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Point and interval forecasting for carbon price based on an improved analysis-forecast system

机译:基于改进的分析预测系统的碳价点位和区间预测

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Effective analysis and forecasting of carbon prices, which is an essential endeavor for the carbon trading market, is still considered a difficult task because of the nonlinearity and nonstationarity inherent in carbon prices. Previous studies have failed at the analysis and interval prediction of carbon prices and are limited to point forecasts. Therefore, an improved carbon price analysis and forecasting system that consists of an analysis module and a forecasting module is established in this study; more importantly, the forecasting module includes point forecasting and interval forecasting as well. Aimed at investigating the characteristics of the carbon price series, a chaotic analysis based on the maximum Lyapunov exponent is performed, the determination of appropriate distribution functions based on our newly proposed hybrid optimization algorithm is conducted, and different distribution functions are effectively designed in the analysis module. Furthermore, in the point forecasting model, the phase space reconstruction technique is applied to reconstruct the sequences decomposed by variational mode decomposition due to the chaotic characteristics of the carbon price series, and the reconstructed sequences are considered as the optimal input-output variables of the forecasting model. Then, an adaptive neuro-fuzzy inference system model is trained by the newly proposed hybrid optimization algorithm, which is developed for the first time in the domain of carbon price point forecasting. Moreover, based on the results of point forecasting and the distribution function of the carbon price series determined by the analysis module, the interval forecasting results can be obtained and implemented to provide more reliable information for decision making. Empirical results based on the carbon price data of the European Union Emissions Trading System and Shenzhen of China demonstrate that the proposed system achieves better results than other benchmark models in point forecasting as well as interval forecasting.
机译:对碳价格进行有效的分析和预测是碳交易市场的一项基本工作,但由于碳价格固有的非线性和非平稳性,仍然被认为是一项艰巨的任务。先前的研究在碳价的分析和区间预测上均告失败,并且仅限于点预测。因此,本研究建立了一个由分析模块和预测模块组成的改进的碳价分析和预测系统。更重要的是,预测模块还包括点预测和间隔预测。为了研究碳价格序列的特征,进行了基于最大李雅普诺夫指数的混沌分析,基于我们新提出的混合优化算法进行了适当分布函数的确定,并在分析中有效设计了不同的分布函数。模块。此外,在点预测模型中,由于碳价格序列的混沌特性,应用相空间重构技术重构由变分模式分解分解的序列,并将重构后的序列视为碳价格序列的最优输入输出变量。预测模型。然后,通过新提出的混合优化算法训练自适应神经模糊推理系统模型,该模型是在碳价格点预测领域首次开发的。此外,基于点预测的结果和分析模块确定的碳价格序列的分布函数,可以获取并实施间隔预测结果,从而为决策提供更可靠的信息。基于欧盟排放权交易系统和中国深圳的碳价格数据的经验结果表明,该系统在点预测和区间预测方面均比其他基准模型取得更好的结果。

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