Water System Safety Analysis Model
Abstract
:1. Introduction
2. Identification of System Safety States
- Safety state (reliability)—CSS;
- Under threat—TSS;
- Loss (unreliability) of safety—LSS.
- CSS—the condition in which the system performs its functions in accordance with the applicable legal regulations and the expectations of water consumers in terms of the volume of production of drinking water (nominal water production efficiency is defined as Qn ≥ Qdmax) and quality (water meets the requirements of the applicable regulation). Emergency events may occur in the system’s operation, but the related losses C do not affect the system’s viability (they are negligible). It can be assumed that the relative value of the losses is equal to zero (C = 0). In terms of the safety of the water supply, the system meets the requirements for consumers but also does not pose a threat to the environment and other technical infrastructure—the tolerable state;
- TSS—a condition characterized by short-term disturbances in system operation: The daily production of water decreases (0.3 Qdmax ≤ Qn < Qdmax), or there are interruptions in its supply lasting up to 24 h (domino effect). The effects of the disturbances are greater than zero but less than or equal to the adopted limit values of Cgr, related to interruptions in water supply and threats to water consumers (possible exceedances of the normative values for the physicochemical parameters of water quality). If it is assumed that the relative value of the limit loss is equal to one, then 0 < C ≤ 1. In the aspect of safety, there is the so-called threat to water supplies to consumers or the environment (e.g., excessive water abstraction, leakage of chemicals) or other technical infrastructure (e.g., road washing)—the controlled state;
- LSS—a state in which the WSS does not fulfill its functions (Qn < 0.3 Qdmax) or water supply interruptions last longer than 24 h for individual housing estates, districts, or parts of the city. Consumers are exposed to the consumption of poor-quality water (exceeding the normative values for microbiological and (or) physicochemical indicators). Water quality poses a threat to the health or life of consumers: C ≥ Cgr = 1—the unacceptable state.
- The variable X characterizes the system in terms of specific features of the system and their safety requirements;
- The Y variable characterizes the system in terms of system safety.
- X = 1 when all features of the system meet the safety requirements;
- X = 0 when at least one feature of the system does not meet the safety requirements;
- Y = 1 when there is no loss of system safety (tolerated or controlled state);
- Y = 0 when there is a loss of system safety (an unacceptable state).
- X = 1 and Y = 1—CSS, the safety reliability state, which means that all features of the system meet the specified safety requirements of the system and there is no loss of safety. The probability of the condition occurring is:
- The probability of safety is:
- X = 1 and Y = O—TSS1, the state that can occur theoretically. There has been a loss of safety in the system, but some features are within acceptable limits. The probability of the condition occurring is:
- X = 0 and Y = 1—TSS2, state of the safety emergency. At least one feature of the system does not meet the safety requirements, but there is no safety failure. The probability of the condition occurring is:
- X = 0 and Y = 0—state of safety unreliability LSS. One or more features of the system do not meet the safety requirements, and there is a safety failure.
3. Methodology
- The occurrence of each condition is a random event; the transition probability corresponding to the individual states is: PCSS(t), PTSS(t), PLSS(t);
- The system can only be in one of the distinguished states at a time;
- At time t = 0, the subsystem is in the CSS state;
- Transition times between individual states have exponential distributions;
- Failure rate (or failure frequency) and repair parameter are, respectively, λ, μ;
- The graph directed from CSS to TSS and LSS to TSS means the occurrence of an emergency event with the probability λCSSΔt and λTSSΔt in the time interval Δt; the graph directed from LSS to TSS and TSS to CSS shows the system renewal process of the system with probability μ1Δt and μ2Δt over the time interval Δt;
4. Research Object
- Water stored in 18 equalizing reservoirs within the water supply network, with a total capacity of 35,300 m3;
- One hundred and seventy-nine emergency public wells with a total capacity of 689.4 m3⋅d−1, giving a total of 35,222 m3·d−1.
5. Results of Research
5.1. An Exemplary Analysis of the Method Being Applied
5.2. The Case Study Results
- The occurrence of each of the three states is a random event that occurs with probabilities: PCSS(t), PTSS(t), PLSS(t);
- The WSS may be in one of the three distinguished states at any given time;
- There may be a transition from one state to another;
- At time t = 0, the subsystem is in the CSS state;
- Transition times between individual states have exponential distributions in accordance with the carried out statistical analysis through chi-square test;
- The failure rate and repair rate parameters are, respectively, λCSS, λTSS, λLSS, μCSS, μTSS, μLSS;
- The stream of damage is the simplest, i.e., a stationary Poisson stream.
- MTTR for TSS state: 0.875 days;
- MTTR for LSS state: 3.625 days.
- MTBF for CSS state: 42.52 days (0.11 year);
- MTBF for TSS state: 1020.41 days (2.79 years);
- MTBF for LSS state: 35,714.29 days (97.85 years).
5.3. Discussion
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Tchórzewska-Cieślak, B.; Pietrucha-Urbanik, K. Water System Safety Analysis Model. Energies 2023, 16, 2809. https://doi.org/10.3390/en16062809
Tchórzewska-Cieślak B, Pietrucha-Urbanik K. Water System Safety Analysis Model. Energies. 2023; 16(6):2809. https://doi.org/10.3390/en16062809
Chicago/Turabian StyleTchórzewska-Cieślak, Barbara, and Katarzyna Pietrucha-Urbanik. 2023. "Water System Safety Analysis Model" Energies 16, no. 6: 2809. https://doi.org/10.3390/en16062809
APA StyleTchórzewska-Cieślak, B., & Pietrucha-Urbanik, K. (2023). Water System Safety Analysis Model. Energies, 16(6), 2809. https://doi.org/10.3390/en16062809