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软计算在污水处理过程控制中的应用 被引量:2

Application of the Soft Computing in Wastewater Treatment Process Control
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摘要 阐明了软计算技术在污水处理过程中应用的必要性、可行性及对行业所带来的社会效益和理论意义,着重分析了其在污水处理过程中的应用情况,简要探讨了软计算技术今后应深入研究的问题和方向,指出将软计算算法和智能控制策略结合起来有利于提高模型预测精度,提高过程控制系统动态响应能力. In the paper, the necessity, feasibility and significance of the application of soft computing in wastewater treatment process were presented,the applications were analyzed in details, and the issues and direction in further researches were discussed simply. It was pointed out that the model could demonstrate a better reliance and precision, and the process control system will show a good dynamic condition response property with the combination of soft computing arithmetic and intelligent control strategy.
出处 《后勤工程学院学报》 2005年第4期29-32,38,共5页 Journal of Logistical Engineering University
基金 重庆市科技攻关重点项目(7517-02)
关键词 污水处理 过程控制 软计算 智能控制 wastewater treatment process control soft computing intelligent control
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参考文献21

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