A Multi-Objective Optimization Framework for Capital Allocation in Public Infrastructure Systems

Authors

Raj Mehta

ndependent Researcher, Columbia, SC (USA)

Dr. Varsha Shah

Principal, Rizvi College of Engineering, University of Mumbai, Mumbai (India)

Article Information

DOI: 10.51244/IJRSI.2025.12120039

Subject Category: Management

Volume/Issue: 12/12 | Page No: 428-438

Publication Timeline

Submitted: 2025-12-18

Accepted: 2025-12-24

Published: 2026-01-03

Abstract

Introduction: Public infrastructure agencies must allocate limited capital across heterogeneous assets while balancing lifecycle cost, safety and reliability risk, service criticality, and governance constraints. Conventional composite scoring and single-objective ranking can obscure trade-offs and embed implicit value judgments.
Methods: We formulate capital allocation as a constrained multi-objective optimization problem that maximizes portfolio-level expected risk reduction and service criticality subject to a budget cap and a minimum compliance requirement. Pareto-optimal portfolios are generated to expose trade-offs, and a transparent, Pareto-first balanced selection rule is used to recommend one portfolio without obscuring alternatives. A reproducible synthetic portfolio (N=16) is specified via distributions and random seed; a composite-score baseline is implemented for comparison; sensitivity and robustness analyses vary budget, compliance, and key input perturbations. A scalability demonstration (N=500) uses an NSGA-II-style heuristic with random-key encoding and constraint repair to generate an approximate frontier.
Results: For N=16, Pareto analysis yields multiple defensible portfolios that differ materially by governance preference. A balanced portfolio is selected by a mathematically defined minimum utopia-point distance rule on normalized objectives, and an alternative knee-point rule is reported for sensitivity. Compared with composite scoring under the same constraints, Pareto-based reporting exposes dominated (inefficient) choices and improves transparency. For N=500, the heuristic generates an approximate frontier in seconds, illustrating feasibility at realistic portfolio scale.
Conclusions: The framework shifts capital planning from static prioritization to explainable optimization aligned with asset management guidance. It supports auditable decision-making under real governance constraints and is implementable within enterprise asset management and decision-support platforms.

Keywords

multi-objective optimization; transportation

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