Designating Regional Elements System in a Critical Infrastructure System in the Context of the Czech Republic
<p>Selected framework for critical infrastructure analysis (taken and modified from [<a href="#B35-systems-08-00013" class="html-bibr">35</a>]).</p> "> Figure 2
<p>Properties determining network behaviour in the event of a failure (taken and modified from [<a href="#B68-systems-08-00013" class="html-bibr">68</a>]).</p> "> Figure 3
<p>A proposed progressive approach to regional critical infrastructure element designation.</p> "> Figure 4
<p>System decomposition into infrastructure- and society-focused components.</p> "> Figure 5
<p>Decomposed system relationship with quantitative and qualitative criteria.</p> "> Figure 6
<p>Road network infrastructure selected for detailed analysis (created on data provided by [<a href="#B94-systems-08-00013" class="html-bibr">94</a>,<a href="#B95-systems-08-00013" class="html-bibr">95</a>].</p> "> Figure 7
<p>Graphical representation of special level elements in the evaluated region (created on data provided by [<a href="#B94-systems-08-00013" class="html-bibr">94</a>,<a href="#B95-systems-08-00013" class="html-bibr">95</a>]).</p> ">
Abstract
:1. Introduction
2. Methodology: Techniques and Tools of Infrastructure Analysis at the Regional Level
2.1. System Analysis
2.2. Behaviour Analysis
2.3. Knowledge Discovery, Visualization and Information Sharing (Network Analysis)
- (a)
- Network density,
- (b)
- Network homogeneity vs. network heterogeneity,
- (c)
- Network symmetry.
3. The Proposed System of Regional Critical Infrastructure Designation
- Yellow highlights analytical components, where these components are intended for working groups composed of experts in the field.
- Brown-green represents the decision-making component of the process, which should be undertaken exclusively by the relevant authorities.
- Light blue marks information entering the process or individual steps, or additional input information that may be required for analysis or decision-making purposes.
- Conversely, dark blue represents output information produced by a process or individual steps. The majority of output information is simultaneously used as input information for subsequent steps in the process.
- Grey identifies tools recommended for individual steps of the process or tools that may be utilized for a particular step.
3.1. Phase 1: System Description
3.2. Phase 2: Element Identification
3.3. Phase 3: Element Analysis
- Consequences without a negative impact—flawless redirection of the load to another part of the system.
- Threshold loading—the system may be loaded to the near-breaking point due to the redirection.
- Overloading—the redirection may cause the remaining parts of the system to overload.
3.4. Phase 4: Element Evaluation
- The special level is represented by elements whose non-inclusion in higher-level critical infrastructure might be considered unacceptable. This may involve, for example, the failure in the function of an element with far-reaching implications for the entire region, while at the same time impacting on critical infrastructure at higher levels. Even though the probability of infrastructure failure at higher levels is generally low, it cannot be ruled out (see the Blackout in the United States and Canada: [91]). Furthermore, an element may, for example, meet the criteria for inclusion in higher-level critical infrastructure. Such elements should be re-examined and assigned to the proper level of critical infrastructure.
- Regional critical infrastructure comprises the second group of elements which are essential (critical) to the smooth functioning of the region. These are elements of ‘vital’ importance (for an equivalent thereof see [18]), forming the core of the relevant regional infrastructure. The impact of a failure in the services provided by such elements may be noticeable, but without any negative implications for the higher-level critical infrastructure. Concerning critical infrastructure and its protection, such elements should be given top (level 1) priority in terms of their protection within the region. This may include elements whose failure would be assessed as likely to result in the ‘overload’ of the infrastructure, in whole or in part (see the qualitative expression regarding the Impact assessment for element function failure above), with the impact on the number of people exceeding the set PE threshold limit, and elements providing services that are essential to the population (see [87,88]).
- Regional key infrastructure constitutes the third group of elements, which may include structures likely to compromise the functioning of the regional critical infrastructure under a specific set of circumstances. These are regional elements of ‘non-vital’ importance (for an equivalent see [18]), complementing the infrastructure function (see [19]). In terms of their protection, these elements will be given a priority lower (level 2) than ‘regional critical infrastructure’ elements. They may include elements whose failure would be assessed as likely to lead to the ‘threshold loading’ of the infrastructure, in whole or in part (see the qualitative expression regarding the Impact assessment for element function failure above), with the impact on the number of people exceeding the set PE threshold limit, and elements providing services that are essential to the population (see [87,88]).
- Unclassified elements represent a group composed of elements whose failure would lead to ‘consequences without a negative impact’ on either the infrastructure or the society.
3.5. Ongoing Activities
4. Case Study
- Regional Authority of the Pardubice Region.
- Regional Security Council of the Pardubice Region.
- Regional Directorate of the Police (for the Pardubice Region).
- Road Administration and Maintenance Director of the Pardubice Region.
- Road transport expert/system analyst.
- Critical infrastructure expert.
- Association of Road Transport Operators.
4.1. Phase 1: System Description
4.2. Phase 2: Element Identification
4.3. Phase 3: Element Analysis
- The solved infrastructure of the road network is rather sparse [74], in terms of density of the network of motorways and 1st class roads. Some nodes usually have only one connection, and some nodes form larger irreplaceable centres (nodes with multiple connections).
