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Detection of missing power meter readings using artificial neural networks

机译:使用人工神经网络检测丢失的电表读数

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摘要

In a power distribution network, network topology information is essential for an efficient operation of the network. This information is not accurately available, due to uninformed changes that happen from time to time, or uncertain meter readings. Reliable prediction of system status is a highly demanded functionality of smart energy systems, which can enable users or human operators to react quickly to potential future system changes. This paper presents potential of artificial neural networks to determine missing power meter readings in medium voltage (MV) networks where the number of on-line measurements is limited, and state estimation relies heavily on estimates of power injections. The applicability of the approach is demonstrated through simulation using supervisory control and data acquisition and smart meter measurements recorded from an actual MV distribution network. Results are showing that artificial neural networks can have 100% measurements detection accuracy.
机译:在配电网络中,网络拓扑信息对于网络的有效运行至关重要。由于不时发生不知情的变化或不确定的仪表读数,因此无法准确获得此信息。可靠地预测系统状态是智能能源系统的一项高度要求的功能,它可以使用户或操作人员对未来的潜在系统变化做出快速反应。本文介绍了人工神经网络在确定在线测量次数受限且状态估计严重依赖于功率注入估计的中压(MV)网络中确定缺失的功率计读数的潜力。该方法的适用性通过使用监督控制和数据采集以及从实际MV配电网络记录的智能电表测量值的仿真得到证明。结果表明,人工神经网络可以具有100%的测量检测精度。

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