Advanced AI Tools for Haste Alloy Machining: ANFIS Approach to Advanced Machining Optimization

2025-28-0156

02/07/2025

Event
Advances in Design, Materials, Manufacturing and Surface Engineering for Mobility (ADMMS’25)
Authors Abstract
Content
The intention of this exploration is to evolve an optimization method for the Electrochemical Machining (ECM) process on Haste alloy material, taking into account various performance characteristics. The optimization relies on the amalgamation of the Taguchi method with an Adaptive Neuro-Fuzzy Inference System (ANFIS). Haste alloy is extensively utilized in the aerospace, nuclear, marine, and car sectors, specifically in situations that are prone to corrosion. The experimental trials are organized based on Taguchi's principles and involve three machining variables: feed rate, electrolyte flow rate, and electrolyte concentration. This examination examines performance indicators, including the pace at which material is removed and the roughness of the surface. It also includes geometric factors such as overcut, shape, and tolerance for orientation. The results suggest that the rate at which the feed is supplied is the most influential element affecting the necessary performance standards. For improving the accuracy of predictions, numerous regression models are created and performance metrics are constructed. A validation test was performed to authenticate the findings acquired through the ANFIS methodology. The test outcomes show that the suggested strategy is considerably more efficient than earlier approaches.
Meta TagsDetails
DOI
https://doi.org/10.4271/2025-28-0156
Pages
7
Citation
Pasupuleti, T., Natarajan, M., Ramesh Naik, M., Somsole, L. et al., "Advanced AI Tools for Haste Alloy Machining: ANFIS Approach to Advanced Machining Optimization," SAE Technical Paper 2025-28-0156, 2025, https://doi.org/10.4271/2025-28-0156.
Additional Details
Publisher
Published
Feb 07
Product Code
2025-28-0156
Content Type
Technical Paper
Language
English