Litcius/Paper detail

Renovation and Reconstruction of Urban Land Use by a Cost-Heuristic Genetic Algorithm: A Case in Shenzhen

Yufan Deng, Zhong'an Tang, Baoju Liu, Yan Shi, Min Deng, Enbo Liu

2024ISPRS International Journal of Geo-Information6 citationsDOIOpen Access PDF

Abstract

Urban land use multi-objective optimization aims to achieve greater economic, social, and environmental benefits by the rational allocation and planning of urban land resources in space. However, not only land use reconstruction, but renovation, which has been neglected in most studies, is the main optimization direction of urban land use. Meanwhile, urban land use optimization is subject to cost constraints, so as to obtain a more practical optimization scheme. Thus, this paper evaluated the renovation and reconstruction costs of urban land use and proposed a cost-heuristic genetic algorithm (CHGA). The algorithm determined the selection probability of candidate optimization cells by considering the renovation and reconstruction costs of urban land and integrated the renovation and reconstruction costs to determine the direction of optimization so that the optimization model can more practically simulate the actual situation of urban planning. The reliability of this model was validated through its application in Shenzhen, China, demonstrating that it can reduce the cost consumption of the optimization process by 35.86% at the expense of sacrificing a small amount of economic benefits (1.18%). The balance of benefits and costs enhances the applicability of the proposed land use optimization method in mature, developed areas where it is difficult to demolish buildings that are constrained by costs.

Topics & Concepts

Genetic algorithmHeuristicMathematical optimizationComputer scienceLand useMulti-objective optimizationOptimization problemProcess (computing)Land-use planningTotal costEnvironmental economicsCivil engineeringBusinessEngineeringEconomicsMathematicsOperating systemAccountingUrban Planning and ValuationLand Use and Ecosystem ServicesSmart Parking Systems Research