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Fishery Landing Forecasting Using EMD-Based Least Square Support Vector Machine Models

机译:基于EMD的最小二乘支持向量机模型的渔业着陆预测

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In this paper, the novel hybrid ensemble learning paradigm integrating ensemble empirical mode decomposition (EMD) and least square support machine (LSSVM) is proposed to improve the accuracy of fishery landing forecasting. This hybrid is formulated specifically to address in modeling fishery landing, which has high nonlinear, non-stationary and seasonality time series which can hardly be properly modelled and accurately forecasted by traditional statistical models. In the hybrid model, EMD is used to decompose original data into a finite and often small number of sub-series. The each sub-series is modeled and forecasted by a LSSVM model. Finally the forecast of fishery landing is obtained by aggregating all forecasting results of sub-series. To assess the effectiveness and predictability of EMD-LSSVM, monthly fishery landing record data from East Johor of Peninsular Malaysia, have been used as a case study. The result shows that proposed model yield better forecasts than Autoregressive Integrated Moving Average (ARIMA), LSSVM and EMD-ARIMA models on several criteria..
机译:本文采用了新型混合集合学习范式集成集合经验模型分解(EMD)和最小二乘支持机器(LSSVM),提高了渔业着陆预测的准确性。该混合动力车专门制定用于建模渔业着陆,其具有高非线性,非静止和季节性时间序列,这些时间序列几乎不能被传统统计模型进行适当的建模和准确地预测。在混合模型中,EMD用于将原始数据分解为有限且通常少量的子系列。每个子系列由LSSVM模型建模和预测。最后通过聚集亚系列的所有预测结果来获得渔业着陆预测。为了评估EMD-LSSVM的有效性和可预测性,每月渔业登陆记录数据来自半岛马来西亚东柔佛州,已被用作案例研究。结果表明,拟议的模型比自动增加的集成移动平均(Arima),LSSVM和EMD-Arima模型产生更好的预测。

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