Thuật ngữ AI
Từ điển đầy đủ về Trí tuệ nhân tạo
IoT Sensors and Data Acquisition
Deployment of intelligent sensor networks to collect real-time operational data from industrial equipment.
Temporal Data Preprocessing
Cleaning, normalization, and feature engineering techniques specific to time series for predictive maintenance.
Anomaly Detection
Unsupervised algorithms to identify abnormal behaviors and early warning signals of failures.
Failure Prediction Algorithms
Supervised machine learning models to estimate the remaining useful life (RUL) of equipment.
FMEA and Reliability
Systematic study of failure modes, their effects, and their criticality to prioritize maintenance actions.
Digital Twins and Simulation
Creating digital twins to simulate equipment behavior and test maintenance scenarios virtually.
Condition-Based Maintenance
Condition-based approaches using thresholds and business rules to trigger maintenance interventions.
Vibration and Acoustic Analysis
Processing of vibration and acoustic signals to detect mechanical defects and premature wear.
Computer Vision for Inspection
Use of cameras and deep learning algorithms to visually detect equipment defects and wear.
Advanced Signal Processing
Advanced techniques such as wavelets and spectral analysis to extract health indicators from equipment.
Maintenance Scheduling Optimization
Optimization algorithms and recommendation systems for efficiently planning maintenance interventions.
Reinforcement Learning
Using RL to learn optimal maintenance policies by minimizing costs and downtime.
Multi-Source Data Fusion
Intelligent combination of heterogeneous data (sensors, historical, weather) to improve prediction accuracy.
Interpretability of Predictive Models
XAI Techniques to Explain Maintenance Predictions and Help Operators Make Informed Decisions.