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JKSPE : Journal of the Korean Society for Precision Engineering

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"예측 모델"

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"예측 모델"

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A Study on the Prediction Model of the Radius of Curvature of the Subtle Feature of the Automotive Parts for Different Forming Conditions
Jae-Hyeong Yu, Kyu-Seok Jung, Yunchan Chung, Chang-Whan Lee
J. Korean Soc. Precis. Eng. 2023;40(1):49-55.
Published online January 1, 2023
DOI: https://doi.org/10.7736/JKSPE.022.101
The subtle feature is one of the characteristic lines and represents the most noticeable line in the automotive panel. In this study, we proposed a method to predict the radius of curvature of products according to the material, its thickness, its punch angle, and its punch radius. The radius of curvature was divided into three regions, namely, the non-linear, transition, and linear regions. In the non-linear region, the prediction model for the radius of curvature with different forming conditions was derived using the finite element analysis. In the linear region, the radius of curvature was assumed to be the sum of the punch radius and the thickness of the material. In the transition region, a model connecting two regions (Non-linear and linear region) was developed based on the continuity condition. The prediction model presented a very small RMSE with the value of 0.314 mm. Using the prediction model, the radius of curvature with various forming variables could be predicted and the required radius of punch, to obtain a certain value of the radius of curvature, could be precisely predicted.
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On-Line Model Predictive Control for Energy Efficiency in Data Center
Min Sik Chu, Hyun Ah Kim, Kyu Jong Lee, Ji Hoon Kang
J. Korean Soc. Precis. Eng. 2021;38(12):943-951.
Published online December 1, 2021
DOI: https://doi.org/10.7736/JKSPE.021.068
It is important to minimize electric energy consumption of a data center that uses enormous electricity for maintaining an adequate indoor temperature. Most data centers have applied the outdoor air cooling method on account of economic feasibility. However, it is necessary that data centers have an efficient control method in order to achieve extra energy savings. In this paper, we propose an artificial intelligence based real-time optimal control method that minimizes electricity consumption and assures safe operation simultaneously. The main idea of our proposed method is to evolutionary search the optimal range of controlled variable during a normally operative condition. Furthermore, an optimal operating condition can be achieved without requiring large-scale data to learn a model. Experimental results demonstrate that indoor temperature of a data center can be constantly controlled safely and cost effectively based on our proposed methodology.
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