Hybrid Neural Network Models for the Optimization of Induction Hardening Processes

https://doi.org/10.48185/jaai.v4i1.838

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Abstract

We describe a simple hybrid methodology to simulate an induction heating process that combines observational (black-box) and physics-based (white-box) methodologies. This method uses a neural network to predict the process' physical characteristics, which were previously unknown. A primary emphasis is placed on monitoring temperature variations within a subsurface layer of a bolt sample. The hybrid model incorporates an ordinary differential equation for the heating rate, leading to improved data accuracy compared to a standalone black-box model. This innovative approach not only improves predictive precision but also simplifies interpretability, ultimately serving as a pivotal instrument for the effective management and advancement of induction heating operations.

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Published

2023-10-07

How to Cite

Lari, S., Kim, J.-M., & Kwon, H. J. (2023). Hybrid Neural Network Models for the Optimization of Induction Hardening Processes. Journal of Applied Artificial Intelligence, 4(1), 21–44. https://doi.org/10.48185/jaai.v4i1.838

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Articles