Interval Type-2 Fuzzy T-S Modeling For A Heat Exchange Process On CE117 Process Trainer Proceedings of 2011 International Conference on Modelling, Identification.

Slides:



Advertisements
Similar presentations
Auto Tuning Neuron to Sliding Mode Control Application of an Auto-Tuning Neuron to Sliding Mode Control Wei-Der Chang, Rey-Chue Hwang, and Jer-Guang Hsieh.
Advertisements

Application a hybrid controller to a mobile robot J.-S Chiou, K. -Y. Wang,Simulation Modelling Pratice and Theory Vol. 16 pp (2008) Professor:
The nonlinear compact thermal model of power MOS transistors

VSMC MIMO: A Spectral Efficient Scheme for Cooperative Relay in Cognitive Radio Networks 1.
A New Algorithm of Fuzzy Clustering for Data with Uncertainties: Fuzzy c-Means for Data with Tolerance Defined as Hyper-rectangles ENDO Yasunori MIYAMOTO.
P. Venkataraman Mechanical Engineering P. Venkataraman Rochester Institute of Technology DETC2013 – 12269: Continuous Solution for Boundary Value Problems.
P. Venkataraman Mechanical Engineering P. Venkataraman Rochester Institute of Technology DETC2014 – 35148: Continuous Solution for Boundary Value Problems.
Proposed concepts illustrated well on sets of face images extracted from video: Face texture and surface are smooth, constraining them to a manifold Recognition.
Analysis of Simple Cases in Heat Transfer P M V Subbarao Professor Mechanical Engineering Department I I T Delhi Gaining Experience !!!
3 pivot quantities on which to base bootstrap confidence intervals Note that the first has a t(n-1) distribution when sampling from a normal population.
Design of Systems with INTERNAL CONVECTION P M V Subbarao Associate Professor Mechanical Engineering Department IIT Delhi An Essential Part of Exchanging.
Development of Dynamic Models Illustrative Example: A Blending Process
MECh300H Introduction to Finite Element Methods
CHAPTER 8 APPROXIMATE SOLUTIONS THE INTEGRAL METHOD
Flow and Thermal Considerations
THEORETICAL MODELS OF CHEMICAL PROCESSES
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.
Article Title: Optimization model for resource assignment problems of linear construction projects ShuShun Liu & ChangJung Wang, National Yunlin University.
Thermodynamics Part II. Remaining Topics Mechanisms of Heat Transfer Thermodynamic Systems and Their Surrounding Thermal Processes Laws of Thermodynamics.
CHAPTER 7 NON-LINEAR CONDUCTION PROBLEMS
A FUZZY LOGIC BASED MULTIPLE REFERENCE MODEL ADAPTIVE CONTROL (MRMAC) By Sukumar Kamalasadan, Adel A Ghandakly Khalid S Al-Olimat Dept. of Electrical Eng.
Tutorial 5: Numerical methods - buildings Q1. Identify three principal differences between a response function method and a numerical method when both.
AN ITERATIVE METHOD FOR MODEL PARAMETER IDENTIFICATION 4. DIFFERENTIAL EQUATION MODELS E.Dimitrova, Chr. Boyadjiev E.Dimitrova, Chr. Boyadjiev BULGARIAN.
In Engineering --- Designing a Pneumatic Pump Introduction System characterization Model development –Models 1, 2, 3, 4, 5 & 6 Model analysis –Time domain.
A nonlinear hybrid fuzzy least- squares regression model Olga Poleshchuk, Evgeniy Komarov Moscow State Forest University, Russia.
Australian Journal of Basic and Applied Sciences, 5(11): , 2011 ISSN Monte Carlo Optimization to Solve a Two-Dimensional Inverse Heat.
Australian Journal of Basic and Applied Sciences, 5(12): , 2011 ISSN Estimation of Diffusion Coefficient in Gas Exchange Process with.
Hierarchical Distributed Genetic Algorithm for Image Segmentation Hanchuan Peng, Fuhui Long*, Zheru Chi, and Wanshi Siu {fhlong, phc,
Quality of Curve Fitting P M V Subbarao Professor Mechanical Engineering Department Suitability of A Model to a Data Set…..
INTERNATIONAL CONFERENCE ON INFORMATION SCIENCE AND TECHNOLOGY, P.P , MARCH An ANFIS-based Dispatching Rule For Complex Fuzzy Job Shop Scheduling.
Cross strait Quad-reginal radio science and wireless technology conference, Vol. 2, p.p ,2011 Application of fuzzy LS-SVM in dynamic compensation.
