On the Use of Ensemble Predictions for Parametric Typhoon Insurance
Abstract
:1. Introduction
- (1)
- Lack of consideration of the localised impact of typhoons; and
- (2)
- Lack of historical loss events for accurate loss occurrence estimation.
2. Data and Methods
3. Developing a Framework for Deriving Robust Trigger Points for Parametric Typhoon Insurance
3.1. Triggering a Compensation: LTP versus STP
- (1)
- For the events in which ETP was triggered for a given city, the event associated impact footprint is used to determine whether the city is potentially impacted by the event, i.e., whether the impact footprint is found within the city.
- (2)
- If the city is potentially impacted by the event, we extract the maximum in-situ observed wind speed within 24-h period (MW24), centered at the time of impact, of the observation station of the city. The 24-h period is used to minimise the likelihood of null observation at a given time.
- (3)
- Consistency is evaluated by
- a.
- Whether the impact footprint can be found in the city
- b.
- Whether ETP is triggering consistently for a given MW24 of the in-situ observation station of interest.
3.2. Compensation Based on Event Occurrence in LTP
- (1)
- Construct the TOT event set.
- (2)
- Select in-situ stations with long consecutive records, i.e., with at least 10 years of consecutive records, for reliable climatology.
- (3)
- For each selected station, we identify the closest grid boxes in the TOT event set (see Ng and Leckebusch (2021) [31] for detailed description).
- (4)
- Area scaled SSI of the relevant grid boxes are extracted
- (5)
- Mapped data from (4; storm severity index, SSI) to in-situ extreme wind observations using a transfer function e.g., quantile mapping.
- (6)
- Finally, the occurrence of extreme wind speeds is calculated using the threshold excess approach in the extreme value analysis.
4. Improving the Estimate of TC-Related Loss Occurrence on Regional Level
4.1. Estimating the Loss for Non-Realised Events: Regional SSI and Normalized Loss
4.2. Developing Alternative Views on the Real Risk of Losses from Severe Typhoons: Return Period-Return Level Estimation
5. Discussion on Further Improvements and Applications of Our Approach
- (1)
- In the current realization of this approach, we use a wind-based severity proxy to assess the overall damage potential and not only from wind, but including those forced e.g., by the flood hazard. The principle suitability for TC impact assessment has been shown by Befort et al. (2020) [40]. However, the use of a wind-based variable alone is an over-simplification in quantifying the potential impact of TCs. This could lead to two issues: Weak TCs with high socioeconomic impact are not included in the current analysis because they are not identified by WiTRACK as events with impact potential due to their low wind speed, for example, Tropical Storm Pakhar (2017) and Tropical Storm Bebinca (2018) (Table 2). This is aligned with the current parametric typhoon insurance policy, as weak TCs should not trigger compensation. Yet, some of these events have caused severe impact in China because of non-wind induced damage.
- (2)
- The socioeconomic impact of TCs is underestimated if a wind-based metric is solely used, as demonstrated by the outliers, which can be interpreted by the events which are located far away from the fit of the optimistic scenario (black line in Figure 6). These events have comparatively low regional SSI, but the corresponding NLoss is high. The impact of these events is often related to the extreme rainfall and other secondary hazards (e.g., storm surge, and landslide). Tropical Storm Bilis (2006) and Typhoon Hato (2017), which are two of the outliers in Figure 6a, are good examples. Tropical Storm Bilis (2006) made landfall without typhoon strength. The intensity of Tropical Storm Bilis (2006) was low throughout its lifetime, but it produced a large amount of precipitation over land. This is because as Tropical Storm Bilis (2006) made landfall at Fujian, it weakened; however, unlike typical TCs making landfall over mainland China, Tropical Storm Bilis (2006) did not move northward, but slowly westward and later southwestward. This was due to a persistent strong anticyclone over north-central China and westward extension and intensification of the WNP subtropical high [59]. Combining with the abundant moisture over southern and central China, the strong monsoonal flow at 850 hPa, and lifting of the lower atmospheric flow, Tropical Storm Bilis (2006) produced extensive and persistent precipitation over southern China [59]. According to CMA [60], Typhoon Hato (2017) made landfall in Guangdong with a typhoon strength of at least (45 m/s). The extreme rainfall associated with Typhoon Hato (2017) led to flash flooding and increased water level for several rivers. Due to the astronomical high tide, the storm tide associated with Typhoon Hato (2017) surpassed historical record for six tidal wave-observing sites in the Pearl River Delta Estuary [60] and the return period was estimated to be above 100 years [61].
