Kajian Model Backpropagation dan Hybrid ANFIS Dalam Memprediksi Pertumbuhan Penduduk di Kabupaten Karawang

Tatang Rohana, Jamaludin Indra, Gugy Guztaman Munzi
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Abstract

Population growth rate prediction is a process of estimating the population in the future. Predictions are made so that the government can prepare strategic steps in anticipating the negative impact of an uncontrolled population increase. The research data is the population of Karawang Regency from 2011 to 2020. Backpropagation and Hybrid ANFIS are the models used in this study. The purpose of this study was to determine the RMSE value and scatter data formed from the results of the ANFIS Backpropagation and Hybrid training models in predicting population growth rates in Karawang Regency. In addition, this study is intended to determine the level of accuracy of the two models. The research step begins with research data validation, preprocessing, training and testing, as well as accuracy testing. Accuracy testing uses the Mean Absolute Percentage Error (MAPE) method. Backpropagation and Hybrid models in predicting the rate of population growth have worked well. This can be seen from the training results of the two models. Backpropagation model has the best RMSE of 0.0328 and Hybrid has the best RMSE of 0.021884. The results of the analysis of the accuracy of predicting population growth rates for 2019 and 2020 that have been carried out, both models have a good level of accuracy. Backpropagation has an average accuracy rate of 84.76%, while the Hybrid model has an average accuracy rate of 93.71%. Based on the results of accuracy testing, the Hybrid model has a better level of accuracy than the Backpropagation model.
人口增长率预测是对未来人口数量进行估计的过程。做出预测是为了让政府能够准备战略步骤,以预测人口不受控制的增长所带来的负面影响。研究数据为卡拉旺县2011年至2020年的人口。反向传播和混合ANFIS是本研究中使用的模型。本研究的目的是确定由ANFIS反向传播和混合训练模型结果形成的均方根误差值和分散数据,以预测卡拉旺县的人口增长率。此外,本研究旨在确定两种模型的准确性水平。研究步骤从研究数据验证、预处理、训练和测试以及准确性测试开始。准确性测试使用平均绝对百分比误差(MAPE)方法。反向传播模型和混合模型在预测人口增长率方面效果良好。这可以从两个模型的训练结果中看出。反向传播模型的最佳RMSE为0.0328,混合模型的最佳RMSE为0.021884。对2019年和2020年人口增长率预测的准确性分析结果表明,这两个模型都具有较好的准确性。反向传播模型的平均准确率为84.76%,而Hybrid模型的平均准确率为93.71%。根据精度测试结果,混合模型比反向传播模型具有更高的精度水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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