1 CHAPTER 6 HEAT TRANSFER IN CHANNEL FLOW 6.1 Introduction (1) Laminar vs. turbulent flow transition Reynolds number is where  D tube diameter  u mean.
INVENTORY CONTROL AS IDENTIFICATION PROBLEM BASED ON FUZZY LOGIC ALEXANDER ROTSHTEIN Dept. of Industrial Engineering and Management, Jerusalem College.
Experimental research in noise influence on estimation precision for polyharmonic model frequencies Natalia Visotska.
1 CHAPTER 9 PERTURBATION SOLUTIONS 9.1 Introduction Objective Definitions Perturbation quantity Basic Problem To construct an approximate solution to a.
Wireless communications and mobile computing conference, p.p , July 2011.
CLIC Prototype Test Module 0 Super Accelerating Structure Thermal Simulation Introduction Theoretical background on water and air cooling FEA Model Conclusions.
Silesian University of Technology in Gliwice Inverse approach for identification of the shrinkage gap thermal resistance in continuous casting of metals.
Institute of Intelligent Power Electronics – IPE Page1 A Dynamical Fuzzy System with Linguistic Information Feedback Xiao-Zhi Gao and Seppo J. Ovaska Institute.
International Conference on cybernetics and intelligent system, p.p , Sept Modeling Large-Scale Manpower Dynamics: An Expert Systems Approach.
DYNAMIC BEHAVIOR OF PROCESSES :
Patch Based Prediction Techniques University of Houston By: Paul AMALAMAN From: UH-DMML Lab Director: Dr. Eick.
Chapter 2 Modeling Approaches  Physical/chemical (fundamental, global) Model structure by theoretical analysis  Material/energy balances  Heat, mass,
On Optimization Techniques for the One-Dimensional Seismic Problem M. Argaez¹ J. Gomez¹ J. Islas¹ V. Kreinovich³ C. Quintero ¹ L. Salayandia³ M.C. Villamarin¹.
FREE CONVECTION 7.1 Introduction Solar collectors Pipes Ducts Electronic packages Walls and windows 7.2 Features and Parameters of Free Convection (1)
MECH4450 Introduction to Finite Element Methods
Large-Scale Matrix Factorization with Missing Data under Additional Constraints Kaushik Mitra University of Maryland, College Park, MD Sameer Sheoreyy.
APPLICATION TO EXTERNAL FLOW
Multi-objective evolutionary generation of mamdani fuzzy rule-based systems based on rule and condition selection International Workshop On Genetic And.
Advanced Science and Technology Letters Vol.28 (EEC 2013), pp Fuzzy Technique for Color Quality Transformation.
4.Results (1)Potential coefficients comparisons Fig.3 FIR filtering(Passband:0.005~0.1HZ) Fig.4 Comparison with ESA’s models (filter passband:0.015~0.1HZ)
IEEE International Conference on Fuzzy Systems p.p , June 2011, Taipei, Taiwan Short-Term Load Forecasting Via Fuzzy Neural Network With Varied.
Introduction of Fuzzy Inference Systems By Kuentai Chen.
Convection Heat Transfer in Manufacturing Processes P M V Subbarao Professor Mechanical Engineering Department I I T Delhi Mode of Heat Transfer due to.
Heat Transfer Su Yongkang School of Mechanical Engineering # 1 HEAT TRANSFER CHAPTER 6 Introduction to convection.
Mathematical Modeling of Chemical Processes
Fuzzy Systems Simulation Session 5
超臨界CO2在增強型地熱系統儲集層中取熱之研究-子計畫三 CO2在增強型地熱系統取熱模型之建構及效能分析
Mathematical modeling of cryogenic processes in biotissues and optimization of the cryosurgery operations N. A. Kudryashov, K. E. Shilnikov National Research.
On Optimization Techniques for the One-Dimensional Seismic Problem
UNIT - 4 HEAT TRANSFER.
Fuzzy logic Introduction 3 Fuzzy Inference Aleksandar Rakić
BDD Heat Transfer Kamil Abdullah D212 – 212 |
Dr. Unnikrishnan P.C. Professor, EEE
Abstract In this paper, an improved defogging algorithm for intelligent transportation system based on image processing is proposed. According to the.
Dr. Unnikrishnan P.C. Professor, EEE
Fundamentals of Convection
Dr. Unnikrishnan P.C. Professor, EEE
Modeling Approaches Chapter 2 Physical/chemical (fundamental, global)
Presentation transcript:

