| Literature DB >> 28787927 |
Chuncai Xiao1, Kuangrong Hao2,3, Yongsheng Ding4,5.
Abstract
This paper creates a bi-directional prediction model to predict the performance of carbon fiber and the productive parameters based on a support vector machine (SVM) and improved particle swarm optimization (IPSO) algorithm (SVM-IPSO). In the SVM, it is crucial to select the parameters that have an important impact on the performance of prediction. The IPSO is proposed to optimize them, and then the SVM-IPSO model is applied to the bi-directional prediction of carbon fiber production. The predictive accuracy of SVM is mainly dependent on its parameters, and IPSO is thus exploited to seek the optimal parameters for SVM in order to improve its prediction capability. Inspired by a cell communication mechanism, we propose IPSO by incorporating information of the global best solution into the search strategy to improve exploitation, and we employ IPSO to establish the bi-directional prediction model: in the direction of the forward prediction, we consider productive parameters as input and property indexes as output; in the direction of the backward prediction, we consider property indexes as input and productive parameters as output, and in this case, the model becomes a scheme design for novel style carbon fibers. The results from a set of the experimental data show that the proposed model can outperform the radial basis function neural network (RNN), the basic particle swarm optimization (PSO) method and the hybrid approach of genetic algorithm and improved particle swarm optimization (GA-IPSO) method in most of the experiments. In other words, simulation results demonstrate the effectiveness and advantages of the SVM-IPSO model in dealing with the problem of forecasting.Entities:
Keywords: bi-directional prediction; carbon fiber; cell communication mechanism; intelligent computing; particle swarm optimization; support vector machine
Year: 2014 PMID: 28787927 PMCID: PMC5455220 DOI: 10.3390/ma8010117
Source DB: PubMed Journal: Materials (Basel) ISSN: 1996-1944 Impact factor: 3.623
Figure 1The technological process of carbon fiber production.
Figure 2Bidirectional prediction model of carbon fiber production.
Figure 3Schematic drawing to show distances with different solution.
Figure 4Diagram of the support vector machine and improved particle swarm optimization (SVM-IPSO) forecasting model.
Experimental data of carbon fiber in the productive process.
| No. | Viscosity Average Molecular Weight (104) | Conversion Ratio (%) | Solid Content (%) | Spinning Jet Drawing Ratio (%) | Coagulating Bath Temperature (°C) | Total Drawing Ratio | Strength (CN/d) | Structure Parameter |
|---|---|---|---|---|---|---|---|---|
| 1 | 8.9 | 94.5 | 20.8 | −50.3 | 14 | 6.33 | 4.08 | 14.82 |
| 2 | 6.3 | 91.0 | 20.0 | −59.7 | 15 | 5.89 | 3.23 | 12.63 |
| 3 | 11.6 | 92.0 | 20.4 | −50.5 | 14 | 6.03 | 3.76 | 13.24 |
