Abstract

Metisa plana (Walker) is a leaf defoliating pest that is able to cause staggering economical losses to oil palm cultivation. Considering the economic devastation that the pest could bring, an early warning system to predict its outbreak is crucial. The state of art of satellite technologies are now able to derive environmental factors such as relative humidity (RH) that may influence pest population’s fluctuations in rapid, harmless, and cost-effective manners. This study examined the relationship between the presence of Metisa plana at different time lags and remote sensing (RS) derived RH by using statistical and machine learning approaches. Metisa plana census data of cumulated larvae instar 1, 2, 3, and 4 were collected biweekly in 2014 and 2015 in an oil palm plantation in Muadzam Shah, Pahang, Malaysia. Relative humidity values derived from Moderate Resolution Imaging Spectroradiometer (MODIS) satellite images were apportioned to 6 time lags; 1 week (T1), 2 weeks (T2), 3 week (T3), 4 weeks (T4), 5 week (T5) and 6 weeks (T6) and paired with the respective census data. Pearson’s correlation was carried out to analyse the relationship between Metisa plana and RH at different time lags. Regression analyses and artificial neural network (ANN) were also conducted to develop the best prediction model of Metisa plana’s outbreak. The results showed relatively high correlations, positively or negatively, between the presences of Metisa plana with RH ranging from 0.46 to 0.99. ANN was found to be superior to regression models with the adjusted coefficient of determination (R2) between the actual and predicted Metisa plana values ranging from 0.06 to 0.57 versus 0.00 to 0.05. The analysis on the best time lags illustrated that the multiple time lags were more influential on the Metisa plana population than the individual time lags. The best Metisa plana prediction model was derived from T1, T2 and T3 multiple time lags modelled using the ANN algorithm with R2 value of 0.57, errors below 1.14 and accuracies above 93%. Based on the result of this study, the elucidation of Metisa plana’s landscape ecology was possible with the utilization of RH as the predictor variable in consideration of the time lag effects of RH on the pest’s population.

Highlights

  • Bagworm, a leaf defoliating caterpillar, is among the biggest pest threats in oil palm cultivation

  • In Malaysia, the most economically devastating species of bagworms for oil palm plantations are Metisa plana (Walker), Pteroma pendula (Joannis), and Mahasena corbetti (Tams). Among these three common species, Metisa plana have caused the most detrimental effect in Peninsular Malaysia, judging by the magnitude of its infestations and damages [1] that is resulting from efficient dispersion mechanisms that lead to high reproductive success [2]

  • Considering the potential devastating impacts of Metisa plana towards the oil palm industry in Malaysia and the importance of the application of technologies in controlling them, the objective of this paper is to examine the relationship between the presence of Metisa plana at different time lags and remote sensing (RS) derived relative humidity (RH), and to evaluate the applicability of statistical and data mining method to model the presence of Metisa plana using RH

Read more

Summary

Introduction

A leaf defoliating caterpillar, is among the biggest pest threats in oil palm cultivation. In Malaysia, the most economically devastating species of bagworms for oil palm plantations are Metisa plana (Walker), Pteroma pendula (Joannis), and Mahasena corbetti (Tams). Among these three common species, Metisa plana have caused the most detrimental effect in Peninsular Malaysia, judging by the magnitude of its infestations and damages [1] that is resulting from efficient dispersion mechanisms that lead to high reproductive success [2]. The economic importance that the pest has brought to the oil palm industry signifies the urgency to control Metisa plana infestation at its earliest, through proper execution of rigorous control methods and mitigation actions such as integrated pest management (IPM) and pesticide applications. Understanding environmental factors such as the influence of weather variables on the extent of bagworm’s outbreak is essential owing to its adverse influence on insect’s behaviour

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call