Applied and Computational Engineering

Open access

Print ISSN: 2755-2721

Online ISSN: 2755-273X

About ACE

The proceedings series Applied and Computational Engineering (ACE) is an international peer-reviewed open access series that publishes conference proceedings from various methodological and disciplinary perspectives concerning engineering and technology. ACE is published irregularly. The series contributes to the development of computing sectors by providing an open platform for sharing and discussion. The series publishes articles that are research-oriented and welcomes theoretical and applicational studies. Proceedings that are suitable for publication in the ACE cover domains on various perspectives of computing and engineering.

Aims & scope of ACE are:
·Computing
·Machine Learning
·Electrical Engineering & Signal Processing
·Applied Physics & Mechanical Engineering
·Chemical & Environmental Engineering
·Materials Science and Engineering

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Editors View full editorial board

Anil Fernando
University of Strathclyde
United Kingdom
Editor-in-Chief
anil.fernando@strath.ac.uk
Yilun Shang
Northumbria University
United Kingdom
Associate Editor
yilun.shang@northumbria.ac.uk
Ella Haig
University of Portsmouth
Portsmouth, UK
Associate Editor
ella.haig@port.ac.uk
Moayad Aloqaily
Mohamed Bin Zayed University of Artificial Intelligence
The United Arab Emirates
Associate Editor
moayad.aloqaily@mbzuai.ac.ae

Latest articles View all articles

Research Article
Published on 15 June 2026 DOI: 10.54254/2755-2721/2026.CH34579
Ni Li

Accurate survival prognosis is essential for personalized prognostic assessment and treatment planning in lung adenocarcinoma. This study compares non-parametric and semi-parametric statistical methods for survival prognostic modeling using clinical data from the TCGA-LUAD cohort(n=493). The Kaplan-Meier estimator and the multivariate Cox proportional hazards model were applied to evaluate the prognostic roles of tumor stage, age, and gender. The dataset was divided into a training set (70%) for model fitting and a testing set (30%) for independent validation. The results show that the Kaplan-Meier estimator provides an intuitive visualization of survival differences across tumor stages, with Log-rank tests confirming significant differences among subgroups(p<0.001). The Cox model identified tumor stage as the dominant independent prognostic factor. Compared with Stage I patients, Stage IV patients had a 3.58-fold higher hazard of death(HR = 3.58, 95% CI: 1.67–7.69, p<0.005). Although the C-index increased only slightly from 0.686 to 0.689, the Cox model offered added value through multivariate adjustment and the estimation of interpretable hazard ratios. These findings suggest that Kaplan-Meier estimation and Cox regression play complementary roles in lung cancer survival analysis.

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Li,N. (2026). Survival Prognostic Modeling for Lung Cancer Patients: A Comparative Analysis of Non-Parametric and Semi-Parametric Statistical Methods. Applied and Computational Engineering,247,1-7.
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Research Article
Published on 15 June 2026 DOI: 10.54254/2755-2721/2026.TJ34366
Chenkang Wang, Yiming Pan, Yinjia Zhu, Yiran Xing, Xingyi Wei

In recent years, the rapid development of intelligent transportation systems (ITS) and autonomous driving has made human driving behavior modeling accurate and critical for improving traffic safety, efficiency, and autonomous system adaptability. Traditional rule-based or utility-centric models, however, fail to handle the complexity, randomness, and scenario dependence of real driving. Thus, our study aims to explore inverse reinforcement learning (IRL), a data-driven method, for driving behavior modeling. We first reviewed major IRL variants such as Maximum Margin IRL, MaxEnt Deep IRL, GAIL, Bayesian IRL and IAL and analyze their strengths like MaxEnt Deep IRL's adaptability to large state space and limitations in ITS. We then proposed two frameworks: 1) an AOAT strategy based on MaxEnt IRL which uses HighD data set and reduces lateral deviations by 42.91%-55.35% vs fixed-weight schemes; 2) a multi-agent framework integrating multi-modal data, using Bradley-Terry regression and PPO algorithm for real-time traffic signal optimization. Finally, we discussed IRL's challenges such as data set reliance, poor reward function interpretability, high computation and cost and proposed future directions including standardized datasets, hybrid reward structures and algorithm optimization. This study proves IRL's value for human-centric modeling, laying a foundation for safer, more adaptable ITS.

