Language:
English
繁體中文
Help
回圖書館首頁
手機版館藏查詢
Login
Back
Switch To:
Labeled
|
MARC Mode
|
ISBD
Machine learning for the automatic d...
~
Fisher, Wendy D.
Linked to FindBook
Google Book
Amazon
博客來
Machine learning for the automatic detection of anomalous events.
Record Type:
Electronic resources : Monograph/item
Title/Author:
Machine learning for the automatic detection of anomalous events./
Author:
Fisher, Wendy D.
Published:
Ann Arbor : ProQuest Dissertations & Theses, : 2017,
Description:
173 p.
Notes:
Source: Dissertation Abstracts International, Volume: 78-10(E), Section: B.
Contained By:
Dissertation Abstracts International78-10B(E).
Subject:
Computer science. -
Online resource:
http://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=10258193
ISBN:
9781369790023
Machine learning for the automatic detection of anomalous events.
Fisher, Wendy D.
Machine learning for the automatic detection of anomalous events.
- Ann Arbor : ProQuest Dissertations & Theses, 2017 - 173 p.
Source: Dissertation Abstracts International, Volume: 78-10(E), Section: B.
Thesis (Ph.D.)--Colorado School of Mines, 2017.
In this dissertation, we describe our research contributions for a novel approach to the application of machine learning for the automatic detection of anomalous events. We work in two different domains to ensure a robust data-driven workflow that could be generalized for monitoring other systems. Specifically, in our first domain, we begin with the identification of internal erosion events in earth dams and levees (EDLs) using geophysical data collected from sensors located on the surface of the levee. As EDLs across the globe reach the end of their design lives, effectively monitoring their structural integrity is of critical importance. The second domain of interest is related to mobile telecommunications, where we investigate a system for automatically detecting non-commercial base station routers (BSRs) operating in protected frequency space. The presence of non-commercial BSRs can disrupt the connectivity of end users, cause service issues for the commercial providers, and introduce significant security concerns. We provide our motivation, experimentation, and results from investigating a generalized novel data-driven workflow using several machine learning techniques.
ISBN: 9781369790023Subjects--Topical Terms:
523869
Computer science.
Machine learning for the automatic detection of anomalous events.
LDR
:04479nmm a2200349 4500
001
2159376
005
20180628100930.5
008
190424s2017 ||||||||||||||||| ||eng d
020
$a
9781369790023
035
$a
(MiAaPQ)AAI10258193
035
$a
(MiAaPQ)mines:11222
035
$a
AAI10258193
040
$a
MiAaPQ
$c
MiAaPQ
100
1
$a
Fisher, Wendy D.
$3
3347246
245
1 0
$a
Machine learning for the automatic detection of anomalous events.
260
1
$a
Ann Arbor :
$b
ProQuest Dissertations & Theses,
$c
2017
300
$a
173 p.
500
$a
Source: Dissertation Abstracts International, Volume: 78-10(E), Section: B.
500
$a
Adviser: Tracy Camp.
502
$a
Thesis (Ph.D.)--Colorado School of Mines, 2017.
520
$a
In this dissertation, we describe our research contributions for a novel approach to the application of machine learning for the automatic detection of anomalous events. We work in two different domains to ensure a robust data-driven workflow that could be generalized for monitoring other systems. Specifically, in our first domain, we begin with the identification of internal erosion events in earth dams and levees (EDLs) using geophysical data collected from sensors located on the surface of the levee. As EDLs across the globe reach the end of their design lives, effectively monitoring their structural integrity is of critical importance. The second domain of interest is related to mobile telecommunications, where we investigate a system for automatically detecting non-commercial base station routers (BSRs) operating in protected frequency space. The presence of non-commercial BSRs can disrupt the connectivity of end users, cause service issues for the commercial providers, and introduce significant security concerns. We provide our motivation, experimentation, and results from investigating a generalized novel data-driven workflow using several machine learning techniques.
520
$a
In Chapter 2, we present results from our performance study that uses popular unsupervised clustering algorithms to gain insights to our real-world problems, and evaluate our results using internal and external validation techniques. Using EDL passive seismic data from an experimental laboratory earth embankment, results consistently show a clear separation of events from non-events in four of the five clustering algorithms applied.
520
$a
Chapter 3 uses a multivariate Gaussian machine learning model to identify anomalies in our experimental data sets. For the EDL work, we used experimental data from two different laboratory earth embankments. Additionally, we explore five wavelet transform methods for signal denoising. The best performance is achieved with the Haar wavelets. We achieve up to 97.3% overall accuracy and less than 1.4% false negatives in anomaly detection.
520
$a
In Chapter 4, we research using two-class and one-class support vector machines (SVMs) for an effective anomaly detection system. We again use the two different EDL data sets from experimental laboratory earth embankments (each having approximately 80% normal and 20% anomalies) to ensure our workflow is robust enough to work with multiple data sets and different types of anomalous events (e.g., cracks and piping). We apply Haar wavelet-denoising techniques and extract nine spectral features from decomposed segments of the time series data. The two-class SVM with 10-fold cross validation achieved over 94% overall accuracy and 96% F1-score.
520
$a
Our approach provides a means for automatically identifying anomalous events using various machine learning techniques. Detecting internal erosion events in aging EDLs, earlier than is currently possible, can allow more time to prevent or mitigate catastrophic failures. Results show that we can successfully separate normal from anomalous data observations in passive seismic data, and provide a step towards techniques for continuous real-time monitoring of EDL health. Our lightweight non-commercial BSR detection system also has promise in separating commercial from non-commercial BSR scans without the need for prior geographic location information, extensive time-lapse surveys, or a database of known commercial carriers. (Abstract shortened by ProQuest.).
590
$a
School code: 0052.
650
4
$a
Computer science.
$3
523869
650
4
$a
Geophysics.
$3
535228
690
$a
0984
690
$a
0373
710
2
$a
Colorado School of Mines.
$b
Electrical Engineering and Computer Sciences.
$3
3170560
773
0
$t
Dissertation Abstracts International
$g
78-10B(E).
790
$a
0052
791
$a
Ph.D.
792
$a
2017
793
$a
English
856
4 0
$u
http://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=10258193
based on 0 review(s)
Location:
ALL
電子資源
Year:
Volume Number:
Items
1 records • Pages 1 •
1
Inventory Number
Location Name
Item Class
Material type
Call number
Usage Class
Loan Status
No. of reservations
Opac note
Attachments
W9358923
電子資源
11.線上閱覽_V
電子書
EB
一般使用(Normal)
On shelf
0
1 records • Pages 1 •
1
Multimedia
Reviews
Add a review
and share your thoughts with other readers
Export
pickup library
Processing
...
Change password
Login