Data-Driven Methods for Reliability and Safety Engineering: Applications in Industrial Systems: Leveraging AI, Machine Learning, and Advanced Analytics to Enhance Risk Assessment, Decision-Making, and System Performance - Springer Series in Reliability En -  - Libros - Springer Nature Switzerland AG - 9783032228727 - 15 de agosto de 2026
En caso de que portada y título no coincidan, el título será el correcto

Data-Driven Methods for Reliability and Safety Engineering: Applications in Industrial Systems: Leveraging AI, Machine Learning, and Advanced Analytics to Enhance Risk Assessment, Decision-Making, and System Performance - Springer Series in Reliability En

Precio
Mex$ 3.556
sin IVA
Entrega prevista 24 - 27 de ago. de 2026
Añadir a tu lista de deseos de iMusic

This book provides a comprehensive guide to using data-driven methods in reliability and safety engineering for industrial systems. It explores how modern technologies like data analytics, machine learning, and artificial intelligence can enhance decision-making, predict failures, and improve system resilience. In an era of increasingly complex industrial systems, traditional methods often fail to address reliability and safety challenges.

This book highlights how integrating data-driven techniques can optimize system performance, reduce risks, and enhance safety outcomes. Key topics include predictive maintenance, risk assessment, AI integration, and the challenges of implementing these technologies in real-world environments. Case studies across industries like energy and manufacturing illustrate the practical applications of these methods.

This book is aimed at professionals in reliability engineering, safety, risk management, and industrial systems, as well as researchers and students seeking to understand the role of data-driven methods in modern engineering practices.

Medios de comunicación Libros     Hardcover Book   (Libro con lomo y cubierta duros)
Pendiente de lanzamiento 15 de agosto de 2026
ISBN13 9783032228727
Editores Springer Nature Switzerland AG
Páginas 523
Dimensiones 150 × 220 × 20 mm   ·   815 g   (Peso (estimado))
Editor Feng, Ke
Editor Huang, Hong-Zhong
Editor Li, He
Editor Yazdi, Mohammad

Mere med samme udgiver