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Article

Assessing the Impact of Often Overlooked Snowfall on the Hydrological Balance of Apennine Mountain Aquifers in Central Italy

Department of Science, University “G. d’Annunzio” Chieti-Pescara, 66100 Chieti, Italy
*
Author to whom correspondence should be addressed.
Water 2025, 17(6), 864; https://doi.org/10.3390/w17060864
Submission received: 3 January 2025 / Revised: 20 February 2025 / Accepted: 14 March 2025 / Published: 17 March 2025

Abstract

:
The accurate knowledge of groundwater availability and its variations is crucial for sustainable groundwater management; in this framework, the water balance is a useful tool to assess the availability of water resources. Currently, the management authority needs a more precise evaluation of groundwater availability to face the rising freshwater demand. In this work, water balance has been determined for the main aquifers in the central Apennines (Italy)—over 2000 km2 wide—and the calculated outflow was compared with springs’ discharge from the data. Inflow data were collected over a 6-year period, from 2018 to 2023, considering both rainfall and snow; the contribution of the snow melting has often been omitted or rarely considered as immediate liquid contribution in the previous works, where usually only liquid inflows from rain have been considered. The snow contribution has been properly evaluated from a recent network of snow gauges and included in the total precipitation for more accurate results. Indeed, for each aquifer, monthly inflow datasets from rain gauges have been interpolated inside the structure using the equations obtained from regression lines and then used for a water balance assessment. An initial comparison of water balances, estimated with and without snow data, demonstrates that neglecting the snow contribution can lead to an underestimation of infiltration values. A comparison between calculated outflows including the snow melt and the measured springs’ discharge has shown a good correspondence for each investigated aquifer.

