Scenario Pattern Matching in Large Sensor Recordings with Simulation Models for Cyber-Physical Systems
                
                        Paper in proceeding, 2014
                
            
                    
                        Today's cyber-physical systems (CPS) like advanced driver assistance systems (ADAS) in modern vehicles use a large variety of sensors to process data from their surroundings. Thereby, systems like lane departure warning and adaptive cruise control support the driver in tedious or critical traffic situations. During the development of such systems, engineers also use recorded sensor data in offline validations to complement simulations that exhibit optimal environmental conditions. Such recordings are an ever-growing data source, and thus, effective methods are needed to find proper recordings in databases to support the system validation. Textual annotations for these sensor recordings require a well-defined taxonomy and continuous maintenance. Instead of relying on such a manually maintained taxonomy, an automated method for identifying relevant scenarios from real world sensor recordings by using simulation models is described. The outlined approach is evaluated with real world data sets used by lane-detection algorithms from nine different projects. Results from these data sets of more than 2.3 GB show that finding relevant traffic scenarios is possible in less than 0.15s.
                    
                    
                            
                                big data
                            
                            
                                scenario reconstruction
                            
                            
                                cyber-physical systems
                            
                            
                                sensor recordings
                            
                            
                                simulation