6. Conclusions and Summary
- (1)
- Storm-perspective trigger point (STP) has been compared with LTP, and we demonstrate that tropical cyclone (TC)-related impact frequency is based on the LTP framework is higher than the classical STP (Figure 2).
- (2)
- Using the local perspective provided by the LTP, the triggering consistency of an experiment STP developed by Swiss Re, i.e., experimental trigger point (ETP), has been evaluated. It is found that there exists a regional variability in the triggering consistency of the ETP. This also demonstrated the potential over- and under-compensation issue in the classical STP.
- (3)
- A mechanism for triggering compensation in the LTP framework has been proposed. In-situ wind observation can be used as a trigger point rather than the intensity of the typhoon as estimated by satellite technique. Furthermore, under the LTP framework and the TOT event set, the trigger point can be optimized. This would improve the sensitivity of parametric typhoon insurance from the local perspective.
- (4)
- A method to improve the estimate of TC-related loss occurrence on a regional level has been proposed. This is achieved with a two-step procedure: (i) development of a loss-transfer function between observed normalized losses and regional SSI; (ii) Using the loss-transfer function attribute losses to the TOT event set, and the return period-return level calculation is done using the TOT event set.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A. List of Acronyms
Acronyms/Term | Description |
CDF | Cumulative distribution function |
CMA | China Meteorological Administration |
DRR | Disaster risk reduction |
ECMWF | European Centre for Medium-Range Weather Forecast |
EPS | Ensemble prediction system |
ETP | Experimental trigger point |
GCP | Gross cell product |
GDP | Gross domestic product |
IBTrACS | International Best Track Archive for Climate Stewardship |
ISD | Integrated Surface Database |
JMA | Japan Meteorological Agency |
LTP | Local-perspective trigger point |
MW24 | Maximum in-situ observed wind speed within 24-h period centred at the time of impact, of the observation station of the city |
NCEP | Nation Centers for Environmental Prediction |
NLoss | Normalized loss |
SSI | Storm severity index |
STP | Storm-perspective trigger point |
Swiss Re | Swiss Reinsurance Company Ltd. |
TC | Tropical cyclone |
TIGGE | THORPEX Interactive Grand Global Ensemble |
The TOT event set | The TIGGE Osinski–Thompson TC event set |
TR | Trigger rate |
WMO | World Meteorological Organization |
WNP | Western North Pacific |
Appendix B. Workflow of the Application of the TOT Event Set in Deriving Local Return Levels
Appendix C. Validation of the Consistency of the TOT Event Set and Historical Observations from the Impact Perspective
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WMO Station ID | Name | Latitude (° N) | Longitude (° E) | Period | Province/Region |
---|---|---|---|---|---|
45004 | Kowloon | 22.312 | 114.173 | 1992–2001 | Hong Kong |
45005 | Hong Kong Observatory (HKO) | 22.3 | 114.167 | 1973–1996 | Hong Kong |
45007 | Hong Kong Intl | 22.309 | 113.915 | 1997–2018 | Hong Kong |
45011 | Macau Intl | 22.15 | 113.592 | 1973–2018 | Macau |
45032 | Ta Kwu Ling | 22.533 | 114.15 | 2002–2018 | Hong Kong |
45039 | Sha Tin | 22.4 | 114.2 | 2004–2018 | Hong Kong |
59087 | Fogang | 23.883 | 113.517 | 1973–2018 | Qingyuan |
