New energy vehicle motor computer control system design
Tuo Zheng
School of Mechanical and Electrical Engineering, Wuhan Business University
DOI: https://doi.org/10.59429/esta.v12i1.9645
Keywords: New energy vehicles, the motor, computer control
Abstract
This paper introduces new energy vehicles and carries out corresponding control and analysis based on the relevant principles of new energy vehicles. As a remote monitoring and regulation port, drivers supported by new energy vehicles and corresponding automation equipment need to be further connected and communicated. The monitoring network of new energy vehicles includes multi-level management control and data acquisition functions, including communication drive management, PLC process management and automation equipment process. Through the real-time data recording and alarm, the motor control can be effectively set up to ensure the safe operation of the motor control system.
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