Interval Type-2 Fuzzy T-S Modeling For A Heat Exchange Process On CE117 Process Trainer Proceedings of 2011 International Conference on Modelling, Identification and Control, Shanghai, China, p.p , June 26-29, 2011

Outline Abstract Introduction Ce117 process trainer and heat exchange process The proposed interval type-2 fuzzy modeling method The experiment and its results Conclusions References

Abstract In this paper, a modified interval type-2 fuzzy T-S modeling method is applied to a heat exchange process on the equipment CE117 Process Trainer. First, subtractive clustering method combined with least square method is employed to build the type-1 fuzzy T-S model. Then the type-2 fuzzy T-S model is obtained from the type-1 model through unconstrained optimization where the Nelder-Mead Simplex method is utilized.Finally, the results of the experiment prove the efficiency of the proposed algorithm.

Introduction Type fuzzy sets, originally introduced by Zadeh [1], provide additional degree of freedom in both Mamdani and T-S fuzzy logic systems. This grants the type-2 fuzzy logic systems the potential to perform better than type-1 fuzzy logic systems especially when serious nonlinearity and uncertainty exist. In this paper, we build a type-1 T-S fuzzy model using subtractive clustering method [7]-[8] and least square method to get the premises and the consequences respectively. Then the Nelder-Mead Simplex method [9]-[10] is adopted to obtain the type-2 model by varying the parameters of the premises and consequences in the type-1 model. By making no distinction between the left and right ends of the type-2 fuzzy premise and consequence parameters, the computation of the type-2 model output has been simplified

Introduction The rest of this paper is arranged as follows. In Section II, some background knowledge about the CE117 Process Trainer and the law of heat exchange process is introduced. In Section III, the algorithm proposed to obtain the type-1 and type-2 model is presented in detail with an example included to illustrate its efficiency. A type-1 and a type-2 fuzzy T-S model are constructed with their accuracy being compared for a heat exchange process on CE117 Process Trainer in Section IV. Finally conclusions are drawn in Section V.

Ce117 process trainer and heat exchange process

According to the knowledge of heat transfer [11], the mechanism of heat transfer between TT5 (water temperature in Process Vessel) and TT1 (water temperature in Heater Tank) through the Heat Exchanger Coil surfaces is one kind of convection. This is because water in Heater Tank is in motion through Heat Exchanger Coil, and so is water in Process Vessel because of the rotary stirrer. According to Newton’s law of cooling [11],

Ce117 process trainer and heat exchange process And the convection heat transfer coefficient is not a property of the fluid. It is an experimentally determined parameter, which depends on all the variables influencing convection such as the surface geometry, the nature of fluid motion, the properties of the fluid and the bulk fluid velcocity. And For simplicity, 1/cm is regarded as a part of h, and (1) and (2) can be combined as follows:

The proposed interval type-2 fuzzy modeling method A. The Proposed Algorithm : In this paper, a type-1 fuzzy T-S model is first constructed with subtractive clustering and least squares method to obtain the premises and the consequences respectively. Then the Nelder-Mead Simplex Method is applied to determine the variance of the parameters of both premises and consequences to build the type-2 fuzzy T-S model.

The proposed interval type-2 fuzzy modeling method There are many methods to compute the output of a type-2 fuzzy T-S model [12]-[14]. Some are based on the theoretical defuzzification of type-2 fuzzy sets but suffer a lot from computation complexity. Others are linear combinations of the right and left boundaries of FOU (footprint of uncertainty) [15] of type-2 fuzzy sets as listed bellow, which reduce the cost of computation to some extent.The model output was formulated as follows:

The proposed interval type-2 fuzzy modeling method The output of type-2 T-S fuzzy model is computed as follows

The proposed interval type-2 fuzzy modeling method The steps to construct the type-1 and type-2 fuzzy T-S models are as follows:

The proposed interval type-2 fuzzy modeling method

The experiment and its results

Conclusions This paper built a type-1 fuzzy T-S model and a type-2 fuzzy T- S model for a heat exchange process on CE117 Process Trainer. And some comparisons were given of the ability to approximate the real process between the two models. When obtaining the type-2 model from the type-1 model, some trivial restrictions were removed. Then an unconstrained optimization algorithm named Nelder-Mead simplex method was introduced to build the type-2 model. At last, the experiment results showed that the type-2 fuzzy model was more effective than the type-1 one when there existed uncertainties in real-time circumstances and thus could be better.

References