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An expert system approach to short-term load forecasting for Reliance Energy Limited, Mumbai

机译:孟买Reliance Energy Limited的短期负荷预测专家系统方法

摘要

Economically efficient generation scheduling requires accurate forecasting of load. In this paper, we propose a short term load forecasting program for Reliance Energy Limited (REL) in Mumbai region. The method is based on a similar day approach. The development of forecast engine involves 4-steps. The first step involves discussion with domain experts (utility engineers) to extract and learn the rules regarding system behaviour. In the next step, these rules are refined by statistical analysis. A linear prediction model for each day of week is developed. The third step involves an adaptive implementation of the rules. The parameters of the linear model are learned from previous data by solving an optimization problem. Quadratic programming is used with redundancy factor 2. The final step involves fine-tuning of forecast by re-shaping the forecast as the reference day using fast Fourier transform, filtering and smoothening by 3-point moving average technique. Normalization is done using DC component of reference day. Since the parameters are learnt from past few weeks data, the seasonal variations due to change in season like winter, summer are better modeled. Detailed study of the results of the forecast program, the overall mean absolute percentage error (MAPE) of the forecasted data is 2.89 over an interval from Aug'04 to May'05 which is reasonable
机译:经济高效的发电计划需要准确预测负荷。在本文中,我们为孟买地区的Reliance Energy Limited(REL)提出了短期负荷预测程序。该方法基于类似日方法。预测引擎的开发涉及四个步骤。第一步涉及与领域专家(公用事业工程师)进行讨论,以提取和学习有关系统行为的规则。下一步,通过统计分析完善这些规则。开发了每周每一天的线性预测模型。第三步涉及规则的自适应实施。通过解决优化问题,可以从先前的数据中学习线性模型的参数。使用具有冗余因子2的二次规划。最后一步涉及通过使用快速傅里叶变换,通过三点移动平均技术进行滤波和平滑来将预测重新设置为参考日来对预测进行微调。归一化是使用参考日的DC分量完成的。由于参数是从过去几周的数据中学到的,因此可以更好地模拟由于冬季,夏季等季节变化而引起的季节性变化。详细研究预测程序的结果,从04年8月到05年5月的时间间隔内,预测数据的总体平均绝对百分比误差(MAPE)为2.89

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