Environmental Gamma Dose Rate Monitoring and Radon Correlations: Evidence and Potential Applications
Abstract
:1. Introduction
2. Materials and Methods
2.1. The Reuter–Stokes (RS) Ionization Chamber
2.2. Radon Flux Monitor and External Accumulation Chamber
2.3. Meteorological Contributions to the Environmental Dose Rate—Model
2.4. Retrospective Study to Investigate Seismic Contribution to the Dose Rate Time Series
3. Results
3.1. RS Sensitivity to the Radon Concentration Variations
3.2. Weather Contribution
3.3. Retrospective Study with ARFIMA Models
- Rainstorms and Snow—these types of weather events are quite uncommon at the measurement site. Specifically, rainstorm and snow as individuated in the weather contribution study do not occur in the defined blind regions of the examined sub-series. The correlation between the daily-averaged dose rate and rain data was investigated and no significant (p-) correlation () was found. The lack of an evident correlation with rain can be explained by the daily averaging operation on the dose rate data, which mitigates the presence of outliers due to the rain-out and wash-out phenomena [4], as these are characterized by hourly timescale.
- Radon Annual Cycle—This phenomenon manifests itself on a monthly timescale, inducing variations of less than on a month at the measurement site (see Figure 5). The blind regions defined for the studied sub-series are of eight days, where this effect is negligible. Moreover, the ARFIMA models used in this part of the work allow the consideration of long-persistence in the time series, in this case due to the radon annual cycle contribution.
- Radon Daily Cycle—The radon daily cycle contribution is due to atmospheric mixing categories [29] and manifests itself on hourly timescale as a day/night time effect. Averaging the dose rate on a daily basis mitigates the impact of any effects on the data, in the same way as for the rain case.
- Anthropogenic Radionuclide Contributions—As the detector is located within a Research site which hosts several radiological and nuclear installations (including two research nuclear reactors), the contributions of anthropogenic radionuclides eventually released into the environment was examined. Anthropogenic radionuclides releases due to either accidental or normal activities were investigated by checking the measurements performed by the safety environmental measurement network of the ENEA site. This network consists of a series of dosimeters, detectors, and periodical contamination measurements on environmental samples (i.e., water, grass, soil, milk, air) taken in an area covering a radius of 5 km from the ENEA Research Center. During the time period considered in this study, there was no evidence of any release of anthropogenic radionuclides; therefore, such a contribution can be excluded.
- Other Effects—The correlation of the dose rate daily averaged data with other weather variables, such as pressure, temperature and humidity, was considered. In the study, high significance (p- and p-), though weak anti-correlations, were found for relative humidity () and pressure (). On the other hand, the dose rate daily averaged data were significantly (p-) correlated with the temperature (). Even if the correlation between temperature, pressure and daily dose rate is due to a well known effect of these exogenous variables on the daily radon cycle [30], sudden changes in temperature, and to a lesser extent, in pressure and relative humidity, can generate variations that can mimic those generated by seismic events. For this reason, the rain, relative humidityextent, pressure, and temperature time series are considered in following discussion of the results obtained by the ARFIMA modelextents.
4. Discussion
4.1. RS Sensitivity to the Radon Concentration Variations
4.2. Weather Contribution
4.3. Retrospective Study with ARFIMA Models
- Montereale earthquake—18-01-2017: The earthquake epicenter (magnitude 4.2) was located at 42.58 (lat), 12.23 (lon), 97 km from the detector. The hypocenter was located 8 km underground. In the blind time-region, seven outliers (deviations ), four before the earthquake, one during the earthquake day, and two after the event, were identified.Figure 7. Montereale earthquake (color on-line)—upper panel: residuals of the best ARFIMA model. Blue points correspond to the dose rate background data and green points to the pre-shock events; the red point is the earthquake event and the orange points represent aftershock events. The confidence level bands for coverage factor k = 1, 2, 3 (from the lightest to the darkest blue) are drawn in the blind time region. In the middle and lower panels the relative humidity, rainfall, temperature, and pressure time series are shown, as indicated by the respective labels.Residuals, rain, temperature, pressure and humidity data are shown in Figure 7. Positive anomalies (dose rate higher than the one predicted by the model) and negative ones (dose rate lower than the one predicted by the model) were identified in the blind time region. Small changes in weather conditions were registered over three days of background data (from 11 to 13 January) due to rainfall. The model, however, correctly follows the data behaviour, as shown by the residuals. No sudden changes in weather data were registered within the blind time region; the occurred minor changes in rain data in the background period, that can potentially induce variations, are correctly considered in the model, as it is shown by the residual distribution.
