期刊介绍
Evolving Systems covers surveys, methodological, and application-oriented papers in the area of dynamically evolving systems. ‘Evolving systems’ are inspired by the idea of system model evolution in a dynamically changing and evolving environment. In contrast to the standard approach in machine learning, mathematical modelling and related disciplines where the model structure is assumed and fixed a priori and the problem is focused on parametric optimisation, evolving systems allow the model structure to gradually change/evolve. The aim of such continuous or life-long learning and domain adaptation is self-organization. It can adapt to new data patterns, is more suitable for streaming data, transfer learning and can recognise and learn from unknown and unpredictable data patterns. Such properties are critically important for autonomous, robotic systems that continue to learn and adapt after they are being designed (at run time).
Evolving Systems solicits publications that address the problems of all aspects of system modelling, clustering, classification, prediction and control in non-stationary, unpredictable environments and describe new methods and approaches for their design.
The journal is devoted to the topic of self-developing, self-organised, and evolving systems in its entirety — from systematic methods to case studies and real industrial applications. It covers all aspects of the methodology such as
Evolving Systems methodology
Evolving Neural Networks and Neuro-fuzzy Systems
Evolving Classifiers and Clustering
Evolving Controllers and Predictive models
Evolving Explainable AI systems
Evolving Systems applications
but also looking at new paradigms and applications, including medicine, robotics, business, industrial automation, control systems, transportation, communications, environmental monitoring, biomedical systems, security, and electronic services, finance and economics. The common features for all submitted methods and systems are the evolving nature of the systems and the environments.
The journal is encompassing contributions related to:
1) Methods of machine learning, AI, computational intelligence and mathematical modelling
2) Inspiration from Nature and Biology, including Neuroscience, Bioinformatics and Molecular biology, Quantum physics
3) Applications in engineering, business, social sciences.
期刊语言要求
Language
Presenting your work in a well-structured manuscript and in well-written English gives it its best chance for editors and reviewers to understand it and evaluate it fairly. Many researchers find that getting some independent support helps them present their results in the best possible light.
投稿要求
CITESCORE
| CiteScore | SJR | SNIP | CiteScore排名 |
|---|
| 7.70 | 0.701 | 1.125 | | 学科 | 分区 | 排名 | 百分位 | 大类:Mathematics 小类:Control and Optimization | Q1 | 12 / 160 |
| 大类:Mathematics 小类:Modeling and Simulation | Q1 | 36 / 361 |
| 大类:Mathematics 小类:Control and Systems Engineering | Q1 | 68 / 375 |
| 大类:Mathematics 小类:Computer Science Applications | Q1 | 199 / 947 |
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WOS期刊JCR分区
WOS分区等级:
3区| 按JIF指标学科分区 | 收录子集 | JIF分区 | JIF排名 | JIF百分位 |
| 学科:COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE | SCIE | Q3 | 111/204 |
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| 按JCI指标学科分区 | 收录子集 | JCI分区 | JCI排名 | JCI百分位 |
| 学科:COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE | SCIE | Q3 | 136/204 |
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期刊分区表预警名单
2025年03月发布的2025版:不在预警名单中
2024年02月发布的2024版:不在预警名单中
2023年01月发布的2023版:不在预警名单中
2021年12月发布的2021版:不在预警名单中
2020年12月发布的2020版:不在预警名单中
中科院2025年3月升级版
点击查看中国科学院期刊分区趋势图| 大类学科 | 小类学科 | Top期刊 | 综述期刊 |
|---|
| 计算机科学 3区4区1区 | COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE 计算机:人工智能 | 4区3区4区 |
| 否 | 否 |
中科院2023年12月旧的升级版
| 大类学科 | 小类学科 | Top期刊 | 综述期刊 |
|---|
| 计算机科学 1区4区4区 | COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE 计算机:人工智能 | 1区3区4区 |
| 否 | 否 |