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Detection of Railroad Anomalies using Machine Learning Approach

机译:用机器学习方法检测铁路异常

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Maintenance of assets owned by an organization or company is an activity that will never stop. From the time of implementation, maintenance will be more optimal if it is carried out before the asset is in a damaged condition or cannot operate. Pro-active repair model is proven to reduce 15-60% of operational costs. The existence of technology and computing models currently supports big data processing, both in the form of transactional data, historical data and statistical data. The asset maintenance cycle transformed into an autonomous and integrated system, will assist in the decision-making process. A machine learning approach that is supported by big data analysis is one solution that can realize the predictive maintenance process. To accurately predict the condition of critical components, it can be started with data collection, followed by detecting normal and abnormal behavior, and continued by training algorithms to make predictions. Detection of railroad anomalies is used as the initial process in the predictive maintenance of railroads. The process of detecting railroad anomalies can be done by comparing the lateral, longitudinal and vertical acceleration from the sensing results through the accelerometers on both sides of the train wheels. Differences will pay attention to the data acceleration draft rail geometry either angkatan or listringan. The results of rail anomaly detection will indicate the rail maintenance process that can be carried out immediately.
机译:维护组织或公司拥有的资产是一项永不停止的活动。从实施之日起,如果在资产损坏或无法运行之前进行维护,则维护将更加优化。事实证明,主动维修模式可降低15-60%的运营成本。技术和计算模型的存在目前支持大数据处理,包括事务数据、历史数据和统计数据。资产维护周期转化为一个自主的综合系统,将有助于决策过程。由大数据分析支持的机器学习方法是一种可以实现预测性维护过程的解决方案。为了准确预测关键部件的状况,可以从数据收集开始,然后检测正常和异常行为,然后通过训练算法进行预测。铁路异常检测是铁路预测性维护的初始过程。检测铁路异常的过程可以通过比较通过列车车轮两侧的加速计检测结果得出的横向、纵向和垂直加速度来完成。差异将关注安加坦或listringan的铁路几何数据。轨道异常检测的结果将指示可立即执行的轨道维护过程。

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