Nat. Hazards Earth Syst. Sci., 17, 467480, 2017 www.nat-hazards-earth-syst-sci.net/17/467/2017/ doi:10.5194/nhess-17-467-2017 Author(s) 2017. CC Attribution 3.0 License.
Maria Elena Martinotti1, Luca Pisano2,6, Ivan Marchesini1, Mauro Rossi1, Silvia Peruccacci1,Maria Teresa Brunetti1, Massimo Melillo1, Giuseppe Amoruso3, Pierluigi Loiacono3, Carmela Vennari2,4, Giovanna Vessia2,5, Maria Trabace3, Mario Parise2,a, and Fausto Guzzetti1
1Consiglio Nazionale delle Ricerche, Istituto di Ricerca per la Protezione Idrogeologica, via Madonna Alta 126, 06128 Perugia, Italy
2Consiglio Nazionale delle Ricerche, Istituto di Ricerca per la Protezione Idrogeologica, via Amendola 122, 70126 Bari, Italy
3Regione Puglia, Servizio di Protezione Civile, Via delle Magnolie 6/8, 70126 Modugno (Bari), Italy
4University of Naples Federico II, Naples, Italy
5University of Chieti-Pescara Gabriele DAnnunzio, Chieti, Italy
6University of Molise, Department of Biosciences and Territory, Contrada Fonte Lappone, Pesche (IS), Italy
apresent address: University Aldo Moro, Department of Earth and Environmental Sciences, Via Orabona 7, 70126 Bari, Italy
Correspondence to: Maria Elena Martinotti ([email protected])
Received: 23 September 2016 Discussion started: 31 October 2016
Revised: 8 February 2017 Accepted: 24 February 2017 Published: 22 March 2017
Abstract. In karst environments, heavy rainfall is known to cause multiple geohydrological hazards, including inundations, ash oods, landslides and sinkholes. We studied a period of intense rainfall from 1 to 6 September 2014 in the Gargano Promontory, a karst area in Puglia, southern Italy. In the period, a sequence of torrential rainfall events caused severe damage and claimed two fatalities. The amount and accuracy of the geographical and temporal information varied for the different hazards. The temporal information was most accurate for the inundation caused by a major river, less accurate for ash oods caused by minor torrents and even less accurate for landslides. For sinkholes, only generic information on the period of occurrence of the failures was available. Our analysis revealed that in the promontory, rainfall-driven hazards occurred in response to extreme meteorological conditions and that the karst landscape responded to the torrential rainfall with a threshold behaviour. We exploited the rainfall and the landslide information to design the new ensemblenon-exceedance probability (E-NEP) algorithm for the quantitative evaluation of the possible occurrence of rainfall-induced landslides and of related geohydrological hazards. The ensemble of the metrics produced
by the E-NEP algorithm provided better diagnostics than the single metrics often used for landslide forecasting, including rainfall duration, cumulated rainfall and rainfall intensity. We expect that the E-NEP algorithm will be useful for landslide early warning in karst areas and in other similar environments. We acknowledge that further tests are needed to evaluate the algorithm in different meteorological, geological and physiographical settings.
1 Introduction
Torrential rainfall is known to cause inundations, ash oods and different types of landslides, including debris ows, soil slides and rockfalls. Less known is that intense rainfall can cause sinkholes, a subtle hazard in many karst environments (Parise and Gunn, 2007; De Waele et al., 2011; Gutierrez et al., 2014; Parise et al., 2015). Here, we describe a series of rainfall events and their ground effects in the period from 1 to 6 September 2014 in the Gargano Promontory, a karst environment and a popular tourist area in the Puglia (Apulia) region, southern Italy. In a 6-day period, a sequence of
Published by Copernicus Publications on behalf of the European Geosciences Union.
Landslides, oods and sinkholes in a karst environment: the 16 September 2014 Gargano event, southern Italy
468 M. E. Martinotti et al.: Landslides, oods and sinkholes in a karst environment
four heavy rainfall events, separated by periods with little or no rainfall, caused multiple geohydrological hazards in the promontory, including landslides, ash oods, widespread inundation and sinkholes. The death toll amounted to two fatalities, and a number of people were forced to leave their homes or businesses. Urban areas, tourist resorts, roads and rails were inundated and damaged, causing severe economic consequences. We have investigated the spatialtemporal relationships between the rainfall trigger and the geohydrological hazards, and we have designed and tested an algorithm for improved early landslide warning.
The paper is organised as follows. After a brief description of the study area (Sect. 2), in Sect. 3 we present the main meteorological and rainfall characteristic of the heavy rainfall period that has resulted in landslides, ash oods, inundations and sinkholes in the Gargano Promontory, and we investigate the spatial-temporal relationships between the intense rainfall and its ground effects. Next, in Sect. 4 we present a new method to forecast the possible occurrence of rainfall-induced landslides and possibly the other associated geohydrological hazards based on the continuous monitoring of local rainfall conditions. This is followed, in Sect. 5, by a discussion of the results obtained, including general considerations on the effects of intense rainfall in karst environments and their possible predictability using the new rainfall-based forecasting method. We conclude (Sect. 6) summarising the lessons learnt.
2 Study area
The study area covers approximately 1600 km2 and encompasses the Gargano Promontory that extends for a few tens of kilometres into the Adriatic Sea, in the NE part of the Puglia region, southern Italy (Fig. 1). The Lesina and Varano coastal lakes separate the northern side of the promontory from the sea. Elevation in the area ranges from sea level to 1056 m a.s.l. with a mean value of about 400 m, and morphology is controlled by EW- and NWSE-trending faults (Funiciello et al., 1988; Brankman and Aydin, 2004). Due to the presence of a well-developed karst environment, surface hydrography is limited to a few short ephemeral drainages along the slopes that bound the elevated central plateau, and to the Candelaro River and minor drainages in the alluvial and coastal plains surrounding the promontory. In the area, sedimentary rocks crop out, chiey carbonate platform limestone, limited marl and residual terra rossa deposits (Bosellini et al., 1999). Soils, where present, are chromic Cambisols and Luvisols. Yearly cumulated rainfall ranges between 400 and 1200 mm, and mean annual air temperature varies from 10 to 17 C. The climate is Mediterranean to Mediterranean suboceanic. July and August are dry, and most of the precipitation falls as rainfall from September to November (Polemio and Lonigro, 2011). The promontory hosts the Gargano National Park and a number of towns and
Figure 1. Panel (a) shows the location of the study area (red rectangle) in Italy. Grey area is the Puglia (Apulia) region. Panel (b) shows the location of 39 rain gauges in the study area and the neighbouring area. Panel (c) shows the main rock types (colours) and place names in the study area. WGS84/Pseudo Mercator (EPSG: 3857).
villages that collectively represent an important touristic area and a signicant economic resource.
