Performance Analysis of Linear Quadratic Regulator (LQR) Controller for D.C.Motor
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Abstract
Control engineering is one subject which is perceived as being the most theoretical
and most difficult to understand. In industries, application of motor control system is
important to operation some process. An average home in Malaysia uses a dozen or more
electric motors. In some application the DC motor is required to maintain its desired
speed when load is applied or disturbances occur. This kind of system can be controlled
using PID, Fuzzy, LQR and other more.
Direct current (DC) motors have been widely used in many industrial applications such
as electric vehicles, steel rolling mills, electric cranes, and robotic manipulators due to
precise, wide, simple, and continuous control characteristics. Traditionally rheostatic
armature control method was widely used for the speed control of low power dc motors.
However the controllability, cheapness, higher efficiency, and higher current carrying
capabilities of static power converters brought a major change in the performance of
electrical drives. The desired torque-speed characteristics could be achieved by the use of
conventional proportional integral-derivative (PID) controllers. As PID controllers
require exact mathematical modeling, the performance of the system is questionable if
there is parameter variation. In recent years neural network controllers (NNC) were
effectively introduced to improve the performance of nonlinear systems. The application
of NNC is very promising in system identification and control due to learning ability,
massive parallelism, fast adaptation, inherent approximation capability, and high degree
of tolerance.
The outer speed and inner current control loops are designed as PD or PI controllers.
However, the cascaded control structure assumes that the inner loop dynamics are
substantially faster than the outer one. The electrical and mechanical parameters of the
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DC motor, i.e., resistance, inertia, back-EMF, damping are identified from observations
of the open loop response. Coulomb friction is considered as the main cause of the
nonlinear motor behavior and is adequately compensated by a feed forward control
signal. The residual steady state error caused by minor nonlinearities and uncertainties in
the model is compensated by an integral error feedback signal. The proposed controller is
evaluated for high and low velocity reference profiles including velocity reversal to
demonstrate its efficiency for high-performance servo applications. The proposed scheme
attempts to bridge the current gap between the advance of control theory and the practice
of DC actuator systems.
In this work, Linear Quadratic Regulator (LQR) controller is used in order to control
the DC motor speed as we required. This techniques is used for tracking setpoint
commands and reducing sensitivity to load disturbances. MATLAB is used to design and
tune the LQR controller and be simulated to mathematical model of the DC motor.
The Linear Quadratic Regulator (LQR) controller is a new method of controlling the
motor. Linear Quadratic Regulator (LQR) is theory of optimal control concerned with
operating a dynamic system at minimum cost.
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