Browsing by Keyword "Authors wants to thank to the H2020 UnCoVerCPS Project_x000D_ (with grant number 643921) and the ECSEL JU AMASS_x000D_ project under H2020 grant agreement No 692474 and from_x000D_ MINETUR (Spain)."
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Item Fault injection method for safety and controllability evaluation of automated driving(IEEE, 2017-07-31) Uriagereka, Garazi Juez; Lattarulo, Ray; Rastelli, Joshue Perez; Calonge, Estibaliz Amparan; Ruiz Lopez, Alejandra; Espinoza Ortiz, Huascar; Tecnalia Research & Innovation; CCAM; CIBERSEC&DLT; QuantumAdvanced Driver Assistance Systems (ADAS) and automated vehicle applications based on embedded sensors have become a reality today. As road vehicles increase its autonomy and the driver shares his role in the control loop, novel challenges on their dependability assessment arise. One key issue is that the notion of controllability becomes more complex when validating the robustness of the automated vehicle in the presence of faults. This paper presents a simulation-based fault injection approach aimed at finding acceptable controllability properties for the model-based design of control systems. We focus on determining the best fault models inserting exceptional conditions to accelerate the identification of specific areas for testing. In our work we performed fault injection method to find the most appropriate safety concepts, controllability properties and fault handling strategies at early design phases of lateral control functions based on the error in the Differential GPS signal.