| Literature DB >> 26702383 |
Caleb Boadi1, Simon K Harvey1, Agyapomaa Gyeke-Dako1.
Abstract
Stochastic dynamics involved in ecological count data require distribution fitting procedures to model and make informed judgments. The study provides empirical research, focused on the provision of an early warning system and a spatial graph that can detect societal fire risks. It offers an opportunity for communities, organizations, risk managers, actuaries and governments to be aware of, and understand fire risks, so that they will increase the direct tackling of the threats posed by fire. Statistical distribution fitting method that best helps identify the stochastic dynamics of fire count data is used. The aim is to provide a fire-prediction model and fire spatial graph for observed fire count data. An empirical probability distribution model is fitted to the fire count data and compared to the theoretical probability distribution of the stochastic process of fire count data. The distribution fitted to the fire frequency count data helps identify the class of models that are exhibited by the fire and provides time leading decisions. The research suggests that fire frequency and loss (fire fatalities) count data in Ghana are best modelled with a Negative Binomial Distribution. The spatial map of observed fire frequency and fatality measured over 5 years (2007-2011) offers in this study a first regional assessment of fire frequency and fire fatality in Ghana.Entities:
Keywords: Distribution fitting; Ecological data; Fatalities; Fire frequency; Negative binomial; Poisson; Statistical distribution; Stochastic
Year: 2015 PMID: 26702383 PMCID: PMC4688283 DOI: 10.1186/s40064-015-1585-3
Source DB: PubMed Journal: Springerplus ISSN: 2193-1801
Fig. 1Fire occurrence histogram plots for regions with a vertical bar overlaid showing the mean occurrence
Fig. 2Fire occurrence histogram plots for regions with a vertical bar overlaid showing the mean occurrence
Fig. 3Fire fatality histogram plots for regions with a vertical bar overlaid showing the mean occurrence of death through fire
Fig. 4Fire fatality histogram plots for regions with a vertical bar overlaid showing the mean occurrence of death through fire
Fig. 5Spatial map of observed fire frequency and fatality for regions in Ghana. The fire frequency indicates the observed monthly frequency of fire throughout the country. The fire fatality also indicates the deaths that result from fire occurrences among the regions
Fig. 6Q–Q and P–P plot for fire data distribution
Parameter Estimates with confidence interval for fire frequency
| Regions | Negative binomial | |
|---|---|---|
| k | μ | |
| Ashanti | 4.03 ± 6.83 | 59.00 ± 6.83 |
| Volta | 0.5 ± 0.24 | 3.48 ± 1.31 |
| Brong Ahafo | 0.65 ± 0.25 | 22.18 ± 7.08 |
| Western | 4.70 ± 2.31 | 14.97 ± 2.00 |
| Eastern | 2.29 ± 0.92 | 16.92 ± 3.02 |
| Upper East | 2.56 ± 1.14 | 13.05 ± 2.26 |
| Upper West | 1.74 ± 0.71 | 10.23 ± 2.12 |
| North | 1.35 ± 0.58 | 9.23 ± 2.16 |
| Central | 2.85 ± 1.21 | 23.51 ± 3.73 |
| Greater Accra | 19.53 ± 8.60 | 79.75 ± 5.10 |
| Overall | 8.09 ± 2.92 | 252.34 ± 22.81 |
Overall Fire data on the whole economy
Parameter Estimates with confidence interval for fire fatality
| Regions | Poisson | Neg. binomial | |
|---|---|---|---|
| μ | k | μ | |
| Ashanti | 1.03 ± 0.57 | 6.29 ± 2.31 | |
| Volta | 0.05 ± 0.11 | 0.11 ± 0.20 | |
| Brong Ahafo | 0.21 ± 0.13 | 3.47 ± 2.55 | |
| Western | 0.19 ± 0.14 | ||
| Eastern | 0.41 ± 0.28 | 2.33 ± 1.29 | |
| Upper East | 0.02 ± 0.04 | 0.08 ± 0.24 | |
| Upper West | ND | ND | ND |
| North | 0.13 ± 0.23 | 0.19 ± 0.23 | |
| Central | 0.27 ± 0.16 | 3.19 ± 2.10 | |
| Greater Accra | 0.47 ± 0.39 | 1.39 ± 0.76 | |
| Overall | 1.48 ± 0.70 | 17.67 ± 4.94 | |
Overall fire data on the whole economy, ND no data
Fig. 7Observed fire frequency and fire fatality sequence plot
Log-likelihood, AIC and BIC Statistics on fire frequency parameter
| Regions | Neg. Binomial | ||
|---|---|---|---|
| Log-likelihood | AIC | BIC | |
| Ashanti | −287.45 | 578.89 | 583.08 |
| Volta | −139.02 | 282.04 | 286.23 |
| Brong Ahafo | −244.67 | 493.33 | 497.52 |
| Western | −206.02 | 416.05 | 420.24 |
| Eastern | −224.06 | 452.12 | 456.31 |
| Upper East | −208.25 | 420.51 | 424.70 |
| Upper West | −198.95 | 401.90 | 406.09 |
| North | −195.61 | 395.23 | 399.42 |
| Central | −240.37 | 484.73 | 488.92 |
| Greater Accra | −263.98 | 531.95 | 536.14 |
| Overall | −352.56 | 709.12 | 713.31 |
Log-likelihood, AIC and BIC Statistics on Fire Fatality Parameter
| Regions | Poisson | Neg. binomial | ||||
|---|---|---|---|---|---|---|
| Log-likelihood | AIC | BIC | Log-likelihood | AIC | BIC | |
| Ashanti | −172.54 | 347.09 | 348.67 | −107.00 | 218.01 | 221.18 |
| Volta | −14.58 | 31.16 | 32.74 | −10.61 | 25.22 | 28.38 |
| Brong Ahafo | −213.08 | 428.16 | 429.75 | −70.36 | 144.73 | 147.90 |
| Western | −19.16 | 40.31 | 41.90 | −19.08 | 42.16 | 45.33 |
| Eastern | −108.88 | 219.76 | 221.35 | −70.05 | 144.10 | 147.27 |
| Upper East | −12.25 | 26.49 | 28.08 | −6.79 | 17.58 | 20.74 |
| Upper West | ND | ND | ND | ND | ND | ND |
| North | −20.95 | 43.90 | 45.48 | −17.51 | 39.02 | 42.19 |
| Central | −192.42 | 386.84 | 388.42 | −72.27 | 148.54 | 151.70 |
| Greater Accra | −74.14 | 150.29 | 151.87 | −56.99 | 117.99 | 121.16 |
| Overall | −295.20 | 592.39 | 593.97 | −139.13 | 282.26 | 285.43 |
Overall fire data on the whole economy, ND no data