| 4 | 8.8 | 94.8 | 21.8 | −63.4 | 13 | 6.65 | 4.17 | 17.24 |
| 5 | 7.0 | 81.8 | 17.9 | −63.4 | 15 | 6.32 | 3.99 | 15.14 |
| 6 | 8.2 | 85.5 | 21.7 | −59.5 | 15 | 5.49 | 4.58 | 16.61 |
| 7 | 7.2 | 89.8 | 19.5 | −53.1 | 13 | 5.88 | 3.64 | 15.49 |
| 8 | 8.9 | 82.5 | 17.5 | −56.8 | 19 | 6.38 | 4.07 | 17.57 |
| 9 | 8.0 | 83.4 | 18.6 | −62.1 | 17 | 5.72 | 3.18 | 15.48 |
| 10 | 11.7 | 90.6 | 17.9 | −53.8 | 16 | 6.47 | 3.22 | 12.10 |
| 11 | 11.5 | 82.8 | 18.7 | −64.8 | 17 | 5.79 | 3.27 | 12.73 |
| 12 | 6.3 | 95.1 | 19.6 | −54.9 | 16 | 6.37 | 4.36 | 17.18 |
| 13 | 10.4 | 98.6 | 20.2 | −68.3 | 17 | 6.41 | 3.99 | 14.91 |
| 14 | 7.6 | 93.1 | 19.7 | −55.4 | 16 | 5.88 | 3.38 | 17.07 |
| 15 | 8.5 | 84.6 | 22.3 | −65.3 | 18 | 5.04 | 3.99 | 13.26 |
| 16 | 9.3 | 89.8 | 20.1 | −53.8 | 16 | 5.66 | 3.30 | 15.31 |
| 17 | 11.7 | 79.4 | 22.7 | −55.8 | 19 | 5.85 | 3.11 | 15.78 |
| 18 | 8.5 | 96.9 | 20.8 | −51.8 | 14 | 5.54 | 4.70 | 12.19 |
| 19 | 11.9 | 96.4 | 22.7 | −61.5 | 13 | 5.39 | 4.12 | 15.69 |
| 20 | 7.8 | 95.0 | 18.4 | −63.7 | 13 | 6.64 | 4.86 | 14.17 |
| 21 | 10.2 | 82.7 | 21.1 | −60.9 | 13 | 5.86 | 4.39 | 12.30 |
| 22 | 10.0 | 90.1 | 18.7 | −58.5 | 15 | 6.78 | 4.17 | 14.94 |
| 23 | 9.2 | 77.5 | 21.0 | −62.9 | 16 | 5.78 | 4.63 | 13.16 |
| 24 | 10.2 | 86.4 | 21.2 | −63.0 | 15 | 6.54 | 4.76 | 12.74 |
| 25 | 10.0 | 83.9 | 17.4 | −63.6 | 18 | 5.79 | 4.98 | 13.23 |
| 26 | 7.1 | 80.6 | 18.5 | −62.7 | 17 | 6.62 | 3.00 | 12.88 |
| 27 | 6.8 | 80.9 | 18.3 | −68.9 | 18 | 6.51 | 4.73 | 13.13 |
| 28 | 12.0 | 86.3 | 21.0 | −54.2 | 19 | 5.75 | 4.23 | 12.26 |
| 29 | 7.0 | 79.1 | 22.1 | −64.2 | 19 | 5.43 | 4.98 | 15.81 |
| 30 | 6.2 | 90.2 | 19.1 | −54.7 | 14 | 6.58 | 4.06 | 13.69 |
| 31 | 9.4 | 87.4 | 21.7 | −52.4 | 13 | 6.90 | 3.96 | 15.23 |
| 32 | 11.3 | 92.3 | 21.1 | −62.1 | 17 | 5.66 | 4.60 | 16.17 |
| 33 | 10.0 | 92.4 | 17.0 | −59.0 | 13 | 6.34 | 3.46 | 14.99 |
| 34 | 7.1 | 91.0 | 20.6 | −59.2 | 16 | 5.88 | 4.00 | 15.21 |
| 35 | 8.2 | 77.7 | 19.3 | −63.2 | 16 | 6.67 | 4.80 | 14.67 |
| 36 | 8.8 | 78.5 | 22.5 | −65.4 | 19 | 6.54 | 4.15 | 12.74 |
| 37 | 11.9 | 84.0 | 17.0 | −57.0 | 16 | 5.33 | 4.69 | 14.94 |
| 38 | 6.9 | 88.7 | 19.8 | −63.2 | 15 | 6.72 | 4.48 | 17.12 |
| 39 | 11.1 | 91.4 | 19.5 | −58.3 | 17 | 6.98 | 4.17 | 17.24 |
| 40 | 9.9 | 86.0 | 19.8 | −66.8 | 18 | 6.03 | 3.49 | 13.62 |
| 41 | 8.3 | 95.0 | 21.6 | −66.7 | 16 | 6.77 | 4.33 | 13.25 |
| 42 | 7.1 | 92.8 | 18.9 | −55.1 | 15 | 6.18 | 3.17 | 15.39 |
| 43 | 8.6 | 98.3 | 21.7 | −62.3 | 14 | 5.31 | 4.25 | 15.84 |
| 44 | 8.9 | 88.7 | 19.8 | −61.6 | 17 | 5.40 | 4.32 | 14.50 |
| 45 | 6.7 | 84.2 | 17.2 | −60.8 | 14 | 5.81 | 4.46 | 13.24 |
| 46 | 11.0 | 98.0 | 22.7 | −74.6 | 12 | 6.89 | 3.90 | 12.82 |
| 47 | 9.5 | 92.2 | 20.3 | −50.5 | 17 | 5.92 | 3.91 | 13.20 |
| 48 | 7.7 | 78.2 | 17.2 | −63.4 | 19 | 6.17 | 3.99 | 15.19 |
| 49 | 9.5 | 79.3 | 18.1 | −67.4 | 13 | 6.50 | 4.78 | 17.69 |
| 50 | 7.4 | 90.4 | 21.3 | −55.3 | 18 | 6.65 | 4.96 | 12.49 |
Note: sample data sources come from reference [9].
