IMPLEMENTASI GREY MODEL (1,N) UNTUK SISTEM PERAMALAN JUMLAH TANGKAPAN IKAN

M. Shodiq, E. Ayuningsih, Febri Ramanda
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Abstract

The increasing need for fish causes problems related to number of fish catches in the fisheries sector. In fish catches amount, all information related to fishing ground is well known, but on the other hand it is not easy to predict the number of fish catches due to unclear information. This is also related to the number of ships that make trips, the length (time) of the trip, the type of fishing gear, weather conditions, the quality of human resources, natural environmental factors, and others. The purpose of this study is to apply grey forecasting model GM (1.N) to forecast the number of fish catches. Grey forecasting models are used to build forecast models with limited amounts of data with short-term forecasts that will produce accurate forecasts. This study employs the data on monthly number of fish catches and wave height in the year of 2016 to 2018 to analyze calculations using the GM (1.N) models. The study was conducted with 36 time series data. The result showed that the MAPE on the GM (1.N) model of 57% in the experiment with 36 data.  
对鱼的需求日益增加,在渔业部门造成了与渔获量有关的问题。在渔获量中,所有与渔场有关的信息都是已知的,但另一方面,由于信息不明确,不易预测渔获量。这还与航行船只的数量、航行的长度(时间)、渔具的类型、天气条件、人力资源的质量、自然环境因素等有关。本研究的目的是应用灰色预测模型GM (1.N)对渔获量进行预测。灰色预测模型用于建立具有有限数据量的预测模型,具有短期预测,将产生准确的预测。本研究采用2016年至2018年的月渔获量和浪高数据,使用GM (1.N)模型分析计算结果。本研究采用36个时间序列数据进行。结果表明,在36个数据的实验中,GM (1.N)模型的MAPE为57%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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