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Influence of the combination of big data technology on the Spark platform with deep learning on elevator safety monitoring efficiency

机译:大数据技术组合对电梯安全监测效率深受深度学习的影响

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To effectively minimize elevator safety accidents, big data technology is combined with deep learning technology based on the Spark platform. This study first introduces the relevant theories of elevator safety monitoring technology, namely big data technology and deep learning technology. Then, the fault types that occur in the running state of the elevator are identified, and a finite state machine model is established. An elevator fault monitoring method based on the Spark platform is proposed, namely finite state machine (FSM), and the results of elevator safety fault monitoring are evaluated. Based on deep learning, an elevator fault warning model is constructed and its early warning performance is evaluated. The results show that the study can realize real-time and effective monitoring in the operation state of the elevator, and can determine the fault type of the elevator by binding the abnormal operation state with the corresponding fault. The feasibility of the elevator safety monitoring efficiency is evaluated based on three indexes: mutual information, accuracy, and false positives. Compared with other algorithms, the proposed FSM algorithm has the largest mutual information (0.1337), the highest accuracy (0.9899), the lowest false positive rate (0.0624), and the lowest false negative rate (0.1126); compared with other models, the elevator fault warning model proposed in this study has the lowest root mean-square error (RMSE) value (0.0201), the highest accuracy (0.9834), the lowest Loss value (0.0012), and the shortest convergence time (88.2608s), indicating that the elevator safety monitoring system and elevator fault warning model are feasible. This study establishes a good direction for elevator safety monitoring efficiency in China.
机译:为了有效地减少电梯安全事故,大数据技术与基于火花平台的深度学习技术相结合。本研究首先介绍了电梯安全监测技术的相关理论,即大数据技术和深度学习技术。然后,识别电梯的运行状态发生的故障类型,并且建立了有限状态机模型。提出了一种基于火花平台的电梯故障监测方法,即有限状态机(FSM),评估电梯安全故障监测的结果。基于深度学习,构建了电梯故障警告模型,并评估其预警性能。结果表明,该研究可以在电梯的操作状态下实现实时和有效的监测,并且可以通过将异常操作状态与相应的故障绑定来确定电梯的故障类型。基于三个索引评估电梯安全监测效率的可行性:相互信息,准确性和误报。与其他算法相比,所提出的FSM算法具有最大的互信息(0.1337),最高精度(0.9899),误率最低(0.0624),最低的假负率(0.1126);与其他模型相比,本研究提出的电梯故障警告模型具有最低的根均方误差(RMSE)值(0.0201),最高精度(0.9834),最低损耗值(0.0012),以及最短的收敛时间(88.2608s),表明电梯安全监控系统和电梯故障警告模型是可行的。本研究建立了中国电梯安全监测效率的良好方向。

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