Intelligent Systems and Robotics
Vol. 1 No. 1 (2026): February: Intelligent Systems and Robotics

Explainable Artificial Intelligence Methods for Autonomous Robot Decision Making: A Multi Agent Framework with Safety Assurance and Ethical Constraint Optimization

Harry Setya Hadi (Universitas Ekasakti)
Nicodemus Rahanra (Universitas Satya Wiyata Mandala)



Article Info

Publish Date
20 Jan 2026

Abstract

Autonomous decision-making systems increasingly rely on complex artificial intelligence models to operate in dynamic and safety-critical environments. While these models provide strong predictive capabilities, their black-box nature limits transparency, trust, and accountability. This study proposes a structured research methodology for integrating Explainable Artificial Intelligence (XAI) into autonomous decision-making systems. The research adopts a conceptual–analytical approach to develop an explainability-oriented framework that embeds transparency across perception, decision-making, and action execution stages. The methodology includes literature-driven problem identification, conceptual framework construction, classification and mapping of XAI methods, and formulation of explainability evaluation criteria. The results demonstrate that effective explainability in autonomous systems requires a hybrid integration strategy, combining in-model transparency with post-hoc explanation mechanisms. A structured mapping of XAI techniques to autonomous system components and a conceptual decision-flow diagram are presented to illustrate explainability integration. The findings highlight that layered and context-aware explainability enhances system interpretability, supports human oversight, and improves safety relevance without compromising autonomous operation. This study contributes a reusable methodological foundation for the design and evaluation of explainable autonomous systems, offering practical guidance for future empirical validation and real-world deployment in safety-critical applications.

Copyrights © 2026






Journal Info

Abbrev

ISR

Publisher

Subject

Description

Aims This journal publishes original research on intelligent systems and robotic technologies that incorporate artificial intelligence to enable autonomous, adaptive, and interactive computing solutions. Scope Artificial intelligence and machine learning Deep learning and neural networks Autonomous ...