Analysis and assessment of risks to public safety from unmanned aerial vehicles using fault tree analysis and Bayesian network.
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A discrete Bayesian network to analyze critical risks associated with unmanned aerial vehicles. Probabilities were given within the referenced paper. The vertices are:
Mechanical failures (yes, no);
Battery failures (yes, no);
Flight control system failures (yes, no);
Gust (yes, no);
Rain and snow (yes, no);
Thunderstorm (yes, no);
Visibility (yes, no);
Communication link failures (yes, no);
GPS failures (yes, no);
Ostacles (yes, no);
Route planning issues (yes, no);
Unclear airspace division (yes, no);
Unqualified knowledge and skills (yes, no);
Weak safety awareness (yes, no);
Lack of experience (yes, no);
Careless (yes, no);
Fatigue (yes, no);
Violations (yes, no);
Lack of legal awareness (yes, no);
Psychological problems (yes, no);
Undefined subject of supervision responsibility (yes, no);
Lack of unified industry standard (yes, no);
Unclear airworthiness certification procedures (yes, no);
Long flight approval cycle (yes, no);
Weak laws and regulations (yes, no);
Inadequate training system (yes, no);
Lack of supervision system (yes, no);
Xiao, Q., Li, Y., Luo, F., & Liu, H. (2023). Analysis and assessment of risks to public safety from unmanned aerial vehicles using fault tree analysis and Bayesian network. Technology in Society, 73, 102229.