MSc.Thesis Defense:Saif Ahmad Afridi
Design and Multi-Objective Optimization of a High-Speed Spindle Considering Dynamic and Thermal Behaviors
Saif Ahmad Afridi
Manufacturing Engineering, MSc. Thesis, 2024
Thesis Jury
Prof. Erhan Budak (Thesis Advisor)
Assoc. Prof. Bekid Bediz
Asst. Prof. Orkun Özşahin
Date & Time: 24th July, 2024 – 09:00 AM
Place: FENS 2019
Keywords : high-speed spindle, multiobjective optimization, teaching learning based optimization, receptance coupling
Abstract
High-speed spindles are critical machine tool components with complicated underlying behaviors. Among these, the dynamic and thermal behaviors are the most dominant and interdependent, exhibiting strong links to multiple spindle parameters and performance indicators. This creates a complex design space for spindle designers, warranting the need for a comprehensive optimization approach to maximize spindle performance. While this optimization avenue has been investigated before, the full scope of this problem remains unexplored, particularly in its application to integrated thermal-dynamic models.
This thesis presents a multiobjective optimization approach targeting various facets of thermal and dynamic behaviors of high-speed spindles. A novel optimization approach is developed based on the Teaching Learning Based Algorithm (TLBO) and Non-Dominated Sorting Algorithm (NSGA-III) to identify optimal spindle design configurations and reveal the inherent tradeoffs between dynamic and thermal behaviors of spindles. The optimization study was implemented as a step-by-step procedure across different stages of the spindle design process, considering the prevalent status of the design, available variables, and constraints at each stage. This approach towards multiobjective optimization can serve as a practical framework for optimizing complex mechanical systems.
Additionally, a detailed commentary on the practical issues regarding the design and manufacturing of high-speed spindles is also included.