Machine Learning Techniques to Solve Mechanical Vibration Problems Using Python
暫譯: 使用 Python 解決機械振動問題的機器學習技術

Aykent, Baris

  • 出版商: Springer
  • 出版日期: 2026-05-11
  • 售價: $4,230
  • 貴賓價: 9.5$4,018
  • 語言: 英文
  • 頁數: 227
  • 裝訂: Hardcover - also called cloth, retail trade, or trade
  • ISBN: 3032156769
  • ISBN-13: 9783032156761
  • 相關分類: PythonMachine Learning
  • 海外代購書籍(需單獨結帳)

商品描述

Machine vibrations hold the secrets to its health, but how do you translate their complex language into actionable, predictive intelligence? As modern industry demands unprecedented levels of reliability and efficiency, the ability to anticipate failures before they occur has become a critical competitive advantage. The key lies in the powerful intersection of classical engineering and modern data science.

Machine Learning for Vibration Problems is the definitive guide for engineers, data scientists, and students looking to master this essential discipline. This comprehensive book bridges the gap between traditional vibration analysis and cutting-edge machine learning, guiding you step-by-step through the entire Prognostics and Health Management (PHM) workflow.

Starting with the fundamentals of signal processing and feature engineering, you will learn to extract meaningful information from raw sensor data. From there, you will journey through a spectrum of algorithms--from interpretable models like Random Forests and SVMs to the powerhouses of deep learning. Master the application of Convolutional Neural Networks (CNNs) for automated feature extraction and Long Short-Term Memory (LSTM) networks for accurately predicting Remaining Useful Life (RUL).

This book moves beyond theory, grounding every concept in practical application with detailed case studies on benchmark industrial datasets and a full annex of illustrative Python code. You will also explore advanced frontiers, including Transfer Learning to overcome data scarcity, Federated Learning for privacy-preserving collaboration, and the adaptive potential of Reinforcement and Continual Learning.

Whether you are a mechanical engineer seeking to leverage data, a data scientist entering the industrial domain, or a student building a foundational skill set, this book provides the critical knowledge and practical tools to transform vibration data into reliable, automated, and predictive maintenance solutions.

商品描述(中文翻譯)

機器的振動隱藏著其健康的秘密,但如何將這種複雜的語言轉化為可行的預測智慧呢?隨著現代工業對可靠性和效率的要求達到前所未有的水平,預測故障發生之前的能力已成為一項關鍵的競爭優勢。關鍵在於傳統工程與現代數據科學的強大交匯點。

振動問題的機器學習是工程師、數據科學家和學生掌握這一重要學科的權威指南。這本全面的書籍彌補了傳統振動分析與尖端機器學習之間的鴻溝,逐步引導您完成整個預測與健康管理(PHM)工作流程。

從信號處理和特徵工程的基本原理開始,您將學會從原始傳感器數據中提取有意義的信息。接著,您將探索一系列算法——從可解釋的模型如隨機森林(Random Forests)和支持向量機(SVMs),到深度學習的強大工具。掌握卷積神經網絡(CNNs)在自動特徵提取中的應用,以及長短期記憶(LSTM)網絡在準確預測剩餘使用壽命(RUL)中的應用。

這本書超越了理論,將每個概念根植於實際應用中,提供詳細的案例研究,涵蓋基準工業數據集以及完整的Python代碼附錄。您還將探索先進的前沿技術,包括轉移學習(Transfer Learning)以克服數據稀缺問題、聯邦學習(Federated Learning)以實現隱私保護的協作,以及強化學習(Reinforcement Learning)和持續學習(Continual Learning)的自適應潛力。

無論您是希望利用數據的機械工程師、進入工業領域的數據科學家,還是建立基礎技能的學生,這本書都提供了將振動數據轉化為可靠、自動化和預測性維護解決方案所需的關鍵知識和實用工具。