Prediction of Sewer Condition Grade Using Support Vector Machines |
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Authors: | John Mashford David Marlow Dung Tran Robert May |
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Affiliation: | 1Senior Research Scientist, Commonwealth Scientific and Industrial Research Organisation (CSIRO), Division of Land and Water, PO Box 56, Highett, Vic. 3190, Australia (corresponding author). E-mail: John.Mashford@csiro.au 2Project Leader, Asset Management, CSIRO Division of Land and Water, PO Box 56, Highett, Vic. 3190, Australia. E-mail: David.Marlow@csiro.au 3Postdoctoral Research Fellow, Institute of Sustainability and Innovation, Victoria Univ., PO Box 14428, Melbourne, Vic. 8001, Australia. E-mail: Dung.Tran@vu.edu.au 4Senior Research Engineer, Research and Development, United Water International Pty. Ltd., GPO Box 1875 Adelaide, SA 5001, Australia. E-mail: Robert.May@uwi.com.au
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Abstract: | Assessing the condition of sewer networks is an important asset management approach. However, because of high inspection costs and limited budget, only a small proportion of sewer systems may be inspected. Tools are therefore required to help target inspection efforts and to extract maximum value from the condition data collected. Owing to the difficulty in modeling the complexities of sewer condition deterioration, there has been interest in the application of artificial intelligence-based techniques such as artificial neural networks to develop models that can infer an unknown structural condition based on data from sewers that have been inspected. To this end, this study investigates the use of support vector machine (SVM) models to predict the condition of sewers. The results of model testing showed that the SVM achieves good predictive performance. With access to a representative set of training data, the SVM modeling approach can therefore be used to allocate a condition grade to sewer assets with reasonable confidence and thus identify high risk sewer assets for subsequent inspection. |
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Keywords: | Sewers Artificial intelligence Predictions Inspection Costs |
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