Matches in SemOpenAlex for { <https://semopenalex.org/work/W4319316648> ?p ?o ?g. }
- W4319316648 endingPage "420" @default.
- W4319316648 startingPage "420" @default.
- W4319316648 abstract "Unplanned and rapid urban growth requires the reckless expansion of infrastructure including water, sewage, energy, and transportation facilities, and thus causes environmental problems such as deterioration of old towns, reduction of open spaces, and air pollution. To alleviate and prevent such problems induced by urban growth, the accurate prediction and management of urban expansion is crucial. In this context, this study aims at modeling and predicting urban expansion in Seoul metropolitan area (SMA), Korea, using GIS and XAI techniques. To this end, we examined the effects of land-cover, socio-economic, and environmental features in 2007 and 2019, within the optimal radius from a certain raster cell. Then, this study combined the extreme gradient boosting (XGBoost) model and Shapley additive explanations (SHAP) in analyzing urban expansion. The findings of this study suggest urban growth is dominantly affected by land-cover characteristics, followed by topographic attributes. In addition, the existence of water body and high ECVAM grades tend to significantly reduce the possibility of urban expansion. The findings of this study are expected to provide several policy implications in urban and environmental planning fields, particularly for effective and sustainable management of lands." @default.
- W4319316648 created "2023-02-08" @default.
- W4319316648 creator A5009736407 @default.
- W4319316648 creator A5016438805 @default.
- W4319316648 creator A5046639829 @default.
- W4319316648 creator A5068158718 @default.
- W4319316648 date "2023-02-06" @default.
- W4319316648 modified "2023-10-01" @default.
- W4319316648 title "Application of Explainable Artificial Intelligence (XAI) in Urban Growth Modeling: A Case Study of Seoul Metropolitan Area, Korea" @default.
- W4319316648 cites W1578254105 @default.
- W4319316648 cites W1963877158 @default.
- W4319316648 cites W1991114144 @default.
- W4319316648 cites W1999829841 @default.
- W4319316648 cites W2003742652 @default.
- W4319316648 cites W2029109413 @default.
- W4319316648 cites W2040923945 @default.
- W4319316648 cites W2106100548 @default.
- W4319316648 cites W2107708994 @default.
- W4319316648 cites W2122242203 @default.
- W4319316648 cites W2165780759 @default.
- W4319316648 cites W2476622890 @default.
- W4319316648 cites W2505399422 @default.
- W4319316648 cites W2517626434 @default.
- W4319316648 cites W2526277156 @default.
- W4319316648 cites W2535363652 @default.
- W4319316648 cites W2568625947 @default.
- W4319316648 cites W2791189703 @default.
- W4319316648 cites W2888047049 @default.
- W4319316648 cites W2895784978 @default.
- W4319316648 cites W2899181461 @default.
- W4319316648 cites W2914168391 @default.
- W4319316648 cites W2937095356 @default.
- W4319316648 cites W2938834899 @default.
- W4319316648 cites W2945584055 @default.
- W4319316648 cites W2954026085 @default.
- W4319316648 cites W2961165696 @default.
- W4319316648 cites W2967403332 @default.
- W4319316648 cites W2996705655 @default.
- W4319316648 cites W2998015774 @default.
- W4319316648 cites W2998389614 @default.
- W4319316648 cites W3007427932 @default.
- W4319316648 cites W3030946476 @default.
- W4319316648 cites W3049450465 @default.
- W4319316648 cites W3088843384 @default.
- W4319316648 cites W3094890107 @default.
- W4319316648 cites W3112597358 @default.
- W4319316648 cites W3114374233 @default.
- W4319316648 cites W3119742723 @default.
- W4319316648 cites W3126947382 @default.
- W4319316648 cites W3135887826 @default.
- W4319316648 cites W3145276257 @default.
- W4319316648 cites W3159259579 @default.
- W4319316648 cites W3165161279 @default.
- W4319316648 cites W3186013907 @default.
- W4319316648 cites W3200026094 @default.
- W4319316648 cites W4200207366 @default.
- W4319316648 cites W4205145075 @default.
- W4319316648 cites W4213242393 @default.
- W4319316648 cites W4223594669 @default.
- W4319316648 cites W4283068826 @default.
- W4319316648 cites W4283077289 @default.
- W4319316648 cites W4283758891 @default.
- W4319316648 cites W4293765820 @default.
- W4319316648 cites W4295814352 @default.
- W4319316648 cites W4299804953 @default.
- W4319316648 cites W4306965057 @default.
- W4319316648 cites W4311040491 @default.
- W4319316648 doi "https://doi.org/10.3390/land12020420" @default.
- W4319316648 hasPublicationYear "2023" @default.
- W4319316648 type Work @default.
- W4319316648 citedByCount "3" @default.
- W4319316648 countsByYear W43193166482023 @default.
- W4319316648 crossrefType "journal-article" @default.
- W4319316648 hasAuthorship W4319316648A5009736407 @default.
- W4319316648 hasAuthorship W4319316648A5016438805 @default.
- W4319316648 hasAuthorship W4319316648A5046639829 @default.
- W4319316648 hasAuthorship W4319316648A5068158718 @default.
- W4319316648 hasBestOaLocation W43193166481 @default.
- W4319316648 hasConcept C107826830 @default.
- W4319316648 hasConcept C127413603 @default.
- W4319316648 hasConcept C147176958 @default.
- W4319316648 hasConcept C154611951 @default.
- W4319316648 hasConcept C158739034 @default.
- W4319316648 hasConcept C166957645 @default.
- W4319316648 hasConcept C205649164 @default.
- W4319316648 hasConcept C26271046 @default.
- W4319316648 hasConcept C2779152076 @default.
- W4319316648 hasConcept C2779343474 @default.
- W4319316648 hasConcept C2780565591 @default.
- W4319316648 hasConcept C2780648208 @default.
- W4319316648 hasConcept C2781219549 @default.
- W4319316648 hasConcept C39432304 @default.
- W4319316648 hasConcept C4792198 @default.
- W4319316648 hasConcept C487182 @default.
- W4319316648 hasConcept C49545453 @default.
- W4319316648 hasConcept C91375879 @default.
- W4319316648 hasConceptScore W4319316648C107826830 @default.
- W4319316648 hasConceptScore W4319316648C127413603 @default.