Research Article
Explainable Artificial Intelligence (XAI) for Interpretable Heritage Building Maintenance Prediction
Authors: Nur Shahirah Jailani, Mohd Murtadha Mohamad, MD. Enjat Munajat, Ira Irawati, Heru Nurasa, Mohd Shahizan Bin Othman, Apri Junaidi
Affiliations: Universiti Teknologi Malaysia, Universitas Padjadjaran
Published: November 14, 2025
Executive Impact at a Glance
This research introduces a paradigm shift in heritage building maintenance, moving from reactive to proactive and evidence-based preventive conservation. The novel Decision-Support Framework (DSF) integrates predictive analytics with explainable AI to offer transparent, actionable insights for optimal resource allocation.
Deep Analysis & Enterprise Applications
Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.
The Challenge in Heritage Maintenance
Traditional maintenance prioritization relies heavily on expert judgment and periodic inspections, which are often subjective, reactive, and lack integration with quantitative environmental data, leading to inconsistent assessments and delayed responses to emerging risks.
Introducing the Decision-Support Framework (DSF)
This paper introduces a novel Decision-Support Framework (DSF) that bridges the gap between predictive analytics and practical conservation workflows. The framework integrates an eXtreme Gradient Boosting (XGBoost) machine learning model, which predicts maintenance priority ratings based on historical microclimate data, with an interactive dashboard built on Microsoft Power BI. A key innovation is its emphasis on explainability, using SHapley Additive exPlanations (SHAP) to interpret model outputs, and visual analytics to transform complex predictions into actionable insights.
Our Core Contributions
- Robust predictive model (XGBoost) for maintenance priority.
- Integration of XAI (SHAP) for interpreting predictions.
- Interactive visual analytics dashboard (Power BI).
- Comprehensive evaluation with case study and expert feedback.
XGBoost Model Performance
The XGBoost model demonstrated superior performance with an F1-score of 0.88, effectively identifying true high-priority cases while minimizing false alarms. This highlights the model's robustness in predicting maintenance needs based on historical microclimate data.
Key Explainable AI (XAI) Insights
SHAP analysis revealed that humidity variation (32%) and mean temperature (27%) are the most dominant environmental stressors contributing to material degradation in heritage buildings. This transparency fosters trust and understanding among conservation professionals.
Strategic Impact & Future Outlook
This study enables a paradigm shift from reactive to proactive and evidence-based preventive conservation. The XAI-enhanced model transforms complex AI predictions into actionable conservation intelligence, empowering heritage managers with transparent, data-driven decision-making, and optimizing resource allocation for building preservation.
Enterprise Process Flow
| Traditional Approach | Our XAI-Driven DSF |
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Case Study: Johor Bahru Railway Station
This historic Malaysian building, constructed in the 1930s, served as a crucial site for validating our DSF. Its mixed material composition and exposure to severe tropical climate conditions (high humidity, temperature) provided a rich dataset for modeling diverse degradation behaviors. The system successfully predicted maintenance priorities, showing that humidity variation (32%) and mean temperature (27%) were key environmental stressors accelerating material decay.
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