- Spoleto—09-02-2017: The earthquake epicenter (magnitude 3.7) was located at 42.66 (lat), 12.68 (lon), 76 km from the detector. The hypocenter was located 8 km underground. In the blind time-region, four outliers (deviations ), three before the earthquake and one after the seismic event, were identified. Residuals, rain, temperature, pressure and humidity data are shown in Figure 8. Positive and negative anomalies were identified in the blind time region. No sudden changes in weather conditions were registered for that period, in particular for days when anomalies were identified.Figure 8. Spoleto earthquake (color on-line)—upper panel: residuals of the best ARFIMA model. Blue points correspond to the dose rate background data and green points to the pre-shock events; the red point is the earthquake event and the orange points represent aftershock events. The confidence level bands for coverage factor k = 1, 2, 3 (from the lightest to the darkest blue) are drawn in the blind time region. In the middle and lower panels the relative humidity, rainfall, temperature, and pressure time series are shown, as indicated by the respective labels.
- Cittareale earthquake—30-06-2017: The earthquake epicenter (magnitude 3.6) was located at 42.63 (lat), 12.68 (lon), 99 km from the detector. The hypocenter was located 12 km underground. In the blind time-region defined for this earthquake, six outliers, two before the earthquake, one during the seismic event, and three after the earthquake, were identified. Residuals, rain, temperature, pressure and humidity data are shown in Figure 9. Positive and negative anomalies were identified . There is a lack of meteorological data from 23 June to 26 June as well as on 30 June. For the days from 23 June to 25 June, the model correctly follows the background data behaviour. For 25 and 30 June, sudden changes in the weather variables can be excluded because the points that follow the missing data do not highlight any anomaly in the previous days (e.g., in the event of a strong rainfall, changes in pressure and temperature should be observed in the day after along with a peak in relative humidity with a lag of approximately one day). Moreover, considering the climate conditions of the detector site region, a sudden change in these parameters is quite unlikely.Figure 9. Cittareale earthquake (color on-line)—upper panel: residuals of the model. Blue points correspond to the dose rate background data and green points to the pre-shock events; the red point is the earthquake event and the orange points represent aftershock events. The confidence level bands for coverage factor k = 1, 2, 3 (from the lightest to the darkest blue) are drawn in the blind time region. In the middle and lower panels the relative humidity, rainfall, temperature, and pressure time series are shown, as indicated by the respective labels.
