首页> 外文会议>Embedded Software and Systems, 2009. ICESS '09 >A Soft-Sensing Approach to On-Line Predicting Ammonia-Nitrogen Based on RBF Neural Networks
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A Soft-Sensing Approach to On-Line Predicting Ammonia-Nitrogen Based on RBF Neural Networks

机译:基于RBF神经网络的氨氮在线在线在线预测

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Measuring ammonia-nitrogen in the aquaculture water is always a problem that how to carry out the on-line monitoring in the process of industrialized culture. There isnpsilat a more effective method to realize the real time on-line monitoring at present. Some even need expensive instruments and operators having high skills. The normal methods can only be performed in the laboratory, so it canpsilat be accomplished the requirement of the fast-field evaluation. Because of above factors, the development of industrialized culture in our country is not fast enough. In this paper it is built that the intelligent mathematic model which is used to predicting ammonia-nitrogen in the aquaculture water and which is based on RBF Neural Network (RBF NN). Through comparing the model values with the measured values, we can emend the predicting model the second time to realize the intelligent prediction of ammonia-nitrogen. The results show that the soft-sensing approach to on-line predicting ammonia-nitrogen based on RBF neural network is effective.
机译:水产养殖水中氨氮的测定一直是工业化养殖过程中如何进行在线监测的问题。目前还没有一种更有效的方法来实现实时在线监测。有些甚至需要昂贵的仪器和具有高技能的操作员。常规方法只能在实验室中执行,因此可以满足快速现场评估的要求。由于上述因素,我国工业化文化的发展还不够快。本文建立了基于RBF神经网络(RBF NN)的智能数学模型,用于预测水产养殖水中的氨氮。通过将模型值与实测值进行比较,可以对预测模型进行第二次修正,以实现氨氮的智能预测。结果表明,基于RBF神经网络的氨氮在线在线在线预测是一种有效的方法。

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