用时滞神经网络预测雨季长度

A. Buono, M. A. Agmalaro, A. Almira
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摘要

印尼拥有丰富的农业自然资源。通过确定一个好的生长季节计划,可以获得良好的农业效果。决定农作物收成的一个重要因素是雨季的长短。雨季的长短是动态的,难以控制。因此,生长季节的规划变得不准确,导致作物歉收。本研究旨在建立一种利用时滞神经网络(TDNN)预测雨季长度的模型。本研究使用的观测资料是1982/1983年至2011/2012年太平洋地区三个天气气候站的雨季长度。本研究使用的预测数据是1982 - 2011年期间Nino 1+2、Nino 3、Nino 4和Nino 3.4区域的海表温度(SST)。Pringkuku站在参数为延迟[0 12 3]、学习率0.1、隐藏神经元40个、预测因子Nino 3的RMSE为1.97时获得了精度最好的模型,参数为延迟[0 1]、学习率0.3、隐藏神经元5个、预测因子Nino 3的r²为0.82。
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Forecasting the length of the rainy season using time delay neural network
Indonesia has abundant natural resources in agriculture. Good agricultural results can be obtained by determining a good growing season plan. One of important factors which determines the successful of crop is the length of the rainy season. The length of the rainy season is dynamic and difficult to be controlled. Therefore the planning of the growing season becomes inaccurate and cause crop failures. This research aims to develop a model to predict the length of the rainy season using time delay neural network (TDNN). Observational data used in this research is the length of rainy season from three weather and climate stations of the Pacitan region from 1982/1983 to 2011/2012. Predictor data used in this reserach is sea surface temperature (SST) derived from the region of Nino 1+2, Nino 3, Nino 4, and Nino 3.4 from 1982 to 2011. Model with the best accuracy was obtained by Pringkuku station with RMSE of 1.97 with parameters of delay [0 12 3], learning rate 0.1, 40 hidden neurons, and predictors of Nino 3 and R-squared of 0.82 with parameters of delay [0 1], learning rate 0.3, 5 hidden neurons, and predictors of Nino 3.
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