Forecasting Indonesian Oil, Non-Oil and Gas Import Export with Fuzzy Time Series

Syalam Ali Wira Dinata, Ayuning Arum Purbosari, P. Hasanah
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Abstract

 Indonesia is active in export and import activities. Some of the commodities traded are oil and gas, as well as food and other industrial materials. Export and import activities play a role in determining the stability of the country's economy seen from its trade balance. According to the Central Statistics Agency, Indonesia experienced a deficit of USD 864 million due to a decline in exports at the beginning of 2020. Based on the state of the trade balance, the government needs to make policies in order to maintain the stability of the Indonesian economy. The right decision-making must be supported by accurate information, therefore, through this research, the value of Indonesia's exports and imports will be forecasted in the oil and gas and non-oil and gas sectors for the next period using the Fuzzy Time Series (FTS). FTS was chosen as the forecasting method because it is able to predict free real time data with arbitrary patterns. The data used is data on the value of exports and imports of oil and gas and non-oil and gas sectors for 2011-2020. To overcome the problem of stationary data variance and reduce the error value, a Box Cox transformation will be applied. The research stages include data transformation with Box Cox, forming universe and linguistic sets, determining interval length, fuzzification, forming FLR and FLR, defuzzification and forecasting. The final forecast results estimate that exports and imports in the oil and gas sector in 2021 will decline, while for the non-oil and gas sector will fluctuate and increase from the previous year. Forecasting with Box Cox transform data is more accurate with MAPE 19.56% and RMSE 121.52 compared to forecasting with original data with MAPE 74.89% and RMSE 132.09.
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用模糊时间序列预测印尼石油、非石油和天然气进出口
印度尼西亚积极开展进出口活动。交易的一些商品是石油和天然气,以及食品和其他工业材料。从贸易平衡来看,进出口活动在决定该国经济的稳定性方面发挥着作用。根据中央统计局的数据,由于2020年初出口下降,印度尼西亚出现了8.64亿美元的赤字。根据贸易平衡状况,政府需要制定政策,以维持印尼经济的稳定。正确的决策必须得到准确信息的支持,因此,通过这项研究,将使用模糊时间序列(FTS)预测下一时期印尼石油和天然气以及非石油和天然气管的进出口价值。选择FTS作为预测方法是因为它能够预测具有任意模式的自由实时数据。所使用的数据是2011-2020年石油和天然气以及非石油和天然气田的进出口价值数据。为了克服平稳数据方差的问题并降低误差值,将应用Box-Cox变换。研究阶段包括Box-Cox数据转换、形成宇宙和语言集、确定区间长度、模糊化、形成FLR和FLR、去模糊化和预测。最终预测结果估计,2021年石油和天然气行业的出口和进口将下降,而非石油和天然天然气行业将比前一年有所波动和增加。与使用原始数据(MAPE 74.89%和RMSE 132.09)进行预测相比,使用Box-Cox变换数据进行预测(MAPE 19.56%和RMSE 121.52)更准确。
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发文量
20
审稿时长
12 weeks
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