A Safety Assessment for Consumers of Water Using Logical Trees
Abstract
:1. Introduction
- Material charge (suspensions and particles);
- Microbiological charge; and
- Organic and inorganic nutrients.
- Threat removal = elimination;
- Consumer evacuation from the danger zone = evacuation;
- Danger confinement barriers = insulation;
- A danger barrier = insulation;
- Individual consumer protection (e.g., Through the use of water in containers).
2. Adopted Methodology
- gate AND:
- (X × Y × N) is the gate AND output event,
- X, Y, …, N are input events,
- P(X × Y × N) is the probability of the gate AND output event,
- P(X), P(Y), …, P(N) are the probabilities of input events into logic gates X, Y, …, N.
- 2.
- gate OR:
- (X + Y) is the gate OR output event,
- P(X + Y + N) is the probability of the gate OR output event.
3. Studied Case Characterization
4. Application Example
- I is a protection barrier related to the identification of contamination through the monitoring of water quality in the supply network,
- II is a protection barrier related to a warning system targeted at the recipients of water,
- III is a protection barrier related to the methods of prevention via a crisis water-supply system.
- Situation under control:
- Failure:
- Serious failure:
- Disaster:
- P(A) = 8.699 × 10−11,
- P(B) = 5.209 × 10−11,
- P(C) = 1.250 × 10−9,
- P(D) = 4.211 × 10−8.
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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No. | Designation | Description |
---|---|---|
1. | a | Event related to the occurrence of secondary pollution of water in the supply network |
2. | b | Event related to the occurrence of sediment (growth) or biofilm |
3. | c | Event related to the occurrence of adverse hydraulic conditions |
4. | d | Event related to an unexpected change in water quality parameters |
5. | e | Event related to a lack of water chemical stability |
6. | f | Event related to a lack of water biological stability |
7. | g | Event related to a loss of physical stability of water resulting in the limit value for water turbidity being exceeded (≥0.8 NTU) |
8. | h | Event related to the emergence of a water-quality situation with a Langelier Saturation Index value from −4 to −5 and from 3 to 4 |
9. | i | Event related to a lack of water chemical stability of water with a Ryznar Index value of >8.5 and <5.5 |
10. | j | Event related to a loss of chemical stability of water with a Strohecker Index value of more than 0.5 |
11. | k | Event related to a lack of water biological stability with a biodegradable dissolved organic carbon (BDOC) water-quality value of ≥0.25 gC/m3 |
12. | l | Event related to a lack of water biological stability with a ∑Ninoorganic value of ≥ 0.2 gN/m3 |
13. | m | Event related to a lack of water biological stability with a PO43− value more than 0.03 g PO43−/m3 |
No. | Probability | Description | Value |
---|---|---|---|
1. | P(a) | Probability of an event related to the occurrence of secondary water pollution of water in the network | Calculated acc. to Equation (4) |
2. | P(b) | Probability of an event related to the occurrence of sediment (growth) or biofilm | Calculated acc. to Equation (5) |
3. | P(c) | Probability of an event related to the occurrence of adverse hydraulic conditions | 0.015 |
4. | P(d) | Probability of an event related to a sudden change in water-quality parameters | 0.0001 |
5. | P(e) | Probability of an event related to a loss of chemical stability of water | Calculated acc. to Equation (6) |
6. | P(f) | Probability of an event related to a loss of biological stability of water | Calculated acc. to Equation (7) |
7. | P(g) | Event probability related to a lack of water physical stability of water resulting in the limit value for water turbidity being exceeded (≥0.8 NTU) | 0.013 |
8. | P(h) | Probability of an event related to the emergence of a water-quality situation with a Langelier Saturation Index value from −4 to −5 and from 3 to 4 | 0.0001 |
9. | P(i) | Event probability related to a loss of chemical stability of water with a Ryznar Index value of >8.5 and <5.5 | 0.015 |
10. | P(j) | Probability of an event related to a lack of chemical stability of water with a Strohecker Index value less than 0.5 | 0.0002 |
11. | P(k) | Event probability related to a lack of biological stability of water with a biodegradable dissolved organic carbon (BDOC) water-quality value of ≥0.25 g/cm3 | 0.583 |
12. | P(l) | Probability of an event related to a loss of biological stability of water with a ∑Ninoorganic value of ≥0.2 gN/m3 | 0.159 |
13. | P(m) | Probability of an event related to a lack of water biological stability with a PO43− value of ≥ 0.03 g PO43−/m3 | 0.01 |
No. | Probability | Description | Value |
---|---|---|---|
1. | P(X) = P(A) | Probability related to the occurrence of water-quality parameters not in accordance with the Regulation on the quality of water intended for human consumption (Directive 1998) | 4.3496 × 10−8 |
2. | P(I) | Probability of failure of the protective barrier related to the identification of contamination by monitoring the quality of water in the supply network | 0.002 |
3. | P(II) | Probability of failure of the protective barrier related to a warning system for consumers of water | 0.03 |
4. | P(III) | Probability of failure of the protective barrier associated with methods of prevention via the crisis water-supply system | 0.04 |
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Tchórzewska-Cieślak, B.; Pietrucha-Urbanik, K.; Rak, J.; Papciak, D.; Hlavínek, P.; Chmielowski, K. A Safety Assessment for Consumers of Water Using Logical Trees. Appl. Sci. 2022, 12, 11276. https://doi.org/10.3390/app122111276
Tchórzewska-Cieślak B, Pietrucha-Urbanik K, Rak J, Papciak D, Hlavínek P, Chmielowski K. A Safety Assessment for Consumers of Water Using Logical Trees. Applied Sciences. 2022; 12(21):11276. https://doi.org/10.3390/app122111276
Chicago/Turabian StyleTchórzewska-Cieślak, Barbara, Katarzyna Pietrucha-Urbanik, Janusz Rak, Dorota Papciak, Petr Hlavínek, and Krzysztof Chmielowski. 2022. "A Safety Assessment for Consumers of Water Using Logical Trees" Applied Sciences 12, no. 21: 11276. https://doi.org/10.3390/app122111276
APA StyleTchórzewska-Cieślak, B., Pietrucha-Urbanik, K., Rak, J., Papciak, D., Hlavínek, P., & Chmielowski, K. (2022). A Safety Assessment for Consumers of Water Using Logical Trees. Applied Sciences, 12(21), 11276. https://doi.org/10.3390/app122111276