD | 30 | 14 | 1.946 3 | 0.596 3 | 2.160 0 | 0.459 8 | 2.498 6 | 0.735 0 | 1.513 3 | ||
| 亚油酸 Linoleic acid (C18:2) | CR | 24 | 14 | 1.864 5 | 0.553 3 | 1.928 7 | 0.412 9 | 2.211 1 | 0.733 2 | 1.182 2 | ||
| 亚麻酸 Linolenic acid (C18:3) | SD | 19 | 14 | 1.910 4 | 0.654 6 | 0.080 8 | 0.564 8 | 0.090 7 | 0.735 6 | 0.055 3 | ||
| 顺-11-二十碳烯酸 Cis-11-eicosenoic acid (C20:1) | SNV+SD | 21 | 13 | 1.348 6 | 0.557 8 | 0.043 5 | 0.444 7 | 0.048 8 | 0.480 1 | 0.041 7 | ||
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