MEASURES TO IMPROVE SAFETY ON EXISTING MAIN STREET 101
Date Issued
2022-03
Author(s)
Ristov Riste
Nedevska Ivona
Zafirovski Zlatko
Ognjenovic Slobodan
Gacevski Vasko
Abstract
Identifying and classifying accident black spots on urban roads is a critical element of road
safety research.
An accident blackspot treatment program is a safety improvement program that can reactively
deal with accidents. However, implementing such a program requires relevant accident data,
which are generally unavailable or limited in developing countries. Thus, this paper proposes a
supportive approach (public participation) to overcome this hindrance.
Residence can identify locations where accidents occurrences are unusually high, and their
input is potentially helpful for the identification process. In addition, besides the indirect
benefits to creating public awareness, the proposed methodology is potentially helpful for
speeding up and economizing the accident spot locations identification process. Finally, the
paper proposes various construction and traffic safety measures to improve safety.
safety research.
An accident blackspot treatment program is a safety improvement program that can reactively
deal with accidents. However, implementing such a program requires relevant accident data,
which are generally unavailable or limited in developing countries. Thus, this paper proposes a
supportive approach (public participation) to overcome this hindrance.
Residence can identify locations where accidents occurrences are unusually high, and their
input is potentially helpful for the identification process. In addition, besides the indirect
benefits to creating public awareness, the proposed methodology is potentially helpful for
speeding up and economizing the accident spot locations identification process. Finally, the
paper proposes various construction and traffic safety measures to improve safety.
Subjects
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GNP Proceedings 2022 2.pdf
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