1. Introduction
The rapid development of cities leads to the expansion of areas from which increasing amounts of rainwater must be drained. Additionally, the imperviousness of urban surfaces, the limited capacity of sewage networks, and the restricted capacity of stormwater receivers contribute to urban flooding. The design and operation of stormwater infrastructure systems in urban areas directly impact social and environmental challenges and are critically important for municipal governance. Proper urban stormwater system design has become essential due to the severe consequences of urban flooding, including economic losses and constrained budgets for renovating aging infrastructure. Climate change exacerbates these challenges by altering rainfall patterns, particularly increasing peak runoff intensities. A key aspect of stormwater system design is the optimal selection of sewer diameters, which must balance hydraulic capacity for rainwater conveyance with retention capabilities to mitigate receiver overflow risks.
Engineers’ interpretations of existing or proposed designs often involve subjectivity, leading to ambiguities in decision-making [
1]. Uncertainty, imprecision, and vagueness are inherent in natural and engineered systems, motivating the use of fuzzy set theory and inference systems to formalize expert knowledge into robust decision rules [
2]. This study aims to develop a fuzzy logic-based controller to evaluate stormwater pipe diameters and compare its performance with classical conditional approaches.
The first step in stormwater system design is rainfall-runoff modeling, which underpins flood forecasting, overflow design, water quality analysis, and urban planning [
3]. Traditional modeling approaches require extensive computational resources, prompting researchers to explore fuzzy logic-based methods for simplification and efficiency. For instance, adaptive neuro-fuzzy inference systems (ANFIS) combined with principal component analysis (PCA) [
4] or particle swarm optimization (PSO) [
5] have improved runoff predictions using historical data. The versatility of ANFIS is further demonstrated in energy systems, where it outperforms conventional methods in maximum power point tracking for photovoltaic arrays by integrating fuzzy logic’s adaptability with neural network training efficiency [
6]. Similarly, Takagi–Sugeno [
7] and Mamdani-type [
8] fuzzy systems have been applied to capture nonlinear rainfall-runoff relationships. Recent advances in real-time control (RTC) further demonstrate fuzzy logic’s potential: Mounce et al. [
9] optimized flood mitigation in drainage networks using genetic algorithm-tuned fuzzy rules, achieving a 25% reduction in flood volumes. Similarly, Sun et al. [
10] developed a predictive fuzzy-rule system for stormwater storage, enhancing peak flow control by up to 87% under uncertain rainfall forecasts. However, these studies primarily address specific aspects of stormwater management, such as flood mitigation or overflow control, without integrating hydraulic, structural, and operational factors into a cohesive framework.
Urban flooding arises from heavy rainfall, low surface permeability, and outdated infrastructure [
11]. Effective stormwater drainage systems (SKD) must accommodate expanding catchment areas, changing land use, and pollutant loads while preventing channel overflow [
12,
13]. Multi-criteria decision-making (MCDM) frameworks, such as those combining GIS and fuzzy analytic hierarchy processes (FAHP) [
14], have been employed to prioritize rehabilitation efforts. For example, Al Nasiri et al. [
15] applied MCDM-AHP to optimize sewer treatment plant locations in Muscat, Oman, while Roghani et al. [
16] integrated fuzzy logic into risk assessment models to evaluate structural failures in Tehran’s sewers, improving rehabilitation prioritization. Yet, these approaches often treat hydraulic performance, technical condition, and operational stressors as separate domains, neglecting their interdependencies.
The integration of fuzzy logic with GIS has also advanced urban planning. Di Martino and Cardone [
17] partitioned urban systems into homogeneous zones using fuzzy rule-based classification of socioeconomic and environmental indicators, while Pleho and Avdagic [
18] demonstrated how fuzzy-GIS frameworks manage imprecise spatial data for environmental quality evaluations. These approaches highlight fuzzy logic’s versatility in handling geospatial and hydraulic uncertainties.
