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. 2023 Nov:192:107273.
doi: 10.1016/j.aap.2023.107273. Epub 2023 Sep 8.

PRISMA: A novel approach for deriving probabilistic surrogate safety measures for risk evaluation

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PRISMA: A novel approach for deriving probabilistic surrogate safety measures for risk evaluation

Erwin de Gelder et al. Accid Anal Prev. 2023 Nov.

Abstract

Surrogate Safety Measures (SSMs) are used to express road safety in terms of the safety risk in traffic conflicts. Typically, SSMs rely on assumptions regarding the future evolution of traffic participant trajectories to generate a measure of risk, restricting their applicability to scenarios where these assumptions are valid. In response to this limitation, we present the novel Probabilistic RISk Measure derivAtion (PRISMA) method. The objective of the PRISMA method is to derive SSMs that can be used to calculate in real time the probability of a specific event (e.g., a crash). The PRISMA method adopts a data-driven approach to predict the possible future traffic participant trajectories, thereby reducing the reliance on specific assumptions regarding these trajectories. Since the PRISMA is not bound to specific assumptions, the PRISMA method offers the ability to derive multiple SSMs for various scenarios. The occurrence probability of the specified event is based on simulations and combined with a regression model, this enables our derived SSMs to make real-time risk estimations. To illustrate the PRISMA method, an SSM is derived for risk evaluation during longitudinal traffic interactions. Since there is no known method to objectively estimate risk from first principles, i.e., there is no known risk ground truth, it is very difficult, if not impossible, to objectively compare the relative merits of two SSMs. Instead, we provide a method for benchmarking our derived SSM with respect to expected risk trends. The application of the benchmarking illustrates that the SSM matches the expected risk trends. Whereas the derived SSM shows the potential of the PRISMA method, future work involves applying the approach for other types of traffic conflicts, such as lateral traffic conflicts or interactions with vulnerable road users.

Keywords: Data driven; Driving risk; Risk Assessment; Surrogate safety measure.

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Conflict of interest statement

Declaration of competing interest All authors have participated in (a) conception and design, or analysis and interpretation of the data; (b) drafting the article or revising it critically for important intellectual content; and (c) approval of the final version. This manuscript has not been submitted to, nor is under review at, another journal or other publishing venue. The authors have no affiliation with any organization with a direct or indirect financial interest in the subject matter discussed in the manuscript The following authors have affiliations with organizations with direct or indirect financial interest in the subject matter discussed in the manuscript: Erwin de Gelder, TNO & TU Delft. Kingsley Adjenughwure, TNO. Jeroen Manders, TNO. Ron Snijders, TNO. Jan-Pieter Paardekooper, TNO & Radboud University. Olaf Op den Camp, TNO. Arturo Tejada, TNO & TU Eindhoven. Bart De Schutter, TU Delft.

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