Denys Kataiev Janusz Kacprzyk Artur Zaporozhets Kataiev Neural Calibration of Coordinate Measuring Arms

Neural Calibration of Coordinate Measuring Arms

von Denys Kataiev Janusz Kacprzyk Artur Zaporozhets

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Beschreibung

This book presents a groundbreaking fusion of classical metrological modelling and modern artificial intelligence to dramatically enhance the accuracy of geometric measurements in industrial environments. Designed for researchers, engineers, and practitioners in precision measurement and power equipment manufacturing, this book offers a comprehensive and rigorously validated methodology for compensating both kinematic and non kinematic errors in coordinate measuring arms (CMAs). At the core of the work is a universal calibration strategy that employs three reference standards within a single procedure. This innovative approach enables the simultaneous assessment of systematic sensing errors, point reproducibility, and linear movement stability—capabilities rarely addressed together in existing calibration methods. Building on this foundation, this book introduces a single point polynomial correction model that achieves a fourfold reduction in residual kinematic errors, offering a practical and efficient enhancement to traditional calibration techniques. This book’s most distinctive contribution lies in its application of artificial neural networks to compensate for destabilising factors and variable measurement conditions that conventional models cannot fully capture. Through the evaluation of 432 neural network configurations, the research identifies an optimal architecture capable of reducing non kinematic residual errors by a factor of six. This extensive experimental validation provides rare empirical depth and actionable insights for the integration of machine learning into industrial metrology. A complete software information system is presented, integrating modules for calibration, data preprocessing, neural network training, filtering, and automated compensation. The system’s architecture is designed for real world deployment in demanding production environments, particularly in the manufacturing of power equipment components where measurement stability is critical. Detailed discussions of Denavit–Hartenberg modelling, synthetic data generation, noise simulation, and dataset partitioning equip the reader with a full methodological toolkit for developing robust AI enhanced measurement systems. By combining theoretical rigour with practical implementation, Neural Calibration of Coordinate Measuring Arms establishes a new paradigm for precision measurement.


This book presents a groundbreaking fusion of classical metrological modelling and modern artificial intelligence to dramatically enhance the accuracy of geometric measurements in industrial environments. Designed for researchers, engineers, and practitioners in precision measurement and power equipment manufacturing, this book offers a comprehensive and rigorously validated methodology for compensating both kinematic and non kinematic errors in coordinate measuring arms (CMAs). At the core of the work is a universal calibration strategy that employs three reference standards within a single procedure. This innovative approach enables the simultaneous assessment of systematic sensing errors, point reproducibility, and linear movement stability—capabilities rarely addressed together in existing calibration methods. Building on this foundation, this book introduces a single point polynomial correction model that achieves a fourfold reduction in residual kinematic errors, offering a practical and efficient enhancement to traditional calibration techniques. This book’s most distinctive contribution lies in its application of artificial neural networks to compensate for destabilising factors and variable measurement conditions that conventional models cannot fully capture. Through the evaluation of 432 neural network configurations, the research identifies an optimal architecture capable of reducing non kinematic residual errors by a factor of six. This extensive experimental validation provides rare empirical depth and actionable insights for the integration of machine learning into industrial metrology. A complete software information system is presented, integrating modules for calibration, data preprocessing, neural network training, filtering, and automated compensation. The system’s architecture is designed for real world deployment in demanding production environments, particularly in the manufacturing of power equipment components where measurement stability is critical. Detailed discussions of Denavit–Hartenberg modelling, synthetic data generation, noise simulation, and dataset partitioning equip the reader with a full methodological toolkit for developing robust AI enhanced measurement systems. By combining theoretical rigour with practical implementation, Neural Calibration of Coordinate Measuring Arms establishes a new paradigm for precision measurement.


Presents an integrated kinematic–neural approach for advanced CMA error compensation Evaluates 432 neural architectures to identify optimal models for industrial metrology Explores synthetic data generation and preprocessing for robust neural network training

Autor*in

Denys Kataiev

Themen in »Neural Calibration of Coordinate Measuring Arms«

CMA Calibration Methods Industrial AI Applications Neural Network Error Compensation Kinematic and Non‑kinematic Errors Denavit–Hartenberg Modelling

Stimmen zu »Neural Calibration of Coordinate Measuring Arms«

Details

ISBN: 9783032329172
Verlag: Springer International Publishing
Erscheinung: 23.09.2026

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