TY - JOUR
T1 - Is it possible developing reliable prediction models considering only the pipe’s age for decision-making in sewer asset management?
AU - Hernandez, Nathalie
AU - Caradot, Nicolas
AU - Sonnenberg, Hauke
AU - Rouault, Pascale
AU - Torres, Andrés
N1 - Publisher Copyright:
© 2020, Emerald Publishing Limited.
PY - 2021
Y1 - 2021
N2 - Purpose: The purpose of this paper was exploring and comparing different deterioration models based on statistical and machine learning approaches. These models were chosen from their successful results in other case studies. The deterioration models were developing considering two scenarios: (i) only the age as covariate (Scenario 1); and (ii) the age together with other available sewer characteristics as covariates (Scenario 2). Both were evaluated to achieve two different management objectives related to the prediction of the critical condition of sewers: at the network and the sewer levels. Design/methodology/approach: Six statistical and machine learning methods [logistic regression (LR), random forest (RF), multinomial logistic regression, ordinal logistic regression, linear discriminant analysis and support vector machine] were explored considering two kinds of predictor variables (independent variables in the model). The main propose of these models was predicting the structural condition at network and pipe level evaluated from deviation analysis and performance curve techniques. Further, the deterioration models were exploring for two case studies: the sewer systems of Bogota and Medellin. These case studies were considered because of both counts with their own assessment standards and low inspection rate. Findings: The results indicate that LR models for both case studies show higher prediction capacity under Scenario 1 (considering only the age) for the management objective related to the network, such as annual budget plans; and RF shows the highest success percentage of sewers in critical condition (sewer level) considering Scenario 2 for both case studies. Practical implications: There is not a deterioration method whose predictions are adaptable for achieving different management objectives; it is important to explore different approaches to find which one could support a sewer asset management objective for a specific case study. Originality/value: The originality of this paper consists of there is not a paper in which the prediction of several statistical and machine learning-based deterioration models has been compared for case studies with different local assessment standard. The above to find which is adaptable for each one and which model is adaptable for each management objective.
AB - Purpose: The purpose of this paper was exploring and comparing different deterioration models based on statistical and machine learning approaches. These models were chosen from their successful results in other case studies. The deterioration models were developing considering two scenarios: (i) only the age as covariate (Scenario 1); and (ii) the age together with other available sewer characteristics as covariates (Scenario 2). Both were evaluated to achieve two different management objectives related to the prediction of the critical condition of sewers: at the network and the sewer levels. Design/methodology/approach: Six statistical and machine learning methods [logistic regression (LR), random forest (RF), multinomial logistic regression, ordinal logistic regression, linear discriminant analysis and support vector machine] were explored considering two kinds of predictor variables (independent variables in the model). The main propose of these models was predicting the structural condition at network and pipe level evaluated from deviation analysis and performance curve techniques. Further, the deterioration models were exploring for two case studies: the sewer systems of Bogota and Medellin. These case studies were considered because of both counts with their own assessment standards and low inspection rate. Findings: The results indicate that LR models for both case studies show higher prediction capacity under Scenario 1 (considering only the age) for the management objective related to the network, such as annual budget plans; and RF shows the highest success percentage of sewers in critical condition (sewer level) considering Scenario 2 for both case studies. Practical implications: There is not a deterioration method whose predictions are adaptable for achieving different management objectives; it is important to explore different approaches to find which one could support a sewer asset management objective for a specific case study. Originality/value: The originality of this paper consists of there is not a paper in which the prediction of several statistical and machine learning-based deterioration models has been compared for case studies with different local assessment standard. The above to find which is adaptable for each one and which model is adaptable for each management objective.
KW - Artificial intelligence
KW - Data mining
KW - Environmental management
KW - Environmental research
KW - Linear discriminant analysis models
KW - Logistic regression models
KW - Planning
KW - Proactive management
KW - Random Forest models
KW - Replacement
KW - Sewer asset management
KW - Support vector machines models
UR - http://www.scopus.com/inward/record.url?scp=85106302068&partnerID=8YFLogxK
U2 - 10.1108/JM2-11-2019-0258
DO - 10.1108/JM2-11-2019-0258
M3 - Article
AN - SCOPUS:85106302068
SN - 1746-5664
VL - 16
SP - 1166
EP - 1184
JO - Journal of Modelling in Management
JF - Journal of Modelling in Management
IS - 4
ER -