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A Hybrid Neural Network and Genetic Algorithm Model for Predicting Dissolved Oxygen in an Aquaculture Pond

机译:混合神经网络和遗传算法的水产养殖塘溶解氧预测模型。

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The prediction for dissolved oxygen (DO) in aquaculture ponds is a problem of multi-variables, nonlinearity and long-time lag. Neural networks (NNs) have become one of ideal tools in modeling nonlinear relationship between inputs and outputs. In this work, GA-LM, a neural network model combining Levenbergȁ3;Marquardt(LM) algorithm and Genetic Algorithm (GA) was developed for predicting DO in an aquaculture pond at Dalian, China. LM was used to train NNs, showing faster convergence rate. The network architecture was optimized by GA. The performance of GA-LM has been compared with that of conventional Back-Propagation (BP) algorithm and Levenbergȁ3;Marquardt(LM) algorithm. The comparison indicates that the predicted DO values using GA-LM model are in good agreement with the measured data. It is demonstrated here that the model is capable of predicting DO accurately, and can offer stronger and better performance than conventional neural networks when used as a quick interpolation and extrapolation tool.
机译:水产养殖池塘中溶解氧的预测是一个多变量,非线性和长期滞后的问题。神经网络(NN)已成为对输入和输出之间的非线性关系进行建模的理想工具之一。在这项工作中,GA-LM是一个结合了Levenbergȁ3; Marquardt(LM)算法和遗传算法(GA)的神经网络模型,用于预测中国大连水产养殖池塘的DO。 LM用于训练神经网络,显示出更快的收敛速度。网络架构是由GA优化的。将GA-LM的性能与传统的反向传播(BP)算法和Levenbergȁ3; Marquardt(LM)算法进行了比较。比较结果表明,采用GA-LM模型预测的DO值与实测数据吻合良好。在此证明,该模型能够准确预测DO,并且在用作快速内插和外推工具时,它可以提供比常规神经网络更强大和更好的性能。

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