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Review of various modeling techniques for the detection of electricity theft in smart grid environment

机译:智能电网环境中用于检测电盗窃的各种建模技术的回顾

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This review paper focuses on the various modeling practices for the identification and apprehension of nontechnical losses. The modeling practices are extremely vital to develop, upsurge energy performance, examine and foresee the performance of power transmission & distribution of the electrical system. The data mining based models are innovative and have the subsistence to examine an enormous potential of energy consumption records and performing area profile for preparing housing zone directing the electricity effective living. In this concern, support vector machine model, which classifies illegal customers is a form of advanced mix evolutionary neural network model. Optimum-path forest clustering process is activated to recognize legitimate and irregular profiles of an industry as well as commercial customers to find out theft of electricity. Real time state estimation technique determines a state approximation method in the actual stage for every conversion (transformation) point. Aforementioned allows us to regulate the parts to the maximum extent of non-technical losses through the radial distribution method. The support vector machine with genetic algorithm advances a hybrid method for the non-technical loss investigation and provide an automated assistance to dominate the electricity theft. This model is simplified version of support vector machine. Decision tree and Bayesian regularization networks are appropriated to identify the several kinds of patterns of losses in the electrical system. These practices have been accompanied concerning testing and validation for power system losses in the experimental laboratory. It operates in an influence tool intended to expedite the investigators and scientists. It assists short of spending a massive amount of money, time and energy in experimental events. Prior fabrication modeling methods are remarkably significant in replication of diverse kinds of solar electrical systems. Accordingly, this study concentrates on the base of modeling methods not only saves time but, also preserves the monetary investment in the electrical system. The benefit and imminent opportunity of modeling practices are also conferred in the review paper.
机译:本文将重点介绍用于识别和评估非技术损失的各种建模实践。建模实践对于开发,提高能源性能,检查并预见电气系统的电力传输和分配性能至关重要。基于数据挖掘的模型具有创新性,具有生存能力,可以检查巨大的能源消耗记录潜力,并进行区域剖析,以准备指导电力有效生活的居住区。在这种情况下,对非法客户进行分类的支持向量机模型是高级混合进化神经网络模型的一种形式。激活了最佳路径森林聚类过程,以识别行业以及商业客户的合法和不合法特征,以发现电窃取行为。实时状态估计技术为每个转换(转换)点确定实际阶段中的状态近似方法。前述允许我们通过径向分布方法将零件调节到最大程度的非技术损失。具有遗传算法的支持向量机为非技术性损失调查提供了一种混合方法,并提供了一种自动化协助来控制电盗窃行为。该模型是支持向量机的简化版本。决策树和贝叶斯正则化网络适用于识别电气系统中的几种损耗模式。伴随着这些实践,涉及在实验实验室中测试和验证电力系统损耗。它以一种有影响力的工具运作,旨在加快研究人员和科学家的工作。它有助于在实验活动中花费大量的金钱,时间和精力。先前的制造建模方法在复制各种太阳能电气系统中非常重要。因此,本研究集中在建模方法的基础上,不仅节省时间,而且节省了对电气系统的金钱投资。这篇评论文章还介绍了建模实践的好处和迫在眉睫的机会。

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