Although not particularly frequent or abundant compared to other areas in southern Italy, different geohydrological hazards have been reported in the Gargano Promontory. In recent historical times, destructive events occurred on 15 July 1972 (Bissanti, 1972) and 29 July 1976, when the city of Manfredonia, to the south of the promontory (Fig. 1), suffered inundations, and on 1012 September 1982, when the town of San Marco in Lamis was hit by torrential rain. Landslides were reported in 1931, 1935, 1950, 1952, 1962, 1963, 1972, 1996 and 1997 and oods in 1996, 1997, 1998, 2002, 2007 and 2011. The main landslide types are rockfalls, topples and small disrupted rock slides that originate primarily from steep rock slopes. Flash oods and coastal oods occur in response to intense rainfall, but are not very frequent in the historical record. The karst environment favours the formation of sinkholes, i.e. karst forms also known as dolines (Ford and Williams, 2007), with a local density of up to 100
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Figure 2. Meteorological setting for the period 16 September 2014 over central and southern Italy. Images show Meteosat Second Generation (MSG) visible (VIS) 0.6 m for (a) 1 September 2014, 12:00 UTC, (b) 2 September 2014, 12:00 UTC, (c) 3 September 2014, 12:00 UTC, (d) 6 September 2014, 12:00 UTC. Green lines show geopotential height of 500 hPa pressure level. Black lines show mean sea level pressure. Light brown lines show geographical boundaries. Source: http://www.eumetrain.org
Web End =http://www.eumetrain.org .
dolines per square kilometre (Castiglioni and Sauro, 2000;
Simone and Fiore, 2014). Sinkhole features in the promontory range in size from small to very small, extending a few tens of square metres, to large and deep features including the Dolina Pozzatina with a depth of 100 m and a perimeter of about 1850 m, and to large polje, including the SantEgedio polje, near San Giovanni Rotondo (Fig. 1).
3 Description of the events
3.1 Meteorological settings
The meteorological event that brought torrential rainfall in the Gargano area began on 1 September 2014, when a perturbed nucleus originating from northern Europe moved to lower latitudes and impacted the Italian peninsula, starting from the northern and eastern sectors. In the early afternoon of 1 September, the central and southern parts of the Italian peninsula were rst affected (Fig. 2a). Between 2 and 3 September, the low-pressure vortex moved towards the Ionian Sea and then to the Balkans and the Hellenic peninsula. The meteorological situation determined an inow of perturbed masses of air over most of the Adriatic regions (Fig. 2b, c). The anticlockwise circulation affected most of central and southern Italy and persisted until 6 September.
Residual perturbed meteorological conditions remained over the southern Italian regions; in particular those facing the Ionian Sea, with isolated minor precipitations until the late morning of 7 September (Fig. 2d).
3.2 Rainfall events
The perturbed meteorological conditions over Italy resulted in torrential precipitation in the Gargano Promontory, with cumulated rainfall exceeding 500 mm in the 6-day period 16 September (Fig. 3). To study the intense rainfall period, we used hourly rainfall records available for 39 rain gauges pertaining to the national network of rain gauges operated in the area by the Italian National Department of Civil Protection and the Puglia Regional Government. Inspection of the rainfall records and of the geographical distribution of the precipitation (Fig. 3) revealed that (i) heavy rainfall persisted for the entire observation period, hitting different parts of the promontory at different times, and that (ii) seven periods could be singled out, including four rainfall (wet) periods and three no-rainfall (dry or nearly dry) periods (Fig. 3). The rainfall periods ranged from 8 to 49 h and were separated by dry periods lasting between 11 and 19 h (Table 1).
The rst rainfall period (I) lasted 8 h, from 12:00 to 20:00 UTC+2 on 1 September. In this wet period, around
50 mm of rain was measured by most of the rain gauges, for
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470 M. E. Martinotti et al.: Landslides, oods and sinkholes in a karst environment
Table 1. Characteristics of seven periods in the sequence of rainfall events that hit the Gargano Promontory between 1 and 6 September 2014. Start and end times are given in UTC+2. Rain/dry lists rainfall, wet (R) and no-rainfall, dry or nearly dry (D), periods. Rainfall gives
the range (minimummaximum) of the cumulated rainfall in each period. Intensity is the average intensity in the period for the maximum cumulated rainfall. See also Figs. 3 and 7.
Start End Length Rain/dry Rainfall Intensity
Period day, hour day, hour hour mm mm h1 I 1 Sep, 12:00 1 Sep, 20:00 8 R 2050 6.25
II 1 Sep, 20:00 2 Sep, 15:00 19 D 06 0.31 III 2 Sep, 15:00 4 Sep, 16:00 49 R 50440 8.97 IV 4 Sep, 16:00 5 Sep, 04:00 12 D 06 0.50 V 5 Sep, 04:00 5 Sep, 16:00 12 R 10130 10.83 VI 5 Sep, 16:00 6 Sep, 03:00 11 D 020 1.82 VII 6 Sep, 03:00 6 Sep, 14:00 11 R 50140 12.73
an average rainfall intensity of about 6.25 mm h1 (Fig. 3, Table 1). After a period of 19 h without rainfall (II), the second rainfall period started (III) and was particularly severe in the SW part of the promontory. About 400 mm was measured at the San Giovanni Rotondo and the San Marco in Lamis rain gauges, corresponding to an average intensity exceeding 8.2 mm h1, with peak values exceeding 40 mm h1.
