Machine learning predictors for sustainable urban planning
While essential for economic reasons, rapid urbanization has had many negative impacts on the environment and the social wellbeing of humanity. Heavy traffic, unexpected geohazards are some of the effects of uncontrollable development. This situation points its fingerto urban planning and design; th...
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my.utm.965892022-07-28T07:11:48Z http://eprints.utm.my/id/eprint/96589/ Machine learning predictors for sustainable urban planning Nagappan, S. D. Daud, S. M. T Technology (General) While essential for economic reasons, rapid urbanization has had many negative impacts on the environment and the social wellbeing of humanity. Heavy traffic, unexpected geohazards are some of the effects of uncontrollable development. This situation points its fingerto urban planning and design; there are numerous automation tools to help urban planners assess and forecast, yet unplanned development still occurs, impeding sustainability. Automation tools use machine learning classification models to analyze spatial data and various trend views before planning a new urban development. Although there are many sophisticated tools and massive datasets, big cities with colossal migration still witness traffic jams, pollution, and environmental degradation affecting urban dwellers’ quality. This study will analyze the current predictors in urban planning machine learning models and identify the suitable predictors to support sustainable urban planning. A correct set of predictors could improve the efficiency of the urban development classification models and help urban planners to enhance the quality of life in big cities. Science and Information Organization 2021 Article PeerReviewed application/pdf en http://eprints.utm.my/id/eprint/96589/1/SarojiniDeviNagappan2021_MachineLearningPredictors.pdf Nagappan, S. D. and Daud, S. M. (2021) Machine learning predictors for sustainable urban planning. International Journal of Advanced Computer Science and Applications, 12 (7). pp. 772-780. ISSN 2158-107X http://dx.doi.org/10.14569/IJACSA.2021.0120787 DOI: 10.14569/IJACSA.2021.0120787 |
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While essential for economic reasons, rapid urbanization has had many negative impacts on the environment and the social wellbeing of humanity. Heavy traffic, unexpected geohazards are some of the effects of uncontrollable development. This situation points its fingerto urban planning and design; there are numerous automation tools to help urban planners assess and forecast, yet unplanned development still occurs, impeding sustainability. Automation tools use machine learning classification models to analyze spatial data and various trend views before planning a new urban development. Although there are many sophisticated tools and massive datasets, big cities with colossal migration still witness traffic jams, pollution, and environmental degradation affecting urban dwellers’ quality. This study will analyze the current predictors in urban planning machine learning models and identify the suitable predictors to support sustainable urban planning. A correct set of predictors could improve the efficiency of the urban development classification models and help urban planners to enhance the quality of life in big cities. |
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Article |
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Nagappan, S. D. Daud, S. M. |
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Nagappan, S. D. Daud, S. M. |
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Nagappan, S. D. |
title |
Machine learning predictors for sustainable urban planning |
title_short |
Machine learning predictors for sustainable urban planning |
title_full |
Machine learning predictors for sustainable urban planning |
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Machine learning predictors for sustainable urban planning |
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Machine learning predictors for sustainable urban planning |
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machine learning predictors for sustainable urban planning |
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Science and Information Organization |
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2021 |
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http://eprints.utm.my/id/eprint/96589/1/SarojiniDeviNagappan2021_MachineLearningPredictors.pdf http://eprints.utm.my/id/eprint/96589/ http://dx.doi.org/10.14569/IJACSA.2021.0120787 |
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