Perception Layer: Deploys multi-type sensors for vibration (2kHz sampling rate), temperature (±0.5℃ accuracy), and current (≤1% error) to cover critical components such as spindles, feed axes, and servo systems. Data collection density reaches 100 records per second per device.
Transmission Layer: Uses industrial Ethernet (PROFINET) and 5G dual-mode communication to meet differentiated transmission needs for real-time data (control command delay <50ms) and non-real-time data (status reporting cycle 1 minute), with support for breakpoint resume functionality.
Analysis Layer: Consists of edge computing gateways (processing local real-time data) and cloud big data platforms (conducting global trend analysis). Edge nodes achieve ≤1 second response time, while cloud computing power supports parallel data analysis for 1,000 devices.
Application Layer: Provides functional modules for equipment monitoring, fault early warning, and maintenance management, supporting multi-terminal access via Web, mobile, and workshop dashboards. Critical alarm push delay <30 seconds.
Triaxial acceleration sensors (±50g range) installed on spindle bearing housings monitor radial vibration intensity (normal <2.8mm/s);
Current transformers (0-1kHz bandwidth) added to servo motor outputs capture current harmonic distortion (normal <5%);
Temperature-humidity sensors (10-second sampling cycle) deployed inside electrical cabinets with trigger thresholds set to temperature >40℃ or humidity >70%RH.
Adopt industrial-grade processors (quad-core 2.0GHz) with local storage (≥128GB) and algorithm deployment capabilities;
Built-in lightweight models for vibration spectrum analysis and temperature trend recognition, capable of independently completing 70% of basic fault judgments.
Uses distributed server clusters with storage capacity for 5-year full data of 100 devices (approximately 50TB);
Equipped with GPU acceleration cards to support training and inference of machine learning models, with model update cycles ≤7 days.
Dynamically displays equipment operating parameters (spindle speed, feed rate, etc.), health scores (0-100 points), and alarm information;
Uses red (fault), yellow (warning), and green (normal) indicators for equipment status, supporting view switching between single devices and workshop overviews.
Queries sensor raw data and statistical indicators (maximum, average, etc.) for any time period, with data storage cycles ≥3 years;
Provides visualization tools such as vibration spectrograms and temperature curves, supporting comparative analysis of pre- and post-fault data.
Authorized experts can remotely view real-time equipment status, access PLC programs (supporting ladder diagram online monitoring), and CNC system parameters;
Features remote debugging capabilities (e.g., servo gain adjustment) with full traceability of operation records.
Level 1 Warning (minor anomaly): Parameters exceeding normal range without affecting processing, e.g., spindle temperature 5℃ higher than historical average;
Level 2 Warning (significant anomaly): Potential fault risk exists, e.g., vibration peak exceeding threshold by 1.2x, requiring planned shutdown inspection;
Level 3 Warning (severe anomaly): Imminent fault, e.g., sudden 3x increase in vibration amplitude at bearing characteristic frequency, requiring immediate shutdown.
Integrates fault tree analysis (FTA) and neural network algorithms with ≥92% diagnostic accuracy;
Identifies composite faults (e.g., "spindle imbalance + bearing wear") and locates fault positions (down to specific bearing models).
Contains 1,000+ typical fault cases with descriptions, cause analysis, solutions, and maintenance videos;
Supports semantic retrieval (e.g., inputting "spindle abnormal noise" matches relevant cases) with ≥10 monthly case updates.
Automatically generates maintenance work orders (including spare parts lists, tool lists) based on equipment health trends and production schedules;
Supports maintenance resource scheduling (e.g., technician scheduling, spare parts 领用) and tracks execution progress.
Automatically calculates safety stock (e.g., minimum spindle bearing inventory = 3 sets) based on fault warnings and historical consumption data;
Triggers procurement requests and recommends suppliers (based on historical delivery cycles and prices) when spare parts fall below threshold.
Records costs (labor + parts) and duration of each maintenance event, calculating maintenance return on investment (ROI);
Compares equipment performance indicators before and after maintenance (e.g., 50% reduction in vibration amplitude) to continuously optimize maintenance strategies.
Establishes spatio-temporal correlation models for vibration, temperature, and current data, e.g., 30℃ spindle temperature increase typically causes 20%-30% higher bearing vibration amplitude;
Uses Kalman filtering to fuse measurements from different sensors, improving state assessment accuracy (error reduced to <5%).
Performs wavelet packet decomposition on vibration signals to extract fault characteristic frequencies (e.g., bearing outer ring fault frequency = 0.6×rotational speed);
Applies principal component analysis (PCA) for dimensionality reduction, selecting 10 most sensitive core indicators from 100+ feature parameters.
Predicts RUL of critical components using LSTM neural networks, e.g., spindle bearing life prediction error ≤10%;
Model inputs include multi-dimensional features such as real-time status parameters, cumulative operating time, and maintenance history.
