1. Introduction
The steel industry is one of the basic industries of modern industrialized countries and is also an important symbol of a country’s degree of development and economic strength. The transportation and delivery of bulk materials (such as coke and iron ore) are the basic production link in the steel industry. As the key equipment in the steel industry, the chute delivers the bulk materials from high to low. However, due to the long-term impact of the bulk materials, the chute is easily worn or damaged, reducing its service life. Once the chute is damaged, it can only be stopped for maintenance, which seriously affects the production schedule. Moreover, maintenance usually consists of padding the steel plate at the worn place, which leads to the unsmooth conveying of bulk materials in the chute and can even result in the plugging phenomenon. Furthermore, the collision to the chute may cause the bulk materials to be broken, producing a large amount of dust or even the phenomenon of the bulk materials falling, resulting in serious safety risks to the on-site staff.
To overcome the above issues, scholars have conducted extensive research on chute structure design. Based on the wear mechanism, new materials have been adopted for the chute, and the wear-resistant lining board has been adhered to the inner shell of the chute [
1,
2,
3] to increase its service life. On the other hand, to avoid the plugging phenomenon, structural design methods were adopted to improve the conveying smoothness of the materials in the chute [
4,
5]. The structural parameters, the contour curves of the impact plate, and the contour curves of the diversion plate of the chute were analyzed to reduce chute wear under the premise of conveying smoothness requirements [
6,
7,
8,
9]. Other methods for improving the working performance and service life of the chute include structural parameters optimization [
10,
11,
12,
13], baffle settings [
14], and motion control [
15]. However, the existing structural design methods of the chute still depend on experience and simple verification, which lacks data support. Moreover, the implicit relationship between chute structure parameters and performance responses (such as impact force of coke to the chute and conveying speed of coke) further increases the difficulty of optimization.
To reduce optimization costs, various surrogate models were applied to approximate the implicit relationship between the design parameters and performance responses. Among the surrogate models, the Support Vector Regression (SVR) model was widely used in engineering problems because of its good performance in small samples, including nonlinear, high-dimension, overfitting, and multiple local minima problems [
16,
17]. SVR is the specific application of a Support Vector Machine (SVM) in the field of functional regression and has been widely used in the field of structural reliability analysis, such as the lightweight design of complex structures [
18,
19,
20,
21,
22] and process parameters optimization [
23,
24]. However, there are multiple kernel functions in SVR, and each kernel function has its characteristic. Therefore, for an unknown implicit problem, how to select the optimal kernel function is still a challenge [
25,
26].
In this paper, the idea of ensemble of surrogates (EoS) is introduced to alleviate dependency on the kernel functions in modeling of performance responses of the chute. The E-SVR model with multiple kernel functions was constructed to replace the implicit relationship between the chute structural parameters and the performance response. Then, the design optimization of the chute structure was carried out to reduce the maximum impact force with the maximum conveying-speed constraint.
Author Contributions
Conceptualization, X.L. and J.M.; methodology, X.L.; software, Y.L.; validation, Q.J., Z.C. and W.Z.; formal analysis, W.M.; investigation, Y.C.; resources, Z.C.; data curation, Y.L.; writing—original draft preparation, Q.J.; writing—review and editing, X.L.; visualization, W.M.; supervision, J.M.; project administration, J.M.; funding acquisition, X.L. All authors have read and agreed to the published version of the manuscript.
Funding
This research was funded by the National Natural Science Foundation of China, grant number 51905492.
Institutional Review Board Statement
Not applicable.
Informed Consent Statement
Not applicable.
Data Availability Statement
No new data were created or analyzed in this study. Data sharing is not applicable to this article.
Conflicts of Interest
The authors declare no conflict of interest. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript; or in the decision to publish the results.
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