Despite these advancements, real-time control and system optimization remain challenging. Vanrolleghem et al. [
19] emphasized the need for integrated models to balance ecological and economic criteria in wastewater management, a concept extended by Regneri et al. [
20], who used fuzzy decision-making for multi-criteria optimization of sewer networks. However, existing studies predominantly focus on isolated aspects of stormwater systems, such as flood mitigation [
9], overflow control [
10], or infrastructure siting [
15], with limited integration of hydraulic, structural, and operational factors into a unified decision framework. While recent advances in fuzzy logic have enabled multi-criteria assessments—such as Roghani et al. [
16], who evaluated structural failure risks, and He et al. [
21], who analyzed network vulnerability—these approaches treat hydraulic performance, technical condition, and operational stressors as separate domains. This fragmentation overlooks the interdependencies between system components. For instance, a pipe with excellent hydraulic capacity (e.g., oversized diameter) may still fail due to poor technical condition (e.g., corrosion) or operational overload (e.g., upstream development), yet current models lack mechanisms to synthesize these dimensions.
Current evaluation methods rely on deterministic thresholds or single-criterion fuzzy systems, which oversimplify the complex interactions between hydraulic efficiency, material degradation, and real-world usage patterns. Studies like Hlavinek et al. [
22] developed reliability models for sewer rehabilitation based on structural and environmental criteria, while Vanrolleghem et al. [
19] optimized drainage networks using ecological-economic trade-offs. However, none incorporate the triad of hydraulic performance, technical condition, and operational risk into a single adaptive framework. This gap limits the ability of utilities to prioritize interventions that balance immediate flood risks with long-term infrastructure resilience.
Building upon previous fuzzy logic-based models, this study advances the field by integrating hydraulic performance, technical condition, and operational condition into a single, holistic framework. Unlike earlier approaches that focused on isolated criteria or treated system components independently, our model synthesizes these dimensions to capture their interdependencies. This enables a more comprehensive understanding of system reliability and supports scenario-based decision-making, where maintenance priorities are informed by the combined effects of hydraulic, structural, and operational factors.
This paper bridges this gap by proposing a fuzzy logic controller that holistically evaluates stormwater systems through three interconnected linguistic variables: Hydraulic Performance, Technical Condition, and Operational Condition. By translating expert knowledge into 125 inference rules, the model integrates diverse failure mechanisms—from hydraulic surcharge to material fatigue—into a unified consequence assessment. This approach extends previous GIS-fuzzy frameworks [
17,
18] by explicitly coupling spatial data with dynamic operational parameters, enabling scenario-based decision-making. For example, a system with “Fair” hydraulic performance and “Good” technical condition may still require “Major Rehabilitation” if operational risks (e.g., frequent roadworks) are “Very High”—a nuance absent in traditional single-variable models.
The proposed framework is validated against empirical datasets from European and Chinese drainage networks, demonstrating its robustness across varied geospatial and operational contexts. By addressing the interplay between hydraulic design, structural integrity, and usage patterns, this work advances fuzzy logic applications in urban water management beyond isolated diameter optimization [
22] or risk indexing [
16].
4. Discussion
The fuzzy inference system offers a systematic, transparent, and computationally efficient method for translating a range of structural, hydraulic, and operational indicators into actionable maintenance recommendations. Its high agreement with expert assessments and demonstrated resilience to parameter and measurement variations make it a promising tool for utility managers and engineers seeking to optimize stormwater infrastructure maintenance. The results presented in
Section 3 demonstrate the viability and robustness of the proposed fuzzy inference system for evaluating the operational status of stormwater drainage networks. By integrating Hydraulic Performance, Technical Condition, and Operational Condition into a single decision-support framework, the model addresses a key challenge in water infrastructure management: the uncertainty inherent in real-world conditions.
The overall accuracy of 87.5% (
Section 3.3), indicating that the fuzzy system’s recommendations match expert judgments for the majority of tested systems. Moreover, the Cohen’s Kappa Coefficient of 0.82 suggests near-perfect agreement, underscoring that the system is not merely capturing random alignments but is methodically convergent with expert assessments. These findings are particularly encouraging given the diverse sources of data, which originated from different geographical locations and covered varying degrees of structural and operational stressors.
The mismatch observed in System 5 (Consequence = 0.90, indicating “no action,” compared to the expert’s “monitoring only”) highlights an important consideration in fuzzy logic modeling: the influence of dominant variables on final outputs. As revealed by the sensitivity analysis (
Section 3.4), the high Technical Condition rating effectively overshadowed the relatively low Operational Condition. This underscores the need for careful calibration of membership functions and weighting factors, ensuring that crucial yet lower-rated variables (such as Operational Condition in this case) still have an appropriate impact on the aggregated result. One potential refinement could involve modifying the existing fuzzy rules to better capture interactions between variables, ensuring that operational deficiencies are appropriately reflected in the consequence assessment. Additionally, adjusting the shape of membership functions could further balance the influence of each variable, preventing cases where near-perfect structural integrity completely masks minor.