Relatively smaller amounts of rainfall were recorded at the Cagnano Varano (240 mm, most of which between 05:00 and 12:00 UTC+2 on 4 September) and the Monte SantAngelo
(200 mm) rain gauges. The Vico del Gargano and the Bosco Umbra rain gauges, located in the NE part of the promontory, recorded approximately 50 mm of rain in the period (Figs. 1,3).
Following a dry period of 12 h (IV), rainfall started again
on 5 September (V), and this time it was most abundant in the NE part of the promontory. In this period, the Bosco Umbra and Vico del Gargano rain gauges measured slightly more and slightly less than 100 mm of rain, respectively, corresponding to a rainfall intensity exceeding 8.0 mm h1.
On the opposite, southern side of the promontory, the San Marco in Lamis rain gauge recorded only 10 mm of rainfall.In the same period (V), the San Giovanni Rotondo and Monte SantAngelo rain gauges, in the SE part of the promontory, measured about 50 mm of rainfall. Period V was followed by an 11 h nearly dry period (VI) which ended at 03:00 UTC+2
of 6 September 2014, when intense rainfall started again. The last rainfall period (VII) lasted until 14:00 UTC+2. In the
11 h period all the considered rain gauges measured more than 50 mm of rain, with the maximum cumulated value recorded by the Vico del Gargano rain gauge, where 140 mm of rain was measured, corresponding to a rainfall intensity exceeding 12.0 mm h1.
A rank analysis of rainfall measurements for six rain gauges in the 7-year period from April 2009 to April 2016, highlighted the severity of the 6-day rainfall period (Fig. 4).Except for the Monte SantAngelo rain gauge, located in the southern part of the promontory, the 16 September rainfall
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Figure 3. Rainfall and hydrological conditions for the period 16 September 2014 in the Gargano Promontory. (af) Hourly rainfall measurements for six rain gauges in the study area. (g) Cumulated rainfall for the same rain gauges; inset shows location of the rain gauges. (h) River water level at two gauging stations along the Candelaro River; inset shows location of gauging stations. In the charts, shaded areas are rainfall (wet) periods (I, III, V, VII) and white areas are no-rainfall (dry) periods (II, IV, VI).
M. E. Martinotti et al.: Landslides, oods and sinkholes in a karst environment 471
Figure 5. Map showing location of event landslides, oods and sinkholes triggered by the 16 September 2014 intense rainfall event in the Gargano Promontory. WGS84/Pseudo Mercator (EPSG:3857).
The consequences of the storm of September 2014 were reported soon after their occurrence, and a rst analysis was carried out immediately in its aftermath. The collection of information was obtained searching different sources: (i) eld surveys, (ii) technical reports produced by geologists, and(iii) online national, regional and local newspapers.
The collected information allowed the geographical coor
dinates of each phenomenon, its occurrence date and the type of hazard to be reconstructed.
No geological and geomorphological details were available for the landslides, especially when the information was found in newspapers. A specic landslide catalogue was built and managed in a GIS environment. The catalogue lists the following items: (i) event identication code, (ii) source of information, (iii) landslide location (geographic coordinates, municipality, province), (iv) occurrence date and time (if available), (v) spatial and temporal accuracy and (vi) landslide type.
As concerns oods, the main information consisted of the areas of interest, the reported damage and the extent of the ooded territory. Information on sinkholes included the occurrence site obtained through eld surveys (high geographical accuracy) and the occurrence time, which was mostly based upon interviews with local inhabitants (low to medium temporal accuracy).
Flooding was widespread in the Candelaro catchment that bounds to the SW the Gargano Promontory (Fig. 5). Two hydrological gauging stations, one located where the Candelaro River crosses State Road SS 272 (W of the Gargano range) and one where it crosses the Provincial Road SP 60 near to the outlet in the Manfredonia Gulf (Fig. 5), measured very high water levels. The upstream gauge along the SS 272 measured a rst peak of 5.30 m at 02:00 UTC+2 on
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Figure 4. Rank order analysis of rainfall events in the Gargano Promontory from April 2009 to April 2016. Coloured bars show cumulated event rainfall for six rain gauges: (a) Bosco Umbra
BU, (b) Cagnano Varano CV, (c) Monte SantAngelo MA,(d) San Giovanni Rotondo SR, (e) San Marco in Lamis SM and (f) Vico del Gargano VG. Bars arranged from high (left) to low (right) values. Colours identify six categories of cumulated rainfall proposed by Alpert et al. (2002). Legend: T is torrential rainfall (minimum 128 mm day1), HT is heavy
torrential (64128 mm day1), H is heavy (3264 mm day1), MH is moderateheavy (1632 mm day1) and LM is lightmoderate (416 mm day1). Black bars with red asterisks show the 16
September 2014 period.
period exhibited the highest cumulated rainfall in the observation period. Adopting the classication proposed by Alpert et al. (2002), the rainfall was torrential in all the considered rain gauges and, for three of the rain gauges, it was the only torrential event in the (short) record available (Fig. 4).
3.3 Landslides, oods and sinkholes
The sequence of intense rainfall events resulted in a number of oods, ash oods, landslides and sinkholes and caused two ood fatalities at Peschici and at Carpino (http://polaris.irpi.cnr.it/
Web End =http://polaris. http://polaris.irpi.cnr.it/
Web End =irpi.cnr.it/ ) and severe socio-economic damage (Fig. 5). Throughout the promontory, the road and railway networks were interrupted at several sites by inundations (Fig. 6a) and landslides, and many road underpasses were clogged by debris and sediments (Fig. 6b). In several towns and dwellings the inhabitants were evacuated from their homes, and a number of touristic resorts were inundated by water, mud and debris.
