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ESC SV-543- Understanding Sensorless Vector Control for Brushless DC Motors
Yashvant Jani Director of Application Engineering, Renesas Technology America
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DESCRIPTION
This class covers sensorless vector control formulation for Brushless DC (BLDC) motors and its implementation techniques. The class starts with basic theory in terms of BLDC motor model, vector control principle, Clark & Park transformation, PWM modulation, flux observer, and speed and position estimation. Vector control based on sensor and its normal processing is briefly explained. Then the class focuses on processing for a sensorless vector control that does not use position or speed sensors. Specific implementation of the motor model based flux observer and overall sensorless vector control implementation strategy is described. Also, techniques for measuring currents via conventional sensors and using one-shunt reconstruction are explained. Finally, this class demonstrates the performance of sensorless vector control regarding speed regulation and CPU bandwidth usage.

PREREQUISITES
Course Price $19.95
Basic knowledge of sinusoidal and vector control; some vector mathematics background including co-ordinate transformations; basic PI loop and 3-phase timer operations including dead time.

ESTIMATED TIME
90 minutes

AUTHOR

Yashvant Jani Director of Application Engineering, Renesas Technology America
Yashvant Jani is director of application engineering for the system LSI business unit at Renesas Technology America. Before the creation of Renesas, he was with Hitachi where he held a number of engineering positions across various application fields. He also worked for 14 years in the national space programs for Lockheed and Ford Aerospace, among others, developing control applications and systems designs using advanced technology such as neural networks, fuzzy logic and genetic algorithms. Jani earned his PhD in physics from University of Texas, Dallas.
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Embedded Systems Conference (ESC)