Comparison of errors among the proposed method, the GA-IPSO-RNN [9], the basic PSO-RNN [9], and the conventional RNN [9].
| Algorithms | Conventional RNN | Basic PSO-RNN | GA-IPSO-RNN | Proposed method | |
|---|---|---|---|---|---|
| MAE | 1 | 1.1950 | 0.4818 | 0.4258 | |
| 2 | 3.6827 | 2.0262 | 1.9833 | ||
| Mean | 2.4389 | 1.2540 | 1.2045 | ||
| MRE(%) | 1 | 28.63 | 10.65 | 9.39 | |
| 2 | 27.96 | 14.61 | 14.01 | ||
| Mean | 28.30 | 12.63 | 11.70 | ||
| RMSE | 1 | 1.4843 | 0.5841 | 0.5157 | |
| 2 | 4.5364 | 2.2637 | 2.1177 | ||
| Mean | 3.0104 | 1.4239 | 1.3167 | ||
| TIC | 1 | 0.1675 | 0.0690 | 0.0609 | |
| 2 | 0.1452 | 0.0766 | 0.0727 | ||
| Mean | 0.1563 | 0.0728 | 0.0668 | ||
Notes: 1: strength, 2: structure parameter.
Figure 5Training results of the proposed SVM-IPSO model. (a) Strength; (b) Structure parameter.
Figure 6Training results of the proposed SVM-IPSO model. (a) Viscosity average molecular weight; (b) Conversion ratio; (c) Solid content; (d) Spinning jet drawing ratio; (e) Coagulating temperature; (f) Total drawing ratio.
Comparison of errors among the proposed methods, the GA-IPSO-RNN [9], the basic PSO-RNN [9], and the conventional RNN [9].
| Algorithms | MAE | MRE (%) | RMSE | TIC |
|---|---|---|---|---|
| Conventional RNN | ||||
| 1 | 173.1400 | 1876.58 | 341.7052 | 0.9612 |
| 2 | 1062.8000 | 1310.66 | 2004.3000 | 0.9391 |
| 3 | 151.6600 | 816.09 | 285.3062 | 0.9051 |
| 4 | 171.6800 | 264.56 | 285.1956 | 0.7416 |
| 5 | 62.6800 | 443.07 | 103.5493 | 0.8054 |
| 6 | 34.8800 | 533.97 | 63.3625 | 0.9510 |
| Mean | 276.1367 | 874.16 | 513.9031 | 0.8839 |
| Basic PSO-RNN | ||||
| 1 | 1.9652 | 22.73 | 2.2049 | 0.1138 |
| 2 | 9.7604 | 11.30 | 10.3417 | 0.0590 |
| 3 | 2.5932 | 13.19 | 2.7487 | 0.0690 |
| 4 | 8.9433 | 15.27 | 10.2110 | 0.0806 |
| 5 | 3.2098 | 20.66 | 3.2757 | 0.1054 |
| 6 | 0.4920 | 7.38 | 0.6731 | 0.0544 |
| Mean | 4.4940 | 15.09 | 4.9092 | 0.0804 |
| GA-IPSO-RNN | ||||
| 1 | 1.3996 | 14.37 | 1.7597 | 0.1026 |
| 2 | 8.2660 | 9.61 | 9.1148 | 0.0518 |
| 3 | 2.2693 | 11.04 | 2.5107 | 0.0647 |
| 4 | 8.0976 | 13.47 | 9.1473 | 0.0733 |
| 5 | 2.9085 | 19.20 | 2.9776 | 0.0944 |
| 6 | ||||
| Mean | 3.8778 | 12.11 | 4.3192 | 0.0697 |
| Proposed method | ||||
| 1 | ||||
| 2 | ||||
| 3 | ||||
| 4 | ||||
| 5 | ||||
| 6 | 0.3994 | 6.02 | 0.4855 | 0.0387 |
| Mean |