Intelligent system for Distributed Quality Monitoring of Sewage Management based on Wastewater Treatment Procedure and Data Mining

Author:

Sheel Shaid, , , , , , ,Naser Sarmad Jaafar,Diame Hussein Alaa,Hassan Noor Baqir,Hussien Naseer Ali,Kadry Seifedine

Abstract

Wastewater treatment procedures (WWTP) rely heavily on accurate forecasting of treatment results to keep oxygenation levels under control. Conventional biochemical mechanism-driven approaches provide poor results, mainly due to complicated and redundant system factors. As sewage treatment operations expand fast, automated operational solutions are needed to achieve this goal. In the research, data mining was used to model the WWTP to predict the outcomes based on input circumstances and the amount of oxygenation provided to the system. Combined Sustainability Research for Wastewater Treatment procedures (CSR-WWTP) is proposed in this research. Data-driven approaches to modeling WWTP have already been developed but do not consider long-term treatment procedures and structure features. Forecasting and management for the WWTP are described in this article using a combination of convolutional neural networks (CNN) and recurrent neural networks (RNN). The first stage utilizes the CNN structure to dynamically learn and encrypt the local features of each WWTP timestamp in the first phase. The RNN model is applied to the WWTP to express global sequence characteristics using local feature encryption. For this purpose, it conducts a huge number of tests to assess the performance and accuracy of the proposed forecasting framework.

Publisher

ASPG Publishing LLC

Subject

General Medicine,Industrial and Manufacturing Engineering,Mechanical Engineering,Mechanics of Materials,Condensed Matter Physics,General Materials Science,General Mathematics,General Medicine,Instrumentation,Biomedical Engineering,Control and Systems Engineering,General Medicine,Cell Biology,Molecular Biology,General Medicine,General Medicine

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1. Enhancing Building Management Systems with Distributed Intelligence;2024 IEEE 13th International Conference on Communication Systems and Network Technologies (CSNT);2024-04-06

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