Feedback

X
Data-Driven Intelligent Modeling and Optimization Algorithms for Industrial Processes

Data-Driven Intelligent Modeling and Optimization Algorithms for Industrial Processes

0 Ungluers have Faved this Work
The aim of this Special Issue is to explore the multifaceted aspects of data-driven intelligent modeling and optimization algorithms for industrial processes. The main goals are to harness the power of data to improve control, decision making, and parameter optimization, and to drive industrial systems to unprecedented levels of efficiency, reliability, and adaptability. Research areas in this Special Issue include digital twin technology, multimodal data recognition, sensor data ingestion and real-time processing, multi-objective path-planning, conditional generative adversarial network, generating job recommendations, comprehensive risk assessment, large language models, self-supervised key-point learning, trustworthy article ranking, engine optimization model, and bioinspired generative design. These powerful and intelligent algorithms use data for control, decision making, and parameter optimization, driving industrial systems to unprecedented levels of efficiency, reliability, and adaptability. By sharing their practice and insights in the development and application of these new technologies, the authors of the articles in this reprint have demonstrated the value of data-driven intelligent modeling and optimization algorithms for industrial processes, providing readers with valuable ideological inspiration in the field.

This book is included in DOAB.

Why read this book? Have your say.

You must be logged in to comment.

Rights Information

Are you the author or publisher of this work? If so, you can claim it as yours by registering as an Unglue.it rights holder.

Downloads

This work has been downloaded 0 times via unglue.it ebook links.
  1. 0 - pdf (CC BY) at mdpi.com.

Keywords

  • data-driven modeling
  • industrial processes
  • machine learning algorithms
  • optimization algorithms

Links

DOI: 10.3390/books978-3-7258-4912-3

Editions

edition cover

Share

Copy/paste this into your site: