Power quality monitoring using neural networks

R.F. Daniels
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引用次数: 18

Abstract

With the proliferation of sensitive control systems and personal computers in the commercial and industrial sector, comes a need for electrical utilities to deliver 'clean' power. Voltage variations in the form of sags, surges and impulses, i.e., disturbances, can chronically plague and permanently damage electrical equipment. Southern California Edison (SCE) in joint effort with Basic Measuring Instruments (BMI) were teamed up to automate the process of collecting disturbance data, viewing their contents and applying artificial intelligence paradigms (neural networks) to help identify their causes and present possible solutions.<>
基于神经网络的电能质量监测
随着敏感控制系统和个人电脑在商业和工业领域的普及,电力公司需要提供“清洁”电力。电压变化的形式为跌落、浪涌和脉冲,即干扰,可以长期困扰和永久损坏电气设备。南加州爱迪生公司(SCE)与基础测量仪器公司(BMI)共同努力,将收集干扰数据的过程自动化,查看其内容,并应用人工智能范式(神经网络)来帮助确定其原因并提出可能的解决方案。
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