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首页> 外文期刊>Environmental Modelling & Software >Investigation of the likelihood of green infrastructure (GI) enhancement along linear waterways or on derelict sites (DS) using machine learning
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Investigation of the likelihood of green infrastructure (GI) enhancement along linear waterways or on derelict sites (DS) using machine learning

机译:使用机器学习调查绿色基础设施(GI)增强的绿色基础设施(GI)增强(DS)

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摘要

Studies evaluating the potential for green infrastructure (GI) development using traditional Boolean logic-based multi-criteria analysis methods are not capable of predicting future GI development in dynamic urbanscapes. This study evaluated both artificial neural network (ANN) and adaptive, network-based fuzzy inference system (ANFIS) algorithms in conjunction with statistical modelling to predict green or grey transformation likelihoods for derelict sites (DS) and vacant sites along waterway corridors (WWC) in Manchester based on ecological, environmental, and social criteria. The soft-computing algorithms had better predictive capacity at 72% accuracy versus the 65% of logistic models. Site sizes, population coverage, and air pollution were identified as the main influencers in the potential for site transformation. In Manchester, the likelihood of GI transformation was higher for WWC than derelict sites at 80% versus 60% likelihood, respectively. Furthermore, DS were more likely to transform into grey development based on current trends and urban planning practice.
机译:使用传统布尔逻辑的多标准分析方法评估绿色基础设施(GI)开发的潜力的研究无法预测动态Urbanscapes中的未来GI开发。本研究评估了人工神经网络(ANN)和自适应,基于网络的模糊推理系统(ANFIS)算法,与统计建模结合,以预测沿水路走廊(WWC)的废弃地点(DS)和空置位点的绿色或灰色转化似然在曼彻斯特,基于生态,环境和社会标准。软计算算法以72%的准确度具有更好的预测容量,而65%的物流模型。现场大小,人口覆盖率和空气污染被确定为现场转型潜力的主要影响因素。在曼彻斯特,WWC的GI转化的可能性较高,而不是80%的遗弃位点分别与60%的可能性。此外,基于当前趋势和城市规划实践,DS更有可能转化为灰色发展。

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