472 M. E. Martinotti et al.: Landslides, oods and sinkholes in a karst environment
Figure 6. Examples of geohydrological hazards triggered by the 16 September 2014 torrential rainfall in the Gargano Promontory. (a) Flood plain inundated by the Candelaro River (photograph: Regione Puglia). (b) Inundation in Rodi Garganico (photograph: Regione Puglia). (c, f) Shallow landslides in the town of San Marco in Lamis. (d) Sinkhole in San Marco in Lamis (photograph: M. Parise). (e) Shallow landslide in Cagnano Varano (photograph: Regione Puglia). (g) Sinkhole in Monte SantAngelo (photograph: M. Parise).
4 September, followed by a slightly higher peak of 5.50 m at 06:30 UTC+2. The water level remained very sustained
until 09:00 UTC+2 and then it diminished (Fig. 3h). At the
downstream gauging station located along SP 60, about 30 km downstream from the upstream gauge, a peak of 3.77 m was measured at 16:00 UTC+2 on 4 September, about 10 h
later than the peak measured by the upstream gauge. We justify the (signicant) time difference in the peak discharge by the widespread inundation of the Candelaro River plain (Fig. 6a).
Inundations were also severe along the northern coastal area, between Varano Lake and Vieste, and particularly between the towns of Cagnano Varano and Carpino (Fig. 5). Near Varano Lake, large agricultural areas were inundated. Along the northern coast of the promontory, ash oods produced by small torrents occurred mostly on 56 September. In the morning of 5 September, the Macchio Torrent overowed and inundated Vieste, and several touristic sites. Overowing of minor torrents and ditches was reported in the early hours of 6 September in the towns of Peschici, Vico del Gargano and Rodi Garganico.
The torrential rain caused a number of landslides, mostly shallow landslides (Fig. 6c, e, f). Overall, we collected in-
formation on 46 landslides, including 14 earthows, 14 debris ows, 11 soil slides, 4 rockfalls, 1 mudow and 2 slope failures of undetermined type. This is a subset of all the event landslides in the Gargano Promontory. Based on the type of failures, we hypothesise that all the landslides were from rapid to extremely rapid. Most of the mapped landslides were in the municipalities of San Marco in Lamis, Ischitella and Cagnano Varano. Landslides were also reported near San Giovanni Rotondo, Rignano Garganico and Rodi Garganico (Fig. 5).
We searched information on the time or period of occurrence of the landslides. However, for most of the landslides the time or period of occurrence remains unknown or suffers from very large uncertainty. For only nine landslides we obtained reasonably accurate information on the period of occurrence of the slope failures. On 34 September, four landslides occurred near San Marco in Lamis, along SS 272, most probably in the 3 h period between 23:00 and 02:00 UTC+2.
We consider these landslides representative of a larger cluster in the same area (cluster A). On 4 September, a landslide occurred between 05:00 and 16:00 UTC+2 near Cagnano
Varano (cluster B). In the same day, a single landslide occurred in the municipality of San Giovanni Rotondo at an undetermined time between 14:00 and 21:00 UTC+2 (clus
ter C). Lastly, three landslides occurred in the night between 5 and 6 September and most probably between 23:00 and 05:00 UTC+2, in the municipalities of Ischitella and Rodi
Garganico (cluster D). We attribute the scarce temporal information and the poor accuracy of the information on the time of occurrence of the failures to the difculty of reaching some of the places where the landslides occurred and to the fact that many landslides occurred in the evening or during the night and were reported only several hours after the event.
The torrential rainfall also caused sinkholes. We mapped 10 small sinkholes near the villages of San Marco in Lamis and Monte SantAngelo (Fig. 5). Based on their morphology and shape, the sinkholes were classied as collapse or cover-collapse sinkholes (Gutirrez et al., 2008, 2014). At San Marco in Lamis, four sinkholes affected the lower part of a pre-existing karst depression. The deepest sinkhole was about 6 m deep, 5 m wide and exposed limestone and residual terra rossa deposits that represent the upper part of the epikarst (Williams, 2008) (Fig. 6d). Other sinkholes were less developed and were detected and mapped locally only based upon morphological considerations. Due to the remote areas where the sinkholes occurred, their limited sizes (Fig. 6g) and the difculty of detecting them, no accurate information is available on the time or period of occurrence of the sinkholes.
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Figure 7. Analysis of the spatial and temporal distribution of the event rainfall and of the triggered event landslides. See text for explanation.
3.4 Spatial and temporal distributions of rainfall and geohydrological hazards
To help investigate the effect of the changing spatial and temporal distribution of the rainfall on the location of the landslides, oods and sinkholes, we prepared Fig. 7, which portrays, for each period in the sequence of rainfall events (Sect. 3.2), maps showing the spatial distributions of the mean rainfall intensity (in mm h1), the cumulated rainfall
for the single period and from the beginning of the event (in mm) and the location of the landslides that occurred in each period and in previous periods.
An inspection of Fig. 7 reveals that the total cumulated rainfall, exceeding 100 mm in large parts of the promontory, was the result of separate rainfall events that hit different parts of the promontory at different times. The rst rainy period (I) was more widespread but characterised by an overall moderate cumulated rainfall not exceeding 50 mm
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474 M. E. Martinotti et al.: Landslides, oods and sinkholes in a karst environment
and rainfall intensity not exceeding 6.2 mm h1. No landslides or oods were reported during the rst rainy period.The second (III) and the third (V) rainy periods were more localised; the second was in the central part of the promontory (San Marco in Lamis and San Giovanni Rotondo) and the third was in the NE sector of the promontory (Ischitella, Vico del Gargano and Vieste), and were both characterised by high values of cumulated rainfall (exceeding 400 mm in the second and 130 mm in the third period) and of rainfall intensity ( exceeded 8.5 mm h1 for the second period and10.5 mm h1 for the third period, respectively). Landslides were reported in the central (cluster A) and in the northern (cluster B) parts of the promontory during the second rainfall period (III). In the same period the upstream hydrological gauging station along the Candelaro River measured high water ows exceeding 5.0 m (Fig. 2), about 2 h after the maximum hourly rainfall measured at the San Marco in Lamis rain gauge, at 24:00 UTC+2 on 3 September. The landslides
occurred in areas where the total event cumulated rainfall exceeded 400 mm (for cluster A) and 200 mm (for cluster B).
