基于模糊神经网络的城市污泥减排优化策略设计

Youfei Zhou, Weina Hu, Junjie Sheng, Juanjuan Zhou, Wei-Guo Zou
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引用次数: 0

摘要

城市污泥处理对淡水资源的可持续利用和良性循环具有重要意义。然而,随着污水排放标准的提高,确保污水污泥处理厂的稳定运行成为污水处理行业亟待解决的问题。本文提出了一种基于不同工况的模糊神经网络控制框架,对城市污泥处理排放全过程进行优化。框架首先根据天气对工况进行划分,与其他污水处理厂的典型指标形成单独的特征和输入向量。然后利用FNN完成各指标的控制和优化,达到降低能耗和优化水质的双重目的。最后,对模型进行了污水流量跟踪指标的测试。结果表明,采用FNN控制方法的能耗和水质评价两项指标的MAE均显著低于单一方法。这为今后城市污泥处理工艺的优化提供了新的思路。总体而言,本文有效地强调了城市污水污泥处理的重要性,并提出了一个精心设计的FNN控制框架,以优化处理过程。此外,本文可以受益于进一步阐述所获得的结果的意义,并建议在这一领域的未来研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of Urban Sludge Emission Reduction Optimisation Strategy Based on Fuzzy Neural Network
Abstract Urban sewage sludge treatment is important for sustainable utilisation and virtuous cycle of freshwater resources. However, with the improvement of sewage discharge standards, ensuring stable operation of sewage sludge treatment plants is becoming an urgent problem to be solved in the sewage treatment industry. This paper proposes a FNN control framework based on different working conditions to optimise the whole process of municipal sewage sludge treatment and discharge. The framework first divides the working conditions according to the weather, forming a separate feature and an input vector together with the typical indicators of other sewage treatment plants. Then the FNN is used to complete the control and optimisation of various indicators, achieving the dual objectives of reducing energy consumption and optimising water quality. Finally, the model is tested for the tracking index of sewage flow. The results demonstrate that the FNN control method used has significantly lower MAE than the single method in the two indexes of energy consumption and water quality evaluation. This provides new ideas for the optimisation of urban sewage sludge treatment process in the future. Overall, the paper effectively highlights the importance of urban sewage sludge treatment and presents a well-designed FNN control framework for optimising the treatment process. Additionally, the paper could benefit from further elaboration on the significance of the results obtained, and suggestions for future research in this area.
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