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Application on crude oil output forecasting based on TB-SCM algorithm

机译:基于TB-SCM算法的原油输出预测应用

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Factors that affect crude oil output are multifarious and non-linear, so it is very difficult to analyze and predict the crude oil output solely based on mathematical methods. This paper presents a new method that applies TB-SCM algorithm to predict crude oil output. Firstly, the monthly production data of the past years from a sample oil plant is preprocessed by the K-means algorithm, and the transaction dataset is obtained. Next, based on the TB-SCM algorithm, the strong association rules about crude oil output are generated with the given minimum support threshold and minimum confidence threshold. Lastly, these strong association rules can help us to forecast crude oil output in the coming months for oil production plant. Comparing with the actual value of crude oil output, the result shows that the prediction method is of high operational efficiency, simple and accurate.
机译:影响原油产量的因素是多种,非线性,因此难以根据数学方法分析和预测原油产量。本文提出了一种应用TB-SCM算法预测原油输出的新方法。首先,从样品油厂的过去几年的月度生产数据被K-Means算法预处理,并且获得了事务数据集。接下来,基于TB-SCM算法,通过给定的最小支撑阈值和最小置信阈值产生关于原油输出的强关键规则。最后,这些强大的协会规则可以帮助我们在未来几个月内预测石油生产工厂的原油产量。比较原油输出的实际值,结果表明,预测方法具有高运行效率,简单准确。

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