基于神经网络的负荷预测输入变量选择新方法

Vivek Shrivastava, R. B. Misra
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引用次数: 11

摘要

电力需求预测已成为电气工程领域的主要研究方向之一。供应行业需要有提前期的预测,从短期(提前几分钟、几小时或几天)到长期(提前20年)不等。电力公司的首要任务是为客户提供不间断的电力供应。长期峰值负荷预测在电力系统的政策规划和预算分配中起着重要的作用。提出了一种基于人工神经网络(ANN)的高峰负荷预测模型。本文的方法是基于多层反向传播前馈神经网络。以印度奥里萨电网公司(GRIDCO)的峰值负荷数据为例进行了研究,该方法保持了高质量、可靠的历史数据。
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A Novel Approach of Input Variable Selection for ANN Based Load Forecasting
The forecasting of electricity demand has become one of the major research fields in electrical engineering. The supply industry requires forecasts with lead times, which range from the short term (a few minutes, hours, or days ahead) to the long term (up to 20 years ahead). The major priority for an electrical power utility is to provide uninterrupted power supply to its customers. Long term peak load forecasting plays an important role in electrical power systems in terms of policy planning and budget allocation. This paper presents a peak load forecasting model using Artificial Neural Networks (ANN). The approach in the paper is based on multi-layered back-propagation feed forward neural network. A case study is performed using the proposed method of peak load data of the Grid Corporation of Orrissa (GRIDCO), India which maintain high quality, reliable, historical data.
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