Another insight from the sensitivity analysis is the role of Hydraulic Performance and Technical Condition, which together contribute to over 70% of the output variability. In practical terms, this means that accurately monitoring and updating these two parameters can substantially improve the reliability of fuzzy-based maintenance recommendations. Nevertheless, the operational dimension still holds relevance, especially in scenarios with moderate to high hydraulic loads, frequent roadworks, or heavy sedimentation. Consequently, system operators are encouraged to maintain accurate records on both structural and operational parameters to make the most of the fuzzy inference framework.
The stability of the defuzzification process is another advantage for real-world applications. As demonstrated, even significant input noise (±20%) yielded only minor deviations (±0.03 in the worst case) in consequence values (e.g., System 2). Additionally, variations in membership function parameters (±20% in the Z-shaped and S-shaped functions) did not destabilize the system outputs, affirming that the method can accommodate measurement imprecision or unexpected environmental fluctuations. This robustness is valuable in field operations, where sensors can occasionally introduce errors and where changing conditions (e.g., new construction, urban development, or climate patterns) are inevitable.
The use of the proposed fuzzy logic framework for stormwater drainage infrastructure assessment also raises important considerations regarding data privacy, expert bias, and equitable resource allocation. The fuzzy logic controller operates locally, processing data without external transmission or storage, ensuring that sensitive information remains protected. The datasets used for validation were anonymized and aggregated, eliminating risks of exposing personal or infrastructure-specific details. Additionally, the system’s reliance on expert knowledge introduces the potential for bias, as experts may inadvertently reflect their regional experiences or technical specializations in the rules. To mitigate this, the model was developed using a combination of expert input and established technical standards (
Section 2.3) and validated across diverse datasets to ensure robustness against regional biases. The response surface analysis (
Figure 2) further confirms the absence of dead zones or skewed outcomes, demonstrating the model’s balanced behavior across a range of scenarios.
Future research may focus on multi-objective optimization techniques to balance economic, environmental, and social considerations in stormwater infrastructure decision-making. Moreover, expanding the dataset to include additional regions or integrating real-time sensor data would provide further validation and enhance the model’s adaptability. While the framework focuses on technical assessments, its recommendations can influence resource allocation decisions that affect urban communities. To ensure equitable outcomes, the application of the fuzzy logic controller should be complemented by socio-economic analyses, particularly in cases where maintenance prioritization could disproportionately impact less affluent neighborhoods. Transparency is also critical; the rule-based structure ensures that every recommendation can be traced back to specific inference rules, fostering trust among stakeholders. By documenting and making the complete set of 125 inference rules publicly available, the system enables stakeholders to review and adapt the rules to local contexts, further enhancing accountability.
5. Conclusions
The proposed fuzzy inference system offers a robust decision-support ability for stormwater infrastructure management. By integrating Hydraulic Performance, Technical Condition, and Operational Condition into a unified framework, the model effectively addresses the inherent uncertainty and complexity of real-world conditions. Its high accuracy, resilience to parameter variations, and ability to accommodate diverse datasets make it a valuable resource for utility managers and engineers.
By integrating the fuzzy logic controller into existing hydraulic modeling software, municipalities can improve their ability to identify pipelines requiring closer inspection or rehabilitation. This, in turn, facilitates optimized maintenance schedules, more effective allocation of limited budgets, and reduced risks of urban flooding. The system’s transparency and rule-based structure further ensure that recommendations are clear and actionable, fostering trust among stakeholders.
Future research should prioritize expanding the dataset to include additional regions and integrating real-time sensor data to further validate and enhance the model’s adaptability. Multi-objective optimization techniques could also be explored to balance economic, environmental, and social considerations in stormwater infrastructure decision-making. Addressing these areas will allow the fuzzy inference system to evolve into a more comprehensive decision-support platform, helping municipalities navigate the growing challenges of urban water management.
Moreover, the application of the system must also address critical considerations such as data privacy, expert biases, and equitable access. By ensuring that the controller operates locally, protecting sensitive data, and mitigating potential biases in expert-derived rules, the fuzzy logic framework can serve as a fair and effective ability for urban infrastructure management. Its role as a decision-support system, rather than a definitive decision-maker, highlights the importance of integrating technical outputs with broader social and environmental analyses to achieve sustainable and equitable outcomes.