The BERTHA project introduces a holistic, AI-powered, human-centred framework for CCAM that surpasses the current state of the art.
Its Driver Behavioural Model (DBM) goes beyond deterministic or black-box methods, describing physical, cognitive, emotional, personal, cultural, and contextual factors. Designed as a probabilistic model based on Bayesian Belief Networks, it offers transparent, explainable reasoning, adapts to new data, and allows modular validation. This will allow the DBM to grow up as new evidence is gathered, and at the same time to quantify the uncertainty associated with the individual drivers, environmental conditions, routes and interactions, etc.
The modular approach of the DBM has been successfully used by UGE’s COSMODRIVE model, based on the perception-cognition-action loop that characterizes information processing workflows, and is the basis of cognitive architectures in many areas of engineering. The modules of BERTHA’s DBM has an enlarged consideration of the aspects involved in the “cognition” block, which includes risk awareness, decision making and affective factors.
BERTHA’s DBM is one of the first cognitive architectures applied to CCAM that embeds emotional dynamics into real-time driving behaviour modelling, and considers a wide spectrum of driver typologies, based on a study that has involved over 4,689 drivers, moving beyond the basic demographic segmentation found in most current applications.
BERTHA’s methodology integrates simulators, lab testing, and Field Operational Tests. As a result, the consortium is developing new standardized safety validation methods that incorporate human behavioural factors (risk perception, distraction, decision-making), and virtual test procedures comparable to on-track homologation, enabling earlier, scalable, and more realistic validation.
BERTHA’s HUB is an open and decentralized platform designed for sharing models, scenarios, and test cases. It supports running simulations, logging results, and benchmarking performance. This enables closer collaboration between stakeholders through remote, collaborative, and scalable simulations, as well as the integration of tests involving persons.
The platform is built as a Software-in-the-Loop (SiL) simulation framework, allowing for validation and assessment of systems. It includes the monitoring of key performance indicators (KPIs) such as safety, human-likeness, and system performance, making it a powerful tool for the development and evaluation.