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Study on Multi-Objective Optimization of Construction Project Based on Improved Genetic Algorithm and Particle Swarm Optimization

Weicheng Hu, Yan Zhang, Linya Liu, Pengfei Zhang, Jialiang Qin, Biao Nie

2024Processes12 citationsDOIOpen Access PDF

Abstract

Construction projects require concurrent consideration of the three major objectives of construction period, cost, and quality. To address the multi-objective optimization issues of construction projects, mathematical models of construction period, quality, and cost are established, respectively, and multi-objective optimization models are constructed for different construction objectives. A hybrid optimization method combining an improved genetic algorithm (GA) with a time-varying mutation rate and a particle swarm algorithm (PSO) is proposed to optimize construction projects, which overcomes the shortcomings of the original GA and improves the global optimality and stability of results. Various construction projects were considered, and different construction objectives were analyzed individually. Finally, an uncertainty analysis is developed for the proposed GA-PSO algorithm and compared with GA and PSO. The results indicate that the proposed hybrid approach outperforms the PSO and GA algorithms in providing a better and more stable multi-objective optimized construction solution, with performance improvements of 4.3–8.5% and volatility reductions of 37.5–64.4%. This provides a reference for the optimal design of wind farms, buildings, and other construction projects.

Topics & Concepts

Particle swarm optimizationMathematical optimizationGenetic algorithmMeta-optimizationStability (learning theory)Computer scienceMulti-swarm optimizationAlgorithmMathematicsMachine learningAdvanced Multi-Objective Optimization AlgorithmsBIM and Construction IntegrationMetaheuristic Optimization Algorithms Research