In the central part of the promontory, landslides were also reported (cluster C) during the second dry period (IV). Given the poor temporal accuracy of these landslides (i.e. between 14:00 and 21:00 UTC+2 on 4 September), we cannot ex
clude that the failures occurred during the last few hours of the previous rainfall period (III). The hypothesis is supported by the fact that the San Giovanni Rotondo rain gauge measured rainfall until 15:00 UTC+2 on 4 September (Fig. 2).
The last rainfall period (VII) was again characterised by widespread rainfall throughout most of the promontory with a distinct peak in the NE sector exceeding 130 mm. Where rainfall intensity was particularly intense (> 11 mm h1) in the NE part of the promontory, between Rodi Garganico and Peschici, landslides were also reported (cluster D).
4 Geohydrological hazards forecasting algorithm
We used the rainfall records and hazard information available for the Gargano event to design and test an algorithm for the possible operational forecasting of rainfall-induced landslides and other geohydrological hazards, including ash oods and sinkholes
4.1 The E-NEP algorithm
The ensemblenon-exceedance probability (E-NEP) algorithm exploits a standard rainfall record obtained by a rain gauge to trace in time the probability of possible landslide occurrence and of related geohydrological hazards. For the purpose, for each time ti, E-NEP calculates the event rainfall duration D, and the corresponding event cumulated rainfall E, for increasing antecedent periods before ti, from ti to ti + T , in d time steps, with T the maximum length of
the considered antecedent rainfall period and d the time step
used to increment the duration of the antecedent rainfall period. For each rainfall-durationevent-cumulated-rainfall pair the corresponding non-exceedance probability (NEP) p(D,E) is obtained using the probabilistic approach proposed by Brunetti et al. (2010) and modied by Peruccacci et al. (2012) for the denition of empirical rainfall thresholds for possible landslide occurrence (Guzzetti et al., 2007).The set of the NEP values (i.e. {NEP} = {p(D,E)}) is then
used to determine an ensemble of metrics, including the maximum value of the NEP (NEPmax), the 10th, 25th, 50th, 75th and 90th percentiles (NEP10, NEP25, NEP50, NEP75, NEP90), and the rainfall duration (DNEPmax) associated with NEPmax, that collectively are exploited for landslide forecasting. The process is repeated at regular time intervals (z, where ti+1 = ti + z), allowing the temporal evolution of the
probability of possible occurrence of rainfall-induced landslides and of related geohydrological hazards to be followed.
Figure 8 portrays the logical schema for the E-NEP algorithm, which consists of two nested loops. First, the maximum length of the considered rainfall period, T (in hours), the time step to increment the duration of the considered antecedent rainfall, d (in hours) and the time interval before the next set of (D,E) pairs is computed, z (in hours), are set to user-dened values. We stress that the three time (duration) variables are independent, with the only constraint that d T . Next, the external loop (cyan in Fig. 8) starts,
the rainfall duration D is set to d and {NEP} is set to null
(an empty set). Next, the internal loop (orange in Fig. 8) starts and for the given rainfall duration D, the corresponding cumulated rainfall E is determined, and the probability of landslide occurrence p(D,E) is computed adopting the method proposed by Brunetti et al. (2010) and Peruccacci et al. (2012) and stored in {NEP}. The rainfall duration D is
then incremented (D = D + d) and tested to verify whether
it is larger than T . If D T , the internal loop is repeated
using the current value of D and the corresponding E; otherwise (D > T ) the loop ends, and the ensemble of metrics of {NEP} (NEP10, NEP25, NEP50, NEP75, NEP90, NEPmax)
and the value of DNEPmax are calculated. The external loop is then repeated after the user-dened time interval of z hours.
Figure 9 exemplies the application of the E-NEP algorithm to a specic rainfall record, at a given time ti (i.e. the application of the orange internal loop of Fig. 8), for an antecedent period T = 96 h, with d = 1 h. E-NEP calculates the
cumulated event rainfall E for increasing durations D from 1 (ti 1) to 96 h (ti 96), every hour (time step d = 1). The in
dividual (D,E) pairs are plotted as grey dots in Fig. 9d. For each pair, the corresponding NEP, the non-exceedance probability of possible landslide occurrence, was calculated and is shown by the blue squares in Fig. 9d. To further clarify the operations performed by the E-NEP algorithm, the bar charts in Fig. 9a, b, c show, for the same time ti, three antecedent rainfall periods corresponding to durations of D = 6 h (red
bars), D = 16 h (green bars) and D = 44 h (yellow bars). The
corresponding cumulated event rainfall (red, green, yellow
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Figure 8. Logical scheme for the E-NEP algorithm. D is rainfall duration in hours. E is cumulated rainfall in milimetres. T is maximum length of the considered rainfall period in hours. d is the time step used to increment the duration of the rainfall period, up to T in hours. z is the time interval before the next set of (D,E) pairs is computed, in hours. {NEP} is the set of non-exceedance probability
(NEP) values obtained for each (D,E) pair adopting the method proposed by Brunetti et al. (2010) and Peruccacci et al. (2012). Statistics of {NEP} are 10th, 25th, 50th, 75th and 90th percentiles.
and NEPmax is the maximum value of NEP. DNEPmax, event rainfall duration corresponding to NEPmax. External (blue) loop is run every z hours or fraction of hour. Internal (orange) loop runs from d to T , in d time steps. In Figs. 9, 10 z and d were set to 1 h and T to 96 h. See text for explanation.
circles) and the associated non-exceedance probability values (red, green, yellow squares) are shown in Fig. 9d. Lastly, the box plot to the right of Fig. 9d portrays (i) the ensemble of metrics of {NEP}: NEP10, NEP25, NEP50, NEP75 and NEP90
and the maximum value of the non-exceedance probability, NEPmax. In Fig. 9d, the green square identies NEPmax, i.e.
the non-exceedance probability corresponding to the most critical rainfall condition for possible landslide occurrence in the considered rainfall period. The corresponding duration (D = 16 h) represents the DNEPmax value.
