Infrastructure Optimization for Predictive Maintenance: Enhanced Backend and Artificial Intelligence Integration


연구 분야: Infrastructure



학회: International Conference on Human-Computer Interaction


초록

Rail transportation success depends on efficient maintenance to avoid delays and malfunctions, particularly in rural areas with limited resources. We propose a cost-effective wireless monitoring system that integrates sensors and machine learning to address these challenges. We developed a secure data management system, equipping train cars and rail sections with sensors to collect structural and environmental data. This data supports Predictive Maintenance by identifying potential issues before they lead to failures. Implementing this system requires a robust backend infrastructure for secure data transfer, storage, and analysis. Designed collaboratively with stakeholders, including the railroad company and project partners, our system is tailored to meet specific requirements while ensuring data integrity and security. This article discusses the reasoning behind our design choices, including the selection of sensors, data handling protocols, and Machine Learning models. We propose a system architecture for implementing the solution, covering aspects such as network topology and data processing workflows. Our approach aims to enhance the reliability and efficiency of rail transportation through advanced technological integration.


Author Profile
Michael Stern

Hamm-Lippstadt University of Applied Sciences 59557 Lippstadt Germany

Germany
Author Profile
Michelle Hallmann

Hamm-Lippstadt University of Applied Sciences 59557 Lippstadt Germany

Germany
Author Profile
Francesco Vona

Hamm-Lippstadt University of Applied Sciences 59557 Lippstadt Germany

Germany

📄 논문 정보

발행 연도 2024년
인용수 0
출판 국가 Germany, Antigua and Barbuda
사이트 Springer
좋아요 수 0

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