Constrained Multi-Objective Optimization With Deep Reinforcement Learning Assisted Operator Selection

强化学习 选择(遗传算法) 计算机科学 人工智能 操作员(生物学) 数学优化 机器学习 数学 生物 遗传学 转录因子 基因 抑制因子
作者
Fei Ming,Wenyin Gong,Ling Wang,Yaochu Jin
出处
期刊:IEEE/CAA Journal of Automatica Sinica [Institute of Electrical and Electronics Engineers]
卷期号:11 (4): 919-931 被引量:84
标识
DOI:10.1109/jas.2023.123687
摘要

Solving constrained multi-objective optimization problems with evolutionary algorithms has attracted considerable attention. Various constrained multi-objective optimization evolutionary algorithms (CMOEAs) have been developed with the use of different algorithmic strategies, evolutionary operators, and constraint-handling techniques. The performance of CMOEAs may be heavily dependent on the operators used, however, it is usually difficult to select suitable operators for the problem at hand. Hence, improving operator selection is promising and necessary for CMOEAs. This work proposes an online operator selection framework assisted by Deep Reinforcement Learning. The dynamics of the population, including convergence, diversity, and feasibility, are regarded as the state; the candidate operators are considered as actions; and the improvement of the population state is treated as the reward. By using a Q-network to learn a policy to estimate the Q-values of all actions, the proposed approach can adaptively select an operator that maximizes the improvement of the population according to the current state and thereby improve the algorithmic performance. The framework is embedded into four popular CMOEAs and assessed on 42 benchmark problems. The experimental results reveal that the proposed Deep Reinforcement Learning-assisted operator selection significantly improves the performance of these CMOEAs and the resulting algorithm obtains better versatility compared to nine state-of-the-art CMOEAs.
最长约 10秒,即可获得该文献文件

科研通智能强力驱动
Strongly Powered by AbleSci AI
科研通是完全免费的文献互助平台,具备全网最快的应助速度,最高的求助完成率。 对每一个文献求助,科研通都将尽心尽力,给求助人一个满意的交代。
实时播报
一名不知死活的研究生完成签到,获得积分10
1秒前
徐澜宇完成签到,获得积分10
2秒前
调皮语雪发布了新的文献求助10
2秒前
2秒前
2秒前
余姓懒发布了新的文献求助10
3秒前
Zbmd完成签到,获得积分10
3秒前
无莞完成签到,获得积分20
3秒前
3秒前
4秒前
田学涛完成签到,获得积分10
4秒前
科研通AI6.4应助LFZ采纳,获得10
4秒前
5秒前
chen完成签到,获得积分10
5秒前
5秒前
晴天完成签到,获得积分10
5秒前
FashionBoy应助Rainbow采纳,获得10
5秒前
6秒前
6秒前
汤圆完成签到,获得积分10
6秒前
6秒前
曾经的冥幽完成签到,获得积分10
6秒前
江晚正愁与完成签到,获得积分10
6秒前
6秒前
脑洞疼应助九月采纳,获得10
7秒前
7秒前
尘香如故发布了新的文献求助20
7秒前
8秒前
8秒前
柒月小鱼发布了新的文献求助10
8秒前
郭娅楠发布了新的文献求助10
9秒前
qwe完成签到,获得积分20
10秒前
青青小筑发布了新的文献求助10
10秒前
王亚奇发布了新的文献求助10
10秒前
bai完成签到,获得积分20
11秒前
杨婷姗发布了新的文献求助10
11秒前
11秒前
NexusExplorer应助aa采纳,获得30
11秒前
11秒前
12秒前
高分求助中
(应助此贴封号)【重要!!请各用户(尤其是新用户)详细阅读】【科研通的精品贴汇总】 10000
Picture this! Including first nations fiction picture books in school library collections 2000
The Cambridge History of China: Volume 4, Sui and T'ang China, 589–906 AD, Part Two 1500
Cowries - A Guide to the Gastropod Family Cypraeidae 1200
Quality by Design - An Indispensable Approach to Accelerate Biopharmaceutical Product Development 800
ON THE THEORY OF BIRATIONAL BLOWING-UP 666
Signals, Systems, and Signal Processing 610
热门求助领域 (近24小时)
化学 材料科学 医学 生物 纳米技术 工程类 有机化学 化学工程 生物化学 计算机科学 物理 内科学 复合材料 催化作用 物理化学 光电子学 电极 细胞生物学 基因 无机化学
热门帖子
关注 科研通微信公众号,转发送积分 6391965
求助须知:如何正确求助?哪些是违规求助? 8207410
关于积分的说明 17372941
捐赠科研通 5445467
什么是DOI,文献DOI怎么找? 2879014
邀请新用户注册赠送积分活动 1855449
关于科研通互助平台的介绍 1698579