| 5 | 1/1 | 返回列表 |
| 查看: 890 | 回復(fù): 4 | |||
| 【有獎(jiǎng)交流】積極回復(fù)本帖子,參與交流,就有機(jī)會(huì)分得作者 yaoshunbo 的 6 個(gè)金幣 ,回帖就立即獲得 1 個(gè)金幣,每人有 1 次機(jī)會(huì) | |||
yaoshunbo木蟲(chóng) (小有名氣)
|
[交流]
歡迎引用
|
||
|
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. 論文: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 |
» 搶金幣啦!回帖就可以得到:
+1/84
+1/81
+2/50
+1/44
+1/21
+1/19
+1/15
+1/14
+1/9
+1/8
+1/6
+1/5
+1/5
+1/5
+1/4
+1/3
+1/3
+1/2
+1/2
+1/2
|
本帖內(nèi)容被屏蔽 |
| 5 | 1/1 | 返回列表 |
| 最具人氣熱帖推薦 [查看全部] | 作者 | 回/看 | 最后發(fā)表 | |
|---|---|---|---|---|
|
[碩博家園] 2026級(jí)碩士研究生招生/調(diào)劑 +3 | lbj6746988 2026-03-03 | 4/200 |
|
|---|---|---|---|---|
|
[考研] 288求調(diào)劑085600材料與化工 +13 | Daunrin 2026-03-07 | 15/750 |
|
|
[考研] 085700資環(huán)求調(diào)劑,初始279,六級(jí)已過(guò),英語(yǔ)能力強(qiáng) +4 | 085700資環(huán)調(diào)劑 2026-03-03 | 5/250 |
|
|
[考研] 材料工程085601調(diào)劑求老師收留 +4 | 強(qiáng)木木木 2026-03-07 | 4/200 |
|
|
[考研] 322分 085600求調(diào)劑,有互聯(lián)網(wǎng)+國(guó)金及主持省級(jí)大創(chuàng)經(jīng)歷 +4 | 熊境喆 2026-03-05 | 4/200 |
|
|
[考研]
|
程晴之 2026-03-06 | 6/300 |
|
|
[考研] 273求調(diào)劑 +5 | 星星111222 2026-03-02 | 7/350 |
|
|
[考研] 085602高分子方向求調(diào)劑 +7 | tlgudy 2026-03-04 | 7/350 |
|
|
[考研] 268求調(diào)劑 +4 | 劉合華 2026-03-05 | 4/200 |
|
|
[考研] 275求調(diào)劑 +4 | 大爆炸難民 2026-03-06 | 5/250 |
|
|
[考研] 求調(diào)劑,學(xué)校研究所都可以,材料與化工267分 +6 | wmx1 2026-03-05 | 6/300 |
|
|
[考研] 一志愿清華深研院材料專碩294分,專業(yè)課111分,本科中南大學(xué)材料,有六級(jí),有工作經(jīng)驗(yàn) +3 | H14528 2026-03-04 | 3/150 |
|
|
[考研] 材料學(xué)碩080500復(fù)試調(diào)劑294 +3 | 四葉zjz 2026-03-04 | 3/150 |
|
|
[考研] 成績(jī)276,專業(yè)代碼0856求調(diào)劑 +10 | 小陳朵 2026-03-03 | 10/500 |
|
|
[考研] 295求調(diào)劑 +4 | 小賽不吃香菜 2026-03-04 | 4/200 |
|
|
[考研] 325求調(diào)劑 +5 | 學(xué)家科 2026-03-04 | 5/250 |
|
|
[論文投稿]
EST拒稿重投
5+3
|
15102603076 2026-03-02 | 3/150 |
|
|
[考研]
|
旅行中的紫葡萄 2026-03-03 | 4/200 |
|
|
[考研] 0856材料工程,初試313調(diào)劑 +7 | 賣個(gè)關(guān)子吧 2026-03-03 | 7/350 |
|
|
[考研] 理學(xué),工學(xué),農(nóng)學(xué)調(diào)劑,少走彎路,這里歡迎您! +8 | likeihood 2026-03-02 | 11/550 |
|