FORECASTING OF AREA AND PRODUCTION OF CASHEW NUT IN DAKSHINA KANNADA USING ARIMA AND EXPONENTIAL SMOOTHING MODELS

IF 0.9 Q3 STATISTICS & PROBABILITY Journal of Reliability and Statistical Studies Pub Date : 2019-09-30 DOI:10.13052/jrss2229-5666.1226
M. Chaithra, Pramit Pandit, Bishvajit Bakshi
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引用次数: 3

Abstract

The cultivation and marketing of cashew nut involve a considerable amount of work force. Hence, it plays a vital role in the Indian economic scenario. In this context, an attempt has been made to forecast the area and production of cashew nut with a view to help the planners in recommending policies regarding cashew nut. Due to autocorrelation in the data, time series forecasting models such as ARIMA and exponential smoothing models were adopted. Detection and removal of 3 significant outliers, i.e. 1 for area under cashew nut and 2 in case of cashew nut production, were done before fitting the models. Holt’s model was found to have better forecasting ability with lowest RMSE value (1386.13) among the different models fitted for forecasting the area under cashew nut. From this model, area (ha) under cashew nut was forecasted to be 34492.10, 34974.81 and 35474.87 for the year 2018, 2019 and 2020, respectively. In case of cashew nut production, Brown’s linear trend model, with RMSE value (10020.19), was observed to have better forecasting ability among the tried models. Production of cashew nut (in tonnes) was forecasted to be 10230.20, 10996.81 and 11833.00 for the year 2018, 2019 and 2020, respectively.  
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利用ARIMA和指数平滑模型预测堪萨斯州腰果面积和产量
腰果的种植和销售需要大量的劳动力。因此,它在印度经济形势中发挥着至关重要的作用。在这种情况下,已经尝试预测腰果的面积和产量,以帮助规划者推荐有关腰果的政策。由于数据具有自相关性,因此采用了ARIMA和指数平滑模型等时间序列预测模型。在拟合模型之前,对3个显著异常值进行了检测和去除,即腰果下区域的1个异常值和腰果生产的2个异常值。Holt模型具有较好的预测能力,RMSE值最低(1386.13)。根据该模型,预计2018年、2019年和2020年腰果种植面积分别为34492.10、34974.81和35474.87。在腰果生产的情况下,在尝试的模型中,观察到具有RMSE值(10020.19)的Brown线性趋势模型具有更好的预测能力。预计2018年、2019年和2020年腰果产量(吨)分别为10232.20、10996.81和11833.00。
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CiteScore
1.60
自引率
12.50%
发文量
24
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