Part of knowledge base of fuzzy logic expert system for exercise control of diabetics

Slides:



Advertisements
Similar presentations
Basic Logic Gate Sayed Mahbub Hasan Amiri Dhaka Residential Model College.
Advertisements

Fuzzy Logic E. Fuzzy Inference Engine. “antecedent” “consequent”
Fuzzy Logic What is that? Prof. Dr. T. Nouri
PART 12 Fuzzy Decision Making 1. Individual decision making 2. Multiperson decision making 3. Multicriteria decision making 4. Multistage decision making.
Fuzzy Logic Control Systems Ken Morgan ENGR 315 December 5, 2001.
Exercise Exercise3.1 8 Exercise3.1 9 Exercise
Fuzzy Logic E. Fuzzy Inference Engine. “antecedent” “consequent”
Exercise Exercise Exercise Exercise
Exercise Exercise Exercise Exercise
Exercise Exercise6.1 7 Exercise6.1 8 Exercise6.1 9.
PART 11 Fuzzy DB and IR 1. Fuzzy databases 2. Fuzzy information retrieval FUZZY SETS AND FUZZY LOGIC Theory and Applications.
Matlab Fuzzy Toolkit Example
In a not gate, if the input is on(1) the output is off (0) and vice versa.
Teachers Name : Suman Sarker Telecommunication Technology Subject Name : Computer Controller System & Robotics Subject Code : 6872 Semester :7th Department.
Designing Antecedent Membership Functions
Rule-Based Fuzzy Model. In rule-based fuzzy systems, the relationships between variables are represented by means of fuzzy if–then rules of the following.
Fuzzy Petri Nets of Education
Fuzzy Logic Controller Intelligent System course.
INVENTORY CONTROL AS IDENTIFICATION PROBLEM BASED ON FUZZY LOGIC ALEXANDER ROTSHTEIN Dept. of Industrial Engineering and Management, Jerusalem College.
1 Methodology for monitoring supply chain performance: a fuzzy logic approach Source : Logistics Information Management Volume 15 . Number 4 . 2002 . pp.
Combination of logic gates  Logic gates can be combined to produce more complex functions.  They can also be combined to substitute one type of gate.
Math – What is a Function? 1. 2 input output function.
PART 9 Fuzzy Systems 1. Fuzzy controllers 2. Fuzzy systems and NNs 3. Fuzzy neural networks 4. Fuzzy Automata 5. Fuzzy dynamic systems FUZZY SETS AND FUZZY.
WEEK INTRODUCTION IT440 ARTIFICIAL INTELLIGENCE.
PhD. Prof. FADI ISSA IONEL NAFTANAILA.  Measure of success of a project:  Time management systems:  Processes of Time Management area: ◦ Define ◦ Sequence.
PART 10 Pattern Recognition 1. Fuzzy clustering 2. Fuzzy pattern recognition 3. Fuzzy image processing FUZZY SETS AND FUZZY LOGIC Theory and Applications.
Algebra 1 Rules and Robots. Single machines PROCESSOR INPUT OUTPUT Imagine that we have a robot to help us make patterns
LOGIC MODEL ACTIVITY: EXAMPLES to be distributed as paper handouts (one for each group of 5 to 8 people) for the logic model activity.
AND Gate Inputs Output Input A (Switch) Input B (Switch) Output Y (Lamp) 0 (Open) 0 (OFF) A B Lamp.
Industry Systems Input, Process or Output? Click on the right part of the system to move on.
Project Communication Management Manage Communications - Inputs Inputs Communications Management Plan Work Performance Reports Enterprise Environmental.
Chapter 10 FUZZY CONTROL Chi-Yuan Yeh.
Eng. Mai Z. Alyazji October, 2016
Logic Gates Practical Objective: to develop an understanding of logic circuits and truth tables.
Logic What is logic? Logic is the name given to an electronic component which will monitor a number of inputs and give an output depending on them Input.
MATLAB Fuzzy Logic Toolbox
INTRODUCTION TO PLC.
TECHNOLOGY GUIDE FOUR Intelligent Systems.
Biconditional - 2 CS-708.
Think What will be the output?
Fuzzy Logics.
Boolean vs Fuzzy Strictly 0 or 1 output Output varies between 0 and 1
Example of programming a quantum robot
منطق فازی.
Notes Over 2.1 Function {- 3, - 1, 1, 2 } { 0, 2, 5 }
شاخصهای عملکردی بیمارستان
فازی سازی و غیرفازی سازی
ETM 607 – Simulation Software and Arena Modeling
مدل زنجیره ای در برنامه های سلامت
فرق بین خوب وعالی فقط اندکی تلاش بیشتر است
Function Notation “f of x” Input = x Output = f(x) = y.
PLC 5 I/O Addressing.
Transp Course 2014 Overview.
Суури мэдлэг Basic Knowledge
in Intelligent Tutoring Systems with Fuzzy Logic Techniques
Fuzzy Logic Colter McClure.
Logic Gates Truth Table Challenge
Evaluating Logarithms
Exponential and Logarithmic Forms
IE 214: Operations Management
Warm Up What three terms come next? 1. 9, 12, 15, 18, . . .
Warm Up What three terms come next? 1. 9, 12, 15, 18, . . .
Let’s get ready for the quiz!
Basic Logic Operations
Objective- To graph a relationship in a table.
Eng. Ahmed M Bader El-Din October, 2018
INTOSAI IT AUDIT TRAINING
Agenda Lecture Content: Combinatorial Circuits Boolean Algebras
Arithmatic Logic Unit (ALU). ALU Input Data :  A0-A3  B0-B3 Output Data :  F0 – F3.
SYEN 3330 Digital Systems Chapter 2 – Part 1 SYEN 3330 Digital Systems.
Presentation transcript:

Part of knowledge base of fuzzy logic expert system for exercise control of diabetics

Part of knowledge base of fuzzy logic expert system for exercise control of diabetics

Model of fuzzy sets of input factor Part of knowledge base of fuzzy logic expert system for exercise control of diabetics Model of fuzzy sets of input factor

Part of knowledge base of fuzzy logic expert system for exercise control of diabetics

Model of fuzzy sets of input factor Part of knowledge base of fuzzy logic expert system for exercise control of diabetics Model of fuzzy sets of input factor

Model of fuzzy sets of input factor Part of knowledge base of fuzzy logic expert system for exercise control of diabetics Model of fuzzy sets of input factor

Part of knowledge base of fuzzy logic expert system for exercise control of diabetics OUTPUT FACTORS INPUT FACTORS

EXPERT RECOMMENDATION Part of knowledge base of fuzzy logic expert system for exercise control of diabetics EXPERT RECOMMENDATION

Model of fuzzy sets of input factor Part of knowledge base of fuzzy logic expert system for exercise control of diabetics Model of fuzzy sets of input factor

Model of fuzzy sets of ouput factor Part of knowledge base of fuzzy logic expert system for exercise control of diabetics Model of fuzzy sets of ouput factor