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
12:43 Video length is 12:43.
  • Description
  • Related Resources

Data-Driven Robust Control of Insulin Therapy

From the series: MathWorks Research Summit

Nicola Paoletti, Department of Computer Science, Royal Holloway, University of London (UK)

Automated insulin delivery, a.k.a. the artificial pancreas (AP), has the potential to revolutionize Type-1 diabetes (T1D) therapy by improving glucose control and reducing the burden of self-care. The design of a fully closed-loop insulin controller is, however, still challenging because the blood glucose (BG) levels to control are significantly affected by unknown disturbances related to the patient behavior; namely, meals and physical activity. Accurate insulin control is also made difficult by the fact that glucose measurements are taken underneath the skin, and thus are delayed with respect to the BG due to physiological transport dynamics.

The discussion gives an overview of current T1D therapy practice and the challenges behind closed-loop insulin control and presents an AP system design—implemented and evaluated in MATLAB®—that addresses these challenges through the integration of control techniques and data-driven models of patient behavior, showing simulation results on virtual patient models.

Highlights:

  • Design a new AP system based on min-max robust model-predictive control (MPC), which computes at each time the insulin therapy that maximizes the predicted worst-case performance (i.e., how well BG stays "in range") with respect to the unknown future patient behavior.
  • Learn data-driven models of meal and exercise behavior, models that allow restricting the domain of the unknown patient-related disturbances, thereby making the controller less conservative. The learning method ensures with arbitrarily high probability that such models, and, in turn, the controller using them, cover all possible behaviors of the unknown data-generating distribution.
  • Develop a Moving Horizon Estimator to recover the (unknown) system state from delayed and noisy glucose measurements and estimate the most likely meal and exercise disturbances.
  • Evaluate the AP system design on virtual patients, i.e., on accurate differential equation models of the glucose/insulin metabolism, using data-driven meal behavior models learned from the CDC's NHANES database (from over 8,600 participants).
  • Show that the AP system keeps the BG within healthy ranges more than 93% of the time.
  • Use MATLAB for the AP system implementation and experimental evaluation.

This research was conducted by the speaker while at the Department of Computer Science, Stony Brook University (USA).

Related Products

  • MATLAB
  • Control System Toolbox
  • Global Optimization Toolbox
  • Optimization Toolbox
  • Statistics and Machine Learning Toolbox

Bridging Wireless Communications Design and Testing with MATLAB

Read white paper

Feedback

Featured Product

MATLAB

  • Request Trial
  • Get Pricing

Up Next:

A proactive defense control mechanism for maximizing system unpredictability by dynamic stochastic switching of attack surfaces while optimally controlling the system using a Q-learning framework.
19:14
A Reinforcement Learning Framework for Smart, Secure, and...
View full series (17 Videos)

Related Videos:

16:47
Kohler Builds Reliability Test System Using Data...
20:23
Multidomain Model-Driven Software Development at Volvo Car...
32:03
Lean Data Analysis: The Awesome Data Dexterity of MATLAB...
28:27
Data Processing Framework Supporting Large Scale Driving...
30:38
Data Processing Framework Supporting Large-Scale Driving...

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