Approximation of phenol concentration using novel hybrid computational intelligence methods

Pawel Plawiak, R. Tadeusiewicz
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引用次数: 41

Abstract

Abstract This paper presents two innovative evolutionary-neural systems based on feed-forward and recurrent neural networks used for quantitative analysis. These systems have been applied for approximation of phenol concentration. Their performance was compared against the conventional methods of artificial intelligence (artificial neural networks, fuzzy logic and genetic algorithms). The proposed systems are a combination of data preprocessing methods, genetic algorithms and the Levenberg-Marquardt (LM) algorithm used for learning feed forward and recurrent neural networks. The initial weights and biases of neural networks chosen by the use of a genetic algorithm are then tuned with an LM algorithm. The evaluation is made on the basis of accuracy and complexity criteria. The main advantage of proposed systems is the elimination of random selection of the network weights and biases, resulting in increased efficiency of the systems.
用新型混合计算智能方法逼近苯酚浓度
摘要本文提出了两种创新的用于定量分析的基于前馈和递归神经网络的进化神经系统。这些系统已应用于苯酚浓度的近似。将它们的性能与传统的人工智能方法(人工神经网络、模糊逻辑和遗传算法)进行比较。提出的系统是数据预处理方法、遗传算法和用于学习前馈和循环神经网络的Levenberg-Marquardt (LM)算法的组合。使用遗传算法选择神经网络的初始权重和偏差,然后使用LM算法进行调整。评价的依据是准确性和复杂性两个标准。该系统的主要优点是消除了网络权重和偏差的随机选择,从而提高了系统的效率。
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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