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Machining Dynamics

Frequency Response to Improved Productivity

  • Book
  • © 2019

Overview

  • Provides comprehensive coverage of the fundamentals and machining dynamics with numerous examples

  • Includes functional MATLAB code for process predictions

  • Provides clear descriptions of predictive algorithms for machining process performance

  • Includes supplementary material: sn.pub/extras

  • Request lecturer material: sn.pub/lecturer-material

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Table of contents (8 chapters)

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About this book

This book trains engineers and students in the practical application of machining dynamics, with a particular focus on milling. The book walks readers through the steps required to improve machining productivity through chatter avoidance and reduced surface location error, and covers in detail topics such as modal analysis (including experimental methods) to obtain the tool point frequency response function, descriptions of turning and milling, force modeling, time domain simulation, stability lobe diagram algorithms, surface location error calculation for milling, beam theory, and more. 

This new edition includes updates throughout the entire text, new exercises and examples, and a new chapter on machining tribology. It is a valuable resource for practicing manufacturing engineers and graduate students interested in learning how to improve machining productivity through consideration of the process dynamics.


Authors and Affiliations

  • Department of Mechanical Engineering and Engineering Science, University of North Carolina at Charlotte, Charlotte, USA

    Tony L. Schmitz, K. Scott Smith

About the authors

Tony L. Schmitz is Professor of Mechanical Engineering and Engineering Science at The University of North Carolina at Charlotte.

K. Scott Smith is Professor and Department Chair of Mechanical Engineering and Engineering Science at The University of North Carolina at Charlotte.



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