| Literature DB >> 32443807 |
Washington Velásquez1,2, Manuel S Alvarez-Alvarado1, Andres Munoz-Arcentales1,2, Sonsoles López-Pernas2, Joaquín Salvachúa2.
Abstract
This article presents a comprehensive study of human physiology to determine the impact of body mass index (BMI) on human gait. The approach followed in this study consists of a mathematical model based on the centre of mass of the human body, the inertia of a person in motion and the human gait speed. Moreover, the study includes the representation of a building using graph theory and emulates the presence of a person inside the building when an emergency takes place. The optimal evacuation route is obtained using the breadth-first search (BFS) algorithm, and the evacuation time prediction is calculated using a Gaussian process model. Then, the risk of the building is quantified by using a non-sequential Monte Carlo simulation. The results open up a new horizon for developing a more realistic model for the assessment of civil safety.Entities:
Keywords: Monte Carlo simulation; body mass index; breadth-first search; evacuation routes; human gait
Mesh:
Year: 2020 PMID: 32443807 PMCID: PMC7287682 DOI: 10.3390/s20102899
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Human body represented as an inverted physical pendulum.
Figure 2Motion of the centre of mass.
Figure 3Human walking behaviour: (a) power and (b) speed [18,32].
Transition steps depending on the body mass index (BMI).
| Sex | BMI |
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| Under Weight |
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| Normal |
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| Obesity Mild |
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| Average Obesity |
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| Severe Obesity |
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| Very Severe Obesity |
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| Under Weight |
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| Normal |
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| Obesity Mild |
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| Average Obesity |
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| Severe Obesity |
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| Very Severe Obesity |
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Note: the function generates a uniformly random number between a and b, while the function round the value x.
Figure 4A symbolic representation of one floor inside the building.
Figure A1Model of the internal structure building, stored in a graph with their respective relationships and content nodes.
Figure 5Evacuation route in a matrix using Breadth-First Search (BFS): (a) Non-blocked; (b) Blocked.
Figure 6Flowchart of the process.
Classification of BMI per Individual.
| BMI Male | BMI Women | Classification | Male | Female |
|---|---|---|---|---|
| <20 | <20 | UW | 25 | 169 |
| 20–<25 | 20–<24 | NO | 531 | 656 |
| 25–<30 | 24–<29 | OM | 867 | 768 |
| 30–<35 | 29–<33 | AO | 390 | 353 |
| 35–<40 | 33–<37 | SO | 114 | 174 |
| >=40 | >=37 | VSO | 21 | 164 |
Figure A2Scheme of the Building: (a) 30-storey building; (b) Ground Floor.
Figure 7Predicting evacuation times with Gaussian Process Regression (GPR).
Evacuation time verification.
| Subject | Gender | BMI | Distance | Evacuation Time [s] | Relative Error [%] | |
|---|---|---|---|---|---|---|
| Using (27): | Statistical Observation: | |||||
| A | M | 33.36 | 41 | 4.953312 | 4.986175 | 0.659082 |
| B | M | 26.54 | 121 | 12.32967 | 12.34569 | 0.129786 |
| C | F | 32.13 | 92 | 8.930232 | 8.950459 | 0.225988 |
| D | M | 26.62 | 59 | 6.056623 | 6.056424 | 0.003286 |
| E | F | 27.13 | 39 | 4.080984 | 4.082034 | 0.025722 |
| F | M | 26.62 | 80 | 8.265445 | 8.245791 | 0.238352 |
| G | F | 24.47 | 54 | 5.509876 | 5.511277 | 0.025421 |
| H | F | 25.38 | 66 | 6.952345 | 6.950091 | 0.032431 |
| I | M | 23.30 | 90 | 9.236540 | 9.234620 | 0.020791 |
| J | M | 27.45 | 21 | 2.213450 | 2.223788 | 0.464882 |
Figure 8Evacuation times (People) classified by BMI.
Figure 9Birnbaum–Saunders probability function.