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Parameter self-tuning method for fuzzy PID controller

A parameter self-tuning and controller technology, applied in control systems, AC motor control, electronic commutation motor control, etc., can solve problems such as quantification factor optimization target single target, and achieve the effect of improving model accuracy

Active Publication Date: 2014-06-25
SHENZHEN CITY SAMKOON TECH
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Problems solved by technology

[0004] In order to solve the problem that the quantization factor optimization target in the fuzzy PID control is mostly a single target, the purpose of the invention is to introduce the multi-objective optimization problem into the field of fuzzy control parameter optimization, and provide a method for the self-tuning of the quantization factor of the fuzzy PID controller, so that It has the optimal quantitative factor combination under multi-objective optimization, and realizes the optimal comprehensive control performance index for actual engineering requirements

Method used

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  • Parameter self-tuning method for fuzzy PID controller

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Embodiment Construction

[0021] The present invention is aimed at the control system of single-winding magnetic levitation switched reluctance motor such as figure 1 As shown, specifically: the fuzzy controller 1 is connected in series before the PID controller 2 to form a fuzzy PID controller 3. After the fuzzy PID controller 3, the decoupler 4 of the single-winding magnetic levitation switched reluctance motor is connected in series to decouple Connect the single-winding magnetic levitation switched reluctance motor 5 behind the device 4. Such as figure 2 As shown, the input of the fuzzy controller 1 is the deviation signal e of the control system. The deviation signal e is passed through the differentiation link in the fuzzy controller 1 to obtain the deviation change rate signal ec. The deviation signal e is multiplied by the quantization factor Ke to obtain the fuzzy domain under E, the deviation change rate signal ec is multiplied by the quantization factor Kec to obtain the EC under the fuzzy...

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Abstract

The invention discloses a parameter self-tuning method for a fuzzy PID controller, comprising steps of calculating original quantification factor numerical value combination according to deviation of a control system, a deviate changing rate and basic discourse domains and fuzzy disclosure domains of ratio, differential and integral coefficient in the PID control, reasonably choosing interval radius of the interval to obtain value-taking intervals of all quantization factors to be optimized by taking all original quantization factor values to be centers of interval, evenly selecting values in all value-taking intervals to obtain different quantization factor value combinations, testing control performance of the control system under the combination of all quantization factor values; taking a quantization factor value combination and a corresponding control performance value as a sample data, repeating the test to obtain enough sample data used as training data for an extreme learning machine, training the control system model in an off-line state, and perform optimizing on the system off-line model by using a non-dominated sorting genetic algorithm of an elitist strategy in order to obtain the quantization factor value combination enabling the control performance to be multi-object optimization.

Description

technical field [0001] The invention relates to the field of motor control, in particular to a parameter self-tuning method for a fuzzy PID control system of a single-winding magnetic levitation switched reluctance motor. Background technique [0002] The magnetic levitation switched reluctance motor combines the magnetic levitation technology with the switched reluctance motor. On the basis of inheriting the advantages of the general magnetic levitation motor, such as no friction, no wear, high axial space utilization rate, and large rotor critical speed, it gives full play to the advantages of the switched reluctance motor. The high-speed superiority and adaptability to harsh environments, and through the active control of the radial force, the vibration and noise problems caused by the unbalanced magnetic pull of the switched reluctance motor are effectively improved. At present, in most cases, the magnetic levitation switched reluctance motor with double winding structur...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): H02P25/08H02P6/00
Inventor 孙玉坤胡文宏朱志莹张新华
Owner SHENZHEN CITY SAMKOON TECH
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