作者Sun, Yang
ProQuest Information and Learning Co
The University of Alabama. Electrical and Computer Engineering
書名Approximate Dynamic Programming and Artificial Neural Network Control of Electric Vehicles : from Motor Drives to Grid Integration
出版項2019
說明1 online resource (142 pages)
文字text
無媒介computer
成冊online resource
附註Source: Dissertations Abstracts International, Volume: 81-04, Section: B
Advisor: Li, Shuhui
Thesis (Ph.D.)--The University of Alabama, 2019
Includes bibliographical references
The drive system of an electric vehicle (EV) includes two major parts- the powertrain and charging system. This dissertation investigates the implementation of the approximate dynamics programming (ADP) based artificial neural network (ANN) control on these two parts to increase the efficiency, stability and reliability of EVs.The major challenge of the powertrain control is to control the EV motor, which is usually an interior mounted permanent magnetic motor(IPM). By using the conventional vector controller, the IPM encounters high current distortion and speed oscillation especially when working in overmodulation area, due to the decoupling inaccuracy issue. The ADP-ANN controller resolves the decoupling issue and guarantees better speed and current tracking performance.For industrial implementation, the motor control algorithm is normally achieved by a digital signal processor (DSP), which has limited computational resources. As ADP-ANN has more complex structure than the conventional controller, whether it can be put into a DSP need to be tested. This dissertation optimized the ADP-ANN algortithm and make it successfully running in a TMS320F28335 DSP platform.To control a gird-connected solar based EV charging system, the dc-bus voltage stability of the solar inverter need to be maintained to acquire high charging efficiency and reduce the grid current distortion. This will become a challenge to conventional vector controller when the solar irradiation level changing rapidly. The implementation of the proposed controller allows the solar inverter improve the dc-bus voltage stability, energy capture efficiency, adaptivity, power conversion efficiency and power quality.Multiple EVs can be used to supply reactive power to the grid when connected with the charging system. But, a great challenge is that grid integration inverters would fight each other when operated autonomously in participating grid voltage control using the conventional control methods. The ADP-ANN control is able to properly handle the inverter constraints in achieving Voltage/Var control objectives at the grid edge and overcomes the challenges of conventional DER inverter control techniques
Electronic reproduction. Ann Arbor, Mich. : ProQuest, 2020
Mode of access: World Wide Web
主題Electrical engineering
Engineering
Approximate dynamic programming
Artificial neural network
Digital system processor
Electric vehicle
Motor control
Solar inverter
Electronic books.
0544
0537
ISBN/ISSN9781088301142
QRCode
相關連結: click for full text (PQDT) (網址狀態查詢中....)
館藏地 索書號 條碼 處理狀態  

Go to Top