Application of ARIMA to Curly Red Chili Prices in Bengkulu City

Authors

  • Melda Juliza Institut Sains dan Teknologi Nahdlatul Ulama Bali
  • Puce Angreni Institut Sains dan Teknologi Nahdlatul Ulama Bali

DOI:

https://doi.org/10.55123/insologi.v2i2.1871

Keywords:

Curly Chili, Chili Price, Autocorrelation, AIC, Auto.Arima

Abstract

Curly red chili in Bengkulu City often experiences price fluctuations from time to time. These price fluctuations are sometimes very extreme, causing public unrest both for food processing industry entrepreneurs and for daily household needs. Therefore, this study uses time series techniques to predict the price of curly red chili in Bengkulu City. This study discusses chili price forecasting using the Box-Jenkins ARIMA model based on curly red chili price data in Bengkulu City from 03 October 2022 to 28 February 2023. This research aims to look at the accuracy of the best model for curly red chili prices in Bengkulu city for the ARIMA model based on ACF & PACF criteria with autocorrelation coefficient values, and the smallest AIC criteria with the auto.arima function in R software. Next, forecast the price of curly red chili in Bengkulu City for the next period with the ARIMA model based on the best criteria obtained. Based on the ADF test, it can be seen that the data is not stationary so the data differencing process is carried out. The analysis results show that the best ARIMA model for curly red chili price data in Bengkulu City is the automatic ARIMA model with the smallest AIC criteria using the auto.arima function with the value of RMSE is 4197.7. The ARIMA model that is formed is the ARIMA (1,1,1) model. Next, the results of forecasting the price of curly red chili for Bengkulu City obtained based on the ARIMA (1,1,1) on 01 March 2023 is Rp 41,700.

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Published

2023-04-29

How to Cite

Melda Juliza, & Puce Angreni. (2023). Application of ARIMA to Curly Red Chili Prices in Bengkulu City . INSOLOGI: Jurnal Sains Dan Teknologi, 2(2), 385–391. https://doi.org/10.55123/insologi.v2i2.1871

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