4.2 Application and discussion of the E-NEP algorithm
We applied the E-NEP algorithm to the 13-day period between 31 August and 12 September, which encompasses the entire series of rainfall events that hit the Gargano Promontory. We applied the algorithm to synthetic hourly
rainfall records reconstructed for the locations of the four spatial-temporal landslide clusters identied in the study area (Fig. 7). To reconstruct the synthetic rainfall records, we interpolated the hourly rainfall measurements obtained by 39 rain gauges in the Gargano Promontory and the surrounding regions at the landslide locations. For that purpose, we used a standard inverse weighted distance (IDW) spatial interpolator (Shepard, 1968) to obtain hourly rainfall values on a regular 500 m 500 m grid. Next, the hourly rainfall grids were
sampled at the grid cells selected to represent the four landslide clusters A, B, C and D, and the synthetic hourly rainfall time series were reconstructed for each landslide cluster.
For our analysis, and for each landslide cluster, ti ranged from 31 August, 00:00 UTC+2 to 11 September,
24:00 UTC+2, in regular 1 h time intervals (z), correspond
ing to a total of 288 time intervals. For each ti, E-NEP computed the NEP10, NEP25, NEP50, NEP75 and NEP90 percentiles, the NEPmax and the corresponding DNEPmax.
Results of the analysis of the four landslide clusters are shown in Fig. 10, in which the single plots show, from top to bottom, the temporal evolution of (i) the measured and the cumulated rainfall, (ii) the NEP10, NEP25, NEP50, NEP75,
NEP90 percentiles (shown in ranges, by two different shades of blue and by the thick blue line) and NEPmax (purple line) and (iii) the corresponding DNEPmax (green line). Figure 10 also shows (i) with grey areas, the possible period of occurrence of the landslides, a measure of the uncertainty in the failure occurrence time and (ii) with a vertical blue line the time of the high peak measured by the Candelaro gauge along SS 272 (Fig. 10a, Fig. 3).
For cluster A, encompassing landslides occurred along State Road SS 272 and SP 48 near San Marco in Lamis; a short rainfall burst hit the landslide area at 12:00 UTC+2 on
1 September and stopped shortly afterward (Fig. 10a1, I in Fig. 3). In this period, the NEPmax increased rapidly to 0.15 and decreased immediately afterwards due to a lack of rainfall (Fig. 10 a2). Next, following a dry period of 19 h (II in Fig. 3), the main rainfall event started at 16:00 UTC+2 on 2
September (Fig. 10a1, III in Fig. 3). As a result of this second, intense rainfall event all the NEP percentiles increased abruptly and signicantly (Fig. 10a2), with NEPmax exceeding 0.99 at 23:00 UTC+2 on 3 September. The landslides of
cluster A followed shortly afterward.
Following the landslide occurrence, all the NEP values remained high for 12 h. When the rainfall stopped, at 14:00 UTC+2 on 4 September, the NEP percentiles de
creased, beginning with NEP10 and continuing with the other (larger) percentiles. NEPmax decreased below 0.25 at 21:00 UTC+2 on 8 September. The analysis of the tempo
ral trend of DNEPmax (Fig. 10a3), the rainfall duration corresponding to largest NEP, is of interest. DNEPmax (i) increased in response to the rst rainfall period (I in Fig. 3), (ii) kept rising during the rst dry period (II in Fig. 3), (iii) dropped to zero during the second (main) rainfall period and precisely when the rainfall intensity reached a maximum value
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476 M. E. Martinotti et al.: Landslides, oods and sinkholes in a karst environment
max, (iii) the range NEP25-NEP75 was narrow, (iv) there was a sudden increase of all NEP percentiles (Fig. 10a2) except NEP10 (Fig. 10c2) and (v) the landslides occurred after the DNEPmax had started to rise following a previous sudden drop. We consider these observations diagnostic of the rainfall conditions that have resulted in landslides (and other geohydrological hazards) in the Gargano Promontory in the period 16 September 2014.
5 Discussion
The analysis of the rainfall records and the geohydrological hazard information available for the Gargano Promontory rainfall events between 1 and 6 September 2014 (Sect. 3) and their application to test the ensemblenon-exceedance probability (E-NEP) algorithm (Sect. 4) allows for general and specic considerations.
We rst observe that landslides in the four examined clusters occurred for different levels of the cumulated event rainfall, E (Fig. 7, Table 1). We also observe that rainfall intensity was very high in the period of the failures or immediately before it, but also that periods of high rainfall intensity were not associated with (known) landslides (see e.g. clusters C and D; Fig. 10b, c). We conclude that, in the case of the investigated rainfall events, single metrics like the event cumulated rainfall E and the rainfall intensity I, on their own, were not singularly diagnostic of the rainfall conditions that have resulted in the known landslides.
As discussed in Sect. 4.2, a number of potentially diagnostic observations drawn from the ensemble of metrics produced by the E-NEP algorithm were common to all the examined landslide clusters, including the facts that (i) all the landslides occurred when NEPmax was close to its maximum possible value, and that (ii) shortly before landslide occurrence there was a sudden increase in all NEP percentiles (except NEP10 locally, Fig. 10c2), NEP50 was close to NEPmax, and the interquartile range NEP25NEP75 was narrow. Following landslides occurrence, NEPmax remained typically sustained for long periods, but the NEP percentiles dropped more or less rapidly, even when additional rainfall fell in the area.We observe that no information on landslide occurrence was reported when NEP50 was low or very low. A further observation is that landslides occurred shortly after the DNEPmax
had started to rise following a previous drop. A sudden drop of DNEPmax is always related to an increase in NEPmax that is determined by an increase in the rainfall intensity. However, a small increase in rainfall intensity may not be sufcient to cause DNEPmax to drop. We argue that visual analysis of the temporal evolution of DNEPmax can be exploited to provide indications of the rapid change of the possible critical rainfall conditions that may lead to slope failures shortly afterwards.
