Predictive diagnostics of rail vehicle components

Collaboration on a project aimed at the development of an advanced diagnostic system for rail vehicles, which will enable predictive diagnostics of the technical condition of selected components and thus enable the replacement of conventional preventive maintenance with predetermined intervals. The project is implemented in cooperation with Škoda Digital and the University of Mining — Technical University of Ostrava. The project is co-financed by the European Union.

Services

Research Development of cloud services

Platforms

Web

Predictive diagnostics of rail vehicle components

Project Overview

Škoda Digital has identified the need to upgrade its PREMIS diagnostic system with predictive diagnostics to enable a shift from preventive maintenance to predictive maintenance, optimizing costs and increasing the efficiency of rail vehicle operations. For Favorlogic, this was an ideal opportunity to leverage its experience in developing cloud solutions and to gain new knowledge and experience in the field of machine learning and predictive modeling.

Execution

We participate in the research and development of a comprehensive predictive diagnostics system. The system uses modern machine learning approaches to analyze trends in the technical condition of rail vehicle components. Development includes integration of direct and indirect measurements, data visualization, updatable predictive models, and a scalable microservice-based architecture.

Project Results

The project is in the early stages of implementation. The resulting system is expected to enable efficient planning of rail vehicles maintenance based on current operational data and prediction of component technical condition.

Our work

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Clients

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