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Applied System Innovation

Applied System Innovation (ASI) is an international, peer-reviewed, open access journal on integrated engineering and technology, and is published bimonthly online.
Quartile Ranking JCR - Q2 (Engineering, Electrical and Electronic | Computer Science, Information Systems | Telecommunications)

All Articles (809)

This research proposes the development of an Entity-Relationship Diagram—PRO (ERD-PRO) to assist students in understanding the concept of developing Entity-Relationship Diagrams in designing a database. ERD-PRO is an Intelligent Tutoring System (ITS) that is built using a mixed-initiative approach to address the learning challenges by adopting Explainable Artificial Intelligence (XAI) concept to provide individualized and on-demand feedback and guidance. The effectiveness of ERD-PRO is tested on 25 participants from different educational institutions. Pre- development surveys are conducted to determine learning needs and post-development surveys are performed to measure the success. The results show that the design of ERD-PRO, guided by survey findings, successfully addresses key challenges in database design education. 65% of students agreed that the system’s explanation facilities effectively clarified difficult topics, and 90% expressed high satisfaction with the tool. The integration of XAI features within ERD-PRO has enhanced its ability to provide meaningful, scenario-based explanations, demonstrating its potential as an effective intelligent tutoring system. These findings validate the effectiveness of ERD-PRO in meeting its objectives and highlight its value in providing tailored explanations for database design instruction.

2 December 2025

Research Methodology Process Flow.

Fuzzy Fusion of Monocular ORB-SLAM2 and Tachometer Sensor for Car Odometry

  • David Lázaro Mata,
  • José Alfredo Padilla Medina and
  • Juan José Martínez Nolasco
  • + 2 authors

Estimating the absolute scale of reconstructed camera trajectories in monocular odometry is a challenging task due to the inherent scale ambiguity in any monocular vision system. One promising solution is to fuse data from different sensors, which can improve the accuracy and precision of scale estimation. However, this approach often requires additional effort in sensor design and data processing. In this paper, we propose a novel method for fusing single-camera data with wheel odometer readings using a fuzzy system. The architecture of the fuzzy system has as inputs the wheel odometer value and the translation and rotation obtained from ORB-SLAM2. It was trained with the ANFIS tool in MATLAB 2014b. Our approach yields significantly better results compared to state-of-the-art pure monocular systems. In our experiments, the average error relative to GPS measurements was only four percent. A key advantage of this method is the elimination of the sensor calibration step, allowing for straightforward data fusion without a substantial increase in data processing demands.

30 November 2025

This study explores how research on carbon capture technologies (CCTs) has developed over time and shows how semantic text mining can improve the analysis of technology trajectories. Although CCTs are widely viewed as essential for net-zero transitions, the literature is still scattered across many subthemes, and links between engineering advances, infrastructure deployment, and policy design are often weak. Methods that rely mainly on citations or keyword frequencies tend to overlook contextual meaning and the subtle diffusion of ideas across these strands, making it difficult to reconstruct clear developmental pathways. To address this problem, we ask the following: How do CCT topics change over time? What evolutionary mechanisms drive these transitions? And which themes act as bridges between technical lineages? We first build a curated corpus using a PRISMA-based screening process. We then apply BERTopic, integrating Sentence-BERT embeddings with UMAP, HDBSCAN, and class-based TF-IDF, to identify and label coherent semantic topics. Topic evolution is modeled through a PCC-weighted, top-K filtered network, where cross-year connections are categorized as inheritance, convergence, differentiation, or extinction. These patterns are further interpreted with a Fish-Scale Multiscience mapping to clarify underlying theoretical and disciplinary lineages. Our results point to a two-stage trajectory: an early formation phase followed by a period of rapid expansion. Long-standing research lines persist in amine absorption, membrane separation, and metal–organic frameworks (MOFs), while direct air capture emerges later and becomes increasingly stable. Across the full period, five evolutionary mechanisms operate in parallel. We also find that techno-economic assessment, life-cycle and carbon accounting, and regulation–infrastructure coordination serve as key “weak-tie” bridges that connect otherwise separated subfields. Overall, the study reconstructs the core–periphery structure and maturity of CCT research and demonstrates that combining semantic topic modeling with theory-aware mapping complements strong-tie bibliometric approaches and offers a clearer, more transferable framework for understanding technology evolution.

30 November 2025

Zero-Shot to Head-Shot: Hyperpersonalization in the Age of Generative AI

  • Kanishka Dandeniya,
  • Sam Saltis and
  • Shalinka Jayatilleke
  • + 4 authors

Generative Artificial Intelligence (GenAI) is rapidly transforming industries and organizations through automation and augmentation. Personalization of human–system interaction is a key area that can be significantly advanced through the effective implementation of GenAI. GenAI, positioned as an intermediary between humans and systems, can transform the human experience from the pre-defined, conventional notions of personalization into a dynamic and integrated hyperpersonalization capability. This article presents the zero-shot-to-head-shot hyperpersonalization (Z2H2) framework, which aims to achieve this through the effective adoption of GenAI techniques. It is a domain-neutral framework of three incremental stages named zero-shot, few-shot, and head-shot that gradually increase the level of hyperpersonalization of the human–system interaction. The framework is further represented in a layered system design and the Z2H2 Data Modality Matrix (ZDMM), which systematically maps data types, AI capabilities, and personalization objectives for each stage. The capabilities of the framework are demonstrated in an educational setting, followed by an empirical evaluation using the Open University Learning Analytics Dataset (OULAD). Although this dataset only contains demographic and aggregated clickstream data, which is a subset of attributes relevant to the entire framework, the gradual development of zero-shot-to-head-shot hyperpersonalization is effectively demonstrated and validated on these student interactions.

30 November 2025

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Effectiveness and Sustainable Application on Educational Technology
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Effectiveness and Sustainable Application on Educational Technology

Editors: Jian-Hong Ye, Yung-Wei Hao, Yu-Feng Wu, Savvas A. Chatzichristofis
Fuzzy Decision Making and Soft Computing Applications
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Fuzzy Decision Making and Soft Computing Applications

Editors: Giuseppe De Pietro, Marco Pota

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Appl. Syst. Innov. - ISSN 2571-5577