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首页> 外文期刊>Environmental Modelling & Software >A novel computational green infrastructure design framework for hydrologic and human benefits
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A novel computational green infrastructure design framework for hydrologic and human benefits

机译:一种新颖的绿色计算基础设施设计框架,可实现水文和人类利益

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摘要

Increased storm-water runoff and flooding and poor ecosystem health have brought increasing attention to catchment-wide implementation of green infrastructure (e.g., bioswales, rain gardens, permeable pavements, tree box filters, urban wetlands and forests, stream buffers, and green roofs) to replace or supplement conventional storm water management practices and create more sustainable urban water systems. Current green infrastructure (GI) practice aims at mitigating the negative effects of urbanization by restoring pre-development hydrology and ultimately addressing water quality issues at an urban catchment scale. However, the benefits of GI extend well beyond local storm water management, as urban green spaces are also major contributors to human health. Considerable research in the psychological sciences have shown significant human health benefits from appropriately designed green spaces, yet impacts on human wellbeing have not yet been formally considered in GI design frameworks. This work develops a novel computational green infrastructure (GI) design framework that integrates storm water management requirements with criteria for human wellbeing. A supervised machine-learning model is created to identify specific patterns in urban green spaces that promote human wellbeing; the model is linked to RHESSYS hydrological model to evaluate GI designs in terms of both water resource and human health benefits. An application of the framework to tree-based GI design in Dead Run Watershed, Baltimore, MD, shows that image-mining methods are able to capture key elements of human preferences that could improve GI design. The results also show that hydrologic benefits associated with tree-based features are substantial, indicating that increased urban tree coverage and a more integrated GI design approach can significantly increase both human and hydrologic benefits.
机译:雨水径流和洪水的增加以及生态系统的健康状况日益受到人们的关注,在集水区范围内实施绿色基础设施(例如生物污水,雨水花园,透水路面,树箱过滤器,城市湿地和森林,溪流缓冲区和绿色屋顶)替代或补充常规雨水管理做法,并建立更具可持续性的城市供水系统。当前的绿色基础设施(GI)实践旨在通过恢复开发前的水文状况并最终解决城市集水规模的水质问题来减轻城市化的负面影响。但是,地理标志的好处远远超出了当地的雨水管理范围,因为城市绿地也是人类健康的主要贡献者。心理科学方面的大量研究表明,设计合理的绿色空间将为人类带来巨大的健康益处,但是地理标志设计框架尚未正式考虑对人类健康的影响。这项工作开发了一种新颖的计算绿色基础设施(GI)设计框架,该框架将雨水管理要求与人类福祉标准相结合。建立了有监督的机器学习模型,以识别城市绿地中促进人类福祉的特定模式;该模型与RHESSYS水文模型相关联,可以从水资源和人类健康的角度评估地理标志的设计。该框架在马里兰州巴尔的摩市Dead Run Watershed的基于树的GI设计中的应用表明,图像挖掘方法能够捕获人类偏好的关键要素,从而可以改善GI设计。结果还表明,与基于树的特征相关的水文收益是可观的,这表明增加城市树木的覆盖范围和更综合的地理标志设计方法可以显着提高人文和水文收益。

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