| 查看: 896 | 回复: 4 | |||
| 【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 6 个金币 ,回帖就立即获得 1 个金币,每人有 1 次机会 | |||
[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 |
» 猜你喜欢
梁成伟老师课题组欢迎你的加入
已经有4人回复
复试调剂
已经有5人回复
东华理工大学化材专业26届硕士博士申请
已经有4人回复
328求调剂
已经有6人回复
复试调剂
已经有10人回复
焦虑
已经有7人回复
一志愿哈工大材料324分求调剂
已经有5人回复
267一志愿南京工业大学0817化工求调剂
已经有5人回复
304求调剂
已经有3人回复
290求调剂
已经有8人回复
» 抢金币啦!回帖就可以得到:
测试█TEM/ EPR/ XPS/PY-GCMS/TG-IR/XRF/BET/MIP/核磁/EA/ICP,VX: 761711562。
+1/91
专业技术开发及第三方检测
+1/89
海南大学肖永昊老师团队招收2026年博士研究生(第二批)
+5/70
福建师范大学化学与材料学院杜克钊团队招生
+1/40
招硕士调剂生
+2/36
教研论文SCI期刊投稿选刊
+1/36
2026年西华大学材料学院-材料近净成形与表面技术研究团队-招收研究生
+1/35
青岛大学泰山学者课题组招2026年申请考核制博士
+1/35
诚聘助理研究员 - 物理/材料/机械相关专业博士
+2/24
2026年西南科技大学功能涂层课题组简介
+1/24
【全奖招生】北师港浸大ESLAS实验室招收密码工程/网络安全/计算机视觉博士/博士后
+1/14
湖南大学材料科学与工程学院招收博士研究生
+1/9
英国埃克塞特大学 & 法国巴黎萨克雷大学联合培养博士
+1/9
重庆大学诚招2026年生物材料方向博士生
+1/8
福建师范大学 院士团队 招2026级博士1名
+1/7
重庆大学诚招2026年生物材料方向博士生
+1/5
国家杰青低维材料与器件力学团队2026年招收博士研究生
+1/4
大理大学博士招生
+1/3
招收理论凝聚态物理/纳米光学/量子计算方向博士、硕士研究生/博士后
+1/3
广州医科大学生物医学工程学院生物医学工程工学-083100
+1/1
★
yaoshunbo(金币+1): 谢谢参与
yaoshunbo(金币+1): 谢谢参与
|
本帖内容被屏蔽 |
4楼2023-04-19 15:43:05
简单回复
tzynew2楼
2023-02-28 21:45
回复
yaoshunbo(金币+1): 谢谢参与
2023-02-28 21:53
回复
yaoshunbo(金币+1): 谢谢参与
XG-WUST5楼
2023-04-24 18:44
回复
yaoshunbo(金币+1): 谢谢参与
up 发自小木虫IOS客户端













回复此楼