基于RBF网络的池塘溶解氧软测量模型

Xuemei Hu, Yingzhan Hu, Xingzhi Yu
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引用次数: 4

摘要

本文在分析水产养殖池塘溶解氧感染因素的基础上,利用RBF神经网络的非线性逼近能力建立了溶解氧预测模型,并引入自适应遗传算法对RBF神经网络进行优化,使其收敛速度更快,因为传统的RBF神经网络模型训练时间较长,容易陷入局部极小值。本文采用水产养殖池塘控制的外部环境因子作为模型输入,包括水温(T)、水通量(Q)、酸度(PH)和制氧机速度(V)。实验结果表明,本文提出的溶解氧预测方法的预测精度高于常规递推RBF算法,预测精度显著提高。该方法为智能养殖环境和工厂化养殖的监测系统开发提供了基础,具有实际的生产指导意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Soft Measure Model of Dissolved Oxygen Based on RBF Network in Ponds
The paper establishes the prediction model of dissolved oxygen by using nonlinear approximation ability of RBF neural network, which is based on the analysis of infection factors of dissolved oxygen in aquaculture ponds, and introduces adaptive genetic algorithm to optimize the RBF neural network and make it faster convergence, because the conventional RBF neural network model often leads to longer training time and falls into local minimum easily. This paper applies the external environment factors controlled of aquaculture pond as a model input, which includes water temperature (T), water flux (Q), acidity (PH) and the oxygen machine speed (V). Experiment results have shown that the prediction accuracy of the proposed method of dissolved oxygen is higher than the conventional recursive RBF algorithm, prediction accuracy is significantly improved. The method furnishes the foundation for the monitoring system development of the intelligent aquaculture environment and factory aquaculture, and has actual production guidance.
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