New risk model better predicts river flood damage

"The bottom line is that accurate predictions are crucial to the safety and well-being of people and property. If a government acts based on inaccurate information, its preparation can be off by orders of magnitude, with very serious results," says Gonzalo Pita. (Credit: Getty Images)

New natural disaster risk modeling offers a reliable and affordable way for governments to estimate expected damage from river floods that overflow their banks.

In recent months, rivers overflowing their banks have caused property damage and loss of life in France, Italy, Mexico, and South Africa, underscoring the increasing perils of climate change.

To prepare for such river floods, governments deploy mathematical models. However, due to time constraints and lack of data, these models sometimes incorporate “off-the-shelf” damage calculations based on previous unrelated floods.

Unfortunately, these predictions are often inaccurate, leading to inadequate interventions and failing to sufficiently protect property and human life.

The new method not only provides users with step-by-step instructions but also measures and assigns numerical values to the level of uncertainty in individual river flood damage forecasts, giving governments a clearer picture of how reliable their predictions are.

“The bottom line is that accurate predictions are crucial to the safety and well-being of people and property. If a government acts based on inaccurate information, its preparation can be off by orders of magnitude, with very serious results,” says Gonzalo Pita, an associate research scientist in the Whiting School of Engineering’s civil and systems engineering department at Johns Hopkins University.

The study, published in the International Journal of Disaster Risk Reduction, builds upon work that previously appeared in the Journal of Hydrology.

In the new study, Pita first investigated the accuracy of using expert opinion alone to estimate and predict flood damage. He surveyed multiple authorities and simulated thousands of expert surveys in numerous combinations to analyze how the composition of the expert team influences prediction accuracy.

“What I found was a variability in accuracy of between 10% and 46% among experts, which is a wide range,” Pita says. “I also learned that accuracy was enhanced by adding additional expert voices, rather than simply adding more questions to the survey.”

Pita then tackled the issue of “damage functions,” a fundamental component of natural disaster risk simulations. A function refers to the mathematical relationship between two variables—in this case, a depth-damage function describes the correlation between the depth of flood waters and the level of damage it causes, as in “1 foot of flood water in a home causes $10,000 in damage.” Creating these functions accurately is out of the reach of many governments, Pita says.

“It is a very expensive process in terms of money and time, and countries sometimes may not have the expertise, time, or data to develop them within an acceptable timeframe. So with this method, these functions can be built inexpensively but with a useful level of accuracy that governments can use provisionally until they get better data that will enable them to generate more accurate functions.”

The new approach works by helping quantify the uncertainty in experts’ predictions by assigning weights to each expert, resulting in a more detailed analysis of the uncertainties involved. The result is a method that Pita expects to be “very useful” for flood modelers and influencing preparedness policy.

“These types of insights could inform policy directly and indirectly, from enabling smarter zoning laws and budgeting for asset maintenance to designing disaster insurance programs. All of this is to say that better flood damage data and predictions have the potential to have far-reaching benefits,” he says.

Source: Johns Hopkins University