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LONG-TERM INDUSTRIAL LOAD FORECASTING AND PLANNING USING NEURAL NETWORKS TECHNIQUE AND FUZZY INFERENCE METHOD

机译:利用神经网络技术和模糊推理方法的长期工业负荷预测和规划

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Load forecasting plays a dominant part in the economic optimization and secure operation of electric power systems. The plans of the electric power sector have been done and developed with the aid of statistical prediction methods. Electric utility companies need monthly peak and yearly load forecasting for budget planning, maintenance scheduling and fuel management. This paper presents a new approach based on a hybrid fuzzy neural technique which combines artificial neural network and fuzzy logic modeling for long term industrial load forecasting in electrical power systems. An extensive study is carried out to find the accurate forecasting model through an application on an industrial 10 th of Ramadan city in Egypt. Actual record data is used to test the proposed method. A large number of influencing factors have been examined and tested. This paper presents a fully developed system for the prediction of electric maximum demand and consumption for the future 24 months. Also very long-term load forecasting was carried. The strength of this technique lies in its ability to reduce appreciable computational time and its comparable accuracy with other modeling techniques. The outcomes of the study clearly indicate that the proposed composite model of neural network technique and fuzzy inference method can be used as attractive and effective means for the industrial monthly and yearly peak load forecasting. The test results showed very accurate forecasting with the average percentage relative error of 1.98 %.
机译:负载预测在电力系统的经济优化和安全运行中起着主导部分。借助统计预测方法完成并开发了电力部门的计划。电力公用事业公司需要每月峰值和年度负荷预测预算规划,维护调度和燃料管理。本文提出了一种基于混合模糊神经技术的新方法,该方法将人工神经网络与模糊逻辑建模结合在电力系统中长期工业负荷预测。进行了广泛的研究,以通过在埃及的斋月市的工业10世纪申请找到准确的预测模型。实际记录数据用于测试所提出的方法。已经检查和测试了大量影响因素。本文提出了一个完全开发的系统,用于预测未来24个月的电气最大需求和消费。也进行了很长期的负荷预测。这种技术的强度在于,能够通过其他建模技术减少可观的计算时间及其可比性的准确性。该研究的结果清楚地表明,拟议的神经网络技术和模糊推理方法的复合模型可用作工业月度和年峰值负荷预测的吸引力和有效手段。测试结果表明,平均百分比的相对误差为1.98%。

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