Predictive Maintenance in Bridge Infrastructure

Mirriam Bango, Mr Mtende Mkandawire
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Abstract

Predictive maintenance, driven by artificial intelligence and data analytics, represents a transformative approach to infrastructure management. By continuously monitoring asset conditions through sensors (Vibration, Temperature, crack, moisture and corrosion, 3D vision sensor and Ultrasonic & sonic) and advanced algorithms, predictive maintenance can forecast maintenance needs before infrastructure failures occur, leading to efficient scheduling, reduced costs, minimized downtime, and improved safety. Beyond cost savings, this approach enhances sustainability by optimizing resource usage, extending asset service life, and reducing environmental impact. Real-world applications in road infrastructure and the power sector demonstrate its potential to ensure reliability, prevent accidents, and meet the growing demands placed on critical infrastructure. Embracing predictive maintenance technologies is essential for addressing 21st-century infrastructure challenges effectively and safeguarding the well-being of communities
桥梁基础设施的预测性维护
由人工智能和数据分析驱动的预测性维护是基础设施管理的一种变革性方法。通过传感器(振动、温度、裂缝、湿度和腐蚀、三维视觉传感器、超声波和声波)和先进算法对资产状况进行持续监测,预测性维护可在基础设施故障发生前预测维护需求,从而实现高效调度、降低成本、减少停机时间并提高安全性。除了节约成本,这种方法还能优化资源利用、延长资产使用寿命并减少对环境的影响,从而提高可持续性。道路基础设施和电力行业的实际应用证明了这种方法在确保可靠性、防止事故和满足对关键基础设施日益增长的需求方面的潜力。采用预测性维护技术对于有效应对 21 世纪基础设施挑战和保障社区福祉至关重要
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