Work place: National School of Applied Sciences, Systems Engineering and Decision Support Laboratory (LISAD), IBN ZOHR University, Agadir, 80000, Morocco
E-mail: a.tourabi@uiz.ac.ma
Website:
Research Interests:
Biography
Amina Tourabi is a professor at the National School of Applied Sciences in Agadir, Morocco, with a strong academic footprint in innovation management, organizational resilience, and agile systems. Her research spans topics such as workforce agility, digital transformation, and the socio-economic impacts of innovation, often employing fuzzy logic and interpretive structural modeling. Tourabi’s work also explores gender dynamics in entrepreneurship and the role of empathy and social responsibility in organizational behavior.
By Fadoua Tamtam Amina Tourabi
DOI: https://doi.org/10.5815/ijieeb.2026.03.08, Pub. Date: 8 Jun. 2026
Connected autonomous vehicles (CAVs) are reshaping mobility but remain vulnerable to technical, organizational, and regulatory risks. This study develops a hybrid multi criteria decision-making framework that integrates CRITID for objective weighting, Fuzzy BWM for expert uncertainty modeling, and VIKOR Swarm for adaptive compromise ranking. To enhance realism, four scenarios were constructed: scalability focused (A1), compliance & reliability focused (A2), resilient high performance ecosystem (A3), and organizational vulnerability focused (A4). Results show that Scenario A3 consistently outperforms others, achieving the lowest group utility shortfall, smallest individual regret, and most favorable compromise measure. Shapley Value sensitivity analysis confirmed cybersecurity and scalability as dominant criteria, while expert AI validation reinforced the robustness of A3’s ranking. Monte Carlo simulations further demonstrated stability underweight perturbations, with A3 retaining its top position in over 80% of runs. The study contributes a transparent, reproducible, and scenario based methodology for vehicular risk assessment, bridging technical and organizational dimensions. Limitations include reliance on static scenario design and expert elicitation, suggesting future work should incorporate dynamic data streams and edge AI for real time risk recalibration.
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