Condition Monitoring Architecture To Reduce Total Cost of Ownership

Post on 21-Dec-2014

649 views 2 download

Tags:

description

Condition Monitoring Architecture To Reduce Total Cost of Ownership at the IEEE conference by Eric Bechhoefer, PhD and Brogan Morton.

transcript

Condition Monitoring ArchitectureTo Reduce Total Cost of Ownership

Eric Bechhoefer, NRG SystemsBrogan Morton, NRG Systems

Barriers to Sales of PHM Systems

• CBM/PHM System are Proven to Work– Low Penetration into Commercial Markets– Example: 3% of Wind Turbines

• Why? - Business Case is Hard to Make– Safety not the primary concern, cost avoidance is– Hard to Quantify Benefit

• Change Architecture to Improve Value– Lower “Costs” and Better Information

Current System Architecture• System Hardware

– 6 to 8 PZT Accelerometers• 5% Accuracy, .5 to 10,000 Hz

– Tachometer– Signal Conditioning

• 6 to 12 channels• Sample Rate: 60 to 80 KSPS

• Support/Monitoring Services– Human in the loop to turn data into a diagnosis– $1,000 to $1,500 per year per turbine

• IT Infrastructure– Data hosting on local server– Data also shipped to centralized analysis center

System Layout: Wind Turbines

From a System Perspective…

• How to Lower Total Ownership Cost– Hardware Considerations

• Costs driven by accelerometer

– Software/Support Considerations• Costs driven by knowledge creation (data to diagnosis)

– IT Infrastructure Considerations• Cost driven by local data storage and associated

maintenance

Accelerometers – MEMS vs. PZT

MEMS Advantages• Cost

– $6 to $30 vs. $100’s

• Bandwidth– 0 to 32,000 Hz vs. 0.5 to

10,000 Hz

• Accuracy– Typically 1% vs. 5% or 10%

Error

• Self Test– Can Enable BIT vs. No BIT

MEMS Disadvantages• Needs to be Packaged

– No Trivial Task

• Noisier– PDS is 2 to 40x higher

System Issues• 4 Wire?

– Power/Signal

• Local Conversion?– ADC, then Microcontroller

and RT

Sensor System Considerations

• Low cost target – move to MEMS– Analog vs. Digital Sensing

• If Digital– Local ADC,

• EMI is Reduced

– Microcontroller, RAM, Receiver/Transmitter• If Multi-Drop: RS-485

– If Microcontroller: Local Processing?• Many Smaller, Cheap Processors vs. One Larger Processor

• Low cost packaging– Alternative to Stainless Steel or Titanium– Transfer Function – Has to Be Stiff/Light

bpm
Why if digital? Doesn't it need to be digital to avoid EMI issues?
bpm
Did we choose this because the micros controller was needed for the ADC anyway?

MEMS: A Sensor Solutions

• Noise Was Not An Issue– After Signal Processing,

Noise was Negligible

• Conductive Plastic Package– 40% Mass of Stainless– Similar Stiffness– 12% of Cost of Stainless– 6.5KHz Resonance, Flat

Response to 17 KHz

1000 mv/g vs. 70 mv/gMEMS Accel, 0.25 HzWithin 2% of Low G Accel

Embedded PHM• Micro with FPU Support

– 32MB RAM– 24 Bit ADC– Sample @ 300-100,000 kbps– R/T > 500 KB/S

• Local Vibe Processing– Time Synchronous Average

(TSA)– FFT/IFFT– Hilbert Transform

• Total Cost: Similar to PZT Accel

Software & Support Considerations

• Algorithmic– Digital signal processing of the vibration signals for

fault detection• Knowledge Creation

– Goal: Actionable information requiring little interpretation

Main Shaft

MainBearing

3-stage Gearbox

Generator

• 17 Bearings• 9 Gears• 8 Shaft

Low Speed Shaft

Int. Speed Shaft

High Speed Shaft

Car

rier

Pla

te

Typical Drivetrain Configuration

Algorithmic

• Process vibration signal into indications of faults– Data reduction without loss of information

• No Spectrums/Order Analysis– Configurable Analysis for Shafts, Gears and

Bearings,– Several Condition Indicators for Each Component

• Use Time Synchronous Average (TSA)

Why This Approach

• Large Variation in Wind Speeds Cause Large Changes in Rotor Speed

• 3/Rev Torque/Speed Ripple From Tower Shadow/Wind Shear

• Gearbox has many gear meshes; isolate gears of interest

• Due to Changes in Rotor Speed, Order Analysis or the PSD Cause Smearing of Frequency Content

• Example Main Rotor Shaft

Example of Spectrum Vs. TSA

1st, 2nd, and 3rd Harmonics of Ring Gear Frequency

The TSA

• Use Tachometer as Phase Reference on Shaft• Reduces Non-Synchronous Noise 1/sqrt(revolutions)• For Each Revolution (From Tach)• Resample length m = 2^Ceiling(log2(number of points in Rev))

Gear Fault Indicators

• No Single CI Works With All Fault Modes– Surface Disturbance, Scuffing, Deformation,

Surface Fatigue, Cracks, Tooth Breakage, Eccentricity

• Use a Number of Analysis to Cover All Fault Modes– Residual Analysis, Energy Operator, Narrow Band

Analysis, Amplitude Modulation Analysis, Frequency Modulation Analysis.

Gear Analysis

Knowledge Creation

• Recall Goal: Create actionable information requiring little interpretation– Convey what to fix and when

• Single Health Indicator for Each Component– Fusion of different condition

indicators– Common scale for every

component (0-1)

Health as a Function of Distributions

• HI Paradigm: Map the CIs into an HI– HI Ranges from 0 to 1, Where the Probability of

the HI exceeding 0.5 is the PFA– HI in Warning when between 0.75 and 1– HI is Alarm when Greater than 1.0– Continued Operations with HI > 1 could Cause

Collateral Damage

Controlling Correlation Between CIs

• All CIs have PDFs• Any Operation on the CI to

form an HI is a Function of Distributions– Max of n CI (an Order Statistics)– Sum of n CI– Norm of n CI

• Function of Distribution– PFA Correct if Distribution are

IID– Need to Whiten

ij CI 1 CI 2 CI 3 CI 4 CI 5 CI 6

CI 1 1 0.84 0.79 0.66 -0.47 0.74

CI 2 1 0.46 0.27 -0.59 0.36

CI 3 1 0.96 -0.03 0.97

CI 4 1 0.11 0.98

CI 5 1 0.05

CI 6 1

CI to HI Mapping

• Six CIs used in HI Calculation– Residual RMS– Energy Operator RMS– FM0– Narrowband Kurtosis– AM Kurtosis– FM RMS

• Statistics Generated from 4 test articles: 100 samples prior to fault propagation

IT Infrastructure

For Owner/Operator• No Seat License of the CMS

Database• No Local Servers to Host Data• Management of Software

Maintenance. • Allows Pooling of Dataset of

Similar Type/Model Turbines without Risk of Exposing Proprietary Information

For CMS Developer• Simplifies Software Maintenance

Cost– Only one Platform to Develop

and Test to, – Only one Platform to Deploy

Software Updates/Patches to,• Reduces the Cost of Certification

– Configuration Management is Greatly Simplified

• Scalability

Alternate to Local Server: Cloud Computing

Conclusion

• Significant value can be created by redesigning system architecture– Vibration sensing

• Non-traditional sensor, new packaging and design methods

– Advanced signal processing techniques• Increased sensitivity to faults under dynamic conditions

– Knowledge Creation• Automated fusion of fault modes• Actionable information with diagnostic support

– IT Infrastructure• Economy of scale using cloud services