Application of Neurogenetic Modeling in Optimization of Water Treatment Plant Based on the Temporal Monitoring of Water Input Quality

Author:

De Paulami1

Affiliation:

1. National Institute of Technology Agartala, Jirania, India

Abstract

This article addresses methods to adjust operating requirements in water treatment plants (WTPs) in order to increase the efficiency of water treatment plants based on the nature of the water inflows into the systems. In the past, various studies have suggested that the quality of water inflow into the WTP has an impact on the efficiency and economic viability of operating treatment plants. Among all other quality parameters, the concentration of dissolved oxygen (DO) is one of the basic indicators about the overall quality of the water. Identification of a temporal pattern can help the engineers to adapt the WTP operations and can save the unnecessary wasting of plant resources. That is why the present article has proposed a new model that can predict the temporal patterns of various chemical parameters with the help of an analytic neuronal network. The model was applied to the case of a WTP that responds to a peri-urban catchment, leading to regular variations in the DO of water inflow. According to the performance metrics utilized the model was able to predict the temporal pattern at a lag of 1 hour.

Publisher

IGI Global

Subject

General Medicine,General Chemistry

Reference9 articles.

1. Two dimensional numerical modeling of micro-shock wave creation in nanosecond plasma actuators.;M.Abdollahzadeh;Proceedings of 4th Int. Congress on Computational Engineering and Sciences,2013

2. Assessing regional-scale spatio-temporal patterns of groundwater–surface water interactions using a coupled SWAT-MODFLOW model.;R. T.Bailey;Hydrological Processes,2016

3. Southern Ocean dynamics and biogeochemistry in a changing climate: Introduction and overview

4. Support vector regression with chaos-based firefly algorithm for stock market price forecasting

5. A Fuzzy Model with Thermodynamic Based Consequents and a Niching Swarm-Based Supervisor to Capture the Uncertainties of Damavand Power System

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