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An Optimized Forecasting Approach Based on Grey Theory and Cuckoo Search Algorithm: A Case Study for Electricity Consumption in New South Wales

机译:基于灰色理论和杜鹃搜索算法的优化预测方法 - 以新南威尔士州电力消耗为例

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With rapid economic growth, electricity demand is clearly increasing. It is difficult to store electricity for future use; thus, the electricity demand forecast, especially the electricity consumption forecast, is crucial for planning and operating a power system. Due to various unstable factors, it is challenging to forecast electricity consumption. Therefore, it is necessary to establish new models for accurate forecasts. This study proposes a hybrid model, which includes data selection, an abnormality analysis, a feasibility test, and an optimized grey model to forecast electricity consumption. First, the original electricity consumption data are selected to construct different schemes (Scheme 1: short-term selection and Scheme 2: long-term selection); next, the iterative algorithm (IA) and cuckoo search algorithm (CS) are employed to select the best parameter of GM(1,1). The forecasted day is then divided into several smooth parts because the grey model is highly accurate in the smooth rise and drop phases; thus, the best scheme for each part is determined using the grey correlation coefficient. Finally, the experimental results indicate that the GM(1,1) optimized using CS has the highest forecasting accuracy compared with the GM(1,1) and the GM(1,1) optimized using the IA and the autoregressive integrated moving average (ARIMA) model.
机译:随着经济迅速的增长,电力需求明显增加。难以储存电力以供将来使用;因此,电力需求预测,尤其是电力消耗预测,对于规划和运营电力系统至关重要。由于各种不稳定因素,预测电力消耗是挑战性的。因此,有必要为准确的预测建立新的模型。本研究提出了一种混合模型,包括数据选择,异常分析,可行性测试和优化的灰色模型来预测电力消耗。首先,选择原始电力消耗数据来构建不同方案(方案1:短期选择和方案2:长期选择);接下来,采用迭代算法(IA)和Cuckoo搜索算法(CS)来选择GM(1,1)的最佳参数。然后,预测的一天将分为几个平滑部分,因为灰色模型在平滑升高和液位中高度准确;因此,使用灰色相关系数来确定每个部分的最佳方案。最后,实验结果表明,使用CS优化的GM(1,1)与GM(1,1)和GM(1,1)相比具有最高的预测精度,并使用IA和自动增加的综合移动平均线( Arima)模型。

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