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Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019 PEER Annual Meeting January 17, 2019

Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

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Page 1: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

Structural Health Monitoring using Acceleration Data and Machine Learning Techniques

Sifat Muin and Khalid M. Mosalam

2019 PEER Annual MeetingJanuary 17, 2019

Page 2: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

Outline

• Motivation and SHM background

• CAV as a damage feature

• CAV in Machine Learning

• H-MC Framework for SHM

• Conclusion

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Page 3: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

• Current US infrastructure systems need

continuous monitoring.

Knowledge about damage Decision:

1. Damage plan proper response.

2.No damage immediate occupancy.

3

Motivation

Page 4: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

SHM is the process to develop online damage detection and/or assessmentcapability for engineered systems (aerospace, civil, mechanical).

Sensing

Pre-processing

Feature Extraction

Pattern Recognition

Decision

Processing chain of SHM

4

In this study, Machine Learning (ML)

PGA, Drift, Power Spectra, IRF, CAV, etc.

CAV: Cumulative Absolute Velocity

SHM Process

Page 5: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

CAV: Cumulative Absolute Velocity

𝐶𝐴𝑉 = 0

𝑇

𝑢 𝑡 𝑑𝑡

5

Bridge column shaking table test

Ground motion 125%

scale

Sensor location

Column cross section

Time (s)

Undamaged

Undamaged

Muin S, Mosalam KM. Earth Spectra. 2017

CAV & Damage

Page 6: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

• Actual damage at ground, 2nd, 3rd & 4th floors

• Undamaged / baseline case from 1992

Landers earthquake

Roof

Ground

6th

3rd

2nd

No damage 6th-roof

Roof 6th 3rd 2nd Ground

6

CAV & Damage

Page 7: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

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CAV in Machine Learning

Page 8: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

“ML is the science of making computers learn & act as humans toimprove their learning over time in autonomous fashion, using data &information (observations & real-world interactions).”

Traditional Programming Machine Learning

New Data Function

Output

Training Data

Learned Function

Output

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Machine Learning (ML)

Page 9: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

• Supervised learning is inferring a function from labeled training data.• Unsupervised learning is inferring function from unlabeled training data.

Classification Example

Features: words, characters, size, etc.

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• Supervised learning • Regression – continuous output• Classification – discrete output

• Unsupervised learning

• Clustering – unknown output

Supervised & Unsupervised Learning

Page 10: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

• Supervised learning is inferring a function from labeled training data.• Unsupervised learning is inferring function from unlabeled training data.

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• Supervised learning • Regression – continuous output• Classification – discrete output

• Unsupervised learning

• Clustering – unknown output

Supervised & Unsupervised Learning

Classification Example

Page 11: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

SDOF model

11

m

m

Story 1

Story 2

m

Story n

f1

f2

fn

m

m

Story 35f35

k(d)

SDOF Analysis

SDOF Results: TEST-1Input Features OLR LR ANN_10 ANN _100 SVM

CAV 80.54 82.88 80.54 81.71 79.38

𝑅𝐶𝐴𝑉 87.16 86.72 88.72 89.49 88.33

∆𝐶𝐴𝑉 75.10 75.10 75.10 77.04 75.10

CAV, 𝑹𝑪𝑨𝑽 90.27 89.44 88.72 90.66 91.05

𝑅𝐶𝐴𝑉, ∆𝐶𝐴𝑉 86.77 84.72 89.11 87.94 87.94

CAV,∆𝐶𝐴𝑉 80.54 83.27 80.54 81.32 79.38

CAV, 𝑅𝐶𝐴𝑉, ∆𝐶𝐴𝑉 90.27 89.05 90.27 90.66 89.88

CAV & 𝑅𝐶𝐴𝑉 used together as features give highest accuracy for both test cases

Page 12: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

SDOF model

12

m

m

Story 1

Story 2

m

Story n

f1

f2

fn

m

m

Story 35f35

k(d)

SDOF Analysis

Input Features OLR LR ANN_10 ANN _100 SVM

CAV 36.67 12.50 18.33 15.83 8.33

𝑅𝐶𝐴𝑉 60.00 42.50 30.83 37.50 20.83

∆𝐶𝐴𝑉 61.67 45.00 42.50 40.00 21.67

CAV, 𝑹𝑪𝑨𝑽 74.14 61.67 18.33 40.00 25.00

𝑅𝐶𝐴𝑉, ∆𝐶𝐴𝑉 65.83 45.00 60.00 40.00 22.50

CAV,∆𝐶𝐴𝑉 70.00 60.00 51.67 36.67 24.17

CAV, 𝑅𝐶𝐴𝑉, ∆𝐶𝐴𝑉 70.00 61.67 38.33 54.17 25.00

SDOF Results: TEST-2

CAV & 𝑅𝐶𝐴𝑉 used together as features give highest accuracy for both test cases

Page 13: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

A MDOF model representing a 5-story structure

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MDOF Analysis

Class specific recall values for the two models

Class MDOF-US MDOF-NS

Undamaged 0.993 0.993

Minor 0.286 0.000

Moderate 0.781 0.463

Major 0.922 0.966

MDOF

model

Test

setLocation accuracy

MDOF-USTEST-1 97.5%

TEST-2 97.5%

MDOF-NSTEST-1 93.0%

TEST-2 95.0%

Locations were identified correctly even when damage locations were uncertain with CAV and 𝑅𝐶𝐴𝑉

H

Page 14: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

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Human-Machine collaboration (H-MC) is a framework in which humans co-work withmachines to complete specific tasks by using the particular strengths of both human (H) andmachine (M).

Human-Machine Collaboration (H-MC)

Page 15: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

Between supervised and unsupervised learning, lies one class classification.

Available data from only one class.

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Novelty

Learned region

Training Observations

New Normal Observation

Novelty model:• Non-parametric (uncertain) distribution from

training data• Distance measure to detect novelty ≥ 1.5 ×IQR

Limitation: Novelty detection alone may result inFalse Positive (FP) due to lack of data from rare (strongbut undamaging) shaking.

Novelty Detection

Page 16: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

POE Envelope

• Structure-specific SDOF model with basic data

• NTHA using 1,710 ground motions

• Joint distribution using CAV & 𝑅𝐶𝐴𝑉 of damaging

events

CAV

𝑅𝐶𝐴𝑉 P

OE

1.0

0.0

16

High

Probability of

damage

Low

Probability of

damage

POE Envelope

Page 17: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

CAV

𝑅𝐶𝐴𝑉

New data

CAV

𝑅𝐶𝐴𝑉

CAV

𝑅𝐶𝐴𝑉

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H-MC for Damage Detection

Page 18: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

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CSMIP Buildings

Page 19: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

Undamaged cases correctly detected

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Undamaged Buildings

Page 20: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

Undamaged cases correctly detected

Novelty only gives FP

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Undamaged Buildings

Page 21: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

Damaged Buildings

Damaged case correctly detected

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Page 22: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

The Future

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Page 23: Structural Health Monitoring using Acceleration Data and ...Structural Health Monitoring using Acceleration Data and Machine Learning Techniques Sifat Muin and Khalid M. Mosalam 2019

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Thank You!

Acknowledgements:

Dr. Selim G unay, Dr. Umberto Alibrandi, & Dr. Yousef Bozorgnia.

Funding Sources:

California Strong Motion Instrumentation Program (CSMIP) &

Taisei Chair in Civil Engineering