The paper proposes an improved effluent control for the operation of a biological wastewater treatment plant using a neural network ammonia-based aeration control. The main advantage of this control method is the simplicity and nonlinear approximation ability that beat the performances of the static-gain Proportional Integral (PI) controller. The trained neural network controller used the measured value of dissolved oxygen and ammonium in compartment 5 of the Benchmark Simulation Model No. 1 (BSM1) to regulate the oxygen transfer coefficient in compartment 5. The effectiveness of the proposed neural network controller is verified by comparing the performance of the activated sludge process to the benchmark PI under dry weather file. Simulat...
In this paper, a feedforward-cascade controller for dissolved oxygen concentration in an activated s...
In this paper, a feedforward-cascade controller for dissolved oxygen concentration in an activated s...
During the last years, machine learning-based control and optimization systems are playing an import...
Aeration control is a way to have a wastewater treatment plant (WWTP) that uses less energy and pro...
Aeration control is a way to have a wastewater treatment plant (WWTP) that uses less energy and prod...
Due to the expensive operation of the activated sludge process and more stringent effluent requireme...
Due to the expensive operation of the activated sludge process and more stringent effluent requireme...
The design and development of the neural network (NN)-based controller performance for the activated...
The concentration of dissolved oxygen (DO) in the aeration tank(s) of an activated sludge system is ...
The concentration of dissolved oxygen (DO) in the aeration tank(s) of an activated sludge system is ...
The paper discusses the use of an artificial neural network to control the operation of wastewater t...
The paper discusses the use of an artificial neural network to control the operation of wastewater t...
Wastewater treatment involves many processes and methods which make a treatment plant a large-scaled...
Wastewater treatment involves many processes and methods which make a treatment plant a large-scaled...
More stringent requirements on nitrogen removal from wastewater are the motivation for this thesis. ...
In this paper, a feedforward-cascade controller for dissolved oxygen concentration in an activated s...
In this paper, a feedforward-cascade controller for dissolved oxygen concentration in an activated s...
During the last years, machine learning-based control and optimization systems are playing an import...
Aeration control is a way to have a wastewater treatment plant (WWTP) that uses less energy and pro...
Aeration control is a way to have a wastewater treatment plant (WWTP) that uses less energy and prod...
Due to the expensive operation of the activated sludge process and more stringent effluent requireme...
Due to the expensive operation of the activated sludge process and more stringent effluent requireme...
The design and development of the neural network (NN)-based controller performance for the activated...
The concentration of dissolved oxygen (DO) in the aeration tank(s) of an activated sludge system is ...
The concentration of dissolved oxygen (DO) in the aeration tank(s) of an activated sludge system is ...
The paper discusses the use of an artificial neural network to control the operation of wastewater t...
The paper discusses the use of an artificial neural network to control the operation of wastewater t...
Wastewater treatment involves many processes and methods which make a treatment plant a large-scaled...
Wastewater treatment involves many processes and methods which make a treatment plant a large-scaled...
More stringent requirements on nitrogen removal from wastewater are the motivation for this thesis. ...
In this paper, a feedforward-cascade controller for dissolved oxygen concentration in an activated s...
In this paper, a feedforward-cascade controller for dissolved oxygen concentration in an activated s...
During the last years, machine learning-based control and optimization systems are playing an import...