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Modeling and forecasting pelagic fish production using univariate and multivariate ARIMA models

机译:使用单变量和多变量ARIMA模型对浮游鱼类产量进行建模和预测

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Univariate and multivariate autoregressive integrated moving average (ARIMA) models were used to model and forecast the monthly pelagic production of fish species in the Mediterranean Sea during 1990–2005. Autocorrelation (AC) and partial autocorrelation (PAC) functions were estimated, which led to the identification and construction of seasonal ARIMA models, suitable in explaining the time series and forecasting the future catch per unit of effort (CPUE) values. Univariate and multivariate ARIMA models satisfactorily predicted the total pelagic fish production and the production of anchovy, sardine, and horse mackerel. The univariate ARIMA models demonstrated a good perpormance in terms of explained variability and predicting power. The current findings revealed a strong autoregressive character providing relatively high R 2 and satisfactory forecasts that were close to the recorded CPUE values. The present results also indicated that the multivariate ARIMA outperformed the univariate ARIMA models in terms of fitting accuracy. The opposite was evidenced when testing the forecasting accuracy of the two methods, where the univariate ARIMA models overall performed better than the multivariate models. The observed seasonal pattern in the monthly production series was attributed to the intrinsic nature of the pelagic fishery. As anchovy, sardine, and horse mackerel represent main target species in the Mediterranean pelagic fishery, the findings of the present study provided direct support for the potential use of accurate forecasts in decision making and fisheries management in the Mediterranean Sea.
机译:使用单变量和多元自回归综合移动平均值(ARIMA)模型对1990-2005年期间地中海鱼类中上层鱼类每月产量进行建模和预测。估计了自相关(AC)和部分自相关(PAC)函数,从而识别和构建了季节性ARIMA模型,适用于解释时间序列和预测未来每单位工作量(CPUE)值。单变量和多变量ARIMA模型可以令人满意地预测上层鱼类的总产量以及cho鱼,沙丁鱼和鲭鱼的产量。就解释的变异性和预测能力而言,单变量ARIMA模型表现出良好的性能。目前的发现表明,较强的自回归特征提供了相对较高的R 2 和令人满意的预测,接近记录的CPUE值。目前的结果还表明,在拟合精度方面,多元ARIMA优于单变量ARIMA模型。在测试这两种方法的预测准确性时,事实恰恰相反,其中单变量ARIMA模型总体上比多变量模型表现更好。月度产量系列中观察到的季节性模式归因于远洋渔业的内在本质。由于an鱼,沙丁鱼和鲭鱼是地中海中上层渔业的主要目标物种,因此本研究的结果为在地中海的决策和渔业管理中潜在使用准确预报提供了直接支持。

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