Teacher-Student Guided Inverse Modeling for Steel Final Hardness Estimation
This addresses a challenging regression task in materials science for steel manufacturing, offering an efficient solution to an ambiguous inverse problem.
The paper tackles the inverse problem of estimating steel heat treatment input parameters from a desired final hardness, using a Teacher-Student learning framework, and achieves higher inverse prediction accuracy with significantly less computational time compared to baseline models.
Predicting the final hardness of steel after heat treatment is a challenging regression task due to the many-to-one nature of the process -- different combinations of input parameters (such as temperature, duration, and chemical composition) can result in the same hardness value. This ambiguity makes the inverse problem, estimating input parameters from a desired hardness, particularly difficult. In this work, we propose a novel solution using a Teacher-Student learning framework. First, a forward model (Teacher) is trained to predict final hardness from 13 metallurgical input features. Then, a backward model (Student) is trained to infer plausible input configurations from a target hardness value. The Student is optimized by leveraging feedback from the Teacher in an iterative, supervised loop. We evaluate our method on a publicly available tempered steel dataset and compare it against baseline regression and reinforcement learning models. Results show that our Teacher-Student framework not only achieves higher inverse prediction accuracy but also requires significantly less computational time, demonstrating its effectiveness and efficiency for inverse process modeling in materials science.