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Short-term Load Forecasting Based on ANN Applied to Electrical Distribution Substations

机译:基于ANN应用于电气分配变电站的短期负荷预测

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The short-term load forecasting (STLF) algorithms belong to the set of methodologies which aim to furnish more effectiveness in planning, operation and conduction in electric energy systems (EES). The presence of a de-regulated environment reinforces the need of forecast, particularly in distribution networks. Actions like network management, load dispatch and network reconfiguration, under quality of service constraints, require reliable short-term (next hour) load forecasts. Artificial neural networks (ANN) are widely used in this horizon of prevision, with satisfactory results. The construction of an "efficient" ANN goes through, among, other factors, the construction of an "efficient" input vector, in order to avoid over fitting problems and keeping the global simplicity of the model. This paper deals with a methodological approach, in order to provide more solid basis decision regarding the composition of the input vector, namely, in the choice of the number of the contiguous values of the principle variable (active power). In a first approach it was established a search for any "chains with complete connections", in the active power signal, based on Gibbs measure, and a relative entropy analysis. It was introduced the concept of "consumption tendency" in past homologous days. It was also analyzed the correlation between the consumption and the climatic data, having been established a non-weather sensitive model. The methodological approach is discussed and compared with another input vector. The model was tested in a real life case study for illustration of defined steps.
机译:短期负荷预测(STLF)算法属于集合的方法,其目的是提供在电能源系统(EES)规划,运行和传导更有效性。脱调节的环境的存在加强了预测的需要,特别是在分配网络。如网络管理,负载调度和网络重构操作,下的服务质量约束,需要可靠的短期(一个小时)负荷预测。人工神经网络(ANN)广泛应用于此地平线预知的,结果令人满意。一个“有效”的ANN的结构通过,其中,除其他因素,一个“有效”的输入载体的构建,以避免过拟合问题并保持模型的全局简单。本文使用的方法途径涉及,以提供关于输入向量,即该组合物更坚实的基础决定,在原则变量(有功功率)的连续值的数量的选择。在第一种方法它建立了任何“链与完整的连接”的搜索,在主动功率信号,基于吉布斯量度,并且一个相对熵分析。据介绍在过去的同源天“消费倾向”的概念。有人还分析了消耗和气候数据之间的相关性,已经建立了一个非天气敏感模型。它采用的方法所讨论的并与另一输入向量进行比较。该模型是在中定义的步骤说明一个现实生活中的案例研究测试。

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