- The solved infrastructure of the road network is very dense in terms of density of the 2nd class road network [74], i.e., there are several possible connection variants between the nodes.
- The solved infrastructure of the road network in terms of the density of the 3rd class road network forms a discontinuous network and the parts of the network consist of small island (isolated) systems [69,72]. This is, however, logical, since 3rd class roads are complementary to 2nd and 1st class roads. Subsequent network analysis of 3rd class island class systems will always have the same result [72,74].
- Impact of the element’s function failure on the entire system of the road network in the region concerned. There is no alternative route on the same type of road in the region.
- Impact of failure of the element function on a part of the system (i.e., a limit load of a part of the region) in the region concerned. For a solution, there is an alternative route on the same type of road.
- No negative effects of a failure of the system or its part in the region being solved.
4.4. Phase 4: Element Evaluation
- Special level comprises the elements that disable the road infrastructure for levels higher than the regional units (i.e., national level), namely motorway sections and one nationally significant building (tunnel) in the territory of the Pardubice Region. For this reason, these elements also have a significant impact on the elements of adjacent regions. The reason for this may be the fact that the motorway serves mainly for transit traffic between states and their parts. Similarly, the mentioned tunnel forms a significant obstacle to the national transit route. Routes alternative to the tunnel route are unable to provide adequate throughput for the transport capacity. A graphical representation of the special level elements in the evaluated region is presented in Figure 7. The elements of the other levels are not included in the figure due to the large amount.
- Regional critical infrastructure consists of elements that are non-replaceable for securing the equivalent transport capacity in the region. These are roads, which, if not in use, would make the regional transport impossible. Similarly, there are structures of interest whose rehabilitation would be very difficult. In particular, it can be a single tunnel and bridges typically located on the busiest routes and also on busy routes of larger towns in the region. It may also be the busiest crossing of the 1st class roads.
- Regional key infrastructure, on the other hand, is a group of elements that can be crucial to maintaining the road infrastructure function. Here, in particular, the requirements for alternative routes have been taken into account. Some sections may be exposed to a limit load and may collapse the entire infrastructure or system. These can, for example, be some elements with a partial impact on the system under consideration.
- Unclassified elements form an important part of all the infrastructure elements. It cannot be stated that their non-inclusion reduces their importance within the system under consideration.
4.5. Ongoing Activities
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
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1 | Critical Infrastructure Element is in particular understood as the construction, the equipment, the facility or public infrastructure identified by cross-cutting and sectoral criteria [4]. |
2 | In this context, vital elements are
perceived as synonymous with critical infrastructure elements. |
3 | Sectoral criteria mean technical or operational values to determine the critical infrastructure element in the various sectors, i.e. energy, water, food and agriculture, health, transport, communication and information systems, the financial market and currency, emergency services and public administration. |
4 | TRAGIS—Transportation Routing Analysis Geographic Information System. For more information visit: https://webtragis.ornl.gov. |
5 | These are interested parties entitled to comment on issues concerning community-wide security (see [57]) and may include various public institutions, law-enforcement agencies, called-in experts, relevant owners or operators, non-profit organizations and amateur groups. |
6 | There are linkages between infrastructure and society. Simply put, commodities supplied to the society by the infrastructure flow in one direction, while infrastructure requirements flow in another direction [83]. Only the first direction has been shown here for illustrative purposes. |
7 | For more information visit the International Risk Governance Council website at: https://www.irgc.org/risk-governance/what-is-risk-governance/. |
Abbreviation | CARVER2 | Description |
---|---|---|
C | Criticality | Degree of element importance for the whole system data |
A | Accessibility | Enabling access to important elements with unwanted exposure |
R | Recoverability | Time and effort required to restore the system functionality |
V | Vulnerability | Level of unwanted exposure derived from negative manifestations |
E | Effect | Extent and severity of unwanted consequences/manifestations in the system |
R | Recognisability | Ability to recognize unwanted important elements in the system (and its vulnerability) |
Type of Road | Impact on the Entire System | Impact on a Part of a System | No Negative Impact |
---|---|---|---|
Motorway | 3/12 | 0 | 0 |
1st class road | 3/24 | 6/155 | 2/29 |
2nd class road | 0 | 18/101 | 15/177 |
3rd class road | 0 | 0/64 | 323/127 |
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Novotny, P.; Janosikova, M. Designating Regional Elements System in a Critical Infrastructure System in the Context of the Czech Republic. Systems 2020, 8, 13. https://doi.org/10.3390/systems8020013
Novotny P, Janosikova M. Designating Regional Elements System in a Critical Infrastructure System in the Context of the Czech Republic. Systems. 2020; 8(2):13. https://doi.org/10.3390/systems8020013
Chicago/Turabian StyleNovotny, Petr, and Michaela Janosikova. 2020. "Designating Regional Elements System in a Critical Infrastructure System in the Context of the Czech Republic" Systems 8, no. 2: 13. https://doi.org/10.3390/systems8020013
APA StyleNovotny, P., & Janosikova, M. (2020). Designating Regional Elements System in a Critical Infrastructure System in the Context of the Czech Republic. Systems, 8(2), 13. https://doi.org/10.3390/systems8020013