Urban Green Space Planning and Design Based on Big Data Analysis and BDA-UGSPD Model

Yingying Li, Tingyan Li, Wanru Liu, Tingting Yan, Daoyang Yu, Lanling Zhang
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Abstract

: Green cities are described as the environmental influences by expanding recycling, decreasing waste, increasing housing density, lowering emissions while intensifying open space, and boosting sustainable local businesses. Green infrastructures (GI) are progressively related to urban water management for long-term transitions and immediate solutions towards sustainability. Urban green spaces (UGS) play a vital role in conserving urban environment sustainability by giving various ecology services. In this study, big data analytics-based urban green space planning design (BDA-UGSPD) has been introduced. Luohe city and the Shali River area have been chosen as the study area owing to the high number and a considerable assortment of UGS. Monitoring has been conducted in the Shali river to evaluate water quality for irrigation for agriculture. The Master Plan Scenario had a compact green space system, and the urban land use layout has been categorized by systematization and networking, and it did not consider the service capacity of green spaces. The Planning Guidance Scenario initialized constraint states, which provide more rigorous and effective urban spaces. It enhanced the service functions of the green space model layout. The simulation findings illustrate that the proposed BDA-UGSPD model enhances the land-use classification accuracy ratio by 92.0%, probability ratio by 90.6%, decision-making ratio by 95.0%, climate change adaptation ratio by 94.5%, water quality assessment ratio by 95.9%, and reduces the root mean square error ratio by 9.7% compared to other popular approaches.
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基于大数据分析和 BDA-UGSPD 模型的城市绿地规划与设计
:绿色城市是指通过扩大回收利用、减少废物、增加住房密度、降低排放,同时加强开放空间和促进可持续发展的地方企业,对环境产生影响。绿色基础设施(GI)逐渐与城市水资源管理联系起来,以实现长期过渡和可持续发展的直接解决方案。城市绿地(UGS)通过提供各种生态服务,在保护城市环境可持续性方面发挥着重要作用。本研究引入了基于大数据分析的城市绿地规划设计(BDA-UGSPD)。由于漯河市和沙澧河地区的 UGS 数量多、种类多,因此被选为研究区域。对沙澧河进行了监测,以评估用于农业灌溉的水质。总体规划方案采用紧凑型绿地系统,城市用地布局按系统化和网络化分类,未考虑绿地的服务能力。规划指导方案初始化了约束状态,提供了更严格、更有效的城市空间。它增强了绿地模型布局的服务功能。仿真结果表明,与其他常用方法相比,BDA-UGSPD 模型提高了土地利用分类准确率 92.0%、概率 90.6%、决策率 95.0%、气候变化适应率 94.5%、水质评估率 95.9%,均方根误差率降低了 9.7%。
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