Title :
Spatial prediction of hydrogen sulfide in sewers with a modified Gaussian process combined mutual information
Author :
Van Nguyen, Linh ; Kodagoda, Sarath ; Ranasinghe, Ravindra ; Dissanayake, Gamini ; Bustamante, Heriberto ; Vitanage, Dammika ; Nguyen, Tung
Author_Institution :
Centre for Autonomous Syst. (CAS), Univ. of Technol., Sydney, NSW, Australia
Abstract :
This paper proposes a data driven machine learning model for spatial prediction of hydrogen sulfide (H2S) in a gravity sewer system. The gaseous H2S in the overhead of the gravity sewer is modelled using a Gaussian Process with a new covariance function due to constraints of sewer boundaries. The covariance function is proposed based on the distance between two locations computed along the lengths of the sewer network. A mutual information based strategy is used to choose the best k sensor measurements and their locations from among n potential sensor observations and their locations. This provably NP-hard combinatorial sensor selection problem is addressed by maximizing the mutual information between the selected locations and the locations that are not selected or do not have any sensor deployments. A proof-of-concept study was carried out comparing the spatial prediction of H2S with a complex model currently used by Sydney Water. The proposed approach is shown to be effective in both modelling and predicting the H2S spatial concentrations in sewers as well as identifying optimal number of H2S sensors and their locations for a required level of prediction accuracy.
Keywords :
Gaussian processes; combinatorial mathematics; computational complexity; data handling; environmental science computing; learning (artificial intelligence); sewage treatment; wastewater treatment; NP-hard combinatorial sensor selection problem; covariance function; data driven machine learning model; gravity sewer system; hydrogen sulfide spatial concentration; hydrogen sulfide spatial prediction; modified Gaussian process; mutual information based strategy; sensor measurements; Computational modeling; Covariance matrices; Data models; Entropy; Mutual information; Predictive models; Vectors;
Conference_Titel :
Control Automation Robotics & Vision (ICARCV), 2014 13th International Conference on
DOI :
10.1109/ICARCV.2014.7064464