基于遗传算法的神经模糊系统(NFS)权重优化预测

Nadia Roosmalita Sari, W. Mahmudy, A. Wibawa, Gayatri Dwi Santika
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引用次数: 0

摘要

通货膨胀是物价持续上涨导致其他商品价格上涨的一种现象。本研究提出神经模糊系统(NFS)作为预测印尼通货膨胀率的方法。为了提高准确率,这一阶段神经网络的权值必须正确确定。因此,本研究采用遗传算法来确定训练过程中的最佳权值。此权重可用于获得完整测试过程的输出。然后,在下一步使用FIS Sugeno进行再次处理,直到得到最终的预测结果。为了提高预测结果的准确性,必须对模糊规则的建立进行正确的规定。它采用了一种新颖的方法,通过将初始参数分为两个(正负)来最小化模糊规则的数量。所以,模糊规则生成的更少。采用均方根误差技术测量系统的精度。在此基础上,本文提出的方法得到了0.89。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weight Optimization of The Neural Fuzzy System (NFS) Using Genetic Algorithm for Forecasting
Inflation is a phenomenon of increasing prices on a continuous basis which results in the increase of other goods. This study proposes the Neural Fuzzy System (NFS) as a method to predict the rate of inflation in Indonesia. To improve the accuracy, the weight at this stage of Neural Network to be determined correctly. So, this research using Genetic Algorithms to determine the best weights in the training process. This weight can be used to obtained output thorough testing process. Then, it can be processed again in the next step using FIS Sugeno until obtained the end forecasting result. To increase more accurate forecasting results, the establishment of fuzzy rules must be specified correctly. It takes a novelty that minimizes the number of fuzzy rules by dividing the initial parameter into the two (positive and negative) on stage Neural Network. So, the fuzzy rules generated less. To measure the accuracy of the system used the RMSE technique. Based on this result, the proposed method obtained for 0.89.
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