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首页> 外文期刊>International Journal of Fisheries and Aquaculture >Stochastic modelling of Lake Malawi Engraulicypris sardella (Gunther, 1868) catch fluctuation
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Stochastic modelling of Lake Malawi Engraulicypris sardella (Gunther, 1868) catch fluctuation

机译:马拉维湖Engraulicypris sardella(Gunther,1868)的随机模型捕获波动

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摘要

Lake Malawi continues experiencing serious depletion of most valuable fish species. Presently, commercial and artisanal fishery are forced to target less valuable fish species. Evidently, economic importance of Engraulicypris sardella in Malawi cannot be negated as it currently contributes over 70% of the total annual landings. However, such highest contribution could be a sign of harvesting pressure. Therefore, as the species continues being increasingly exploited, the development of scientific understanding through application of stochastic models is particularly relevant for present and future policy making and formulation of strategies to sustain the resource in the lake. Thus, the study was designed to forecast the annual catch trend of E. sardella from Lake Malawi. The study used time series data from 1976 to 2015 period obtained from Monkey Bay Fisheries Research Station of the Malawi Fisheries Department. The study adopted Box-Jenkins procedures to identify appropriate Autoregressive Integrated Moving Average (ARIMA) model, estimate parameters in ARIMA model and conducting diagnostic check. The study findings showed that ARIMA (2,1,1) model had least Normalized Bayesian Information Criterion (NBIC) value making it a appropriate model for the study. ARIMA (2,1,1) model? showed? that E. sardella? annual catches are positively fluctuating. Again, the model? predicted that E. sardella annual catches from Lake Malawi will increase from the annual total landings? of 71,778.47 metric tons to 104,261.20 metric tons in the next 10 years (ceteris paribus).
机译:马拉维湖继续遭受最有价值鱼类物种的严重消耗。目前,商业和手工渔业被迫针对价值较低的鱼类。显然,沙棘肠草的经济重要性不可忽略,因为它目前占年度总着陆量的70%以上。但是,如此高的贡献可能是收获压力的迹象。因此,随着该物种的不断开发利用,通过应用随机模型来发展科学理解与当前和未来的政策制定以及制定维持湖泊资源的策略特别相关。因此,该研究旨在预测马拉维湖中沙丁鱼的年度捕捞趋势。该研究使用了从马拉维渔业部猴子湾渔业研究站获得的1976年至2015年期间的时间序列数据。该研究采用Box-Jenkins程序来识别适当的自回归综合移动平均值(ARIMA)模型,估算ARIMA模型中的参数并进行诊断检查。研究结果表明,ARIMA(2,1,1)模型的标准化贝叶斯信息准则(NBIC)值最小,使其成为该研究的合适模型。 ARIMA(2,1,1)模型?显示?那沙爹菌?年度渔获量正呈波动。再次,模型?预测马拉维湖的沙丁鱼年度捕捞量将从年度总着陆量增加吗?在接下来的10年中,从71,778.47公吨增加到104,261.20公吨(黄蜡幼体)。

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