1. Introduction

The evaluation of snowfall’s contribution to meteorological inputs for the hydrological balance is harder than that of rainfall. However, in Mediterranean and central European regions, its contribution is quantitatively comparable to that of rainfall, particularly in high-altitude mountain areas. Snowfall can also play a significant role in southern climates when at higher elevations, as seen in the Italian central and southern Apennines.
The difficulty in estimating the contribution of snow—both as an inflow and as a measure of snow accumulation on the ground—stems from two main challenges: technical–logistic and hydrological factors.
The technical and logistical challenges can be summarized in three main points: (i) The lack of high-altitude monitoring stations where snow contribution is significant. This is primarily due to logistical issues, making it difficult to install and, more important, maintain and power the necessary equipment. (ii) Technical difficulties in accurately measuring the amount of snow accumulated on the ground using simple equipment. Specifically, pluviometers or snow gauges require electrical resistance to melt the snow they collect, which often presents operational issues due to the need for a power supply and the extreme conditions in which they are placed. (iii) Similar challenges are encountered in the installation and maintenance of instruments used to monitor the thickness of the snow cover [1].
The hydrological challenges arise from the fact that snow measured by rain gauges is treated as liquid precipitation and is thus considered an immediate input to the hydrological budget. Actually, snow can accumulate on the ground, remain as a snowpack throughout the cold season, and only contribute to the hydrological input during the melting in the warmer months. Furthermore, the duration of snow cover varies depending on factors such as altitude, temperature, topography, and amount of snowfall [2].
The difficulties outlined above mean that snowfall contribution generally is not considered if there are no rain gauges in the study area, it is approximated and added to liquid precipitation if functioning precipitation gauges are present in the area or, rarely, it is considered a change in snow cover, limited to areas with snow cover monitoring.
With the advent of remote sensing [3,4] and satellite imagery, the estimation of snow’s contribution to the hydrological balance has improved, but it remains challenging due to the high cost of satellite surveys and the need for ground-based validation. Satellite images alone cannot provide reliable information on snow thickness, and the presence of vegetation complicates accurate assessment.
The central Apennines, despite its relatively southern location, is an area rich in water resources, both surface and groundwater [5,6,7,8,9], due to the presence of extensive carbonate aquifers and high elevations where snow contributes significantly. Recent national legislation in Italy and EU regulations, aimed at rationalizing and optimizing water resource use, emphasize the urgent need to define the hydrological balances of aquifers—particularly considering recent climate changes. These changes affect the hydrological balance both directly, through alterations in the distribution, intensity, and form of precipitation (rainfall and snowfall) [10,11,12], and indirectly, through changes in evapotranspiration rates due to rising temperatures [13,14,15,16].
Local significance studies have been recently published, typically focused on individual aquifers, and have aimed to assess the contribution of snowfall. Lorenzi et al. [17] focusing on the Gran Sasso aquifer, highlighted the role of snowmelt in aquifer recharge and examined the impact of temperature increases on the distribution of winter snowfall. Lorenzi et al. [18], again studying the Gran Sasso aquifer, evaluated the influence of snow cover on recharge using satellite imagery and natural isotope analysis of spring waters. Scozzafava and Tallini [19], again in relation to Gran Sasso, proposed modifications to Thornthwaite’s method to consider various aspects including snow melting. In Petitta et al. [20], the authors established a correlation between isotopic recharge rates and average snow cover in several central Apennine aquifers, using isotopic data from spring waters and satellite images. Nanni and Rusi [21] identified the correlation between snowpack thickness, its melt, and variations in flow and chemical parameters in the Majella’s base aquifer springs. Chiaudani et al. [22], using daily data, developed statistical relationships between snow cover thickness, flow rates, and the chemical parameters of the Verde Spring in the Majella aquifer. Di Curzio et al. [23] attempted to use meteorological radar data to estimate meteoric inflows, including snowfall, for the Majella aquifer, while Di Curzio et al. [24] applied similar methods to the central Apennine ridge along the Adriatic Sea, with preliminary results.
This study evaluates the hydrological balance of the central Apennines’ main aquifers, considering both rain and snow contributions from direct measurement. The objective is to quantify the role of snowmelt in recharging aquifers and its impact on the overall water balance on a regional scale using snow gauge measurements instead of indirect methods as in Lorenzi et al. [17,18] or in the other works previously mentioned.
The infiltration calculations, incorporating snowmelt data from a network of snow gauges (2018–2023), were compared with the previous literature, which typically excluded snow contributions. The study interpolated precipitation data using altitude-precipitation regression to include high-altitude areas lacking rain gauges. The method was applied to six carbonate aquifers (covering ~2000 km2), which are crucial for drinking water, hydroelectric, and irrigation purposes. This is the first attempt to objectively integrate snowfall into hydrological assessments for such a large groundwater resource area.

2. Materials and Methods

2.1. Study Area and Hydrogeological Overview

The study focuses on aquifers in the central Apennines which represent the main recharge area for the regional aquifers (Figure 1).
According to the data, these structures are highly permeable for fractures and karst processes with infiltration between 700 and 900 mm/year considering an average 1000 mm/year precipitation [25].

