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Research on spectral analysis method of load characteristics in smart grid

机译:智能电网负荷特性的频谱分析方法研究

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With promoting of demand response mechanism, injection of large-scale new energy into the distribution network in smart grid and rapid change of economic situation as well as industrial structure, time-varying of electric loads intensifies. Conventional indexes of power load characteristics such as load factor and peak-valley difference factor have difficulties in estimating electric load peak and valley characters comprehensively and effectively. This paper puts forward spectral analysis method to analyze power load characteristics and pulls out corresponding indexes to describe peak and valley fluctuation characters of electric load curves, which transfers research on load characteristics from time domain to frequency domain and makes up the deficiency in study of electric load characteristics in time domain. This method divides the time series of power load into superposition of periodic components with different amplitude, phase and frequency and finds out main-cycles components contained in power load. Through analyzing fluctuation characteristics of main-cycles components, we can obtain the essence of load curves' fluctuation more effectively. Finally, the paper establishes frequency domain analysis indexes system of load characteristics to support interactive construction of users and power networks in smart grid. The example has confirmed the effectiveness of the indexes system.
机译:随着需求响应机制的发展,向智能电网中的配电网注入大量新能源以及经济形势和产业结构的快速变化,电力负荷的时变加剧。电力负荷特性的常规指标,如负荷系数和峰谷差异系数,难以全面有效地估计电力负荷的峰谷特征。提出了频谱分析方法来分析电力负荷特性,并提出了相应的指标来描述电力负荷曲线的峰谷波动特征,将负荷特性的研究从时域转移到频域,弥补了电力研究的不足。时域的负载特性。该方法将电力负载的时间序列分为具有不同幅度,相位和频率的周期性分量的叠加,并找出电力负载中包含的主周期分量。通过分析主周期分量的波动特征,可以更有效地获得负荷曲线波动的实质。最后,建立了负荷特性的频域分析指标体系,以支持智能电网中用户与电网的互动建设。这个例子已经证实了指标体系的有效性。

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