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Design and Implementation of Electric Charge Arrears Prediction System

机译:电荷欠费预测系统的设计与实现

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Electric charge is the primary income for the power company. However, collecting electric charge is much difficult due to the existence of the risky consumer which makes the huge impact on the normal operation and development of the company. So the arrear problem of the risky customers has become one of the focus problems. Based on the gettable electric data from some areas, this paper proposed an integral system which can predict risky customers according to the various scenarios. In the system, the Random Forest (RF) model and Extreme Learning Machine (ELM) model are integrated that can effectively analyze the obvious features of the risky customers and predict the potential risky customers. In the experiment part, it has shown that our system applied to arrear risky customers' prediction has higher performance.
机译:电荷是电力公司的主要收入。然而,由于存在危险的消费者,因此很难收取电费,这对公司的正常运营和发展产生了巨大的影响。因此,高风险客户的欠费问题已经成为关注的问题之一。基于某些地区可获得的电力数据,本文提出了一个可以根据各种情况预测有风险的客户的完整系统。在系统中,集成了随机森林(RF)模型和极限学习机(ELM)模型,可以有效地分析有风险客户的明显特征并预测潜在的有风险客户。在实验部分,表明我们的系统应用于欠款风险客户的预测具有较高的性能。

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