2.2. Hydrological Balance and Data Elaboration

The hydrological balance was calculated, for each aquifer, to estimate effective infiltration and to compare it with the literature; the equation used is
I = I R ( P E )
where P stands for precipitation, including both rainfall and snow (if possible), E is evapotranspiration, I is the infiltration, and IR indicates the Potential Infiltration Index (PIC).
This is the first attempt to incorporate snowfall into hydrological calculations for a large area with significant groundwater resources, based on objective data rather than indirect estimates. The underlying hypothesis assumes that the snowpack is not treated as solid water subject to evapotranspiration but rather as melted water. In this framework, despite low temperatures, it undergoes the same hydrological processes as liquid precipitation. Rainfall, temperature and snowfall databases are from the Hydrographic Service of the Abruzzo Region; for each aquifer, the rain gauges that recorded rainfall and/or temperature data from January 2018 to December 2023 were selected and monthly cumulated, so that a 6-year dataset is available, as suggested in the current Italian guidelines [26].
In addition to the rain gauges, eight stations of snow cover measurement (see Table 1 and Figure 1) were included to enhance the accuracy of inflow evaluations. These stations are equipped with a sonic radar, which records the return signal emitted by it and allows the thickness of the snow cover to be measured. They are located far from urban areas and vegetated areas to avoid topographic influence.
The snow data, from each station, were evaluated monthly over the six reference years. To ensure the accuracy of the recorded data, they were compared with the corresponding temperature data, enhancing reliability and filtering out any unreliable data. Snow data were only included if they fell within the temperature range of 0 °C to 3 °C, which typically represents the climatic conditions conducive to snowfall [27].
In Figure 2, the snow cover thickness data are presented as daily cumulative values for an entire month (February 2020), along with, as an example, the first week of the following month (March 2020, separated by the blue line). As can be observed, the processing of these data is quite complex. First, negative values (indicated by the blue circle in Figure 2), which resulted from clear measurement errors, were discarded. Subsequently, for calculating the monthly cumulative snow height, only the increments in snow thickness (green segments) were considered. The red segments, on the other hand, represent snowmelt and were excluded from the cumulative calculation, as they do not reflect an increase in snow thickness.
Lastly, the data were monthly cumulated and then added to the corresponding monthly rainfall using the relationship according to which 1 cm = 1 mm of rain [17].
The spatialization for each aquifer was executed using monthly regression lines that correlate rainfall with altitude (Figure 3). These equations were integrated with Digital Elevation Model (DEM) maps within the QGIS (Version 3.28.15) environment, resulting in monthly rainfall maps with a resolution of 10 m × 10 m.
This process has been repeated for temperature and only rainfall data.
For each station, evapotranspiration was calculated both monthly and yearly; Turc and Turc modified methods [30] were applied for annual evapotranspiration ( E T r ), which was defined as
E T r = P 0.9 + P 2 L 2
where L is the evaporative potential of the atmosphere (300 + 25T + 0.05T3) and T is the mean yearly temperature of air (°C).
The Turc modified is based on Equation (2), but it considers L as (300 + 25TP + 0.05TP3), with T P = P i T i , where Pi and Ti are the rainfall and air temperature values related to the ith month, respectively.
The Thornthwaite and Mather equation [31] provides a monthly evaluation of evapotranspiration ( E T p i ) using
E T p i = K 1.6 10 T i I a
where K = n o . o f   d a y l i g h t   h o u r s 1 2 n o . o f   h o u r s   i n   a   d a y is a corrective coefficient for the latitude; Ti is the air temperature related to the ith month; (in °C) and a = 0.49239 + 1792 × 10 5 I 771 · 10 7 I 2 + 675 × 10 9 I 3 is the exponent of Equation (3), which is based on the yearly heat index I = i = 1 12 T i 8 1.514 .
As with the rainfall and temperature data, annual and monthly evapotranspiration have been correlated with altitude and used for evapotranspiration maps.
Monthly and yearly infiltration maps were obtained using Equation (1), first obtaining total outflow maps and then infiltration ones through Potential Infiltration Coefficients defined by Celico [32].