We conclude that the ensemble of the metrics produced by the E-NEP algorithm provides better diagnostic results than the single metrics often used for landslide forecasting, in-
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Figure 9. Exemplication of the E-NEP algorithm used to provide a non-exceedance probability (NEP) of possible landslide occurrence. Panels (a), (b) and (c) show the same rainfall record and three antecedent conditions corresponding to durations of (a) D = 6 h (red
bars), (b) D = 16 h (green bars) and (c) D = 44 h (yellow bars).
Panel (d) shows rainfall (D,E) pairs (grey dots); red, green and yellow dots represent the (D,E) pairs corresponding to the conditions shown in (a), (b) and (c). Blue squares show the corresponding nonexceedance probabilities (NEP). Green square represents NEPmax.
See text for explanation.
of 7 mm h1 (III in Fig. 3), (iv) increased steadily for 94 h and (iv) remained high until almost the end of the considered period.
We observe that landslides in cluster A occurred when the NEPmax was close to its maximum possible value (NEPmax = 1), a very critical condition for possible land
slide initiation (Brunetti et al., 2010; Peruccacci et al., 2012). Just before the landslide occurrence (i) NEP50 was close to NEPmax; i.e. the median value was close to the maximum value of the non-exceedance probability, (ii) the inter-percentile ranges NEP10NEP90 and NEP25NEP75 were narrow and (iii) there was a sudden increase of all NEP values, particularly of the lower percentiles (i.e. NEP10, NEP25)
(Fig. 10a2). We further observe that landslides in this cluster occurred after DNEPmax began to rise following a sudden drop (Fig. 10a3).
Inspection of the other plots in Fig. 10 reveals signicant similarities in the temporal evolution of the metrics computed by the E-NEP algorithm for the other three landslide clusters, when compared to the same metrics computed for cluster A. Specically, (i) all landslides occurred when the NEPmax was close to its maximum value, and immediately before landslide occurrence (ii) NEP50 was close to NEP-
M. E. Martinotti et al.: Landslides, oods and sinkholes in a karst environment 477
Figure 10. Results of the application of the E-NEP algorithm to synthetic rainfall records reconstructed for the locations of four landslide clusters. (a) Landslide cluster A, (b) landslide cluster B, (c) landslide cluster C, (d) landslide cluster D. Each panel shows, from top to bottom,(1) hourly rainfall record (blue bars) and cumulated event rainfall (red line); (2) median, E-NEP50 (orange line) and maximum, E-NEPmax (purple line) values of the non-exceedance probability with ranges E-NEP25E-NEP75 (dark blue shade) and E-NEP10E-NEP90 (light blue shade); (3) rainfall duration corresponding to the most critical rainfall condition, D-NEPmax (green line). The period of occurrence of the landslides (identied by the landslide road sign) is shown by a grey shaded area. The occurrence time (and the associated uncertainty) of nine landslides (cf. Sect. 3.3) is used to dene the landslide occurrence period of the four clusters. The time of occurrence of peak ow (identied by the ood road sign) is shown by the vertical blue line. See text for explanation.
cluding rainfall duration, cumulated event rainfall and rainfall intensity (Guzzetti et al., 2007). This is visually portrayed in Fig. 10, where the temporal trend of the cumulated rainfall is less diagnostic than the corresponding trends of the NEPmax or the DNEPmax in forecasting the periods of landslide occurrence.
We maintain that the E-NEP algorithm is potentially useful for near-real-time landslide warning, but we acknowledge that more investigations are required to test the algorithm in different meteorological, geological and physiographical settings. The sequences of closely spaced rainfall events in the Gargano Promontory covered a long period (6 days), and this made it particularly well suited for the design and testing of
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478 M. E. Martinotti et al.: Landslides, oods and sinkholes in a karst environment
the E-NEP algorithm. The sequence of rainfall events was also the result of a relatively simple meteorological setting.More tests are needed to evaluate the performance of the ENEP algorithm for shorter and longer rainfall periods, and in different and more complex meteorological conditions.
We stress that the E-NEP algorithm was designed to attempt to forecast rainfall conditions for the possible occurrence of landslides that react rapidly to a rainfall input. These are typically shallow landslides, including soil slides and debris ows. E-NEP was not designed to attempt to evaluate other landslides that react slowly or very slowly to a rainfall input, including, for example, deep-seated landslides, shallow landslides in stiff clay. Also, E-NEP was not designed to attempt to predict landslides caused by meteorological triggers other than intense rainfall, including, for example, rain-on-snow events or rapid snow-melt events. However, we expect that E-NEP can be adapted to forecast shallow landslides caused by intense rainfall even in specic, local conditions (e.g. in areas burnt by wildres; Cannon et al., 2010; De Graff et al., 2013; Moody et al., 2013), provided that sufcient information is available to apply the method proposed by Brunetti et al. (2010) and Peruccacci et al. (2012).
Analysis of the rainfall conditions that have resulted in landslides, ash oods, inundation and sinkholes in the investigated period in the Gargano Promontory revealed that the geohydrological hazards occurred in response to extreme rainfall conditions. This is conrmed by the fact that (i) rainfall was torrential (Alpert et al., 2002) (Fig. 4) and (ii) the geohazards and particularly the landslides occurred when all the NEP percentiles were close to the possible maximum value of the non-exceedance probability of possible landslide occurrence (Fig. 10), which represent very severe rainfall conditions. The available record of historical landslides and oods indicates that these are not very frequent or abundant compared to other areas in southern Italy. We conclude that in the Gargano Promontory meteorologically driven hazards occur in response to extreme (i.e. rare) meteorological conditions. For rainfall-driven hazards, the landscape in the Gargano Promontory exhibits a threshold behaviour that can be modelled conceptually by a Heaviside step function (Abramowitz and Stegun, 1972). For light to heavy rainfall events (Alpert et al., 2002) geohydrological hazards do not occur or are rare and minor, whereas for heavytorrential to torrential rainfall events they are abundant and particularly disruptive. We attribute the threshold-based behaviour to the karst environment that dominates the landscape in the promontory.
