Technical Workshop Launch of Sendai Framework Monitoring System December 6-8, Bonn, Germany. United Nations Office for Disaster Risk Reduction

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Sendai Targets and Indicators: A roadmap for implementation TARGETS C-D Technical Workshop Launch of Sendai Framework Monitoring System December 6-8, Bonn, Germany United Nations Office for Disaster Risk Reduction

Sendai Framework Target C Target C: Reduce direct disaster economic loss in relation to global gross domestic product (GDP) by 2030 - Indicators - Definitions - Methodologies - Data requirements - Disaggregation and Metadata

Target C Indicators defined by OIEWG

Target c - Definitions Key terms Economic Loss: Total economic impact that consists of direct economic loss and indirect economic loss. Direct economic loss: the monetary value of total or partial destruction of physical assets existing in the affected area. Direct economic loss is nearly equivalent to physical damage. Indirect economic loss: a decline in economic value added as a consequence of direct economic loss and/or human and environmental impacts. Annotation: Examples of physical assets that are the basis for calculating direct economic loss include homes, schools, hospitals, commercial and governmental buildings, transport, energy, telecommunications infrastructures and other infrastructure; business assets and industrial plants; production such as crops, livestock and production infrastructure. They may also encompass environmental assets and cultural heritage.

Target c - Definitions Important annotations: Direct economic losses usually happen during the event or within the first few hours after the event and are often assessed soon after the event to estimate recovery cost and claim insurance payments. These are tangible and relatively easy to measure. Indirect economic loss includes micro-economic impacts (e.g. revenue declines owing to business interruption, impacts on natural assets, loss of revenue or income due to missing assets, interruptions to transportation networks, supply chains or temporary unemployment) and macroeconomic impacts (e.g. price increases, increases in government debt, negative impact on stock market prices, and decline in GDP). Indirect losses can occur inside or outside of the hazard area and often with a time lag. As a result they may be intangible or difficult to measure.

Target c Methodology Member States have freedom to choose between nationally defined methodologies or the methodologies proposed by the Secretariat by which direct economic loss to damaged or destroyed productive assets attributed to disasters is determined. The following major groups of methods are developed in the Techical Guidance to be used when estimating direct economic losses: C-1 compound indicator is expressed as a simple sum of Indicators C-2 to C-6 in relation to GDP. Estimation of Agricultural Sector losses (C-2): Jointly developed by FAO and UNISDR (for example, to assess economic loss on crops). Assessment of built environment losses (C-3, C-4, C-5): Developed by UNISDR, based on ECLAC/DALA (for example, to assess economic loss on houses). Assessment based on replacement value and unit prices (for example, to assess economic loss on vehicles or vessels)

Target c Methodology Computation of C-1 Direct Economic loss due to hazardous events in relation to global gross domestic product C 1 = (C 2 + C 3 + C 4 + C 5 + C 6 ) GDP An important challenge to take into account is the methodology for adding price adjustment (i.e. taking into account inflation and other factors, see Technical Guidance)

Target c Methodology Computation of C-2 Direct agricultural loss attributed to disasters This indicator is calculated based on the following sub-indicators: C-2C: Direct crop loss C-2L: Direct livestock loss C-2FO: Direct forestry loss C-2A: Direct aquaculture loss C-2FI: Direct fisheries loss C-2La: Direct loss on Agricultural productive assets C-2Lb: Direct loss on Agricultural stored stocks and production C 2 = C 2C + C 2L + C 2FO + C 2A + C 2FI + C 2La + C 2Lb

Target c Methodology Computation of C-3 and C-5 Direct economic loss to all other damaged or destroyed productive assets and critical infrastructure attributed to disasters. Methodology for Buildings No distinction of Damaged/Destroyed C-3 = Number of affected facilities average size of the facilities construction cost per Unit equipment ratio infrastructure ratio affected ratio Data disaggregated in Damaged and Destroyed C-3 = Number of affected facilities average size of the facilities construction cost per Unit equipment ratio infrastructure ratio damaged ratio + Number of affected facilities average size of the facilities construction cost per Unit equipment ratio infrastructure ratio

Target c Methodology Computation of C-3 and C-5 Direct economic loss to all other damaged or destroyed productive assets and critical infrastructure attributed to disasters. Methodology for Buildings Average asset size is size established in the Metadata describing the asset type. Construction cost per square meter is the average national value of construction cost per square metre Equipment ratio is the estimated value (expressed as a percentage of the value of the asset) of stored equipment and products (including raw materials & finished product) Infrastructure ratio is the estimated value (expressed as a percentage of the value of the asset) of the associated connections to utilities infrastructure Damaged ratio is calculated as the estimated average ratio of damage (as a percentage) of all damaged productive assets (by default 25%) Affected ratio is calculated as the estimated average ratio of damage (as a percentage) of all productive assets, including all damaged/destroyed productive assets (by default 4)

Target c Methodology Computation of C-3 and C-5 Direct economic loss to all other damaged or destroyed productive assets and critical infrastructure attributed to disasters. Methodology for unit prices (vehicles, vessels, livestock, etc.) Data not disaggregated (no distinction of Damaged/Destroyed) C-3 = Number of affected elements Unit cost affected ratio Data disaggregated in Damaged and Destroyed C-3 = Number of damaged elements Unit cost damaged ratio + Number of destroyed elements * Unit cost

Target c Data Requirements

Target c METADATA Metadata is defined as a set of data that describes, provides context and gives information about other data. In the context of the Sendai Framework Targets and Indicators, Metadata provides the additional information about the type and description of the elements (Productive Assets and Infrastructure elements) for which Member States are collecting data and estimating losses. Additionally, Metadata will also be used to provide additional information about the described items, information required to support the economic assessments (like average size, unit cost, percentage for equipment, etc.) and livelihoods (no. of workers). Sendai Metadata also describes the country (with data such as population, GDP, total number of households, etc.) providing the required context for several indicators (notably human, economic loss and livelihoods) to be successfully estimated.

