2020
DOI: 10.1016/j.jpowsour.2020.228650
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A novel strategy for power sources management in connected plug-in hybrid electric vehicles based on mobile edge computation framework

Abstract: This paper proposes a novel control framework and the corresponding strategy for power sources management in connected plug-in hybrid electric vehicles (cPHEVs). A mobile edge computation (MEC) based control framework is developed first, evolving the conventional on-board vehicle control unit (VCU) into the hierarchically asynchronous controller that is partly located in cloud. Elaborately contrastive analysis on the performance of processing capacity, communication frequency and communication delay manifests … Show more

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Cited by 10 publications
(5 citation statements)
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References 50 publications
(54 reference statements)
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“…Additionally, estimating IMU yaw misalignment by fusing information from automotive onboard sensors and an adaptive Kalman filter can enhance the accuracy of ML models in capturing vehicle dynamics [177]. IoT-based datasets [44,47,56,64,81,85,95,[106][107][108]110,117,122,125,126,128,134,136,138,140,144,149,155,172] 24…”
Section: What Datasets Are Used?mentioning
confidence: 99%
See 2 more Smart Citations
“…Additionally, estimating IMU yaw misalignment by fusing information from automotive onboard sensors and an adaptive Kalman filter can enhance the accuracy of ML models in capturing vehicle dynamics [177]. IoT-based datasets [44,47,56,64,81,85,95,[106][107][108]110,117,122,125,126,128,134,136,138,140,144,149,155,172] 24…”
Section: What Datasets Are Used?mentioning
confidence: 99%
“…Offline [23,32,35,38,45,47,49,51,55,57,59,73,[79][80][81][82][83]86,88,91,94,103,107,109,110,116,122,128,131,133,134,136,141,149,156,157 The building models perform the training offline, which means that the prediction model is constructed once in the training phase and cannot be updated with new data. Therefore, over time, when the model gets out-of-date and does not work perfectly in the way that it should, it becomes necessary to re-train the model with more or newer data and then update the system which includes the new model.…”
Section: Training Architecture References N° Of Studiesmentioning
confidence: 99%
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“…The high-quality nonlinear characterization of complex operation performance and easy implementation of artificial intelligence technologies strengthens the optimal solution searching in control process, showing massive potential in promoting energy management of PHEVs. The raised three groups of methods, in general, have been validated efficient under certain conditions; whereas, the state-of-art application performance in real time is not maximized due to the limitation of the adopted algorithms and optimization target (Zhang, Y. et al, 2020b). For rule based strategies, despite easy application capabilities, expert-knowledge based design alienates the simple logic inspired strategies from optima.…”
Section: Introductionmentioning
confidence: 99%
“…To this end, there have been numerous studies undertaken considering strategies for minimization of energy consumption in PHEVs. These methods can be divided into the following three categories according to the characteristics of different algorithms: rule based strategies [3,4], global optimization based strategies [5,6], and instantaneous optimization based strategies [7,8].…”
Section: Introductionmentioning
confidence: 99%