Synthetic population and travel demand for Paris and Île-de-France based on open and publicly available data

Sebastian Hörl1,2, Milos Balac1
1Institute for Transport Planning and Systems, ETH Zurich, Switzerland
2Institut de Recherche Technologique SystemX, Palaiseau 91120, France

Tài liệu tham khảo

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