College of Mining, Liaoning Technical University, Fuxin, Liaoning, China.
School of Civil Engineering, Wuhan University, Wuhan, Hubei, China.
PLoS One. 2023 Mar 13;18(3):e0277352. doi: 10.1371/journal.pone.0277352. eCollection 2023.
As an equipment failure that often occurs in coal production and transportation, belt conveyor failure usually requires many human and material resources to be identified and diagnosed. Therefore, it is urgent to improve the efficiency of fault identification, and this paper combines the internet of things (IoT) platform and the Light Gradient Boosting Machine (LGBM) model to establish a fault diagnosis system for the belt conveyor. Firstly, selecting and installing sensors for the belt conveyor to collect the running data. Secondly, connecting the sensor and the Aprus adapter and configuring the script language on the client side of the IoT platform. This step enables the collected data to be uploaded to the client side of the IoT platform, where the data can be counted and visualized. Finally, the LGBM model is built to diagnose the conveyor faults, and the evaluation index and K-fold cross-validation prove the model's effectiveness. In addition, after the system was established and debugged, it was applied in practical mine engineering for three months. The field test results show: (1) The client of the IoT can well receive the data uploaded by the sensor and present the data in the form of a graph. (2) The LGBM model has a high accuracy. In the test, the model accurately detected faults, including belt deviation, belt slipping, and belt tearing, which happened twice, two times, one time and one time, respectively, as well as timely gaving warnings to the client and effectively avoiding subsequent accidents. This application shows that the fault diagnosis system of belt conveyors can accurately diagnose and identify belt conveyor failure in the coal production process and improve the intelligent management of coal mines.
作为煤炭生产和运输中经常发生的设备故障,输送带故障通常需要耗费大量的人力和物力进行识别和诊断。因此,提高故障识别效率迫在眉睫。本文结合物联网(IoT)平台和 Light Gradient Boosting Machine(LGBM)模型,建立了输送带故障诊断系统。首先,为输送带选择和安装传感器,以采集运行数据。其次,连接传感器和 Aprus 适配器,并在 IoT 平台客户端配置脚本语言。这一步骤使采集到的数据能够上传到 IoT 平台客户端,在客户端可以对数据进行计数和可视化。最后,建立 LGBM 模型来诊断输送机故障,并使用评估指标和 K 折交叉验证来验证模型的有效性。此外,在系统建立和调试后,将其应用于实际矿山工程中三个月。现场测试结果表明:(1)IoT 客户端可以很好地接收传感器上传的数据,并以图形形式呈现数据。(2)LGBM 模型具有很高的准确性。在测试中,该模型准确地检测到了两次皮带跑偏、两次皮带打滑和一次皮带撕裂等故障,并及时向客户端发出警告,有效避免了后续事故。该应用表明,输送带故障诊断系统可以准确诊断和识别煤炭生产过程中的输送带故障,提高煤矿的智能化管理水平。