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Social Science Integration. Hurricane Forecasts as an Element of Generalized Risk Management System. ψ (M). Transmission by Media. Measurement, Modeling and Forecasts Capabilities. Public Risk Perception. Forecast Products. Public. EM Decisions. Long-range. Emergency Planners.
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Hurricane Forecasts as an Element of Generalized Risk Management System ψ(M) Transmission by Media Measurement, Modeling and Forecasts Capabilities Public Risk Perception Forecast Products Public EM Decisions Long-range Emergency Planners Preparedness Decisions 1-5 days Short-term, high-resolution Encoded by Emergency Managers
The Social Science Research Mission • To understand how residents, businesses, and emergency managers comprehend and utilize hurricane forecast information when making preparedness decisions, and how preparedness can be enhanced through a blend of next-generation forecast products, improved communication, and education.
Specific Near-Term Research Goals 1. Advance current knowledge of the drivers of short-term hurricane risk perception and preparedness decisions by community stakeholders 2.Assess the economic and psychological value of alternative improved forecast capabilities; and 3. Use (1) and (2) as the basis of architectures for improved communication, education, and support systems for hurricane emergency management
Risk Perception and Preparedness as a Context-Dependent Dynamic System Forecast (t) Time=t+1 Web TV Radio WOM Background Context (e.g., location, past experience) Expected Hazard Impact (t) (Wind, Water, timing, etc,) Observed-Expected Impact (t) Expected actions of other decision makers Preparedness Actions (t)
Specific Research Questions • Comprehension. In the future residents may be exposed to a wide array of forecast products distributed through a diversity of media channels, some potentially conflicting. • What perceptual biases arise when individuals are presented with complex probabilistic information about storm threats? • What is the relative importance of different media in disseminating information about storms, and how do residents integrate information across multiple media channels?
Specific Research Questions (continued) • Perception. Upon receiving a forecast communication individuals must translate this to a belief about likely personal risk. • What drives individual differences in beliefs about the form of hurricane effects (i.e., how accurate are mental models of impacts)? • How are beliefs about risk influenced by the expected timing of effects (i.e., the role of inter-temporal discounting)? • How are risk perceptions influenced by situational and personal factors such as community location and past experience?
Specific Research Questions (continued) • Utilization. Given forecasts and personal expectations of impact, residents must then translate this to decisions about personal action. • How is forecast knowledge used to decide when and how to prepare? • What role do social networks and imitation play in preparedness (including evacuation) decisions?
Specific Research Questions (continued) • Learning. Because forecasts are inherently probabilistic, experienced storm effects will rarely match expected or forewarned effects. • How do false positive and negative warnings affect subsequent preparedness decisions?
Methods • These issues will be explored via a blend of methodologies including • Laboratory experiments and simulations (using information acceleration tools) • Field (and web-based) surveys conducted on cross-sectional samples and longitudinal panels • In-depth interviews
Information Acceleration • A web-based research tool that allows participants to “virtually” experience the approach of a hurricane, during which they can • Gather information from various realistic sources (e.g., television broadcasts, word of mouth) • Make simulated preparedness decisions • Provides a laboratory for testing hypotheses about how different information formats and sequences affects comprehension and preparedness
Field Surveys and Panels • Laboratory work will be augmented with more conventional field surveys and interviews to provide a means of cross-validation and extension to under-represented groups • A possibility: a “cell phone panel” of coastal residents that can be used to measure how risk perceptions vary in real time as a storm approaches a coastal area
Valuation • Goals: • To assess the subjective value different stakeholders place on different improved forecasting abilities (e.g., longer horizons versus higher resolution) • To provide a quantitative basis for assessing the objective cost of forecast errors in terms of false positive and false negative alarms
Method • Stated Choice Experiments (NCAR, Lazo) • Attribute valuation is assessed by asking participants to make choices among pairs of potential forecast capabilities, each having an associated cost • Choices are analyzed by a random utility model that allows the recovery of an implicit willingness-to-pay for various forecast improvements • Results can be cross-validated with insights about forecast-attribute utilization yielded by information accelerators and field surveys
Education and Decision Support • Decision Support/Communication: • As an outgrowth of EM interviews, suggested Architectures • e.g., Modules for storm-specific scenario planning • Protocols for the timing and content of hurricane warnings • Methods for coordination information flows across media • Education • Training in both hurricane preparedness and human decision biases.
Other Possible SS Partners • The Penn-Wharton Risk and Decision Processes Center • The Florida Catastrophic Storm Risk Management Center (Jay Baker in risk perception) • Centre for the Study of Choice at University of Technology, Sydney • International Hurricane Center • Texas A&M