Target C Metadata Table: Example for Illustration of Suggested Metadata for Productive Assets of C3, C4 and C5 indicators Type of Productive Asset Small Industrial Facility (Group C Manufacturing on ISIC) average size of facilities 100 construction cost per Unit USD $, by YEAR (b) USD of 2015 1,200 2017 1,220 2018 1,245 2019 Additional % Equipment, furniture & materials 25% Additional % associated infrastructure 25% Measurment UNIT Formula Mt 2 A*B*C*D*X 10 No. Workers Medium Industrial Facility (Group C Manufacturing on ISIC) 600 1,200 2017 1,205 2018 1,215 2019 4 25% Mt 2... 50 Large Industrial Facility (Group C Manufacturing on ISIC) 3,000 1,200 2017 1,220 2018 1,245 2019 6 2 Mt 2... 1000 Commercial small shop (Group G Wholesale and retail trade on ISIC) 60 800 2017 809 2018 5 25% Mt 2... 3 Commercial large shop (Group G Wholesale and retail trade on ISIC) 1,000 800 2017 809 2018 800 25% Mt 2... 100. Small tourism facility (Group I Accommodation and food service on ISIC) 1,000 800 2017 809 2018 25% 25% Mt 2... 15 Large tourism facility (Group I Accommodation and food service on ISIC) 10,000 1,200 2017 1,220 2018 1,245 2019 25% 25% Mt 2... 300 Housing (C4) 55 500 2017 509 2018 25% 25% Mt 2... 1

Target C Metadata Table: Example for Illustration of Suggested Metadata for Productive Assets of C-2 sub-indicators Type of Crop or Livestock or Agricultural Productive Asset average size of facilities Corn 10000 Average replacement cost per Unit USD $, by YEAR (b) USD of 2015 1,200 2017 1,220 2018 1,245 2019 Additional % Equipment, furniture & materials Additional % associated infrastructure Measurement UNIT Formula Hectare 10 No. Workers Rice 10000 800 2017 805 2018 815 2019 Hectare 50 Wheat 10000 200 2017 220 2018 245 2019 Hectare.. 1000. (OTHER) 10000 800 2017 809 2018 Hectare... 3 Cow 1 600 2017 609 2018 Animal... 0.1 Pig 1 600 2017 609 2018 Animal... 0.15 Sheep 1 200 2017 220 2018 245 2019 Animal... 0.03 Goat 1 300 2017 409 2018 Animal... 0.03

Target C Landing page

Target C Sub-indicator C-2c with disaggregation

Target C Indicator C-3 with disaggregation

Target C Metadata definition

Target C Metadata definition (Loss database) Critical Infrastructure

Target C Indicators C, D data entry(loss database)

Sendai Framework Target D Target D: Substantially reduce disaster damage to critical infrastructure and disruption of basic services, among them health and educational facilities, including through developing their resilience by 2030 - Indicators - Definitions - Methodologies - Data requirements - Disaggregation

Target D - Definitions Key terms Critical infrastructure The physical structures, facilities, networks and other assets which provide services that are essential to the social and economic functioning of a community or society Protective Infrastructure: The set of build elements designed to protect human life and societal assets from different hazards such as floods, tsunamis, wind, landslides and many others. Green Infrastructure: Green infrastructure is a strategically planned network of natural and semi-natural areas with other environmental features designed and managed to deliver a wide range of ecosystem services such as water purification, air quality, space for recreation and climate mitigation and adaptation, and management of wet weather impacts that provides many community benefits.

Target D

Target D Methodology Indicators D-2, D-3, and D-4 directly monitor the elements of damage to critical infrastructure by measuring the number of facilities and number of infrastructure units which are damaged or destroyed. This is the same number that is required for Target C (Indicator C-5) Indicators D-6, D-7 and D-8 directly monitor the elements of disruption to basic services of Target D by counting the number of times the provision of basic services are disrupted as a consequence of a disaster. Emphasis is made in the fact that a disruption includes: interruptions, either single or multiple, short or long, of the services, damage to the facilities or networks that provide the service, or a measurable/noticeable reduction in the quality of the service, or reduction in the population covered by the service, or a combination of all the above.

Target D Computation Methodology D-1 = Index of Critical Infrastructure Damage = number of infrastructure units and facilities damaged/ population * 100,000 D-5 = Index of Service Disruptions = number of disruptions occurred/ population * 100,000

Target D Indicators D-7 and D-8 data Disruptions of services in one disaster (loss database) Note: a service can be disrupted once (yes or no) in a given disaster. The accumulation of these disruptions in multiple disasters is the number of disruptions to be reported

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