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基于循环神经网络和改进证据理论的水质预测:以中国钱塘江为例。

Water quality prediction based on recurrent neural network and improved evidence theory: a case study of Qiantang River, China.

机构信息

College of Automation, Hangzhou Dianzi University, Hangzhou, 310018, China.

Zhejiang Provincial Environmental Monitoring Center, Hangzhou, China.

出版信息

Environ Sci Pollut Res Int. 2019 Jul;26(19):19879-19896. doi: 10.1007/s11356-019-05116-y. Epub 2019 May 15.

Abstract

Water quality prediction is an effective method for managing and protecting water resources by providing an early warning against water quality deterioration. In general, the existing water quality prediction methods are based on a single shallow model which fails to capture the long-term dependence in historical time series and is more likely to cause a high rate of false alarms and false negatives in practical water monitoring application. To resolve these problems, a new model combining recurrent neural network (RNN) with improved Dempster/Shafer (D-S) evidence theory (RNNs-DS) is proposed in this paper. Among them, the RNNs which can handle the long-term dependence in historical time series effectively are used to realize the preliminary prediction of water quality. And the improved D-S evidence theory is used to synthesize the prediction results of RNNs. In addition, an improved strategy based on correlation analysis method is presented for evidence theory to obtain the number of evidence, which reduces uncertainty in evidence selection effectively. Besides, a new basic probability assignment function which based on modified softmax function is proposed. The new function can effectively solve the problems of weight allocation failure in the traditional function. Then, data about permanganate index, pH, total phosphorus, and dissolved oxygen from Jiuxishuichang monitoring station near Qiantang River, Zhejiang Province, China is used to verify the proposed model. Compared with support vector regression (SVR) and backpropagation neural network (BPNN) and three RNN models, the new model shows higher accuracy and better stability as indicated by four indices. Finally, the engineering application of the RNNs-DS algorithm has been realized on the self-developed water environmental monitoring and forecasting system, which can provide effective support for early risk assessment and prevention in water environment.

摘要

水质预测是通过对水质恶化进行预警,对水资源进行管理和保护的有效方法。一般来说,现有的水质预测方法都是基于单一的浅层模型,无法捕捉历史时间序列中的长期依赖关系,在实际的水质监测应用中更容易导致误报率和漏报率较高。为了解决这些问题,本文提出了一种将递归神经网络(RNN)与改进的Dempster/Shafer(D-S)证据理论(RNNs-DS)相结合的新模型。其中,RNN 可以有效地处理历史时间序列中的长期依赖关系,用于实现水质的初步预测。改进的 D-S 证据理论用于综合 RNN 的预测结果。此外,还提出了一种基于相关分析方法的改进策略,用于证据理论获取证据数量,有效地减少了证据选择的不确定性。此外,还提出了一种基于改进的 softmax 函数的新基本概率分配函数。新函数可以有效地解决传统函数中权重分配失败的问题。然后,使用来自中国浙江省钱塘江附近九溪水厂监测站的高锰酸盐指数、pH 值、总磷和溶解氧数据来验证所提出的模型。与支持向量回归(SVR)、反向传播神经网络(BPNN)和三个 RNN 模型相比,新模型在四个指标上均表现出更高的准确性和更好的稳定性。最后,RNNs-DS 算法的工程应用已在自主开发的水环境保护监测和预报系统上实现,可为水环境的早期风险评估和预防提供有效的支持。

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