59271 | Huaiji | 23.95 | 112.2 | 1973–2002 | Zhaoqing |
59278 | Gaoyao | 23.05 | 112.467 | 1973–2018 | Zhaoqing |
59287 | Baiyun Intl | 23.392 | 113.299 | 1973–2018 | Guangzhou |
59316 | Shantou | 23.4 | 116.683 | 1973–2018 | Shantou |
59317 | Huilai | 23.083 | 116.3 | 1973–2000 | Jieyang |
59462 | Luoding | 22.717 | 111.55 | 1973–2000 | Yunfu |
59478 | Tai-shan | 22.267 | 112.783 | 1973–2002 | Jiangmen |
59493 | Baoan Intl | 22.639 | 113.811 | 1973–2018 | Shenzhen |
59501 | Shanwei | 22.783 | 115.367 | 1973–2018 | Shanwei |
59658 | Zhanjiang | 21.217 | 110.4 | 1973–2018 | Zhanjiang |
59663 | Yangjiang | 21.867 | 111.967 | 1973–2018 | Yangjiang |
59664 | Tian-cheng | 21.517 | 111.3 | 1973–2002 | Maoming |
59673 | Shangchuan Dao | 21.733 | 112.767 | 1973–2018 | Jiangmen |
Year | Typhoon Name | Shantou | Yangjiang | Shanwei | Zhanjiang |
---|---|---|---|---|---|
2011 | Nesat | NV | 17 | 6 | 21 |
2012 | Vicente | NV | 15 | 9 | 5 |
2012 | Kai-tak | NV | 14 | 7 | 19 |
2013 | Usagi | 10 | NF | 19 | NF |
2013 | Utor | 4 | 26 | 6 | 8 |
2014 | Hagibis | 5 | NF | 6 | NF |
2014 | Rammasun | NF | 12 | 5 | 17 |
2014 | Kalmaegi | 5 | 14 | 10 | 24 |
2015 | Linfa | 6 | 11 | 10 | NF |
2015 | Mujigae | 5 | 16 | 6 | 29 |
2016 | Nida | 7 | 11 | 13 | NF |
2016 | Haima | 8 | 7 | 17 | NF |
2017 | Mawar | 4 | NF | 10 | NF |
2017 | Merbok | 5 | NF | 10 | NF |
2017 | Hato | 3 | 15 | 7 | 6 |
2017 | Pakhar | NF | NF | NF | NF |
2017 | Khanun | 6 | 13 | 7 | 9 |
2018 | Mangkhut | 5 | 19 | 18 | 8 |
2018 | Bebinca | NF | NF | NF | NF |
Region | Year | Typhoon Name | Historical | Optimistic Scenario | Pessimistic Scenario | Worst-Case Scenario |
---|---|---|---|---|---|---|
Guangdong | 2015 | Mujigae | 43 (6–>800) | 176 (138–230) | 14 (13–15) | 4 (4–5) |
2013 | Usagi | 35 (5–255) | 164 (129–212) | 13 (12–14) | 4 (4–4) | |
2017 | Hato | 23 (5–84) | 146 (115–188) | 12 (11–13) | 4 (4–4) | |
Fujian | 1999 | Dan | 53 (9–>800) | >800 (676–>800) | 47 (41–57) | 4 (3–4) |
2016 | Meranti | 27 (7–192) | 717 (475–>800) | 35 (31–41) | 3 (3–3) | |
2005 | Longwang | 6 (3–17) | 192 (147–268) | 13 (12–14) | <2 (<2–<2) | |
Zhejiang | 2013 | Fitow | 59 (18–>800) | 46 (40–57) | 11 (10–12) | 11 (8–15) |
2004 | Rananim | 15 (7–52) | 18 (16–20) | 7 (6–7) | 10 (8–14) | |
2012 | Haikui | 11 (6–36) | 15 (14–17) | 6 (6–7) | 10 (8–14) | |
Jiangsu and Shanghai | 2005 | Matsa | 60 (18–>800) | 15 (14–17) | 12 (11–13) | 12 (11–13) |
2005 | Khanun | 11 (7–34) | 6 (5–7) | 6 (6–6) | 5 (5–5) | |
2012 | Haikui | 10 (6–24) | 6 (5–7) | 5 (5–5) | 5 (5–5) |
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Ng, K.S.; Leckebusch, G.C.; Ye, Q.; Ying, W.; Zhao, H. On the Use of Ensemble Predictions for Parametric Typhoon Insurance. Climate 2021, 9, 174. https://doi.org/10.3390/cli9120174
Ng KS, Leckebusch GC, Ye Q, Ying W, Zhao H. On the Use of Ensemble Predictions for Parametric Typhoon Insurance. Climate. 2021; 9(12):174. https://doi.org/10.3390/cli9120174
Chicago/Turabian StyleNg, Kelvin S., Gregor C. Leckebusch, Qian Ye, Wenwen Ying, and Haoran Zhao. 2021. "On the Use of Ensemble Predictions for Parametric Typhoon Insurance" Climate 9, no. 12: 174. https://doi.org/10.3390/cli9120174
APA StyleNg, K. S., Leckebusch, G. C., Ye, Q., Ying, W., & Zhao, H. (2021). On the Use of Ensemble Predictions for Parametric Typhoon Insurance. Climate, 9(12), 174. https://doi.org/10.3390/cli9120174