3. Results and Discussion

The method described was applied to various aquifers, resulting in 14 maps for each hydrological balance term (except for precipitation and temperature, which have 13 maps). Of these, 12 maps represent monthly data, while 2 maps describe annual data. The water balance was estimated using two different approaches for inflows: initially considering only rainfall as the inflow data and subsequently including snow data with rainfall.
In Figure 4, an example of the 12 monthly rainfall and snow maps for the Majella aquifer (n. 3 in Figure 1) is shown. These maps, along with the evapotranspiration maps, were used to calculate the total outflow by difference.
In Figure 5, the Monte Morrone (n. 2 in Figure 1) monthly and annual outflow maps are shown. As expected, the outflow values are lower during the dry period (from June to September) than during the wet one; this trend was observed for each aquifer.
In Figure 6, the example of infiltration maps for Monte Marsicano (n. 6 in Figure 1) is reported; as well as for outflow maps, the infiltration values are lower during the dry period. Even in infiltration terms, this trend was observed for each aquifer.
In Table 2, the annual infiltration is reported from the maps’ statistical elaboration: maximum, minimum, and mean values were carried out for each method. The results are shown for both water balances, the one estimated using rainfall and snow as inflows, and the one calculated only with rainfall data.
As shown, infiltration estimates based on snow and rainfall measurements are higher compared to those derived from rainfall alone.
Table 3 shows the percentage variations between mean infiltration values for each aquifer. In accordance with the distribution of high-altitude sub-plain areas, notably, the highest percentage variation is observed for the Majella aquifer characterized by the presence of summit plateaus and karst forms at altitudes ranging from 1600 to 2900 m above sea level, while the lowest occurs for Monte Porrara, characterized by the presence of a single crest without summit plateaus.
These results underscore the critical role of snow cover in inflow calculations; clearly, excluding snow cover data can lead to a significant underestimation of effective infiltration values.
Another impact of accounting for snow cover in the inflow term can be observed in the regression lines of rainfall vs. altitude. As shown in the example in Figure 7 (left), when snow cover is not considered, the inflows at higher altitudes are underestimated, leading to an inversion of the regression line. On the other hand, when considering snowfall, the values at the higher stations increase their value, inducing a normal relationship between altitude and precipitation Figure 7 (right). This trend has been observed in several aquifers during the winter and fall months.
In order to evaluate the significance of the infiltration values obtained using both the contributions of rain and snow, these values were compared with the outflow ones from the literature calculated directly from the flow measurements of the main springs fed by the hydrogeological body.
The comparison should not be interpreted at a quantitative level but only as an estimate due to the following characteristics of the balances from the literature:
  • The reference periods are different from those of the present study, and some are referred to periods of the last century with thermometric and pluviometric regimes, even if averaged over many years, that are different from those of the present study.
  • The duration of the periods analyzed varies from a few dozen years to a few years,
  • The number of analyzed springs varies from author to author.
  • In many balances, only the basal springs with flow rates higher than tens of L/s are considered, while those, even if numerous, with flow rates lower than tens of L/s are excluded from the calculation.
In Table 4, the infiltration values from the present study are compared with the spring outflow values from literature. For each water body, the most complete bibliographic reference, among all the known ones, in terms of accuracy of the study and number of springs analyzed was chosen. For some water bodies, such as Gran Sasso–Sirente, the comparison was not performed due to the considerable uncertainties in identifying the extension of the water body. In fact, some authors include the secondary water body of Monte Sirente in the calculation [5,33,34], others did not [19,35].

4. Conclusions

The contribution of snow to the recharge of the aquifers of the central Apennines had never been verified with direct measurements of the snowpack over a large area. The estimates and calculations performed so far referred to single aquifers, or to recharge areas of single springs. The calculation methods referred to indirect principles based on satellite images and sometimes on evaluations from isotopic hydrology. In this work, the contribution of snow was evaluated by applying geostatistical techniques to snowpack thickness data collected from seven monitoring stations over a period of six consecutive years. Monthly snowpack data were combined with rainfall data to calculate the hydrological balance of the aquifers. The comparison between calculations that included snow contribution and those based solely on geostatistical interpolation of rainfall data revealed that snowmelt contributes between 10% and 30% of the total infiltration, a portion that would otherwise have been overlooked. The result suggests an important reflection on the extent of infiltration and consequent recharge due to snow, considering that in recent years the distribution and thickness of snow have decreased. Considering the observed percentages of infiltration from snow, it is recommended to incorporate snow thickness as a key parameter in future hydrological balance estimates, particularly when modeling scenarios involving changes in snow cover extent and distribution. The main limitation of an ideal study is the lack of monitoring stations in the area. Therefore, it would be advisable to expand the network of measurement stations to account for variations in snow depth due to topography. This can be achieved by increasing the number of stations and strategically distributing them based on elevation.

Author Contributions

Both authors contributed equally to conceptualization, methodology, data analysis, data curation, writing—review and editing; software, A.D.G.; supervision, S.R. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

Thermo-pluviometric data are available on request from Hydrographic Service of Abruzzo Region.

Conflicts of Interest

The authors declare no conflicts of interest.

