Breakdown and Productivity Prediction of Dragline using Machine Learning Algorithms

Vikram Seervi, Nilesh Pratap Singh, Nawal Kishore, Rajeev Verma
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Abstract

Dragline operations play a major role in the overall production of coal in open cast mining. Hence, it becomes necessary to maximize the working hours and minimize the idle and breakdown hours as it affects the overall production of a mine. There is also a shortage of skilled labour for dragline operations and combined with the time-to-time breakdown of dragline, it results in a production deficit. In this study, extensive research is carried out using machine learning algorithms on data obtained from one of the largest opencast mines in Singrauli. The data consists of the parameters that were maintained by the staff on a regular basis, and the algorithm tried to learn the underlying patterns between the independent and dependent variables and find the correlation between the parameters that have a significant impact on productivity and breakdown, which were the dependent variables. The results obtained from the algorithms are encouraging and, with certain improvements in data collection procedures, can improve the prediction accuracy to an effective level. An increase in the frequency of data collection and expanding the data recording using sensors to the electrical and mechanical parameters along with the specific type of failure in the dragline machine will further improve the accuracy of the model and can provide beforehand information so that the machine could be handed over to maintenance department for the change of faulty parts and necessary precautions that can be taken to prevent the breakdown which will result in an overall reduction of idle and breakdown hours and increase in overall production.
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利用机器学习算法预测拖绳的故障和生产率
拖带作业在露天开采的煤炭总产量中发挥着重要作用。因此,有必要最大限度地延长工作时间,最大限度地减少闲置和故障时间,因为这会影响矿山的整体生产。此外,拉网作业的熟练劳动力短缺,再加上拉网的不时故障,导致生产赤字。在这项研究中,使用机器学习算法对从Singrauli最大的露天矿之一获得的数据进行了广泛的研究。数据由工作人员定期维护的参数组成,算法试图了解自变量和因变量之间的基本模式,并找到对生产率和故障有重大影响的参数之间的相关性,这些参数是因变量。从算法中获得的结果令人鼓舞,并且随着数据收集程序的某些改进,可以将预测精度提高到有效水平。增加数据收集的频率,并将使用传感器的数据记录扩展到电气和机械参数,以及牵引机中的特定故障类型,将进一步提高模型的准确性,并可以预先提供信息,以便将机器移交给维修部门更换故障零件可以采取必要的预防措施来防止故障,这将导致闲置和故障时间的总体减少以及整体产量的增加。
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来源期刊
Journal of Mines, Metals and Fuels
Journal of Mines, Metals and Fuels Energy-Fuel Technology
CiteScore
0.20
自引率
0.00%
发文量
101
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