24小时热门版块排行榜    

查看: 619  |  回复: 3
【有奖交流】积极回复本帖子,参与交流,就有机会分得作者 yaoshunbo 的 7 个金币 ,回帖就立即获得 1 个金币,每人有 1 次机会

yaoshunbo

木虫 (小有名气)


[交流] 欢迎引用

摘要:Hybrid electric vehicles can achieve better fuel economy than conventional vehicles by utilizing multiple power sources. While these power sources have been controlled by rule-based or optimization-based control algorithms, recent studies have shown that machine learning-based con trol algorithms such as online Deep Reinforcement Learning (DRL) can effectively control the power sources as well. However, the optimization and training processes for the online DRL-based pow ertrain control strategy can be very time and resource intensive. In this paper, a new offline–online hybrid DRL strategy is presented where offline vehicle data are exploited to build an initial model and an online learning algorithm explores a new control policy to further improve the fuel economy. In this manner, it is expected that the agent can learn an environment consisting of the vehicle dynamics in a given driving condition more quickly compared to the online algorithms, which learn the optimal control policy by interacting with the vehicle model from zero initial knowledge. By incorporating a priori offline knowledge, the simulation results show that the proposed approach not only accelerates the learning process and makes the learning process more stable, but also leads to a better fuel economy compared to online only learning algorithms.

论文:With the advancements of data science, machine learning has become a vital tool for improving decision making by using raw data and information as input. Significant results can be  seen by using different machine learning techniques in various real-world domains, such as cybersecurity systems, engineering, healthcare, e-commerce, agriculture, etc. [1]
[1] Yao, Z.; Yoon, H.-S.; Hong, Y.-K. Control of Hybrid Electric Vehicle Powertrain Using Offline-Online Hybrid Reinforcement Learning. Energies 2023, 16, 652. https://doi.org/10.3390/en16020652
回复此楼

» 猜你喜欢

» 抢金币啦!回帖就可以得到:

查看全部散金贴

已阅   回复此楼   关注TA 给TA发消息 送TA红花 TA的回帖
简单回复
newind2楼
2023-02-28 14:53   回复  
yaoshunbo(金币+1): 谢谢参与
发自小木虫Android客户端
tzynew3楼
2023-02-28 21:46   回复  
yaoshunbo(金币+1): 谢谢参与
2023-02-28 21:54   回复  
yaoshunbo(金币+1): 谢谢参与
相关版块跳转 我要订阅楼主 yaoshunbo 的主题更新
提示: 如果您在30分钟内回复过其他散金贴,则可能无法领取此贴金币
普通表情 高级回复 (可上传附件)
最具人气热帖推荐 [查看全部] 作者 回/看 最后发表
[考博] 东华理工大学化材专业26届硕士博士申请 +4 zlingli 2026-03-13 4/200 2026-03-14 16:12 by nxgogo
[考研] 211本,11408一志愿中科院277分,曾在中科院自动化所实习 +3 Losir 2026-03-12 3/150 2026-03-14 12:11 by 热情沙漠
[考研] 266求调剂 +4 学员97LZgn 2026-03-13 4/200 2026-03-14 08:37 by zhukairuo
[考研] 296求调剂 +3 。。陈 2026-03-08 3/150 2026-03-14 04:50 by JourneyLucky
[考研] 301求调剂 +3 归零lbm 2026-03-09 3/150 2026-03-14 02:20 by JourneyLucky
[考研] 295复试调剂 +5 简木ChuFront 2026-03-09 5/250 2026-03-14 01:29 by JourneyLucky
[考研] 312求调剂 +6 陌宸希 2026-03-10 6/300 2026-03-14 00:40 by JourneyLucky
[考研] 321求调剂 +3 CUcat 2026-03-10 3/150 2026-03-14 00:25 by JourneyLucky
[考研] 2026考研调剂+本科延边大学+山东大学+生物化学与分子生物学+有项目经验 +3 ccdsscjy 2026-03-10 3/150 2026-03-14 00:12 by JourneyLucky
[考研] 材料与化工求调剂一志愿 985 总分 295 +8 dream…… 2026-03-12 8/400 2026-03-13 22:17 by 星空星月
[考研] 285求调剂 +6 柴郡猫_ 2026-03-12 6/300 2026-03-13 20:46 by hmn_wj
[考研] 材料工程调剂 +4 咪咪空空 2026-03-11 4/200 2026-03-13 19:57 by JourneyLucky
[考研] 302求调剂 +6 负心者当诛 2026-03-11 6/300 2026-03-13 16:11 by JourneyLucky
[考研] 求调剂 +7 18880831720 2026-03-11 7/350 2026-03-13 16:10 by JourneyLucky
[考研] 274求调剂0856材料化工 +12 z2839474511 2026-03-11 13/650 2026-03-13 10:39 by peike
[考研] 283求调剂,材料、化工皆可 +8 苏打水7777 2026-03-11 10/500 2026-03-13 09:06 by Linda Hu
[考博] 26读博 +4 Rui135246 2026-03-12 10/500 2026-03-13 07:15 by gaobiao
[考研] 333求调剂 +3 152697 2026-03-12 4/200 2026-03-13 07:08 by Iveryant
[考研] 289求调剂 +4 步川酷紫123 2026-03-11 4/200 2026-03-11 19:41 by peike
[考研] 求调剂,数一英一274分 +4 小菲会努力 2026-03-08 4/200 2026-03-09 12:40 by 一定上岸哟_
信息提示
请填处理意见