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Using satellite-measured relative humidity for prediction of Metisa plana’s population in oil palm plantations: A comparative assessment of regression and artificial neural network models

机译:利用卫星测量的相对湿度预测油棕人工林中的平面螳螂种群:回归和人工神经网络模型的比较评估

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摘要

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.
机译:螳螂是一种落叶的害虫,能够对油棕的种植造成惊人的经济损失。考虑到有害生物可能带来的经济损失,预测其爆发的预警系统至关重要。卫星技术的最新水平现在能够得出环境因素,例如相对湿度(RH),这些因素可能以快速,无害且经济高效的方式影响害虫种群的波动。这项研究使用统计和机器学习方法研究了在不同时滞处存在的平面螳螂与遥感(RS)得出的RH之间的关系。 2014年和2015年每两周在马来西亚彭亨州Muadzam Shah的一个油棕种植园中收集累积的幼虫1、2、3和4的平面Metisa普查数据。从中等分辨率成像光谱仪(MODIS)卫星图像得出的相对湿度值被分配为6个时滞。 1周(T1),2周(T2),3周(T3),4周(T4),5周(T5)和6周(T6),并与相应的普查数据配对。进行了皮尔逊相关性分析,以分析在不同时滞下的平面螳螂与RH之间的关系。还进行了回归分析和人工神经网络(ANN),以开发平面螳螂爆发的最佳预测模型。结果显示,存在平面相对应的RH范围为0.46至0.99的Metisa平面呈正相关或负相关。发现人工神经网络优于回归模型,在实际和预测的Metisa平面值之间的调整后的确定系数(R 2 )在0.06至0.57与0.00至0.05之间。对最佳时滞的分析表明,多个时滞对Metisa平面种群的影响要大于单个时滞。最佳的Metisa平面预测模型是使用ANN算法从T1,T2和T3多次时滞中得出的,R 2 值为0.57,误差低于1.14,准确度高于93%。根据这项研究的结果,考虑到相对湿度对害虫种群的时滞效应,利用相对湿度作为预测变量,可以阐明平面螳螂的景观生态。

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