Skip to content
MathWorks - Mobile View
  • MathWorks 계정에 로그인합니다.MathWorks 계정에 로그인합니다.
  • Access your MathWorks Account
    • 내 계정
    • 나의 커뮤니티 프로필
    • 라이선스를 계정에 연결
    • 로그아웃
  • 제품
  • 솔루션
  • 아카데미아
  • 지원
  • 커뮤니티
  • 이벤트
  • MATLAB 받기
MathWorks
  • 제품
  • 솔루션
  • 아카데미아
  • 지원
  • 커뮤니티
  • 이벤트
  • MATLAB 받기
  • MathWorks 계정에 로그인합니다.MathWorks 계정에 로그인합니다.
  • Access your MathWorks Account
    • 내 계정
    • 나의 커뮤니티 프로필
    • 라이선스를 계정에 연결
    • 로그아웃

비디오 및 웨비나

  • MathWorks
  • 비디오
  • 비디오 홈
  • 검색
  • 비디오 홈
  • 검색
  • 영업 담당 문의
  • 평가판 신청
2:06 Video length is 2:06.
  • Description
  • Full Transcript
  • Related Resources

What Is Predictive Maintenance Toolbox?

Predictive Maintenance Toolbox™ provides capabilities for estimating the remaining useful life (RUL) of a machine and extracting features to design condition indicators which can help monitor the health of a machine. The toolbox also provides capabilities for managing and labeling data, as well as reference examples for developing algorithms for bearings, pumps, batteries, and other machines.

The Predictive Maintenance Toolbox™ provides capabilities and reference examples for designing and testing condition monitoring and predictive maintenance algorithms for ball bearings, pumps, batteries, and other machines.

Use the Diagnostic Feature Designer to extract features from sensor data without writing any MATLAB® code. Filter and preprocess sensor data signals and extract time domain features such as mean and standard deviation. You can also estimate a signal’s power and order spectra and extract frequency domain features such as spectral peak values. After you have computed your features, you can plot and rank them to determine which features are best suited for your fault classification and remaining useful life algorithms, and export them.

You can estimate the time to failure of your machine or its remaining useful life using similarity methods which require run-to-failure data, survival methods—which require lifetime data related to events such as part replacement and part failure—and trend-based methods, which require a known failure threshold.

As you can see, the methods also provide confidence intervals for the predictions made. 

Every algorithm needs data, and you can import yours from the cloud, HDFS, and local files before organizing it in MATLAB. If you don’t have any failure data, you can generate simulation data from Simulink® models of your machine that incorporate fault conditions.

The documentation and examples help you get started by stepping you through the workflow of the algorithm development process.

For more information on the Predictive Maintenance Toolbox, please return to the product page.

Related Products

  • Predictive Maintenance Toolbox

Learn More

MATLAB and Simulink for Predictive Maintenance
MATLAB and Simulink for Predictive Maintenance (4 videos)
Feature Extraction for Identifying Condition Indicators with MATLAB (Ebook)
What is Predictive Maintenance?

3 Ways to Speed Up Model Predictive Controllers

Read white paper

A Practical Guide to Deep Learning: From Data to Deployment

Read ebook

Bridging Wireless Communications Design and Testing with MATLAB

Read white paper

Deep Learning and Traditional Machine Learning: Choosing the Right Approach

Read ebook

Hardware-in-the-Loop Testing for Power Electronics Control Design

Read white paper

Predictive Maintenance with MATLAB

Read ebook

Electric Vehicle Modeling and Simulation - Architecture to Deployment : Webinar Series

Register for Free

How much do you know about power conversion control?

Start quiz

Introduction to Predictive Maintenance with MATLAB

Read ebook

Feedback

Featured Product

Predictive Maintenance Toolbox

  • Request Trial
  • Get Pricing

Up Next:

38:27
Predictive Maintenance with MATLAB

Related Videos:

44:44
A Predictive Model of Building Power Usage Through PI...
3:59
Getting Started with Model Predictive Control Toolbox
28:18
Model Predictive Control of Diesel Engine Airpath
50:23
Predictive Modelling Made Easy with the New Machine...

View more related videos

MathWorks - Domain Selector

Select a Web Site

Choose a web site to get translated content where available and see local events and offers. Based on your location, we recommend that you select: .

  • Switzerland (English)
  • Switzerland (Deutsch)
  • Switzerland (Français)
  • 中国 (简体中文)
  • 中国 (English)

You can also select a web site from the following list:

How to Get Best Site Performance

Select the China site (in Chinese or English) for best site performance. Other MathWorks country sites are not optimized for visits from your location.

Americas

  • América Latina (Español)
  • Canada (English)
  • United States (English)

Europe

  • Belgium (English)
  • Denmark (English)
  • Deutschland (Deutsch)
  • España (Español)
  • Finland (English)
  • France (Français)
  • Ireland (English)
  • Italia (Italiano)
  • Luxembourg (English)
  • Netherlands (English)
  • Norway (English)
  • Österreich (Deutsch)
  • Portugal (English)
  • Sweden (English)
  • Switzerland
    • Deutsch
    • English
    • Français
  • United Kingdom (English)

Asia Pacific

  • Australia (English)
  • India (English)
  • New Zealand (English)
  • 中国
    • 简体中文Chinese
    • English
  • 日本Japanese (日本語)
  • 한국Korean (한국어)

Contact your local office

  • 영업 담당 문의
  • 평가판 신청

MathWorks

Accelerating the pace of engineering and science

MathWorks는 엔지니어와 과학자들을 위한 테크니컬 컴퓨팅 소프트웨어 분야의 선도적인 개발업체입니다.

활용 분야 …

제품 소개

  • MATLAB
  • Simulink
  • 학생용 소프트웨어
  • 하드웨어 지원
  • File Exchange

다운로드 및 구매

  • 다운로드
  • 평가판 신청
  • 영업 상담
  • 가격 및 라이선스
  • MathWorks 스토어

사용 방법

  • 문서
  • 튜토리얼
  • 예제
  • 비디오 및 웨비나
  • 교육

지원

  • 설치 도움말
  • MATLAB Answers
  • 컨설팅
  • 라이선스 센터
  • 지원 문의

회사 정보

  • 채용
  • 뉴스 룸
  • 사회적 미션
  • 고객 사례
  • 회사 정보
  • Select a Web Site United States
  • 신뢰 센터
  • 등록 상표
  • 정보 취급 방침
  • 불법 복제 방지
  • 애플리케이션 상태
  • 매스웍스코리아 유한회사
  • 주소: 서울시 강남구 삼성동 테헤란로 521 파르나스타워 14층
  • 전화번호: 02-6006-5100
  • 대표자 : 이종민
  • 사업자 등록번호 : 120-86-60062

© 1994-2022 The MathWorks, Inc.

  • Naver
  • Facebook
  • Twitter
  • YouTube
  • LinkedIn
  • RSS

대화에 참여하기