System automatically triggers model iterative updates after processing 100 new fault cases, continuously improving diagnostic accuracy;
Uses transfer learning to quickly adapt Model A to Machine B (reducing data requirements by 60%).
Provides confidence intervals for predictions (e.g., "85%±5% probability of failure within 72 hours");
Dynamically adjusts warning levels based on confidence to reduce false alarms (target false alarm rate <3%).
Constructs digital twins containing geometric models (0.01mm accuracy), physical models (material properties, mechanical characteristics), and behavior models (kinematic simulation);
Achieves real-time synchronization between virtual models and physical equipment (delay <100ms) to reproduce operating states.
Simulates maintenance processes (e.g., spindle bearing replacement) in digital twin environments, generating 3D step-by-step guidance;
Previews effects of different maintenance schemes (e.g., impact of preload adjustment on spindle accuracy) to optimize maintenance processes.
Simulates various faults (e.g., excessive screw clearance) in virtual environments to observe impacts on machining accuracy;
Generates fault feature libraries to optimize diagnostic algorithms (40% faster identification of new faults).
Deploys sensors and edge computing units on 2-3 critical devices (e.g., 5-axis machining centers);
Builds basic monitoring functions to verify data collection completeness (coverage ≥95%) and accuracy (error ≤5%).
Expands to 50%+ of workshop equipment, improving warning and diagnostic functions;
Integrates with enterprise MES systems to coordinate maintenance and production plans.
Covers all critical equipment, establishing a full workshop intelligent O&M system;
Integrates with ERP systems to optimize spare parts procurement and inventory management.
Application scenario: Intelligent O&M for 20 cylinder block machining centers;
Results: Fault downtime reduced from 80 hours/month to 25 hours; OEE increased from 68% to 89%;
Case highlight: Predicted spindle bearing failure 72 hours in advance through vibration features, avoiding batch processing defects.
Application scenario: Health management for 5 titanium alloy machining machines;
Results: 45% reduction in maintenance costs; 93% accuracy in critical component life prediction;
Innovation: Combined digital twin simulation of cutting parameter impacts on equipment life to optimize process plans.
Direct gains: Reduced downtime losses (saving ≥¥2 million/year at ¥50,000/hour) and 15%-20% lower maintenance costs;
Indirect gains: 5%-10% higher product qualification rates and 2-3 year average equipment life extension.
Maintenance mode shifted from "passive waiting" to "active planning," with planned maintenance increasing from 30% to 80%;
Technician efficiency improved by 50%, managing 15 devices per person vs. 5 previously.
Accumulated full-lifecycle big data (≥10GB effective data/device/year);
Formulated replicable intelligent O&M solutions with 5-10 patent applications.
Connects digital threads from design (CAD), manufacturing (CAM) to O&M (MRO) for correlation analysis between equipment performance degradation and design parameters;
Optimizes next-generation machine tool design (e.g., strengthening weak links) based on full-lifecycle data.
Introduces reinforcement learning algorithms enabling systems to independently formulate maintenance strategies (e.g., adjusting maintenance timing based on production order priorities);
Develops self-healing technologies (e.g., automatic compensation for wear-induced accuracy loss) to achieve "no shutdown for minor faults."
Adopts wireless passive sensors (>10-year lifespan) for condition monitoring of rotating components like tools and screws;
Edge node computing power increased 10x, enabling 90% of fault diagnosis and prediction to be completed locally.
Equipment manufacturers offer "pay-by-health-status" service models covering full-lifecycle O&M;
Conducts comparative equipment performance analysis based on cloud data to provide personalized improvement recommendations.
Establishes collaborative platforms for manufacturers, spare parts suppliers, and third-party service providers to achieve "second-level linkage" for fault response;
Shares spare parts inventory (e.g., regional parts pools) to reduce emergency parts delivery time from 24 hours to 4 hours.
Optimizes maintenance cycles based on energy consumption data (e.g., scheduling maintenance during low load periods) to reduce energy waste;
Adopts environmentally friendly spare parts and processes (e.g., biodegradable grease) to minimize environmental impact of O&M activities.
Intelligent O&M systems for CNC machine tools are not just equipment management tools but core pillars of digital transformation in manufacturing. Through data-driven precise decision-making, they break free from traditional O&M's reliance on experience and maximize equipment effectiveness throughout its lifecycle. Practice at a heavy machinery group shows such systems can increase OEE by over 20 percentage points with investment payback periods within 2 years. Future breakthroughs in AI and digital twin technologies will drive intelligent O&M toward "zero fault" goals, providing more robust equipment support for smart manufacturing.
Contact person: Manager Huang
Sales phone: +86 18366672537
Email: wochuanen@163.com
My Alibaba International Store:https://sddongen.en.alibaba.com
Website:http://www.dornmachine.com
After sales hotline:+86 18863277509