用遗传算法建立自回归综合移动平均(ARIMA)模型来预测印度的辣椒和姜黄产量

Elakkiya N, B. Bhattacharyya, Sathees Kumar K
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引用次数: 0

摘要

目的:印度是全球最重要的香料生产国,香料出口历史悠久。2021 年,印度香料出口额增长了 37%,达到 41 亿美元。其中,仅干辣椒、小茴香和姜黄就占出口额的 44%(18 亿美元)。预测主要香料的产量是出口的关键,对支持和实现 2027 年 100 亿美元的出口目标起着至关重要的作用:从 Indiastat 收集了 1970-2020 年印度辣椒和姜黄生产的时间序列数据:本研究试图利用ARIMA模型预测印度辣椒和姜黄的产量,并通过随机优化技术(遗传算法)估算其参数。参数通过最小化平均绝对百分比误差(MAPE)来估算。最后,根据预测能力对 ARIMA 模型和 ARIMA_GA 模型进行了比较:结果:ARIMA_GA 模型测试集的均方根误差(RMSE)和平均绝对误差(MAPE)分别为 254.01、11.32(辣椒)和 185.73、15.24(姜黄),低于拟合的 ARIMA 模型:这项研究表明,ARIMA_GA(2,1,1)是预测印度辣椒和姜黄产量的最佳模型。ARIMA_GA 模型可以解决似然函数的解析性和收敛性问题。因此,带有 GA 的 ARIMA 能够模拟数据的复杂性和不确定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autoregressive Integrated Moving Average (ARIMA) Model with Genetic Algorithm to Forecast the Chilli and Turmeric Productions in India
Aims: India holds the distinction of being the foremost producer of spices globally and has been long-run history in spice export. The quantity of Indian spice exports increased by 37% with $ 4.1 billion worth in 2021. With that, dried chilli, cumin, and turmeric alone contributed 44% of export value ($ 1.8 billion). Forecasting the production of major spices are key for exports and plays an essential role in supporting and achieving the target of $10 billion in exports by 2027. Data Source: The time series data of chilli and turmeric production data in India from 1970-2020 periods was collected from Indiastat. Methodology: The present study sought to forecast the production of chilli and turmeric in India using the ARIMA model and their parameters are estimated by stochastic optimization techniques (genetic algorithm). The parameters are estimated by minimizing the Mean Absolute Percentage Error (MAPE). Finally, ARIMA and ARIMA_GA models were compared based on their predictive ability. Results: The Root Mean Square Error (RMSE) and Mean Absolute Percentage Error (MAPE) were 254.01,11.32 (chilli) and 185.73, 15.24 (turmeric) for testing set of ARIMA_GA model which is lower than the fitted ARIMA model. Conclusion: This work has shown that ARIMA_GA (2,1,1) has been the best model to forecast the chilli and turmeric production in India. ARIMA_GA model will cope with parsimony and convergence of likelihood function to global optimum problems. Therefore ARIMA with GA will able to model the complexity and uncertainty of the data.
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