Abstract

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). Key words: Box-Jenkins, Engraulicypris sardella, Lake Malawi, autoregressive integrated moving average (ARIMA), Modelling, Usipa, Stochastic.

Highlights

  • Engraulicypris sardella locally known as Usipa is one of the endemic fish species in Lake Malawi

  • The study findings showed that Autoregressive Integrated Moving Average (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

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Summary

Introduction

Engraulicypris sardella locally known as Usipa is one of the endemic fish species in Lake Malawi. Because fisheries scientists, ecologists and managers have not yet found a substantial evidence on this contentious biology and life span of E. sardella, it has been difficult to set management recommendations and strategies to sustain E. sardella stocks in Lake Malawi. It has been noted that Lake Malawi continues experiencing serious depletion of most valuable fish species. Both commercial and artisanal fishery have been forced to target less valuable fish species such as E. sardella and Haplochromine species (Hara and Njaya, 2016). As the species continues being increasingly exploited, the development of scientific understanding through application of stochastic models is relevant for present and future policy making and formulation of strategies to sustain the resource in the lake (Cohen and Stone, 1978). The study was designed to forecast the annual catch trend of Lake Malawi E. sardella using stochastic models

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