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  • Robert Monroe

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By:

  • Robert Monroe

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New High-Resolution Study on California Coastal Cliff Erosion Released

Website presents details on state’s continually changing coastline

Devil's Slide in San Mateo County, California.

Devil's Slide, named after its rocky edges, in San Mateo County, California. Photo credit: yhelfman / iStock.

The first study to analyze California’s coastal cliff retreat statewide using high-resolution data has found that cliffs receded faster in the north than elsewhere in the state during the study period.

But the study, which covered 866 kilometers (538 miles) of cliffs, detected erosional hotspots in central and Southern California as well.

“It’s probably the largest high-resolution cliff erosion study ever conducted and provides the first detailed erosion rates for several parts of the state,” said coastal geomorphologist Adam Young of Scripps Institution of Oceanography at UC San Diego. Young and Zuzanna M. Swirad of the Polish Academy of Sciences in Warsaw, recently published their study in the journal Geomorphology.

Data from that study funded by the California Ocean Protection Council and California Department of Parks and Recreation plus previous research funded by California Sea Grant are now available on the website California Coastal Cliff Erosion Viewer. Website users can browse any cliff in the state to see its past rate of erosion and related retreat statistics. The website is designed for coastal planning and development decision-makers, but the information may also be of interest to members of the research community, and the general public.

“Communities and critical infrastructure are located on the cliff top. It is really important to understand the hazard of cliff collapse,” said Swirad, a former postdoctoral scholar at Scripps Oceanography.

Cliffs account for most of California’s 1,646 kilometers (1,023 miles) of coastline. Landslides and collapses have caused injuries and multiple deaths in recent decades. Coastal infrastructure potentially at risk includes highways, public coastal access points, homes, military bases, wastewater treatment plants, power plants, and railways. The State of California recently allocated $300 million toward moving 1.7 miles of tracks away from an eroding bluff in Del Mar.

A cliff erosion survey in Del Mar Feb 28, 2021.

A cliff erosion survey in Del Mar Feb 28, 2021. Photo credit: Coastal Processes Group/Scripps Institution of Oceanography.

In their new study, Swirad and Young created one-meter digital elevation models and evaluated the cliff erosion and retreat between 2009-2011 and 2016 in five-meter (16.4 foot) segments along 866 kilometers (538 miles) of California’s coast. Erosion was detected along more than half of the cliffs.

Rates were typically higher in the north of the state and for cliffs with beachfront. The statewide retreat rates of both cliff faces and cliff tops averaged about six centimeters (two inches) annually. However, the average values mask the effects of episodic collapses. Cliff top retreat rates exceeded five meters (16 feet) per year in some areas of Rancho Palos Verdes south of Los Angeles, an area south of Point Arguello near Vandenberg Air Force Base, Big Sur in central California, and Martin Beach south of San Francisco. Northern California locations with high retreat rates include Usal Beach, King Range, Centerville Beach, the McNeil Creek area north of Trinidad Head, and an area about two miles north of the Klamath River.

Included in the analysis were data collected with airborne LiDAR (Light Detection and Ranging), an advanced laser-imaging technology, during 2009-2011 and 2016. New machine learning techniques that Swirad developed helped reduce the project’s manual processing and analysis time, expediting the large-scale study.

The California Coastal Cliff Erosion Viewer displays observed cliff retreat throughout the state.

Click the image to view the California Coastal Cliff Erosion Viewer, which displays observed cliff retreat throughout the state.

Large cliff failures can occur episodically making cliff-retreat projections based on averaged historical data challenging.. In addition, retreat measurements made only at the cliff top do not capture landslides in the middle or bottom of cliffs. However, using LiDAR, Swirad and Young were able to measure both the cliff top change and changes within the cliff face.

The new results were compared to one of Young’s previous studies of southern and central California and yielded similar statistical results of cliff face retreat. These statistics help account for episodic erosional events, and help improve model predictions.

“Because we found statistical agreement with the previous time period, 1998 and 2009-2010, we may be more confident that the statistical approach is the way to do it,” Swirad said.

Big Sur Bridge California

Big Sur Bridge California. Photo credit: Frederick Thelen / iStock.

New statewide data collection began last year. This will provide a third time span to see if the statistical results remain consistent with those from the earlier periods. Still, the researchers find it difficult to isolate events that happen seasonally or annually such as El Niño events because the statewide data sets span five to 10 years. Such a large time span makes it hard for them to interpret the processes driving erosion such as pounding waves, groundwater, and rainfall.

“We need to survey the coast more frequently so we can better track how the coast is evolving and improve model predictions,” Young said. “We have the ability and technology to do this.

Young noted that coastlines are the only place on Earth where ocean, land, and atmosphere intersect.

“That makes it a fascinating place to study,” he said.

Young is also leading a team at Scripps on a new program that aims to accelerate the science behind coastal bluff failures. The research, authorized through State Assembly bill AB-66, will support enhanced coastal monitoring to better understand the timing of bluff failures.

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