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Wang,C.;Pan,Y.;Zhu,Y.;Xing,Y.;Wei,X. (2026). Data-Driven Modeling of Driving Behavior via Inverse Reinforcement Learning. Applied and Computational Engineering,246,1-10.
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Research Article
Published on 15 June 2026 DOI: 10.54254/2755-2721/2026.34444
Jingyi Xin, Xiaoying Ou

Social enterprises play an important role in public service supplementation, community development, and sustainable business practices. Their governance processes face pressures related to mission preservation, transparent resource allocation, and multi-stakeholder trust maintenance. Generative artificial intelligence can process unstructured information such as annual reports, project materials, meeting records, and stakeholder feedback, providing support for proposal generation, risk identification, and explanatory output in governance decision-making. Focusing on the governance trust mechanism of social enterprises under generative AI-assisted decision-making, this study constructs an analytical framework linking AI-assisted decision-making level, governance process quality, and governance trust outcomes. It further verifies the framework through public textual data, scenario-based experimental ratings, and a repeated-measures regression model. The results show that the AI-assisted decision-making group scores higher than the manual decision-making group in governance trust, decision transparency, and explanatory adequacy. Among the mechanism variables, explanatory adequacy makes the strongest contribution to governance trust, followed by risk controllability. The findings indicate that the value of generative AI in social enterprise governance lies mainly in improving information integration efficiency, explanatory clarity, and risk identification capability. The study also provides methodological references for building responsible AI-assisted governance mechanisms in social enterprises.

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Xin,J.;Ou,X. (2026). Research on Governance Trust Mechanism of Social Enterprises Based on Generative Artificial Intelligence Assisted Decision-Making. Applied and Computational Engineering,245,95-101.
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Research Article
Published on 15 June 2026 DOI: 10.54254/2755-2721/2026.34448
Haoran Zheng

Riichi Mahjong is a difficult imperfect-information game. To improve the way Mahjong AI makes decisions, this paper proposes a hierarchical and risk-aware decision framework. Instead of choosing an action directly from the current state, the model first selects a high-level strategy and then evaluates specific actions under that strategy. A risk control head is also added so that the model can better handle dangerous situations and make a better trade-off between offense and defense. Experimental results show that this framework improves overall decision quality and gives a better balance between attack and safety. Among the tested models, the version that combines both strategy and risk performs the best overall. The latent strategy analysis also shows that the model learns different internal decision modes with different behavior patterns. This suggests that the proposed method is effective for Riichi Mahjong AI and can make the decision process more structured, stable, and easier to understand.

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Zheng,H. (2026). A Hierarchical and Risk-Aware Decision Framework for Riichi Mahjong AI. Applied and Computational Engineering,245,85-94.
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Volumes View all volumes

Volume 247June 2026

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Proceedings of CONF-CDS 2026 Symposuim: Data-Centric AI Security: Securing Models, Learning Agents, and Autonomous Systems

Conference website: https://2026.confcds.org/Chicago/Home.html

Conference date: 23 July 2026

ISBN: 978-1-80590-850-0(Print)/978-1-80590-851-7(Online)

Editor: Marwan Omar

Volume 246June 2026

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Proceedinbs of CONF-SPML 2026 Symposuim: The 2nd Neural Computing and Applications Workshop 2025

Conference website: https://2025.confspml.org/tianjin.html

Conference date: 21 December 2025

ISBN: 978-1-80590-848-7(Print)/978-1-80590-849-4(Online)

Editor: Marwan Omar , Guozheng Rao

Volume 245June 2026

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Proceedings of the 4th International Conference on Software Engineering and Machine Learning

Conference website: https://2026.confseml.org/index.html

Conference date: 8 June 2026

ISBN: 978-1-80590-830-2(Print)/978-1-80590-831-9(Online)

Editor: Mustafa İSTANBULLU

Volume 244June 2026

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Proceedings of the 4th International Conference on Mechatronics and Smart Systems

Conference website: https://2026.confmss.org/

Conference date: 19 June 2026

ISBN: 978-1-80590-824-1(Print)/978-1-80590-825-8(Online)

Editor: Mustafa İSTANBULLU

Indexing

The published articles will be submitted to following databases below: