design of fuzzzy pid controller for bldc motor
DESCRIPTION
Design of Fuzzy PID controller for BRUSHLESS D.C MOTORS MATLAB bassed designTRANSCRIPT
Topic
Design of Fuzzy PID controller for BRUSHLESS D.C MOTORS
Working of BLDC -MOTORAs there is no commutator ,the
current direction of the conductor on the stator controlled electronically.
Rotor consists the permanent magnet where as stator consist a no. of windings. Current through these winding produces magnetic field and force.
Hall sensor used to determine the position during commutation.
Working Procedure…
• Each sequence has• one winding energized
positive (current into the winding)
• one winding energized negative (current out of the winding)
• one winding non-energized
• When a rotor pole passes a Hall-Effect sensor, get a high or low signal, indicating that a North or South pole
Block Diagram of speed control of BLDC Motor
Why we need controller?• In close loop response four characteristics are important• 1)Rise time: the time it takes for the plant output to rise beyond
90% of the desired level for the first time. • 2)Overshoot time : how much the peak level is higherthan the steady state, normalized against the steady state. • 3)Settling time: the time it takes for the system toconverge to its steady state. • 4) Steady state error: The difference between thesteady-state output and the desired output.• We wanted the PID controller to satisfy the following criteria:
▫ Settling time --less▫ Overshoot and rise time --less ▫ Steady-state error less than 1%
Conventional PID controller:
• Proportional-integral-derivative (PID) control provides a generic and efficient solution to real world control problems
It is used to eliminate error:• Error is defined as the difference between set-point and
measurement. (error) = (set-point) - (measurement)• The output of PID controller will change in response to the
error•
• A PID controller is simple three-term controllerTypical steps for designing a PID controller are• i) Determine what characteristics of the systemneeds to be improved.• ii) Use KP to decrease the rise time.• iii) Use KD to reduce the overshoot and settling time.• iv) Use KI to eliminate the steady-state error.
Disadvantage:• The design of the BLDCM drive involves acomplex process such as modeling, control scheme
selection, simulation and parameters tuning etcPID controller working is not good for non-linear and
complex systems.• Fuzzy PID control method is a bettermethod of controlling, to the complex and unclear model
systems, it can give simple and effective control
Fuzzy logic:• Fuzzy logic is a form of many-valued logic or
probabilistic logic; it deals with reasoning that is approximate rather than fixed and exact.
• Fuzzy logic variables may have a truth value that ranges in degree between 0 and 1.
• Fuzzy logic can be described simply as "computing with words rather than numbers"
Fuzzy logic includes:
• 1)Fuzzy Set: A fuzzy set is collection of related items which belong to that set to different degrees in interval [0,1].
• 2)Fuzzy rules:• In fuzzy logic these rules are used to make decisions.• IF-THEN rules :“IF temperature very cold THEN stop fan”• AND, OR, and NOT operators :• “IF temperature IS hot AND pressure IS low, THEN fan ON” .NOT x = (1 - truth(x))x AND y = minimum(truth(x), truth(y))x OR y = maximum(truth(x), truth(y))
Linguistic Variables:
Variables whose values are words or sentences in human language are called linguistic variables
Example:For the case of motor, speed can be taken as linguistic variable as:
Membership functions A set is characterized by a membership (characteristic) function which assigns to each object a grade of membership ranging between zero and one.
Triangular Bell-shaped
Gussian shape
Diagrammatic representation of motor speed in terms of linguistic expression
Fuzzy logic controller (FLC):• A fuzzy control system is a control system based
on fuzzy logic—a mathematical system that analyzes analog input values in terms of logical variables that take on continuous values between 0 and 1.
• Fuzzy control is based on fuzzy logic, a logical system which is much closer to human thinking and natural language than traditional logical systems
• Fuzzy control can be described simply as "control with sentences rather than equations"
Fuzzy logic controller:• A fuzzy controller can include empirical rules,and that is especially useful in operator controlled plants.It follows following processes
Fuzzification• Every crisp value of input we attribute a set of degrees of
membership to fuzzy sets defined in the universe of discourse for that input.
It measure the values of input variable.It performs scale mapping that transfers the range of
values of input variables into their corresponding universe of discourse(fuzzy set) or into degree of membership.
Inference:• The fuzzy IF-THEN rule expresses a fuzzy implication
relation between the fuzzy sets of the premise and the fuzzy sets of the conclusion. It includes decision logic operators such as OR, AND ALSO etc
• IF LOAD INCREASES THEN SPEED REMAIN CONSTANT
• It includes:Matching of the facts with the rule premises.Implication The next step is the determination ofthe individual rule output.Aggregation: The collective sum of each rule is
obtained in this step.
Defuzzification:
This process to obtain crisp output from fuzzy sets is called defuzzification. It is the reverse process of fuzzification.
In fuzzy controller don’t require equations , its algorithm is rules that is made by human. Fuzzy controller make decisions automatically according to these rules.
Fuzzy logic in MATLAB: Fuzzy logic is a problem-solving control system methodology that lends itself to implementation in systems ranging from simple, small, embedded micro-controllers to large, networked, multi-channel PC or workstation-based data acquisition and control systems. It can be implemented in hardware, software, or a combination of both.
Inputs
Rules
Output
Simulation of Fuzzy PID controller:
PD
Characteristics of motor, 1500 rpm with no load
(a) Speed
Characteristics of motor, 1500 rpm with load
(a) Speed
Step up Characteristics of motor,1000-1500 rpm with no load
(a) Speed
Step down Characteristics of motor,1500-1000 rpm with no load
(a) Speed
Step down Characteristics of motor,1500-1000 rpm with load
(a) Speed
COMPARISON:
Fuzzy PID CONTROLLER PID CONTROLLER
• Conventional PID controller algorithm is simple, stable, easy adjustment and high reliability.
• It does not require processor• Tuning PID control parameters
is very difficult, poor robustness, therefore, it's difficult to achieve the optimal state under field conditions in the actual production
• When load varies it becomes unstable, give more overshoot.
• It can work with less precise inputs.
• It does not need fast processors.
• Tuning of fuzzy PID controller is easy ,more robust than other non-linear controllers.
• Fuzzy controllers have better stability, small overshoot, and fast response.
Limitations of fuzzy PID controller:•· Require more fine tuning and simulation
before operational.•If the a reliable expert knowledge is not
Available , or If the controlled system is too complex to derive the required decision rules, development of a fuzzy logic controller become time consuming and tedious or sometimes impossible.
•An fuzzy logic controller cannot be achieved by trial and- error
Conclusion:Fuzzy PID controller reduces overshoot very significantly as compare to conventional PID controller . Similarly fuzzy PID controller gives more robust with change of load and speed but PID controller produces do not robust sudden change in speed and load.So, Fuzzy PID controller is better than simple PID.
References:• [1] Q.D.Guo,X.MZhao. BLDC motor principle and
technology application [M]. Beijing: China electricity press,2008.
• [2] Chuen Chien Lee, “Fuzzy Logic in Control Systems:Fuzzy Logic controller–Part 1” 1990 IEEE
• [3] Chuen Chien Lee, “Fuzzy Logic in Control Systems : Fuzzy Logic controller Part 2” 1990 IEEE .
• [4]Comparison between Conventional and Fuzzy Logic PID Controllers for Controlling DC Motors by IJCSI International Journal of Computer Science Issues, Vol. 7, Issue 5, September 2010
• [5]Design of Fuzzy PID Controller for Brushless DC Motor 2012 International Conference on Computer Communication and Informatics (ICCCI -2012), Jan. 10 – 12, 2012, Coimbatore, INDIA