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Figure 1. Central Apennines aquifers investigated in this work. 1. Gran Sasso; 2. Monte Morrone; 3. Majella; 4. Monte Porrara; 5. Genzana–Greco mountains; 6. Monte Marsicano. For a detailed explanation see text.
Figure 1. Central Apennines aquifers investigated in this work. 1. Gran Sasso; 2. Monte Morrone; 3. Majella; 4. Monte Porrara; 5. Genzana–Greco mountains; 6. Monte Marsicano. For a detailed explanation see text.
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Figure 2. Example of snowfall data analysis (Ovindoli station, February–March 2020). The blue line divides the two considered months; the red circle highlights the negative snow value.The complete rainfall datasets, rainfall and snow data, were spatialized to overcome the inhomogeneity issues related to the automatic stations network. As noted in [24,28,29], the rain gauge network has a high number of stations at low altitudes, resulting in a lack of direct measurements in the aquifers’ recharge area.
Figure 2. Example of snowfall data analysis (Ovindoli station, February–March 2020). The blue line divides the two considered months; the red circle highlights the negative snow value.The complete rainfall datasets, rainfall and snow data, were spatialized to overcome the inhomogeneity issues related to the automatic stations network. As noted in [24,28,29], the rain gauge network has a high number of stations at low altitudes, resulting in a lack of direct measurements in the aquifers’ recharge area.
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Figure 3. Example of rainfall (P) vs. altitude for the Majella. For each graph, the regression line equation is specified.
Figure 3. Example of rainfall (P) vs. altitude for the Majella. For each graph, the regression line equation is specified.
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Figure 4. Example of monthly and annual precipitation maps (mm) for the Majella aquifer (n. 3 in Figure 1). The rainfall values include the snow contribution expressed in mm as explained in [17].
Figure 4. Example of monthly and annual precipitation maps (mm) for the Majella aquifer (n. 3 in Figure 1). The rainfall values include the snow contribution expressed in mm as explained in [17].
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Figure 5. Example of monthly and annual outflow maps (mm) for the Monte Morrone aquifer (n. 2 in Figure 1). The annual outflow has been calculated using both Turc and Turc modified (Turc* in the figure) methods.
Figure 5. Example of monthly and annual outflow maps (mm) for the Monte Morrone aquifer (n. 2 in Figure 1). The annual outflow has been calculated using both Turc and Turc modified (Turc* in the figure) methods.
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Figure 6. Example of monthly infiltration maps (mm) for the Monte Marsicano aquifer (n. 6 in Figure 1) with Potential Infiltration Coefficients (PIC) map.
Figure 6. Example of monthly infiltration maps (mm) for the Monte Marsicano aquifer (n. 6 in Figure 1) with Potential Infiltration Coefficients (PIC) map.
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Figure 7. An example of a comparison between regression lines (Gran Sasso aquifer). On the left, only rainfall was considered. On the right, snow cover was added to rainfall data. The dotted line represents the regression line.
Figure 7. An example of a comparison between regression lines (Gran Sasso aquifer). On the left, only rainfall was considered. On the right, snow cover was added to rainfall data. The dotted line represents the regression line.
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Table 1. Features of snow cover measuring stations.
Table 1. Features of snow cover measuring stations.
Station NameAltitude (m a.s.l.*)Mean Annual Value (mm)
Campotosto Diga1313215
Caramanico Terme80592
L’Aquila, Campo Imperatore2094256
Ovindoli1375150
Pretoro, Passo Lanciano1310256
Roccaraso1231140
Scanno, Passo Godi1542212
