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Alirez Ahmadi, Alireza Ahmadi, Ramin Karim, Ravdeep Kour, Raj Rao, Iman Soleimanmeigouni...
International Congress and Workshop on Industrial AI 2021
Inglese · Tascabile
Spedizione di solito entro 1 a 2 settimane (il titolo viene stampato sull'ordine)
Descrizione
This proceedings of the International Congress and Workshop on Industrial AI 2021 encompasses and integrates the themes and topics of three conferences, eMaintenance, Condition Monitoring and Diagnostic Engineering management (COMADEM), and Advances in Reliability, Maintainability and Supportability (ARMS) into a single resource.
The 21st century is witnessing the emerging extensive applications of Artificial Intelligence (AI) and Information Technologies (IT) in industry. Industrial Artificial Intelligence (IAI) integrates IT with Operational Technologies (OT) and Engineering Technologies (ET) to achieve operational excellence through enhanced analytics in operation and maintenance of industrial assets.
This volume provides insight into opportunities and challenges caused by the implementation of AI in industries apart from future developments with special reference to operation and maintenance of industrial assets. Industry practitioners in the maintenance field as well as academics seeking applied research in maintenance will find this text useful.
Sommario
Condition Monitoring of Hyradulic Cylinder Seals Using Acoustic Emissions.- Online Condition Monitoring of Engines by a Deep Analysis of the Electrical Conductivity and Relative Permittivity Changes of the Lubricant.- A Kalman Filter Based Time Series ARX Model for Force Identification.- Playing an Electromagnetic Pinball Machine by an AI Trained with Reinforcement Learning.- The Research of Civil Aero-Engine Remaining Useful Life Estimation Based on Gaussian Process.- Observed and Un-Observed Risk Factors Effect on Reliability Performance - A Case Study.- Spare Part Management Considering Risk Factors.- Using High-Frequency Vibration Signals for Gear Wear Assessment in Lieu of Acoustic Emission Signals.- Monitoring Gear Wear with Transmission Error.- Designing of a Framework for the Implementation of RCM Using SWOT Analysis.- Similarity Life Prediction Based on FPCA and Multi-Source Information Fusion.- Remaining Useful Life Prediction Techniques Based on Convolutional Autocoderand Long Short Time Memory Network.- Condition Based Maintenance of HVAC on a High-Speed Train for Fault Detection.- Free-Text Data Analysis on Breakdown Reports using Natural Language Processing and Machine Learning.- Why EMD and Similar Decompositions Should not be Used for Bearing Diagnostics.- Data-Driven Railway Maintenance Planning Based on Predictive Modelling of Track Geometry Degradation.- Cost and Revenue Streams Estimation for Novel Open Data Based Electric Vehicle Service and Maintenance Ecosystem Driven Platform Solution.- An ICT System for Gravel Road Maintenance - Information and Functionality Requirements.- Towards Intelligent Data Analytics in Industry 4.0: A Case Study in Power Transfer Unit.- Data Driven Optimal Design of Reverse Logistics Network for Used Lithium-ion Batteries in Sweden.- Framework for Extracting and Structuring Raw Data to Strengthen Proactive Decision Making in Maintenance.- Autonomous Anomaly Detection and Handling of Spatiotemporal Railway Data.- Organization Resilience Estimation: Application of Expert Judgment.- Maintenance Crew Scheduling in a Train Operating Company.- The Performance and Operating Environment Based Importance Measure.- Industrial Equipment's Throughput Capacity Analysis.- The Resilience Alteration by Risk Factors in Industrial Equipment.- Analysis of Systematic Influences on the Insulation Resistance of Electronic Railway Interlockings.- Early Fault Detection Based on Wind Turbine SCADA Data Using CNNs.- Hybrid Fault Diagnosis Algorithm of Nuclear Power Plants Based on Improved PCA and SVM.- AI Based Inspection of Commercial Aircrafts by UAS.- Research on Fault Diagnosis Technology of Nuclear Power Plant Based on KNN-SDG Method.- Comprehensive Monitoring of Large Industrial Systems and Fault Data Recovery.- Research on Fault Diagnostic Technology of Nuclear Power Plants Based on Random Forest Algorithm.- Evaluation of Contact-Type Failure Using Frequency Fluctuation Caused by Nonlinear Wave Modulation Utilizing Self-Excited Ultrasonic Vibration.- Learning-Based Diagnosis of Multiple Faults in Rotating Machinery.- Evaluation of Convolutional Neural Networks and Transfer Learning for Bearing Corrosion Inspection.- Condition-Based Maintenance Optimization Based On Matrix Algebra.- Performance Evaluation of Wind Turbine Based on Cointegration.- The Application Prospects and Problems of Prognostics and Health Management Technology in Nuclear Power Plants.- Metadata Inference on Building Sensor Data.- Optimised Hybrid Model for Rolling Stock Propulsion Subsystem Decommissioning and Refurbishment.- Combining Spectral Coherence with Informative Frequency Band Features for Condition Monitoring Under Time-Varying Operating Conditions.- Vibration Measurements and Modal Analysis on a Turntable.- Blockchain Technology for Information Sharing and Coordination to Mitigate the Bullwhip Effect in Service Supply Chain.- Data Driven Maintenance - a Promising Way of Action for Future Industrial ServicesMa
Dettagli sul prodotto
| Con la collaborazione di | Alirez Ahmadi (Editore), Alireza Ahmadi (Editore), Ramin Karim (Editore), Ravdeep Kour (Editore), Raj Rao (Editore), Iman Soleimanmeigouni (Editore), Iman Soleimanmeigouni et al (Editore) |
| Editore | Springer, Berlin |
| Lingue | Inglese |
| Formato | Tascabile |
| Pubblicazione | 30.03.2022 |
| EAN | 9783030936389 |
| ISBN | 978-3-0-3093638-9 |
| Pagine | 446 |
| Dimensioni | 155 mm x 24 mm x 235 mm |
| Illustrazioni | XII, 446 p. 227 illus., 173 illus. in color. |
| Serie |
Lecture Notes in Mechanical Engineering |
| Categorie |
Guide e manuali
Scienze naturali, medicina, informatica, tecnica > Informatica, EDP |
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