Modelling crash severity outcomes for low speed urban roads using back propagation – Artificial neural network (BP – ANN) – A case study in Indian context

IATSS Research - Tập 47 - Trang 382-400 - 2023
Santanu Barman1, Ranja Bandyopadhyaya2
1Department of Civil Engineering, Calcutta Institute of Technology (CIT), Howrah, West Bengal 711316, India
2Department of Civil Engineering, National Institute of Technology Patna, Ashok Rajpath, Patna 800006, India

Tài liệu tham khảo

United Nations

MoRTH, 2021, 2

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