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首页> 外文期刊>Knowledge-Based Systems >Improving Knowledge-Based Systems with statistical techniques, text mining, and neural networks for non-technical loss detection
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Improving Knowledge-Based Systems with statistical techniques, text mining, and neural networks for non-technical loss detection

机译:利用统计技术,文本挖掘和神经网络改进基于知识的系统,以进行非技术性损失检测

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摘要

Currently, power distribution companies have several problems that are related to energy losses. For example, the energy used might not be billed due to illegal manipulation or a breakdown in the customer's measurement equipment. These types of losses are called non-technical losses (NTLs), and these losses are usually greater than the losses that are due to the distribution infrastructure (technical losses). Traditionally, a large number of studies have used data mining to detect NTLs, but to the best of our knowledge, there are no studies that involve the use of a Knowledge-Based System (KBS) that is created based on the knowledge and expertise of the inspectors. In the present study, a KBS was built that is based on the knowledge and expertise of the inspectors and that uses text mining, neural networks, and statistical techniques for the detection of NTLs. Text mining, neural networks, and statistical techniques were used to extract information from samples, and this information was translated into rules, which were joined to the rules that were generated by the knowledge of the inspectors. This system was tested with real samples that were extracted from Endesa databases. Endesa is one of the most important distribution companies in Spain, and it plays an important role in international markets in both Europe and South America, having more than 73 million customers.
机译:当前,配电公司存在与能量损失有关的几个问题。例如,由于非法操作或客户的测量设备故障,可能不会对所使用的能源计费。这些类型的损失称为非技术损失(NTL),这些损失通常大于由于配电基础设施引起的损失(技术损失)。传统上,大量研究使用数据挖掘来检测NTL,但就我们所知,没有研究涉及使用基于知识的系统(KBS)创建的知识和专业知识。检查员。在本研究中,建立了KBS,该KBS基于检查员的知识和专长,并使用文本挖掘,神经网络和统计技术来检测NTL。使用文本挖掘,神经网络和统计技术从样本中提取信息,并将此信息转换为规则,然后将其与由检查员的知识生成的规则相结合。该系统使用从Endesa数据库提取的真实样本进行了测试。 Endesa是西班牙最重要的分销公司之一,在欧洲和南美的国际市场中都发挥着重要作用,拥有超过7300万客户。

著录项

  • 来源
    《Knowledge-Based Systems》 |2014年第11期|376-388|共13页
  • 作者单位

    Department of Electronic Technology, Universidad de Sevilla, ETSII, Av. Reina Mercedes, 41011 Seville, Spain;

    Department of Electronic Technology, Universidad de Sevilla, ETSII, Av. Reina Mercedes, 41011 Seville, Spain;

    Department of Electronic Technology, Universidad de Sevilla, ETSII, Av. Reina Mercedes, 41011 Seville, Spain;

    Department of Electronic Technology, Universidad de Sevilla, ETSII, Av. Reina Mercedes, 41011 Seville, Spain;

    Department of Electronic Technology, Universidad de Sevilla, ETSII, Av. Reina Mercedes, 41011 Seville, Spain;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Expert system; Power distribution; Non-technical losses; Neural network; Text mining;

    机译:专业系统;电力调配;非技术损失;神经网络;文字挖掘;

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