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
ARFIMA | Autoregressive Fractionally Integrated Moving Averag |
RS | Reuter–Stokes |
HPIC | High Pressure Ionization Chamber |
INGV | Italian National Institute of Geophysics and Volcanology |
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Date | Humidity (%) | Pressure (mbar) | Event | Dose Rate |
---|---|---|---|---|
27/11/2013 | 84 (93)% | 1019 | temperature <0 | low tail |
31/5/2014 | 78 (94)% | 1013 | storm, rain 20 mm | high tail |
29/12/2014 | 47 (65)% | 1014 | gust, 61 km/h | low tail |
9-10/2/2015 | 37 (65)% | 1016 | gust, 63 km/h | low tail |
7/3/2015 | 38 (49)% | 1016 | gust, 54 km/h | low tail |
24/7/2015 | 50 (74)% | 1010 | storm, rain 8 mm | high tail |
31/8/2016 | 76 (94)% | 1018 | storm, rain 18 mm | high tail |
16/9/2016 | 72 (94)% | 1013 | storm, rain 78 mm | high tail |
5/11/2017 | 76 (93)% | 1013 | storm, rain 52 mm | high tail |
26,28/2/2018 | 87 (100)% | 1016 | snow | low tail |
8/8/2018 | 45 (65)% | 1014 | storm, rain 16 mm | high tail |
Sub-Series Number | Total Length (Days) | Background Length (Days) | AR | MA |
---|---|---|---|---|
1 | 22 | 14 | 7 | 0 |
2 | 312 | 312 | 2 | 1 |
3 | 597 | 589 | 8 | 5 |
4 | 20 | 20 | 0 | 0 |
5 | 456 | 456 | 5 | 4 |
6 | 131 | 123 | 5 | 2 |
7 | 30 | 22 | 1 | 0 |
8 | 34 | 26 | 0 | 2 |
9 | 17 | 9 | 6 | 0 |
10 | 21 | 13 | 8 | 0 |
11 | 11 | 3 | 0 | 0 |
12 | 109 | 101 | 1 | 2 |
13 | 21 | 13 | 8 | 1 |
14 | 73 | 65 | 1 | 0 |
Soil Sample Depth | Th (mg/kg) | U (mg/kg) | Ra-226 (Bq/kg) |
---|---|---|---|
0–10 cm | 23.1 | 6.60 | 81.5 |
10–25 cm | 24.0 | 7.37 | 91.0 |
Location | Distance (km) | Earthquake Date | Magnitude | Deviations (Number of Days) | Hypocenter Depth (km) |
---|---|---|---|---|---|
Cittareale (RI) | 99 | 30/11/2013 | 3.7 | 7 | 10 |
Castel San Giorgio (TR) | 78 | 30/05/2016 | 4.1 | 1 | 8 |
Cittareale (RI) | 99 | 30/10/2016 | 4.0 | 1 | 11 |
Capitignano (AQ) | 97 | 29/11/2016 | 4.4 | 4 | 11 |
Campello sul Clitunno (PG) | 92 | 02/01/2017 | 3.9 | 2 | 8 |
Montereale (AQ) | 97 | 18/01/2017 | 4.2 | 7 | 11 |
Spoleto (PG) | 76 | 09/02/2017 | 3.7 | 4 | 8 |
Montereale (AQ) | 97 | 20/02/2017 | 3.9 | 2 | 11 |
Pizzoli (AQ) | 98 | 09/06/2017 | 3.8 | 0 | 12 |
Cittareale (RI) | 99 | 30/06/2017 | 3.8 | 6 | 12 |
S. Marsicana (AQ) | 85 | 10/09/2017 | 3.7 | 3 | 8 |
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Rizzo, A.; Antonacci, G.; Borra, E.; Cardellini, F.; Ciciani, L.; Sperandio, L.; Vilardi, I. Environmental Gamma Dose Rate Monitoring and Radon Correlations: Evidence and Potential Applications. Environments 2022, 9, 66. https://doi.org/10.3390/environments9060066
Rizzo A, Antonacci G, Borra E, Cardellini F, Ciciani L, Sperandio L, Vilardi I. Environmental Gamma Dose Rate Monitoring and Radon Correlations: Evidence and Potential Applications. Environments. 2022; 9(6):66. https://doi.org/10.3390/environments9060066
Chicago/Turabian StyleRizzo, Alessandro, Giuseppe Antonacci, Enrico Borra, Francesco Cardellini, Luca Ciciani, Luciano Sperandio, and Ignazio Vilardi. 2022. "Environmental Gamma Dose Rate Monitoring and Radon Correlations: Evidence and Potential Applications" Environments 9, no. 6: 66. https://doi.org/10.3390/environments9060066
APA StyleRizzo, A., Antonacci, G., Borra, E., Cardellini, F., Ciciani, L., Sperandio, L., & Vilardi, I. (2022). Environmental Gamma Dose Rate Monitoring and Radon Correlations: Evidence and Potential Applications. Environments, 9(6), 66. https://doi.org/10.3390/environments9060066