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摘要:
Speed forecasting has numerous applications in intelligent transport systems’design and control,especially for safety and road efficiency applications.In the field of electromobility,it represents the most dynamic parameter for efficient online in-vehicle energy management.However,vehicles’speed forecasting is a challenging task,because its estimation is closely related to various features,which can be classified into two categories,endogenous and exogenous features.Endogenous features represent electric vehicles’characteristics,whereas exogenous ones represent its surrounding context,such as traffic,weather,and road conditions.In this paper,a speed forecasting method based on the Long Short-Term Memory(LSTM)is introduced.The LSTM model training is performed upon a dataset collected from a traffic simulator based on real-world data representing urban itineraries.The proposed models are generated for univariate and multivariate scenarios and are assessed in terms of accuracy for speed forecasting.Simulation results show that the multivariate model outperforms the univariate model for short-and long-term forecasting.
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篇名 Multivariate Deep Learning Approach for Electric Vehicle Speed Forecasting
来源期刊 大数据挖掘与分析(英文) 学科 交通运输
关键词 Electric Vehicle(EV) multivariate Long Short-Term Memory(LSTM) speed forecasting deep learning
年,卷(期) 2021,(1) 所属期刊栏目
研究方向 页码范围 56-64
页数 9页 分类号 U495
字数 语种
DOI
五维指标
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研究主题发展历程
节点文献
Electric
Vehicle(EV)
multivariate
Long
Short-Term
Memory(LSTM)
speed
forecasting
deep
learning
研究起点
研究来源
研究分支
研究去脉
引文网络交叉学科
相关学者/机构
期刊影响力
大数据挖掘与分析(英文)
季刊
2096-0654
10-1514/G2
出版文献量(篇)
91
总下载数(次)
3
总被引数(次)
0
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