Note: a.s.l.*: above sea level.
Table 2. Infiltration values for the main aquifers. Turc* stands for Turc modified method; Thornth stands for Thornthwaite method.
Table 2. Infiltration values for the main aquifers. Turc* stands for Turc modified method; Thornth stands for Thornthwaite method.
Majella Infiltration
Rainfall and Snow InflowOnly Rainfall Inflow
mmL/smmL/s
MinMaxMeanStd. DevMinMaxMeanMinMaxMeanStd. DevMinMaxMean
Thornth 1090494 9903 844357 7671
Turc192279106952317320,701971028171382238525415,5607467
Turc*252346110753422721,31010,05533175284639130015,9147685
Monte Morrone Infiltration
Thornth 780382 2637 716339 2242
Turc4713466343221594555214548120957928416240901959
Turc*5414026683311814741226154123660228618641812036
Monte Marsicano Infiltration
Thornth 1016274 7535 893218 6623
Turc86162097328463712,009721585137485523063010,1086340
Turc*921686101929368312,502755691141688923467510,5006592
Gran Sasso Infiltration
Thornth 457140 18,197 39193 15,558
Turc35997409154140539,68316,27044743342105175129,56413,608
Turc*391027427157156040,84516,99448772361109191030,71814,364
Genzana–Greco Infiltration
Thornth 688121 6036 61082 5354
Turc110937630122965822455301107655568396567144880
Turc*11797866212610278584581011678757983101869085082
Monte Porrara Infiltration
Thornth 490124 1447 460110 1360
Turc76765443131226222613097167940311321020071191
Turc*81787462132239232613677670142311522520721250
Table 3. Percentage variations between mean infiltration values.
Table 3. Percentage variations between mean infiltration values.
MajellaVariation
Thornthwaite29%
Turc30%
Turc*31%
Monte MorroneVariation
Thornthwaite14%
Turc14%
Turc*15%
Monte MarsicanoVariation
Thornthwaite9%
Turc10%
Turc*11%
Gran SassoVariation
Thornthwaite17%
Turc20%
Turc*18%
Genzana–GrecoVariation
Thornthwaite13%
Turc13%
Turc*14%
Monte PorraraVariation
Thornthwaite7%
Turc10%
Turc*9%
Turc* stands for Turc modified.
Table 4. Infiltration values calculated for the main aquifers compared with springs’ outflow from literature. Turc* stands for Turc modified method.
Table 4. Infiltration values calculated for the main aquifers compared with springs’ outflow from literature. Turc* stands for Turc modified method.
Majella
Data SourceMean infiltration (L/s)Mean infiltration (mm)
Thornthwaite99031089
Turc97101069
Turc*10,0551107
Data SourceDischarge (L/s)Discharge (mm)
Abruzzo Region [36]8773966
Monte Morrone
Data SourceInfiltration (L/s)Mean infiltration (mm)
Thornthwaite2637780
Turc2145634
Turc*2261668
Data SourceDischarge (L/s)Discharge (mm)
Conese et al. [37]1475436
Monte Marsicano
Data SourceInfiltration (L/s)Mean infiltration (mm)
Thornthwaite75351016
Turc7215973
Turc*75561019
Data SourceDischarge (L/s)Discharge (mm)
Boni & Ruisi [38]79001065
Monte Porrara
Data SourceInfiltration (L/s)Mean infiltration (mm)
Thornthwaite1447490
Turc1309443
Turc*1367462
Data SourceDischarge (L/s)Discharge (mm)
Abruzzo Region [36]1460494
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Rusi, S.; Di Giovanni, A. Assessing the Impact of Often Overlooked Snowfall on the Hydrological Balance of Apennine Mountain Aquifers in Central Italy. Water 2025, 17, 864. https://doi.org/10.3390/w17060864

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Rusi S, Di Giovanni A. Assessing the Impact of Often Overlooked Snowfall on the Hydrological Balance of Apennine Mountain Aquifers in Central Italy. Water. 2025; 17(6):864. https://doi.org/10.3390/w17060864

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Rusi, Sergio, and Alessia Di Giovanni. 2025. "Assessing the Impact of Often Overlooked Snowfall on the Hydrological Balance of Apennine Mountain Aquifers in Central Italy" Water 17, no. 6: 864. https://doi.org/10.3390/w17060864

APA Style

Rusi, S., & Di Giovanni, A. (2025). Assessing the Impact of Often Overlooked Snowfall on the Hydrological Balance of Apennine Mountain Aquifers in Central Italy. Water, 17(6), 864. https://doi.org/10.3390/w17060864

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