College of Management & College of Tourism, Fujian Agriculture and Forestry University, Fuzhou 350002, China.
Department of Business Administration, Chung Yuan Christian University, Taoyuan 32023, Taiwan.
Int J Environ Res Public Health. 2021 Jan 12;18(2):587. doi: 10.3390/ijerph18020587.
Because grey prediction does not demand that the collected data have to be in line with any statistical distribution, it is pertinent to set up grey prediction models for real-world problems. GM(1,1) has been a widely used grey prediction model, but relevant parameters, including the control variable and developing coefficient, rely on background values that are not easily determined. Furthermore, one-order accumulation is usually incorporated into grey prediction models, which assigns equal weights to each sample, to recognize regularities embedded in data sequences. Therefore, to optimize grey prediction models, this study employed a genetic algorithm to determine the relevant parameters and assigned appropriate weights to the sample data using fractional-order accumulation. Experimental results on the carbon dioxide emission data reported by the International Energy Agency demonstrated that the proposed grey prediction model was significantly superior to the other considered prediction models.
由于灰色预测并不要求所收集的数据必须符合任何统计分布,因此将灰色预测模型应用于实际问题是恰当的。GM(1,1)是一种广泛使用的灰色预测模型,但相关参数,包括控制变量和发展系数,依赖于不易确定的背景值。此外,一阶累加通常被纳入灰色预测模型中,它为每个样本赋予相同的权重,以识别数据序列中嵌入的规律。因此,为了优化灰色预测模型,本研究使用遗传算法来确定相关参数,并使用分数阶累加为样本数据分配适当的权重。对国际能源署报告的二氧化碳排放数据的实验结果表明,所提出的灰色预测模型明显优于其他考虑的预测模型。