In the karst environment of the promontory, rainfall inltration is efcient even for high-intensity rainfall rates. This limits the occurrence of landslides, except for very intense(i.e. extreme) rainfall events. On the other hand, the arrival of a great amount of rainfall in a setting typically characterised by water inltrating within the rock mass through the network of conduits and joints highly facilitates the formation of ash oods, particularly in small catchments, as has been fre-
quently registered also in other parts of Puglia (Parise, 2003;
Mossa, 2007). Further, karst aquifers have very poor retention capacity. These and other characteristics allow the ash oods to be identied as one of the main hazards in karst terrains (Fleury et al., 2013; Gutierrez et al., 2014; Parise et al., 2015).
In the sinkholes, the presence of residual soils varies largely, depending on the location, size and depth of the sinkholes. Where the inltration is reduced, partial or total inundation of the sinkholes occurs. These local inundations are difcult to detect because they last only for short periods and because they often go unnoticed in the rural, scarcely populated landscape of the promontory.
The torrential rainfall has triggered sinkholes in the Gargano Promontory (Fig. 6d, g). Accurate information on the time or period of occurrence of the sinkholes is not available, and even the simple detection of the sinkholes was hampered by their small size and the remote location of the events. However, sinkholes represent a subtle and serious hazard in the promontory and in other karst areas (Parise and Gunn, 2007; Gutierrez et al., 2014; Parise et al., 2015), and establishing methods and procedures for their possible forecasting is of primary interest in karst environments. Based on the analysis of the 16 September 2014 Gargano rainfall period, we conrm that in the promontory, and in similar karst areas, torrential rainfall can trigger sinkholes, and we hypothesise that approaches based on the near-real-time monitoring of rainfall (e.g. the E-NEP algorithm) can be used to forecast the possible occurrence of rainfall-induced sinkholes. We acknowledge that an analysis of a larger number of events is required to test this hypothesis.
6 Conclusions
We studied a period of torrential rain between 1 and6 September 2014 in the Gargano Promontory, Puglia, southern Italy, which caused a variety of geohydrological hazards, including landslides, ash oods, inundations and sinkholes. We obtained information on the location of the events through eld surveys and the analysis of anecdotal information obtained from various sources. The temporal information varied among the hazards. For inundations the time or period of occurrence were known from gauge data (Fig. 3h), and for ash oods from anecdotal sources (Fig. 6a, b). For landslides, the period of occurrence was inferred from anecdotal sources for only nine (out of 46) slope failures and with signicant uncertainty. No information on the time or period of occurrence was available for the sinkholes. We conclude that the ability to obtain accurate temporal information for the different hazards, which is important for establishing and validating early warning systems, depended on the extent and the location of the different hazards. The temporal information was most accurate for ooding along the Cande-
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M. E. Martinotti et al.: Landslides, oods and sinkholes in a karst environment 479
laro River (Fig. 3h), followed by ash oods and landslides (Fig. 3), and was not available for the sinkholes.
We used the rainfall and the landslide information available to us to design and test the new ensemblenonexceedance probability (E-NEP) algorithm for the quantitative evaluation of the probability of possible occurrence of rainfall-induced landslides and of related geohydrological hazards (e.g. ash oods, sinkholes). For the investigated rainfall events, the ensemble of the metrics produced by the E-NEP algorithm provided better diagnostics than the single metrics often used for landslide forecasting, including rainfall duration, cumulated rainfall and rainfall intensity (Guzzetti et al., 2007; Brunetti et al., 2010; Peruccacci et al., 2012). We maintain that the E-NEP algorithm is potentially useful for landslide early warning, but we acknowledge that more work is needed to test the algorithm in different meteorological, geological and physiographical settings.
Our analysis revealed that in the Gargano Promontory meteorologically driven hazards occur in response to extreme(i.e. rare) meteorological conditions, and the karst landscape responds to torrential rainfall with a threshold behaviour. For light to heavy rainfall events (Alpert et al., 2002) landslides, oods and sinkholes do not occur or are rare and minor, whereas for heavytorrential to torrential rainfall events they are abundant and particularly disruptive, as for the case for the 16 September 2014 event. We maintain that this information is useful for landslide early warning systems (and for other geohydrological hazards).
Competing interests. The authors declare that they have no conict of interest.
Acknowledgements. Work performed in the framework of projects supported by the Italian National Department for Civil Protection (DPC), and the Puglia (Apulia) Regional Government (PRG).Maria Elena Martinotti and Massimo Melillo were supported by two grants of DPC. Luca Pisano was supported by a grant of PRG.
Edited by: A. GntherReviewed by: J. De Waele and one anonymous referee
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Abstract
In karst environments, heavy rainfall is known to cause multiple geohydrological hazards, including inundations, flash floods, landslides and sinkholes. We studied a period of intense rainfall from 1 to 6 September 2014 in the Gargano Promontory, a karst area in Puglia, southern Italy. In the period, a sequence of torrential rainfall events caused severe damage and claimed two fatalities. The amount and accuracy of the geographical and temporal information varied for the different hazards. The temporal information was most accurate for the inundation caused by a major river, less accurate for flash floods caused by minor torrents and even less accurate for landslides. For sinkholes, only generic information on the period of occurrence of the failures was available. Our analysis revealed that in the promontory, rainfall-driven hazards occurred in response to extreme meteorological conditions and that the karst landscape responded to the torrential rainfall with a threshold behaviour. We exploited the rainfall and the landslide information to design the new ensemble-non-exceedance probability (E-NEP) algorithm for the quantitative evaluation of the possible occurrence of rainfall-induced landslides and of related geohydrological hazards. The ensemble of the metrics produced by the E-NEP algorithm provided better diagnostics than the single metrics often used for landslide forecasting, including rainfall duration, cumulated rainfall and rainfall intensity. We expect that the E-NEP algorithm will be useful for landslide early warning in karst areas and in other similar environments. We acknowledge that further tests are needed to evaluate the algorithm in different meteorological, geological and physiographical settings.
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