Automating an integrated spatial data-mining model for landfill site selection

An integrated programming environment represents a robust approach to building a valid model for landfill site selection. One of the main challenges in the integrated model is the complicated processing and modelling due to the programming stages and several limitations. An automation process helps...

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Hauptverfasser: Abujayyab, Sohaib K. M., Ahamad, Mohd Sanusi S., Yahya, Ahmad Shukri, Ahmad, Siti Zubaidah, Aziz, Hamidi Abdul
Format: Tagungsbericht
Sprache:eng
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Zusammenfassung:An integrated programming environment represents a robust approach to building a valid model for landfill site selection. One of the main challenges in the integrated model is the complicated processing and modelling due to the programming stages and several limitations. An automation process helps avoid the limitations and improve the interoperability between integrated programming environments. This work targets the automation of a spatial data-mining model for landfill site selection by integrating between spatial programming environment (Python-ArcGIS) and non-spatial environment (MATLAB). The model was constructed using neural networks and is divided into nine stages distributed between Matlab and Python-ArcGIS. A case study was taken from the north part of Peninsular Malaysia. 22 criteria were selected to utilise as input data and to build the training and testing datasets. The outcomes show a high-performance accuracy percentage of 98.2% in the testing dataset using 10-fold cross validation. The automated spatial data mining model provides a solid platform for decision makers to performing landfill site selection and planning operations on a regional scale.
ISSN:0094-243X
1551-7616
DOI:10.1063/1.5005757