径向基函数神经网络在渔业预报中的应用

Suja Shakya, H. Yuan, Xinjun Chen, Liming Song
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引用次数: 2

摘要

本文以西南大西洋阿根廷岛为试验场,提出了径向基函数神经网络进行渔业预测的方法。该模型从获取网络参数开始,利用训练数据集对模型进行训练,最终利用测试数据集获得预测结果。从训练集中选取基函数的中心,利用正交最小二乘法确定优化网络拟合的基函数的权值。本文采用月份、经纬度、海面温度、海面高度和叶绿素6个环境因子对总生境指数进行预测。得到的预测值以总生境指数为单位,该指数由两个不同的指数如工作人数指数和平均日产量指数计算得出。并采用多元线性回归统计模型进行渔业预测。将RBFNN模型与多元线性回归模型的精度标准MSE、RAE和PE进行比较。结果表明,该智能模型相对于统计模型具有较高的预测能力和较好的拟合优度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of radial basis Function Neural Network for fishery forecasting
In this paper, Radial Basis Function Neural Network is presented for fishery forecasting which uses Southwest Atlantic Illex argentines as its testing ground. The model begins with obtaining the network parameters to train the model using training data set and eventually achieving the forecasting results using test data set. The centre for basis function are selected from training set, weights of basis function for optimizing the fit of network is determined by orthogonal least square (OLS) method. In this paper, altogether six environmental factors are used which are months, longitude and latitude, sea surface temperature (SST), Sea surface Height (SSH) and chlorophyll for predicting the Total Habitat Index. The predicted values obtained are in terms of Total habitat index, which is calculated from two different indices such as Job number index and Average daily production index. The statistical model, Multiple Linear regressions is also implemented for fishery forecast. The results obtained from the RBFNN model were compared with Multiple Linear regressions in terms of accuracy criterions MSE, RAE ad PE. It is shown that the intelligent model has high predictive ability and better goodness of fit with respect to statistical models.
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